06-4202. Medicare Program; Inpatient Psychiatric Facilities Prospective Payment System Payment Update for Rate Year Beginning July 1, 2006 (RY 2007)
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AGENCY:
Centers for Medicare & Medicaid Services (CMS), HHS.
ACTION:
Final rule.
SUMMARY:
This final rule updates the prospective payment rates for Medicare inpatient hospital services provided by inpatient psychiatric facilities (IPFs). These changes are applicable to IPF discharges occurring during the rate year beginning July 1, 2006 through June 30, 2007. In addition, we are adopting the new Office of Management and Budget (OMB) labor market area definitions for the purpose of geographic classification and the wage index. We are also making revisions to existing policies and implementing new polices.
DATES:
Effective Date: These regulations are effective on July 1, 2006.
Start Further InfoFOR FURTHER INFORMATION CONTACT:
Dorothy Colbert, (410) 786-4533 for general information. Mary Lee Seifert, (410) 786-0030 for information regarding the market basket and labor-related share. Theresa Bean, (410) 786-2287 for information regarding the regulatory impact analysis. Matthew Quarrick, (410) 786-9867 for information on the wage index.
End Further Info End Preamble Start Supplemental InformationSUPPLEMENTARY INFORMATION:
Table of Contents
To assist readers in referencing sections contained in this document, we are providing the following table of contents.
I. Background
A. General and Legislative History
B. Overview of the Establishment of the IPF PPS
C. Applicability of the IPF PPS
II. Overview for Updating the IPF PPS
A. Requirements for Updating the IPF PPS
B. Transition Period for Implementation of the IPF PPS
III. Provisions of the Proposed Regulation
IV. Analysis of and Responses to Public Comments
V. Updates to the IPF PPS for RY Beginning July 1, 2006
A. Calculation of the Average Per Diem Cost
B. Determining the Standardized Budget-Neutral Federal Per Diem Base Rate
1. Standardization of the Federal Per Diem Base Rate
2. Calculation of the Budget Neutrality Adjustment
a. Outlier Adjustment
b. Stop-Loss Provision Adjustment
c. Behavioral Offset
3. Revision of Standardization Factor
C. Update of the Federal Per Diem Base Rate
1. Market Basket for IPFs Reimbursed Under the IPF PPS
a. Market Basket Index for IPF PPS
b. Overview of the RPL Market Basket
2. Methodology for Operating Portion of the RPL Market Basket
3. Methodology for Capital Portion of the RPL Market Basket
4. Labor-Related Share
VI. Update of the IPF PPS Adjustment Factors
A. Overview of the IPF PPS Adjustment Factors
B. Patient-Level Adjustments
1. Adjustment for DRG Assignment
2. Payment for Comorbid Conditions
3. Patient Age Adjustments
4. Variable Per Diem Adjustments
C. Facility-Level Adjustments
1. Wage Index Adjustment
a. Revisions of IPF PPS Geographic Classifications
b. Current IPF PPS Labor Market Areas Based on MSAs
c. Core-Based Statistical Areas
d. Revision of the IPF PPS Labor Market Areas
i. New England MSAs
ii. Metropolitan Divisions
iii. Micropolitan Areas
e. Implementation of the Revised Labor Market Areas Under the IPF PPS
f. Wage Index Budget Neutrality
2. Adjustment for Rural Location
3. Teaching Adjustment
4. Cost of Living Adjustment for IPFs Located in Alaska and Hawaii
5. Adjustment for IPFs With a Qualifying Emergency Department (ED)
a. New Source of Admission Code To Implement the ED Adjustment
b. Applicability of the ED Adjustment to IPFs in Critical Access Hospitals
D. Other Payment Adjustments and Policies
1. Outlier Payments
a. Update to the Outlier Fixed Dollar Loss Threshold Amount
b. Statistical Accuracy of Cost-to-Charge Ratios
2. Stop-Loss Provision
3. Patients Who Receive Electroconvulsive Therapy (ECT)
4. Physician Certification and Recertification Requirements
5. Provision of Therapeutic Recreation in IPFs
6. Same Day Transfers
VII. Miscellaneous Public Comments Within the Scope of the Proposed Rule
VIII. Provisions of the Final Rule
IX. Collection of Information Requirements
X. Regulatory Impact Analysis
Acronyms
Because of the many terms to which we refer by acronym in this final rule, we are listing the acronyms used and their corresponding terms in alphabetical order below:
BBA Balanced Budget Act of 1997, (Pub. L. 105-33)
BBRA Medicare, Medicaid and SCHIP [State Children's Health Insurance Program] Balanced Budget Refinement Act of 1999, (Pub. L. 106-113)
BIPA Medicare, Medicaid, and SCHIP [State Children's Health Insurance Program] Benefits Improvement and Protection Act of 2000, (Pub. L. 106-554)
CBSA Core-Based Statistical Area
CCR Cost-to-charge ratio
CMS Centers for Medicare & Medicaid Services
CMSA Consolidated Metropolitan Statistical Area
DSM-IV-TR Diagnostic and Statistical Manual of Mental Disorders Fourth Edition—Text Revision
DRGs Diagnosis-related groups
FY Federal fiscal year
HCRIS Hospital Cost Report Information System
ICD-9-CM International Classification of Diseases, 9th Revision, Clinical Modification
IPFs Inpatient psychiatric facilities
IRFs Inpatient rehabilitation facilities
LTCHs Long-term care hospitals
MedPAR Medicare provider analysis and review file
MMA Medicare Prescription Drug, Improvement and Modernization Act of 2003, (Pub. L. 108-173)
MSA Metropolitan Statistical Area
NECMA New England County Metropolitan Area
OMB Office of Management and Budget
PIP Periodic Interim Payments
RY Rate Year (July 1 through June 30)
TEFRA Tax Equity and Fiscal Responsibility Act of 1982, (Pub. L. 97-248)
I. Background
A. General and Legislative History
The Congress directed implementation of a prospective payment system (PPS) for acute care hospitals with the enactment of Pub. L. 98-21. Section 601 of the Social Security Amendments of 1983 (Pub. L. 98-21) added a new section 1886(d) to the Social Security Act (the Act) that replaced the reasonable cost-based payment system for most hospital inpatient services with a PPS.
Although most hospital inpatient services became subject to the PPS, certain hospitals, including IPFs, inpatient rehabilitation facilities (IRFs), long term care hospitals (LTCHs), and children's hospitals were excluded from the PPS for acute care hospitals. These hospitals and units were paid their reasonable costs for inpatient services, Start Printed Page 27041subject to a per discharge limitation or target amount under the authority of the Tax Equity and Fiscal Responsibility Act of 1982 (TEFRA), Pub. L. 97-248. The regulations implementing the TEFRA (reasonable cost-based) payment provisions are located at 42 CFR part 413. Cancer hospitals were added to the list of excluded hospitals by section 6004(a) of the Omnibus Budget Reconciliation Act of 1989, (Pub. L. 101-239).
The Congress enacted various provisions in the Balanced Budget Act of 1997 (BBA) (Pub. L. 105-33), the Medicare, Medicaid, and SCHIP (State Children's Health Insurance Program) Balanced Budget Refinement Act of 1999 (BBRA) (Pub. L. 106-113), and the Medicare, Medicaid, and SCHIP Benefits Improvement and Protection Act of 2000 (BIPA) (Pub. L. 106-554) to replace the reasonable cost-based method of reimbursement with a PPS for IRFs, LTCHs, and IPFs. Section 124 of the BBRA required implementation of the IPF PPS.
Section 124 of the BBRA mandated that the Secretary—(1) Develop a per diem PPS for inpatient hospital services furnished in psychiatric hospitals and psychiatric units; (2) include in the PPS an adequate patient classification system that reflects the differences in patient resource use and costs among psychiatric hospitals and psychiatric units; (3) maintain budget neutrality; (4) permit the Secretary to require psychiatric hospitals and psychiatric units to submit information necessary for the development of the PPS; and (5) submit a report to the Congress describing the development of the PPS. Section 124 of the BBRA also required that the IPF PPS be implemented for cost reporting periods beginning on or after October 1, 2002.
Section 405(g)(2) of the Medicare Prescription Drug, Improvement, and Modernization Act of 2003 (MMA) (Pub. L. 108-173) extended the IPF PPS to distinct part psychiatric units of critical access hospitals (CAHs).
To implement these provisions, the following were published: a proposed rule in the Federal Register on November 28, 2003 (68 FR 66920); a final rule on November 15, 2004 (69 FR 66922); and a correction notice to the final rule on April 1, 2005 (70 FR 16724). For more detail, see the program memorandum Web site, http://www.cms.hhs.gov/transmittals/01_overview.asp.
B. Overview of the Establishment of the IPF PPS
The November 2004 IPF PPS final rule established regulations for the IPF PPS under 42 CFR 412, subpart N.
The IPF PPS established the Federal per diem base rate for each patient day in an IPF derived from the national average daily routine operating, ancillary, and capital costs in IPFs in FY 2002. The average per diem cost was updated to the midpoint of the first year under the IPF PPS, standardized to account for the overall positive effects of the IPF PPS payment adjustments, and adjusted for budget neutrality. The Federal per diem payment under the IPF PPS is comprised of the Federal per diem base rate described above and certain patient and facility payment adjustments that were found in the regression analysis to be associated with statistically significant per diem cost differences (see 69 FR 66933 through 66936 for a description of the regression analysis). The patient-level adjustments include age, DRG assignment, comorbidities, and variable per diem adjustments to reflect the higher cost incurred in the early days of a psychiatric stay. Facility-level adjustments include adjustments for the IPF's wage index, rural location, teaching status, a cost of living adjustment for IPFs located in Alaska and Hawaii, and presence of a qualifying emergency department (ED). The IPF PPS provides additional payments for outlier cases, stop-loss protection which is applicable only during the IPF PPS transition period, includes special payment provisions for interrupted stays, and a per treatment adjustment for patients who undergo electroconvulsive therapy (ECT). We refer readers to the November 2004 IPF PPS final rule for a comprehensive discussion of the research and data that supported the establishment of the IPF PPS.
We established a CMS Web site that contains useful information regarding the IPF PPS including the proposed rules, final rules, and the correction notices. The Web site URL is http://www.cms.hhs.gov/InpatientPsychFacilPPS/ and may be accessed to download or view publications and other information pertinent to the IPF PPS.
C. Applicability of the IPF PPS
The IPF PPS is applicable to freestanding psychiatric hospitals, including government-operated psychiatric hospitals, and distinct part psychiatric units of acute care hospitals and CAHs.
The regulations at § 412.402 define an IPF as a hospital that meets the requirements specified in § 412.22, § 412.23(a), § 482.60, § 482.61, and § 482.62, and units that meet the requirements specified in § 412.22, § 412.25, and § 412.27.
However, the following hospitals are paid under a special payment provision, as described in § 412.22(c) and, therefore, are not subject to the IPF PPS rules:
- Veterans Administration hospitals.
- Hospitals that are reimbursed under State cost control systems approved under 42 CFR part 403.
- Hospitals that are reimbursed in accordance with demonstration projects specified in section 402(a) of Pub. L. 90-248 (42 U.S.C. 1395b-1) or section 222(a) of Pub. L. 92-603 (42 U.S.C. 1395b-1(note)).
- Non-participating hospitals furnishing emergency services to Medicare beneficiaries.
II. Overview for Updating the IPF PPS
A. Requirements for Updating the IPF PPS
Section 124 of the BBRA does not specify an update strategy for the IPF PPS and is broadly written to give the Secretary discretion in establishing an update methodology. Therefore, we reviewed the update approach used in other hospital PPSs (specifically, the IRF and LTCH PPS update methodologies). As a result of this analysis, we stated in the November 2004 IPF PPS final rule (69 FR 66966) that we would implement the IPF PPS using the following update strategy—(1) Calculate the final Federal per diem base rate to be budget neutral for the 18-month period (that is, January 1, 2005 through June 30, 2006); (2) use a July 1 through June 30 annual update cycle; and (3) allow the IPF PPS first update to be effective for discharges July 1, 2006 through June 30, 2007.
As explained in the November 2004 IPF PPS final rule, we believe it is important to delay updating the adjustment factors derived from the regression analysis until we have IPF PPS data that include as much information as possible regarding the patient-level characteristics of the population that each IPF serves. For this reason, we do not intend to update the regression analysis and recalculate the Federal per diem base rate until we analyze IPF PPS data (that is, no earlier than FY 2008). Until that analysis is complete, we stated our intention to publish a notice in the Federal Register each spring to update the IPF PPS as specified in § 412.428. Start Printed Page 27042
However, since the implementation of the IPF PPS, a new market basket index was announced in the August 2005 IPPS final rule. We believe that this new market basket should be implemented in the IPF PPS as well in order to update the system using the best data available. Therefore, rather than publish a notice to update the IPF PPS in 2006, we published a proposed rule in the Federal Register on January 23, 2006 (71 FR 3616) to allow interested parties an opportunity to comment on the proposed changes.
Updates to the IPF PPS as specified in § 412.428 include:
- A description of the methodology and data used to calculate the updated Federal per diem base payment amount.
- The rate of increase factor as described in § 412.424(a)(2)(iii), which is based on the excluded hospital with capital market basket under the update methodology of 1886(b)(3)(B)(ii) of the Act for each year.
- The best available hospital wage index and information regarding whether an adjustment to the Federal per diem base rate is needed to maintain budget neutrality.
- Updates to the fixed dollar loss amount in order to maintain the appropriate outlier percentage.
- Describe the ICD-9-CM coding and DRG classification changes discussed in the annual update to the hospital IPPS regulations.
- Update the ECT adjustment by a factor specified by CMS.
B. Transition Period for Implementation of the IPF PPS
In the November 2004 IPF PPS final rule, we established § 412.426 to provide for a 3-year transition period from reasonable cost-based reimbursement to full prospective payment for IPFs. New IPFs, as defined in § 412.426(c), are paid 100 percent of the Federal per diem rate. However, for those IPFs that are transitioning to the new system, during the 3-year period as specified in the November 2004 IPF PPS final rule, payment is based on an increasing percentage of the PPS payment and a decreasing percentage of each IPF's facility-specific TEFRA reimbursement rate. The blend percentages are as follows:
Table 1.—IPF PPS Final Rule Transition Blend Factors
Transition year Cost reporting periods beginning on or after TEFRA rate percentage IPF PPS Federal rate percentage 1 January 1, 2005 75 25 2 January 1, 2006 50 50 3 January 1, 2007 25 75 January 1, 2008 0 100 Changes to the blend percentages occur at the beginning of an IPF's cost reporting period. We note that we are currently in year two of the transition period. As a result, for discharges occurring during IPF cost reporting periods beginning in calendar year (CY) 2006, IPFs would receive a blended payment consisting of 50 percent of the facility-specific TEFRA payment and 50 percent of the IPF PPS payment amount. However, regardless of when an IPF's cost reporting year begins, the payment update will be effective for discharges occurring on or after July 1, 2006 through June 30, 2007. We note that we are not making any changes to the transition approach established in the November 2004 IPF PPS final rule.
III. Provisions of the Proposed Regulation
In January 2006, we published a proposed rule that appeared in the Federal Register at (71 FR 3616), and on February 24, 2006, a correction notice appeared in the Federal Register (71 FR 9505) to correct technical errors in the proposed rule and to extend the comment period for our policy concerning Electroconvulsive Therapy (ECT). The January 2006 proposed rule (hereinafter referred to as the Rate Year (RY) 2007 proposed rule) set forth the proposed annual update to the proposed prospective payment for IPFs for discharges occurring during the RY beginning July 1, 2006. As part of the update, we proposed to incorporate OMB's revised definitions for MSAs and its new definitions of Micropolitan Statistical Areas and Core-Based Statistical Areas (CBSAs). In addition, we proposed the following——
- Update payments for IPFs using a market basket reflecting the operating and capital cost structures of IRFs, IPFs, and LTCHs.
- Develop cost weights for benefits, contract labor, and blood and blood products using the FY 2002-based IPPS market basket.
- Provide weights and proxies for the FY 2002-based RPL market basket.
- Indicate the methodology for the capital portion of the FY 2002-based RPL market basket.
- Update the outlier threshold amount to maintain total estimated outlier payments at 2 percent of total estimated payments.
- Use source code “D” to identify IPF patients who have been transferred to the IPF from the same hospital or CAH.
- Retain the 17 percent adjustment for IPFs located in rural areas, the 1.31 adjustment for IPFs with a qualifying ED, the 0.5150 teaching adjustment to the Federal per diem base rate, and the DRG adjustment factors currently being paid to IPFs for discharges occurring during RY 2007.
- Update the payment rate for ECT.
- Update the DRG listing and comorbidity categories to reflect the ICD-9-CM revisions effective October 1, 2005.
In addition to addressing these issues in the proposed rule for RY 2007, we also proposed making the following specific revisions to the existing text of the regulations. We proposed to make conforming changes in 42 CFR parts 412 and 424, as discussed throughout this preamble.
In § 412.27, we proposed to revise paragraph (b) to remove the reference to recreational therapy.
In § 412.402, we proposed to revise the heading of “Fixed dollar loss-threshold” to “Fixed dollar loss threshold amount” and revise the definitions of “Fixed dollar loss threshold amount”, “Qualifying emergency department”, “Rural area” and “Urban area.” For consistency, we proposed to make conforming changes to these terminologies wherever they appear in the regulations text.
In § 412.424, we proposed to add paragraph (d)(1)(iii)(E) to clarify that the teaching adjustment is made on a claim basis as an interim payment and the final payment in full is made during the final settlement of the cost report. For clarity, we also proposed to revise paragraph (d)(2) introductory text. The current language in (d)(2)(iii) would become the introductory text for paragraph (d)(2) and paragraph Start Printed Page 27043(d)(2)(iii) would be removed. In addition, we proposed to revise § 412.424(d)(3)(i)(A) to clarify that an outlier payment is made if an IPF's estimated total cost for a case exceeds a fixed dollar loss threshold amount plus the Federal payment amount for the case.
In § 412.426(a), we proposed to correct the cross reference to the Federal per diem payment amount. We incorrectly referenced the Federal per diem base rate as § 412.424(c). The correct cross reference to the Federal per diem payment amount is § 412.424(d).
In § 412.428, we proposed to revise paragraph (b) to specify that for discharges occurring on or after January 1, 2005 but before July 1, 2006 the rate of increase factor for the Federal portion of the payment is based on the FY 1997-based excluded hospital with capital market basket and for discharges occurring on or after July 1, 2006, the rate of increase factor for the Federal portion of the payment is based on the FY 2002-based Rehabilitation, Psychiatric, and Long-Term Care (RPL) market basket.
In addition, we proposed to add a new paragraph (g) to state that we would update the national urban and rural cost to charge ratio medians and ceilings. Paragraph (1) through (3) would specify the types of IPFs in which to apply the national cost to charge ratio. Furthermore, we proposed to add a new paragraph (h) to update the cost of living adjustment factors, if appropriate.
In § 424.14, we proposed to revise the title to read, “Requirements for inpatient services of inpatient psychiatric facilities,” to ensure consistency in compliance with the requirements among all IPFs. We also proposed to add a new paragraph (c)(3) to clarify for purposes of payment under the IPF PPS, that the physician would also recertify that the patient continues to need, on a daily basis, active inpatient psychiatric care (furnished directly by or requiring the supervision of inpatient psychiatric facility personnel) or other professional services that can only be provided on an inpatient basis.
In addition, we proposed to revise paragraph (d)(2) to state that the first recertification is required as of the 12th day of hospitalization. Subsequent recertifications would be required at intervals established by the hospital's utilization review committee (on a case-by-case basis if it so chooses), but no less frequently than every 30 days.
IV. Analysis of and Responses to Public Comments
We provided for a 60 day comment period on the RY 2007 proposed rule. The correction notice to correct technical errors that appeared in the RY 2007 proposed rule appeared in the Federal Register on February 24, 2006. The correction notice extended the public comment period on the ECT policy, to allow the public an opportunity to comment on the corrected policy.
We received approximately 32 public comments from hospital associations, psychiatric hospitals and units, and acute care hospitals. In general, commenters expressed some concern about a few of our proposals and suggested that we wait to implement specific updates to the IPF PPS until we can analyze 2005 claims data. A few commenters requested that we provide the provider impact files that are comparable to the files prepared for the Inpatient Prospective Payment System (IPPS). In addition, several commenters requested that we retain the rural adjustment or provide a 3-year hold harmless provision for IPFs that would lose their rural adjustment if we adopted the proposed CBSA definitions. Several commenters supported the proposed changes to the IPF PPS.
Summaries of the public comments received and our responses to those comments are provided in the appropriate sections in the preamble of this final rule.
V. Updates to the IPF PPS for RY Beginning July 1, 2006
The IPF PPS is based on a standardized Federal per diem base rate calculated from IPF average per diem costs and adjusted for budget-neutrality in the implementation year. The Federal per diem base rate is used as the standard payment per day under the IPF PPS and is adjusted by the applicable wage index factor and the patient-level and facility-level adjustments that are applicable to the IPF stay.
The following is an explanation of how we calculated the Federal per diem base rate and the standardization and budget neutrality factors as described in the November 2004 IPF PPS final rule.
A. Calculation of the Average Per Diem Cost
As indicated in the November 2004 IPF PPS final rule, to calculate the Federal per diem base rate, we estimated the average cost per day for— (1) routine services from FY 2002 cost reports (supplemented with FY 2001 cost reports if the FY 2002 cost report was missing); and (2) ancillary services using data from the FY 2002 Medicare claims and corresponding data from facility cost reports.
For routine services, the per diem operating and capital costs were used to develop the average per diem cost amount. The per diem routine costs were obtained from each facility's Medicare cost report. To estimate the costs for routine services included in the Federal per diem base rate calculation, we added the total routine costs (including costs for capital) submitted on the cost report for each provider and divided it by the total Medicare days.
Some average routine costs per day were determined to be aberrant, that is, the costs were extraordinarily high or low and most likely contained data errors. We provided a detailed discussion in the November 2004 IPF PPS final rule (69 FR 66926 through 66927) of the method used to trim extraordinarily high or low cost values from the per diem rate development file in order to improve the accuracy of our results. For ancillary services, we calculated the costs by converting charges from the FY 2002 Medicare claims into costs using facility-specific, cost-center specific cost-to-charge ratios obtained from each provider's applicable cost reports. We matched each provider's departmental cost-to-charge ratios from their Medicare cost report to each charge on their claims reported in the MedPAR file. Multiplying the total charges for each type of ancillary service by the corresponding cost-to-charge ratio provided an estimate of the costs for all ancillary services received by the patient during the stay. We determined the average ancillary amount per day by dividing the total ancillary costs for all stays by the total number of covered Medicare days.
Adding the average ancillary costs per day and the average routine costs per day including capital costs provided the estimated average per diem cost for each patient day of inpatient psychiatric care in FY 2002.
B. Determining the Standardized Budget-Neutral Federal Per Diem Base Rate
Section 124(a)(1) of the BBRA requires that the implementing IPF PPS be budget neutral. In other words, the amount of total payments under the IPF PPS, including any payment adjustments, must be projected to be equal to the amount of total payments that would have been made if the IPF PPS were not implemented. Therefore, in the November 2004 IPF PPS final Start Printed Page 27044rule, we calculated the budget neutrality factor by setting the total estimated IPF PPS payments to be equal to the total estimated payments that would have been made under the TEFRA methodology had the IPF PPS not been implemented.
The November 2004 IPF PPS final rule includes a step-by-step description of the methodology we used to estimate payments under the TEFRA payment system (69 FR 66930). For the IPF PPS methodology, we calculated the final Federal per diem base rate to be budget neutral during the implementation period under the IPF PPS using a July 1 update cycle. Thus, the implementation period for the IPF PPS is the 18-month period January 1, 2005 through June 30, 2006.
We updated the average cost per day to the midpoint of the IPF PPS implementation period (that is, October 1, 2005). We used the most recent projection of the full percentage increase in the 1997-based excluded hospital with capital market basket index for FY 2003 and later in accordance with § 413.40(c)(3)(viii). The updated average cost per day was used in the payment model to establish the budget neutrality adjustment.
Public comments and our responses on changes for determining the standardized budget neutral federal per diem base rate are summarized below.
Comment: We received several comments regarding the determination of the target amount and the temporary caps on the facility-specific TEFRA payments which expired in FY 2002. Specifically, the commenters stated that even though the temporary caps on the facility-specific (TEFRA) payments expired in FY 2002, the capped payment amounts which were used to establish the baseline for budget neutrality purposes, were inflated by the market basket rate for each year until the PPS began in 2005.
The commenters believe that CMS should have used what would have been spent, absent the expired temporary caps inflated using the market basket rate, to establish the baseline rather than capped payments. The commenters stated that using the capped payments could have inappropriately reduced the allowed aggregate spending under the PPS each year.
Response: We are aware that there have been concerns over the method we used for calculating the target amount for cost reporting periods beginning after FY 2002 for those hospitals and units that were subject to the “payment caps” in accordance with section 1886(b)(3)(H) of the Act and regulations at § 413.40(c)(4)(iii). We have addressed this issue several times, but most recently in the FY 2006 IPPS final rule (70 FR 47278 and 70 FR 47464). Specifically, we addressed the issue of whether § 413.40(c)(4)(iii) (specifically paragraph (c)(4)(iii)(A)) continues to apply beyond FY 2002. In that rule, we stated that § 413.40(c)(4)(iii) applies only to cost reporting periods beginning on or after October 1, 1997 through September 30, 2002, for IPFs, IRFs, and LTCHs. In addition, we clarify that once the 75th percentile cap provision in paragraph (c)(4)(iii) of § 413.40 expired, the target amount is then determined based on § 413.40(c)(4)(ii) which states that, “Subject to the provisions of [§ 413.40] paragraph (c)(4)(iii) of this section, for subsequent cost reporting periods, the target amount equals the hospital's target amount for the previous cost reporting period increased by the update factor for the subject cost reporting period” unless the provisions of paragraph (c)(5)(ii) of this section apply. Thus, under the requirements of § 413.40 (c)(4)(ii), in this instance, the previous cost reporting period's target amount would be increased by the applicable update factor to arrive at the target amount for FY 2003. Similarly, for cost reporting periods beginning in years subsequent to FY 2003, we calculate a hospital's target amount by taking its previous year's target amount and updating it by the updated factor for the subject cost reporting period unless the provision of paragraph (c)(5)(ii) of this section apply. We followed the methodology in § 413.40(c)(4)(ii) and therefore our projections of what would have been spent under TEFRA and the budget neutrality adjustment are correct.
Final Rule Action: To clarify, in order to calculate the target amounts for cost reporting periods beginning in FY 2003, our policy is that the target amounts for cost reporting periods beginning in FY 2002 are updated as described in § 413.40(c)(4)(ii). Similarly, for cost reporting periods beginning in years subsequent to FY 2003, we calculate target amounts by taking the previous year's target amount and updating it, consistent with § 413.40(c)(4)(ii).
1. Standardization of the Federal Per Diem Base Rate
In the November 2004 IPF PPS final rule, we standardized the IPF PPS Federal per diem base rate in order to account for the overall positive effects of the IPF PPS payment adjustment factors. To standardize the IPF PPS payments, we compared the IPF PPS payment amounts calculated from the FY 2002 MedPAR file to the projected TEFRA payments from the FY 2002 cost report file updated to the midpoint of the IPF PPS implementation period (that is, October 2005). The standardization factor was calculated by dividing total estimated payments under the TEFRA payment system by estimated payments under the IPF PPS. The standardization factor was calculated to be 0.8367. As a result, in the November 2004 IPF PPS final rule, the $724.43 average cost per day was reduced by 16.33 percent (100 percent minus 83.67 percent).
2. Calculation of the Budget Neutrality Adjustment
To compute the budget neutrality adjustment for the IPF PPS, we separately identified each component of the adjustment, that is, the outlier adjustment, stop-loss adjustment, and behavioral offset.
a. Outlier Adjustment
Since the IPF PPS payment amount for each IPF includes applicable outlier amounts, we reduced the standardized Federal per diem base rate to account for aggregate IPF PPS payments estimated to be made as outlier payments. The appropriate outlier amount was determined by comparing the adjusted prospective payment for the entire stay to the computed cost per case. If costs were above the prospective payment plus the adjusted fixed dollar loss threshold amount, an outlier payment was computed using the applicable risk-sharing percentages (see section VI.D.1 of this final rule). The outlier amount was computed for all stays, and the total outlier amount was added to the final IPF PPS payment. The outlier adjustment was calculated to be 2 percent. As a result, the standardized Federal per diem base rate was reduced by 2 percent to account for projected outlier payments.
b. Stop-Loss Provision Adjustment
As explained in the November 2004 IPF PPS final rule, we provide a stop-loss payment to ensure that an IPF's total PPS payments are no less than a minimum percentage of their TEFRA payment, had the IPF PPS not been implemented. We reduced the standardized Federal per diem base rate by the percentage of aggregate IPF PPS payments estimated to be made for stop-loss payments.
The stop-loss payment amount was determined by comparing aggregate prospective payments that the provider would receive under the IPF PPS to aggregate TEFRA payments that the provider would have otherwise received without implementation of the IPF PPS. If an IPF's aggregate IPF PPS payments are less than 70 percent of its aggregate Start Printed Page 27045payments under TEFRA, a stop-loss payment was computed for that IPF. The stop-loss payment amounts were computed for those IPFs that were projected to receive the payments, and the total amount was added to the final IPF PPS payment amount. As a result, the standardized Federal per diem base rate was reduced by 0.39 percent to account for stop-loss payments.
c. Behavioral Offset
As explained in the November 2004 IPF PPS final rule, implementation of the IPF PPS may result in certain changes in IPF practices especially with respect to coding for comorbid medical conditions. As a result, Medicare may incur higher payments than assumed in our calculations. Accounting for these effects through an adjustment is commonly known as a behavioral offset.
Based on accepted actuarial practices and consistent with the assumptions made in other prospective payment systems, we assumed in determining the behavioral offset that IPFs would regain 15 percent of potential “losses” and augment payment increases by 5 percent. We applied this actuarial assumption, which is based on our historical experience with new payment systems, to the estimated “losses” and “gains” among the IPFs. The behavioral offset for the IPF PPS was calculated to be 2.66 percent. As a result, we reduced the standardized Federal per diem base rate by 2.66 percent to account for behavioral changes.
To summarize, the $724.43 updated average per diem cost was reduced by 16.33 percent to account for standardization to projected TEFRA payments for the implementation period, by 2 percent to account for outlier payments, by 0.39 percent to account for stop-loss payments, and by 2.66 percent reduction to account for the behavioral offset. The final standardized budget-neutral Federal per diem base rate for the IPF PPS implementation year was calculated to be $575.95. We discuss the Federal per diem base rate for RY 2007 below.
Public comments and our responses on the behavioral offset are summarized below.
Comment: Several commenters expressed concern that CMS continues to maintain the behavioral offset which is intended to account for changes in provider practice patterns as a result of movement to prospective payment which could result in higher Medicare payments. A few commenters stated that accurate coding is already a high priority in distinct part units and freestanding facilities. Therefore, coding practices in these facilities should not undergo major changes. The commenters suggested that because the PPS is being phased in, and only 50 percent of the payment in the second year would be based on the IPF PPS, the incentive for behavior change is diminished.
Several commenters recommended that CMS analyze the preliminary 2005 claims data and adjust the calculations for the behavioral offset to maintain IPF spending at appropriate levels. A few commenters expressed concern that CMS did not indicate whether an analysis was conducted to determine if continuing the adjustment for behavioral offset is warranted. They believe the assumptions made for both the proposed RY and the implementation year of the IPF PPS overestimated the likely impact of changes in hospital behavior.
Response: We explained in the November 2004 IPF PPS final rule and the RY 2007 proposed rule that we believe it is reasonable to expect changes in IPFs' practices especially with respect to coding for comorbid medical conditions and changes in length of stay (LOS), as a result of the implementation of the IPF PPS.
In addition, based on accepted actuarial practices and consistent with the assumptions made in implementing other prospective payment systems, we assumed in determining the behavioral offset, that IPFs would regain 15 percent of potential “losses” and augment payment increases by 5 percent. We applied this actuarial assumption, which is based on our historical experience with new payment systems, to the estimated “losses” and “gains” among the IPFs.
As indicated in the RY 2007 proposed rule, we do not plan to change adjustment factors or projections, including the behavioral offset, until we analyze IPF PPS data. At that time, we will re-assess the accuracy of the behavioral offset along with the other factors impacting budget neutrality. We anticipate analyzing 2005 IPF PPS claims and cost report data in the future.
Comment: Several commenters inquired why CMS is continuing to include budget neutrality factors in the Federal per diem base rate (behavioral offset, stop-loss adjustment, and outlier adjustment), effectively lowering the base rate. Since the PPS is only budget neutral for the implementation year, the commenters believe the base rate should not reflect budget neutrality factors that effectively lower the amount.
Response: We acknowledge that the PPS is only budget neutral for the implementation year. The standardization factor, behavioral offset, stop-loss adjustment, and outlier adjustment were included in the 2005 Federal per diem base rate of $575.95. In implementing the RY 2007 final rule, we adjust the standardization factor (see section V.B.3 of this final rule), and apply the market basket update and the wage index budget neutrality factor to the base rate. As indicated above, we do not plan to change any adjustment factors or projections, including the budget neutrality factors (behavioral offset, stop-loss adjustment, and outlier adjustment), until we analyze IPF PPS data. We will revisit all assumptions used to calculate the budget neutrality adjustment and make any necessary prospective changes to the Federal per diem base rate. In section VI.D.3 of this final rule, we address these comments with respect to the calculation of the ECT rate.
Final Rule Action: In summary, for future RYs, we will reassess the appropriateness of the behavior offset along with the other factors impacting budget neutrality. For the RY 2007 IPF PPS, we will continue to adjust the standardization factor and apply the market basket updates and the wage index budget neutrality factors.
3. Revision of the Standardization Factor
In reviewing the methodology used to simulate the IPF PPS payments used for the November 2004 IPF PPS final rule, we discovered that the computer code incorrectly assigned non-teaching status to most teaching facilities. As a result, total IPF PPS payments were underestimated by about 1.36 percent. The underestimated IPF PPS payment total was used in calculating the IPF PPS standardization factor. The standardization factor represents the amount by which the IPF PPS per diem payment rate and the ECT rate must be reduced in order to make total IPF PPS payments equal to estimated total TEFRA payments assuming IPFs continued to be paid solely under TEFRA for the first PPS payment year.
The standardization factor is calculated as the ratio of estimated total TEFRA payments to estimated total IPF PPS payments assuming no reduction to the per diem and ECT payment rates. Since the IPF PPS payment total should have been larger than the estimated figure, the standardization factor should have been smaller (0.8254 vs. 0.8367). In turn, the Federal per diem base rate and the ECT rate should have been reduced by 0.8254 instead of 0.8367.
To resolve this issue, we proposed to amend the Federal per diem base rate and the ECT payment rate prospectively. Using the standardization Start Printed Page 27046factor of 0.8254, the base rate should have been $568.17 for the implementation year of the IPF PPS. It is this base rate that we proposed to update using the market basket rate of increase of 4.3 percent and the budget-neutral wage index factor of 1.0042 (see section VI.C.1.f of this final rule). Applying these factors yields a proposed Federal per diem base rate of $595.09 for the RY beginning July 1, 2006 through June 30, 2007.
Public comments and our responses on the revision of the standardization factor are summarized below.
Comment: One commenter asked whether the overall increase in the base rate is appropriately calculated and sufficient.
Response: As explained above and in the RY 2007 proposed rule, the correction of the standardization factor reveals that last year's per diem rate should have been $568.17, and not $575.95. To correct this error prospectively, we apply the market basket increase of 4.3 percent to $568.17, and then apply the wage index budget neutrality factor to compute the Federal per diem base rate.
Final Rule Action: In summary, we are finalizing our decision to revise the standardization factor prospectively, and the Federal per diem base rate for RY 2007 is $595.09.
C. Update of the Federal Per Diem Base Rate
1. Market Basket for IPFs Reimbursed Under the IPF PPS
a. Market Basket Index for IPF PPS
The market basket index used to develop the IPF PPS is the excluded hospital with capital market basket. This market basket was based on 1997 Medicare cost report data and includes data for Medicare participating IPFs, IRFs, LTCHs, cancer, and children's hospitals.
We are presently unable to create a separate market basket specifically for psychiatric hospitals due to the small number of facilities and the limited data that are provided (for instance, approximately 4 percent of psychiatric facilities reported contract labor cost data for FY 2002). However, since all IRFs, LTCHs, and IPFs are now paid under a PPS, we are updating PPS payments made under the IRF PPS, the LTCH PPS, and the IPF PPS using a market basket reflecting the operating and capital cost structures for IRFs, IPFs, and LTCHs (hereafter referred to as the rehabilitation, psychiatric, long-term care (RPL) market basket). We have excluded children's and cancer hospitals from the RPL market basket because their payments are based entirely on reasonable costs subject to rate-of-increase limits established under the authority of section 1886(b) of the Act, which is implemented in regulations at § 413.40. They are not reimbursed under a PPS. Also, the FY 2002 cost structures for children's and cancer hospitals are noticeably different than the cost structures of the IRFs, IPFs, and LTCHs.
The services offered in IRFs, IPFs, and LTCHs are typically more labor-intensive than those offered in cancer and children's hospitals. Therefore, the compensation cost weights for IRFs, IPFs, and LTCHs are larger than those in cancer and children's hospitals. In addition, the depreciation cost weights for IRFs, IPFs, and LTCHs are noticeably smaller than those for children's and cancer hospitals.
In the following discussion, we provide an overview on the market basket and describe the methodologies we are using for purposes of determining the operating and capital portions of the FY 2002-based RPL market basket.
b. Overview of the RPL Market Basket
The RPL market basket is a fixed weight, Laspeyres-type price index that was constructed in three steps. First, a base period was selected (in this case, FY 2002) and total base period expenditures were estimated for a set of mutually exclusive and exhaustive spending categories based upon type of expenditure. Then the proportion of total costs that each category represents was determined. These proportions are called cost or expenditure weights. Second, each expenditure category was matched to an appropriate price or wage variable, referred to as a price proxy. In nearly every instance, these price proxies are price levels derived from publicly available statistical series that are published on a consistent schedule, preferably at least on a quarterly basis.
Finally, the expenditure weight for each cost category was multiplied by the level of its respective price proxy for a given period. The sum of these products (that is, the expenditure weights multiplied by their price levels) for all cost categories yields the composite index level of the market basket in a given period. Repeating this step for other periods produces a series of market basket levels over time. Dividing an index level for a given period by an index level for an earlier period produces a rate of growth in the input price index over that time period.
A market basket is described as a fixed-weight index because it answers the question of how much it would cost, at another time, to purchase the same mix of goods and services purchased to provide hospital services in a base period. The effects on total expenditures resulting from changes in the quantity or mix of goods and services (intensity) purchased subsequent to the base period are not measured. In this manner, the market basket measures only pure price change. Only when the index is rebased would the quantity and intensity effects be captured in the cost weights. Therefore, we rebase the market basket periodically so that cost weights reflect changes in the mix of goods and services that hospitals purchase (hospital inputs) to furnish patient care between base periods.
The terms rebasing and revising, while often used interchangeably, actually denote different activities. Rebasing means moving the base year for the structure of costs of an input price index (for example, shifting the base year cost structure from FY 1997 to FY 2002). Revising means changing data sources, methodology, or price proxies used in the input price index. We have rebased and revised the market basket used to update the IPF PPS.
2. Methodology for Operating Portion of the RPL Market Basket
The operating portion of the FY 2002-based RPL market basket consists of several major cost categories derived from the FY 2002 Medicare cost reports for IRFs, IPFs, and LTCHs: wages, drugs, professional liability insurance, and a residual. We chose to use FY 2002 as the base year because we believe this is the most recent, complete year of Medicare cost reports. Due to insufficient Medicare cost report data for IRFs, IPFs, and LTCHs, we have developed cost weights for benefits, contract labor, and blood and blood products using the FY 2002-based IPPS market basket (70 FR 23384), which we explain in more detail later in this section. For example, less than 30 percent of IRFs, IPFs, and LTCHs reported benefit cost data in FY 2002. We have noticed an increase in cost data for these expense categories over the last 4 years. The next time we rebase the RPL market basket there may be sufficient IRF, IPF, and LTCH cost report data to develop the weights for these expenditure categories.
Since the cost weights for the RPL market basket are based on facility costs, as proposed and for this final rule, we are limiting our sample to hospitals with a Medicare average LOS within a comparable range of the total facility average LOS. We believe this provides a more accurate reflection of the structure of costs for Medicare covered Start Printed Page 27047days. Our goal is to measure cost shares that are reflective of case mix and practice patterns associated with providing services to Medicare beneficiaries.
As proposed and for this final rule, we are using those cost reports for IRFs and LTCHs whose Medicare average LOS is within 15 percent (that is, 15 percent higher or lower) of the total facility average LOS for the hospital. This is the same edit applied to the FY 1992-based and FY 1997-based excluded hospital with capital market basket. We are using 15 percent because it includes those LTCHs and IRFs whose Medicare LOS is within approximately 5 days of the facility LOS.
As proposed and for this final rule, we use a less stringent measure of Medicare LOS for IPFs whose average LOS is within 30 or 50 percent (depending on the total facility average LOS) of the total facility average LOS. Using this less stringent edit allows us to increase our sample size by over 150 cost reports and produce a cost weight more consistent with the overall facility. The edit we applied to IPFs when developing the FY 1997-based excluded hospital with capital market basket was based on the best available data at the time.
Public comments and our responses on the proposed changes for implementing the methodology for the operating portion of the RPL market basket are summarized below.
Comment: One commenter disagreed with our proposed LOS methodology, which included those cost reports for IRFs and LTCHs whose Medicare average LOS is within 15 percent (that is, 15 percent higher or lower) of the total facility average LOS and those cost reports for IPFs whose average LOS is within 30 or 50 percent (depending on the total facility average LOS) of the total facility average LOS.
A commenter stated that the LOS methodology appears to factor into the calculation a disproportionate share of psychiatric facilities with a longer LOS. In addition, the commenter indicated that the RY 2007 proposed rule stated that costs decrease further into a patient's stay and that CMS assumes that IPFs have an incompatible cost per discharge when grouped with the lower LOS in the IRFs and LTCHs.
Response: As stated previously, since the cost weights for the RPL market basket are based on facility costs, we limited our sample to hospitals with a Medicare average LOS within a comparable range of the total facility average LOS. We believe this provides a more accurate reflection of the structure of costs for Medicare treatments.
We disagree with the commenter that the IPF LOS edit includes a disproportionate share of IPFs with a longer LOS. For clarity, we are providing below a table that compares the distribution of the Medicare and facility LOSs for IPFs using no edit and the proposed 30/50 edit.
Table 2.—IPFs FY 2002 Medicare and Facility LOS Distributions
Medicare length of stay Facility length of stay No trim 30/50 trim No trim 30/50 trim 100% Max 93 70 5334 75 99% 86 54 822 63 95% 59 36 333 39 90% 49 23 227 26 75% Q3 28 15 57 15 50% Median 13 11 13 10 25% Q1 10 9 8 8 10% 8 7 6 6 5% 7 7 6 5 1% 4 5 5 5 0% Min 1 3 1 3 The Medicare and facility LOS distributions are consistent when the proposed edit is applied. However, not applying the edit would include in the market basket those IPFs whose facility LOS are dramatically different from their Medicare LOS. In addition, the Medicare LOS distribution with the 30/50 edit is similar to the Medicare LOS distribution with no edit. Therefore, we believe that the proposed edit does not include a disproportionate share of IPFs with a longer LOS in the market basket.
Applying these LOS edits left us with a sample of hospitals whose average Medicare utilization was approximately 50 percent, while those excluded from the market basket had a Medicare utilization of approximately 10 percent. Given this, we firmly believe that these LOS edits help us meet our goal to measure cost shares that are reflective of case mix and practice patterns associated with providing services to Medicare beneficiaries.
The detailed cost categories under the residual (that is, the remaining portion of the market basket after excluding wages and salaries, drugs, and professional liability cost weights) are derived from the FY 2002-based IPPS market basket and the 1997 Benchmark Input-Output (I-O) Tables published by the Bureau of Economic Analysis, U.S. Department of Commerce. The FY 2002-based IPPS market basket was developed using FY 2002 Medicare hospital cost reports with the most recent and detailed cost data (see the August 12, 2005 IPPS final rule (70 FR 47388)). The 1997 Benchmark I-O is the most recent, comprehensive source of cost data for all hospitals. The RPL cost weights for benefits, contract labor, and blood and blood products were derived using the FY 2002-based IPPS market basket. For example, the ratio of the benefit cost weight to the wages and salaries cost weight in the FY 2002-based IPPS market basket was applied to the RPL wages and salaries cost weight to derive a benefit cost weight for the RPL market basket. As proposed and for this final rule, the remaining RPL operating cost categories were derived using the 1997 Benchmark I-O Tables, aged to 2002 using relative price changes. (The methodology we used to age the data involves applying the annual price changes from the price proxies to the appropriate cost categories. We repeated this practice for each year.) Therefore, using this methodology, roughly 59 percent of the RPL market basket was accounted for by wages, drugs, and professional liability insurance data from FY 2002 Medicare cost report data for IRFs, LTCHs, and IPFs.
Additional comments and our responses on the methodology for Start Printed Page 27048operating portion of the RPL market basket are summarized below.
Comment: Several commenters proposed that CMS regularly re-analyze the RPL cost report data, which are the basis of the RPL market basket. The commenters indicated that the methodology used for the RPL market basket includes data from the IPPS hospital market basket rather than relying solely on IPF, IRF, and LTCH data.
The commenters recommended that CMS work with providers to improve the cost reports from rehabilitation, psychiatric, and LTCHs in order to ensure that the data used for the market basket represent only the types of excluded hospitals for which the RPL market basket was developed. The commenters believe that improving the data reported on the RPL cost reports would not only refine the RPL market basket but also improve the accuracy of the labor-related share to which the wage index is applied.
Response: We rely on the IPPS cost report data to supplement the IRF, IPF, and LTCH Medicare cost report data for benefits, contract labor, and blood and blood products. For example, the ratio of the benefit cost weight to the wages and salaries cost weight in the FY 2002-based IPPS market basket was applied to the RPL wages and salaries cost weight to derive a benefit cost weight for the RPL market basket. We did not use expenditure levels from the IPPS data directly but, as explained, we developed and used the ratios from IPPS data to determine these RPL cost weights.
The wages and salaries cost weight was derived using the IRF, IPF, and LTCH Medicare cost reports and accounts for 50 percent of the RPL market basket. Due to data limitations, this was the best methodology for developing the latter cost weights.
We agree with the commenters that improving the data reported on the RPL cost reports could improve the RPL market basket and labor-related share. We have noticed this data improvement on other provider-type cost reports and encourage IRF, IPF, and LTCH providers to fully complete their cost reports. We believe that this would help us develop the most complete and accurate market basket possible. We will analyze RPL cost report data on a regular basis and continue to consider the possibility of provider-specific market basket indices.
Comment: One commenter requested that CMS explain how it computes cost category weights based on Medicare cost report data. The commenter stated that if they understood which data elements were used and how they were used, CMS could develop educational programs to improve their member hospitals' reporting.
Response: The RPL market basket cost weights are based on freestanding Medicare cost report data for IRFs, IPFs, and LTCHs. We mainly rely on data from worksheets A through G to derive the cost weights. Worksheet S-3, part II is the only worksheet which allows for the reporting of benefits and contract labor data; however, it is not a required worksheet for IRFs, IPFs, and LTCHs. As stated previously, we relied on the IPPS Medicare cost report worksheet S-3, part II data to derive the relationships for benefits and contract labor to wages and salaries.
Additionally, capital cost weights are derived using worksheet A-7. The estimates generated using this worksheet, as well as worksheet G, could be enhanced with higher reporting rates. Again, we encourage IRF, IPF, and LTCH providers to fully complete their cost reports to help us in developing the most complete and accurate market basket.
Table 3 below sets forth the complete 2002-based RPL market basket including cost categories, weights, and price proxies. For comparison purposes, the corresponding FY 1997-based excluded hospital with capital market basket is listed as well.
As proposed and for this final rule, wages and salaries are 52.895 percent of total costs in the FY 2002-based RPL market basket compared to 47.335 percent for the FY 1997-based excluded hospital with capital market basket. Employee benefits are 12.982 percent in the FY 2002-based RPL market basket compared to 10.244 percent for the FY 1997-based excluded hospital with capital market basket. As a result, compensation costs (wages and salaries plus employee benefits) for the FY 2002-based RPL market basket are 65.877 percent of costs compared to 57.579 percent for the FY 1997-based excluded hospital with capital market basket. Of the 8 percentage-point difference between the compensation shares, approximately 3 percentage points were due to the new base year (FY 2002 instead of FY 1997), 3 percentage points were due to the revised LOS edit, and the remaining 2 percentage points were due to the exclusion of other hospitals (that is, only including IPFs, IRFs, and LTCHs in the market basket).
Following the table is a summary outlining the choice of the proxies we chose to use for the operating portion of the market basket. The price proxies for the capital portion are described in more detail in the capital methodology section (see section V.C.3 of this final rule).
Table 3.—FY 2002-Based RPL Market Basket Cost Categories, Weights, and Proxies With FY 1997-Based Excluded Hospital With Capital Market Basket Used for Comparison
Expense categories FY 1997-based excluded hospital with capital market basket FY 2002-based RPL market basket FY 2002 market basket price proxies Total 100.000 100.000 Compensation 57.579 65.877 Wages and Salaries * 47.335 52.895 ECI—Wages and Salaries, Civilian Hospital Workers. Employee Benefits * 10.244 12.982 ECI—Benefits, Civilian Hospital Workers. Professional Fees, Non-Medical 4.423 2.892 ECI—Compensation for Professional, Specialty & Technical Workers. Utilities 1.180 0.656 Electricity 0.726 0.351 PPI—Commercial Electric Power. Fuel Oil, Coal, etc 0.248 0.108 PPI—Commercial Natural Gas. Water and Sewage 0.206 0.197 CPI-U—Water & Sewage Maintenance. Professional Liability Insurance 0.733 1.161 CMS Professional Liability Premium Index. All Other Products and Services 27.117 19.265 All Other Products 17.914 13.323 Pharmaceuticals 6.318 5.103 PPI Prescription Drugs. Food: Direct Purchase 1.122 0.873 PPI Processed Foods & Feeds. Food: Contract Service 1.043 0.620 CPI U Food Away From Home. Start Printed Page 27049 Chemicals 2.133 1.100 PPI Industrial Chemicals. Blood and Blood Products ** 0.748 Medical Instruments 1.795 1.014 PPI Medical Instruments & Equipment. Photographic Supplies 0.167 0.096 PPI Photographic Supplies. Rubber and Plastics 1.366 1.052 PPI Rubber & Plastic Products. Paper Products 1.110 1.000 PPI Converted Paper & Paperboard Products. Apparel 0.478 0.207 PPI Apparel. Machinery and Equipment 0.852 0.297 PPI Machinery & Equipment. Miscellaneous Products 0.783 1.963 PPI Finished Goods less Food & Energy. All Other Services 9.203 5.942 Telephone 0.348 0.240 CPI-U Telephone Services. Postage 0.702 0.682 CPI-U Postage. All Other: Labor Intensive 4.453 2.219 ECI-Compensation for Private Service Occupations. All Other: Non-labor Intensive 3.700 2.800 CPI-U All Items. Capital-Related Costs 8.968 10.149 Depreciation 5.586 6.186 Fixed Assets 3.503 4.250 Boeckh Institutional Construction 23-year useful life. Movable Equipment 2.083 1.937 WPI Machinery & Equipment 11-year useful life. Interest Costs 2.682 2.775 Nonprofit 2.280 2.081 Average yield on domestic municipal bonds (Bond Buyer 20 bonds) vintage-weighted (23 years). For Profit 0.402 0.694 Average yield on Moody's Aaa bonds vintage weighted (23 years). Other Capital-Related Costs 0.699 1.187 CPI-U Residential Rent. * Labor-related ** Blood and blood-related products is included in miscellaneous products Note: Due to rounding, weights may not sum to total. Below we provide the proxies that we are using for the FY 2002-based RPL market basket. With the exception of the Professional Liability proxy, all the price proxies for the operating portion of the RPL market basket are based on Bureau of Labor Statistics (BLS) data and are grouped into one of the following BLS categories:
- Producer Price Indexes—Producer Price Indexes (PPIs) measure price changes for goods sold in other than retail markets. PPIs are preferable price proxies for goods that hospitals purchase as inputs in producing their outputs because the PPIs would better reflect the prices faced by hospitals. For example, we use a special PPI for prescription drugs, rather than the Consumer Price Index (CPI) for prescription drugs because hospitals generally purchase drugs directly from the wholesaler. The PPIs that we use measure price change at the final stage of production.
- Consumer Price Indexes—Consumer Price Indexes (CPIs) measure change in the prices of final goods and services bought by the typical consumer. Because they may not represent the price faced by a producer, we use CPIs only if an appropriate PPI were not available, or if the expenditures were more similar to those of retail consumers in general rather than purchases at the wholesale level. For example, the CPI for food purchases away from home is used as a proxy for contracted food services.
- Employment Cost Indexes—Employment Cost Indexes (ECIs) measure the rate of change in employee wage rates and employer costs for employee benefits per hour worked. These indexes are fixed-weight indexes and strictly measure the change in wage rates and employee benefits per hour. Appropriately, they are not affected by shifts in employment mix.
We evaluated the price proxies using the criteria of reliability, timeliness, availability, and relevance. Reliability indicates that the index is based on valid statistical methods and has low sampling variability. Timeliness implies that the proxy is published regularly, preferably at least once a quarter. Availability means that the proxy is publicly available. Finally, relevance means that the proxy is applicable and representative of the cost category weight to which it is applied. The CPIs, PPIs, and ECIs in this regulation meet these criteria.
We note that the proxies are the same as those used for the FY 1997-based excluded hospital with capital market basket. Because these proxies meet our criteria of reliability, timeliness, availability, and relevance, we believe they continue to be the best measure of price changes for the cost categories. For further discussion on the FY 1997-based excluded hospital with capital market basket, see the August 1, 2002 IPPS final rule (67 FR at 50042).
Wages and Salaries
For measuring the price growth of wages in the FY 2002-based RPL market basket, we are using the ECI for wages and salaries for civilian hospital workers as the proxy for wages in the RPL market basket.
The rehabilitation, psychiatric, and long-term care hospital (RPL) market basket uses the Bureau of Labor Statistics' Employment Cost Indexes (ECIs) as proxies for wages and salaries, and benefits for civilian industry workers classified in the Standard Industrial Code (SIC) 806, Hospitals. However, beginning April 28, 2006 with the publication of March 2006 data, the ECIs will be converted from the SIC system to the North American Industrial Classification System (NAICS). The NAICS-based ECI for hospitals (NAICS 622) is similar (at least 90 percent identical) to the SIC-based ECI for hospitals. Therefore, when they are available, we will use the NAICS-based ECIs for hospitals as proxies to reflect the rate-of-price change for the wages Start Printed Page 27050and salaries and employee benefits cost categories in the 2002-based RPL market basket.
The RPL market basket and labor-related share in this final rule will use the most recent data available from the Bureau of Labor Statistics. We do not expect the RPL market basket and labor-related share to change significantly when the conversion from the SIC system to the NAICS system takes place.
Employee Benefits
The FY 2002-based RPL market basket uses the ECI for employee benefits for civilian hospital workers.
Nonmedical Professional Fees
The ECI for compensation for professional and technical workers in private industry is applied to this category since it includes occupations such as management and consulting, legal, accounting, and engineering services.
Fuel, Oil, and Gasoline
The percentage change in the price of gas fuels as measured by the PPI (Commodity Code #0552) is applied to this component.
Electricity
The percentage change in the price of commercial electric power as measured by the PPI (Commodity Code #0542) is applied to this component.
Water and Sewerage
The percentage change in the price of water and sewage maintenance as measured by the Consumer Price Index (CPI) for all urban consumers (CPI Code #CUUR0000SEHG01) is applied to this component.
Professional Liability Insurance
The FY 2002-based RPL market basket uses the percentage change in hospital professional liability insurance (PLI) premiums as estimated by the CMS Hospital Professional Liability Index for the proxy of this category. In the FY 1997-based excluded hospital with capital market basket, the same proxy was used.
We continue to research options for improving our proxy for professional liability insurance. This research includes exploring various options for expanding our current survey, including the identification of another entity that would be willing to work with us to collect more complete and comprehensive data. We are also exploring other options such as third party or industry data that might assist us in creating a more precise measure of PLI premiums. At this time we have not identified a preferred option, therefore no change is made for the proxy in this final rule.
Pharmaceuticals
The percentage change in the price of prescription drugs as measured by the PPI (PPI Code #PPI32541DRX) is used as a proxy for this cost category. This is a special index produced by BLS as a proxy in the 1997-based excluded hospital with capital market basket.
Food, Direct Purchases
The percentage change in the price of processed foods and feeds as measured by the PPI (Commodity Code #02) is applied to this component.
Food, Contract Service
The percentage change in the price of food purchased away from home as measured by the CPI for all urban consumers (CPI Code #CUUR0000SEFV) is applied to this component.
Chemicals
The percentage change in the price of industrial chemical products as measured by the PPI (Commodity Code #061) is applied to this component. While the chemicals hospitals purchase include industrial as well as other types of chemicals, the industrial chemicals component constitutes the largest proportion by far. Thus we believe that Commodity Code #061 is the appropriate proxy.
Medical Instruments
The percentage change in the price of medical and surgical instruments as measured by the PPI (Commodity Code #1562) is applied to this component.
Photographic Supplies
The percentage change in the price of photographic supplies as measured by the PPI Commodity Code #1542) is applied to this component.
Rubber and Plastics
The percentage change in the price of rubber and plastic products as measured by the PPI (Commodity Code #07) is applied to this component.
Paper Products
The percentage change in the price of converted paper and paperboard products as measured by the PPI (Commodity Code #0915) is applied to this component.
Apparel
The percentage change in the price of apparel as measured by the PPI (Commodity Code #381) is applied to this component.
Machinery and Equipment
The percentage change in the price of machinery and equipment as measured by the PPI (Commodity Code #11) is applied to this component.
Miscellaneous Products
The percentage change in the price of all finished goods less food and energy as measured by the PPI (Commodity Code #SOP3500) is applied to this component. Using this index removes the double-counting of food and energy prices, which are captured elsewhere in the market basket. The weight for this cost category is higher, in part, than in the 1997-based index because the weight for blood and blood products (1.188) is added to it. In the 1997-based excluded hospital with capital market basket, we included a separate cost category for blood and blood products, using the BLS PPI for blood and derivatives as a price proxy. A review of recent trends in the PPI for blood and derivatives suggests that its movements may not be consistent with the trends in blood costs faced by hospitals. While this proxy did not match exactly with the product hospitals are buying, its trend over time appears to be reflective of the historical price changes of blood purchased by hospitals. However, an apparent divergence over recent years led us to reevaluate whether the PPI for blood and derivatives was an appropriate measure of the changing price of blood. We ran test market baskets classifying blood in three separate cost categories: Blood and blood products, contained within chemicals as was done for the 1992-based excluded hospital with capital market basket, and within miscellaneous products. These categories use as proxies the following PPIs: The PPI for blood and blood products, the PPI for chemicals, and the PPI for finished goods less food and energy, respectively. Of these three proxies, the PPI for finished goods less food and energy moved most like the recent blood cost and price trends. In addition, the impact on the overall market basket by using different proxies for blood was negligible, mostly due to the relatively small weight for blood in the market basket.
Therefore, as proposed and for this final rule, we are using the PPI for finished goods less food and energy for the blood proxy because we believe it more appropriately proxies the price changes (not quantities or required tests) associated with blood purchased by hospitals. We will continue to evaluate this proxy for its appropriateness and will explore the development of Start Printed Page 27051alternative price indexes to proxy the price changes associated with this cost.
Telephone
The percentage change in the price of telephone services as measured by the CPI for all urban consumers (CPI Code #CUUR0000SEED) is applied to this component.
Postage
The percentage change in the price of postage as measured by the CPI for all urban consumers (CPI Code # CUUR0000SEEC01) is applied to this component.
All Other Services, Labor Intensive
The percentage change in the ECI for compensation paid to service workers employed in private industry is applied to this component.
All Other Services, Nonlabor Intensive
The percentage change in the all items component of the CPI for all urban consumers (CPI Code # CUUR0000SA0) is applied to this component.
3. Methodology for Capital Portion of the RPL Market Basket
Unlike for the operating costs of the FY 2002-based RPL market basket, we did not have IRF, IPF, and LTCH FY 2002 Medicare cost report data for the capital cost weights, due to a change in the FY 2002 reporting requirements. Rather, as proposed and for this final rule, we are using these hospitals' expenditure data for the capital cost categories of depreciation, interest, and other capital expenses for FY 2001, and aged the data to a FY 2002 base year using relevant price proxies.
We calculated weights for the RPL market basket capital costs using the same set of Medicare cost reports used to develop the operating share for IRFs, IPFS, and LTCHs. The resulting capital weight for the FY 2002 base year is 10.149 percent. This is based on FY 2001 Medicare cost report data for IRFs, IPFs, and LTCHs, aged to FY 2002 using relevant price proxies.
Lease expenses are not a separate cost category in the market basket, but are distributed among the cost categories of depreciation, interest, and other, reflecting the assumption that the underlying cost structure of leases is similar to capital costs in general. We assumed 10 percent of lease expenses were overhead and assigned them to the other capital expenses cost category as overhead. We base this assignment of 10 percent of lease expenses to overhead on the common assumption that overhead is 10 percent of costs. The remaining lease expenses were distributed to the three cost categories based on the weights of depreciation, interest, and other capital expenses not including lease expenses.
Depreciation contains two subcategories: Building and fixed equipment and movable equipment. As proposed and for this final rule, the split between building and fixed equipment and movable equipment was determined using the FY 2001 Medicare cost reports for IRFs, IPFs, and LTCHs. This methodology was also used to compute the 1997-based index (67 FR at 50044).
As proposed and for this final rule, the total interest expense cost category is split between the government/nonprofit and for-profit hospitals. The 1997-based excluded hospital with capital market basket allocated 85 percent of the total interest cost weight to the government nonprofit interest, proxies by average yield on domestic municipal bonds, and 15 percent to for-profit interest, proxies by average yield on Moody's Aaa bonds.
We derived the split using the relative FY 2001 Medicare cost report data for PPS hospitals on interest expenses for the government/nonprofit and for-profit hospitals. Due to insufficient Medicare cost report data for IPFs, IRFs, and LTCHs, as proposed and for this final rule, we use the same split used in the IPPS capital input price index. We believe it is important that this split reflect the latest relative cost structure of interest expenses for hospitals and, therefore, we have used a 75-25 split to allocate interest expenses to government/nonprofit and for-profit (70 FR at 47408).
Since capital is acquired and paid for over time, capital expenses in any given year are determined by both past and present purchases of physical and financial capital. The vintage-weighted capital index is intended to capture the long-term consumption of capital, using vintage weights for depreciation (physical capital) and interest (financial capital). These vintage weights reflect the purchase patterns of building and fixed equipment and movable equipment over time. Depreciation and interest expenses were determined by the amount of past and current capital purchases. Therefore, as proposed and for this final rule, we are using the vintage weights to compute vintage-weighted price changes associated with depreciation and interest expense.
Vintage weights are an integral part of the FY 2002-based RPL market basket. Capital costs are inherently complicated and are determined by complex capital purchasing decisions, over time, based on such factors as interest rates and debt financing. In addition, capital is depreciated over time instead of being consumed in the same period it is purchased. The capital portion of the FY 2002-based RPL market basket reflects the annual price changes associated with capital costs, and is a useful simplification of the actual capital investment process. By accounting for the vintage nature of capital, we have provided an accurate, stable annual measure of price changes. Annual non-vintage price changes for capital are unstable due to the volatility of interest rate changes and, therefore, do not reflect the actual annual price changes for Medicare capital-related costs. The capital component of the FY 2002-based RPL market basket reflects the underlying stability of the capital acquisition process and provides hospitals with the ability to plan for changes in capital payments.
To calculate the vintage weights for depreciation and interest expenses, we needed a time series of capital purchases for building and fixed equipment and movable equipment. We found no single source that provides the best time series of capital purchases by hospitals for all of the above components of capital purchases. The early Medicare Cost Reports did not have sufficient capital data to meet this need. While the American Hospital Association (AHA) Panel Survey provided a consistent database back to 1963, it did not provide annual capital purchases. However, the AHA Panel Survey provided a time series of depreciation expenses through 1997 which could be used to infer capital purchases over time. From 1998 to 2001, hospital depreciation expenses were calculated by multiplying the AHA Annual Survey total hospital expenses by the ratio of depreciation to total hospital expenses from the Medicare cost reports. Beginning in 2001, the AHA Annual Survey began collecting depreciation expenses. We hope to be able to use these data in future rebasings.
In order to estimate capital purchases from AHA data on depreciation and interest expenses, the expected life for each cost category (building and fixed equipment, movable equipment, and debt instruments) is needed. Due to insufficient Medicare cost report data for IPFs, IRFs, and LTCHs, as proposed and for this final rule, we are using FY 2001 Medicare Cost Reports for IPPS hospitals to determine the expected life of building and fixed equipment and movable equipment. We believe this data source reflects the latest relative cost structure of depreciation expenses for hospitals and is analogous to IPFs, Start Printed Page 27052IRFs, and LTCHs. The expected life of any piece of equipment was determined by dividing the value of the asset (excluding fully depreciated assets) by its current year depreciation amount. This calculation yields the estimated useful life of an asset if depreciation were to continue at current year levels, assuming straight-line depreciation. From the FY 2001 Medicare cost reports for IPPS hospitals the expected life of building and fixed equipment was determined to be 23 years, and the expected life of movable equipment was determined to be 11 years.
As proposed and for this final rule, we are also using the fixed and movable weights derived from FY 2001 Medicare cost reports for IPFs, IRFs, and LTCHs to separate the depreciation expenses into annual amounts of building and fixed equipment depreciation and movable equipment depreciation. By multiplying the annual depreciation amounts by the expected life calculations from the FY 2001 Medicare cost reports, year-end asset costs for building and fixed equipment and movable equipment were determined. We then calculated a time series back to 1963 of annual capital purchases by subtracting the previous year asset costs from the current year asset costs. From this capital purchase time series we were able to calculate the vintage weights for building and fixed equipment, movable equipment, and debt instruments. An explanation of each of these sets of vintage weights follows.
As proposed and for this final rule, for building and fixed equipment vintage weights, the real annual capital purchase amounts for building and fixed equipment derived from the AHA Panel Survey were used. The real annual purchase amount was used to capture the actual amount of the physical acquisition, net of the effect of price inflation. This real annual purchase amount for building and fixed equipment was produced by deflating the nominal annual purchase amount by the building and fixed equipment price proxy, the Boeckh Institutional Construction Index. This is the same proxy used for the FY 1997-based excluded hospital with capital market basket. We believe this proxy continues to meet our criteria of reliability, timeliness, availability, and relevance. Since building and fixed equipment has an expected life of 23 years, the vintage weights for building and fixed equipment are deemed to represent the average purchase pattern of building and fixed equipment over 23-year periods. With real building and fixed equipment purchase estimates back to 1963, sixteen 23-year periods were averaged to determine the average vintage weights for building and fixed equipment that are representative of average building and fixed equipment purchase patterns over time. Vintage weights for each 23-year period were calculated by dividing the real building and fixed capital purchase amount in any given year by the total amount of purchases in the 23-year period. This calculation was done for each year in the 23-year period, and for each of the sixteen 23-year periods. The average of each year across the sixteen 23-year periods was used to determine the 2002 average building and fixed equipment vintage weights.
As proposed and for this final rule, for movable equipment vintage weights, the real annual capital purchase amounts for movable equipment derived from the AHA Panel Survey were used to capture the actual amount of the physical acquisition, net of price inflation. This real annual purchase amount for movable equipment was calculated by deflating the nominal annual purchase amount by the movable equipment price proxy, the PPI for Machinery and Equipment. This was the same proxy used for the FY 1997-based excluded hospital with capital market basket. We believe this proxy, which meets our criteria, is the best measure of price changes for this cost category. Since movable equipment has an expected life of 11 years, the vintage weights for movable equipment were deemed to represent the average purchase pattern of movable equipment over an 11-year period. With real movable equipment purchase estimates available back to 1963, twenty-eight 11-year periods could be averaged to determine the average vintage weights for movable equipment that are representative of average movable equipment purchase patterns over time. Vintage weights for each 11-year period were calculated by dividing the real movable capital purchase amount for any given year by the total amount of purchases in the 11-year period. This calculation was done for each year in the 11-year period, and for each of the twenty-eight 11-year periods. The average of the twenty-eight 11-year periods were used to determine the FY 2002 average movable equipment vintage weights.
As proposed and for this final rule, for interest vintage weights, the nominal annual capital purchase amounts for total equipment (building and fixed and movable) derived from the AHA Panel and Annual Surveys were used. Nominal annual purchase amounts were used to capture the value of the debt instrument. Since hospital debt instruments have an expected life of 23 years, the vintage weights for interest were deemed to represent the average purchase pattern of total equipment over 23-year periods. With nominal total equipment purchase estimates available back to 1963, sixteen 23-year periods were averaged to determine the average vintage weights for interest that are representative of average capital purchase patterns over time. Vintage weights for each 23-year period were calculated by dividing the nominal total capital purchase amount for any given year by the total amount of purchases in the 23-year period. This calculation was done for each year in the 23-year period and for each of the sixteen 23-year periods. The average of the sixteen 23-year periods were used to determine the FY 2002 average interest vintage weights. The vintage weights for the index are presented in Table 4 below.
In addition to the price proxies for depreciation and interest costs described above in the vintage weighted capital section, as proposed and for this final rule, we used the CPI-U for Residential Rent as a price proxy for other capital-related costs. The price proxies for each of the capital cost categories are the same as those used for the IPPS final rule (67 FR at 50044) capital input price index.
Table 4.—CMS FY 2002-Based RPL market basket capital vintage weights
Year Fixed assets (23 year weights) Movable assets (11 year weights) Interest: capital- related (23 year weights) 1 0.021 0.065 0.010 2 0.022 0.071 0.012 3 0.025 0.077 0.014 4 0.027 0.082 0.016 Start Printed Page 27053 5 0.029 0.086 0.019 6 0.031 0.091 0.023 7 0.033 0.095 0.026 8 0.035 0.100 0.029 9 0.038 0.106 0.033 10 0.040 0.112 0.036 11 0.042 0.117 0.039 12 0.045 0.043 13 0.047 0.048 14 0.049 0.053 15 0.051 0.056 16 0.053 0.059 17 0.056 0.062 18 0.057 0.064 19 0.058 0.066 20 0.060 0.070 21 0.060 0.071 22 0.061 0.074 23 0.061 0.076 Total 1.000 1.000 1.000 The RY (that is, beginning July 1, 2006) update for the IPF PPS using the FY 2002-based RPL market basket and Global Insight's 1st quarter 2006 forecast is 4.3 percent. This includes increases in both the operating section and the capital section for the 18-month period (that is, January 1, 2005 through June 30, 2006). Global Insight, Inc. is a nationally recognized economic and financial forecasting firm that contracts with CMS to forecast the components of the market baskets. Using the current FY 1997-based excluded hospital with capital market basket (66 FR 41427), Global Insight's 1st quarter 2006 forecast for the RY beginning July 1, 2006 is 3.4 percent. Table 5 below compares the RY 2002-based RPL market basket and the FY 1997-based excluded hospital with capital market basket percent changes. For both the historical and forecasted periods between RY 2000 and RY 2008, the difference between the two market baskets is minor with the exception of RY 2002, where the FY-2002-based RPL market basket increased three tenths of a percentage point higher than the FY 1997-based excluded hospital with capital market basket. This is primarily due to the FY 2002-based RPL having a larger compensation (that is, the sum of wages and salaries and benefits) cost weight than the FY 1997-based index and the price changes associated with compensation costs increasing much faster than the prices of other market basket components. Also contributing is the “all other nonlabor intensive” cost weight, which is smaller in the FY 2002-based RPL market basket than in the FY 1997-based index, as well as the slower price changes associated with these costs.
Start Printed Page 27054Table 5.—FY 2002-Based RPL market basket and FY 1997-Based excluded hospital with capital market basket, percent changes
Rate year (RY) FY 2002-based RPL market basket FY 1997-based excluded hospital market basket with capital Historical data: RY 2000 2.8 2.7 RY 2001 3.8 3.9 RY 2002 4.1 3.8 RY 2003 3.8 3.7 RY 2004 3.6 3.6 RY 2005 3.8 4.0 Average RY 2000-2005 3.7 3.5 Forecast: RY 2006 3.6 3.8 RY 2007 3.4 3.4 RY 2008 3.2 3.1 Average RY 2006-2008 3.4 3.4 Source: Global Insight, Inc. 1stQtr 2006, @USMACRO/CONTROL0306 @CISSIM/CNTL08R3.SIM. Note: The RY forecasts are based on the standard 12-month period of July 1 to June 30. For this rule, we are moving from an 18-month period to a 12-month period. 4. Labor-Related Share
As described below in this file rule, due to the variations in costs and geographic wage levels, we believe that payment rates under the IPF PPS should continue to be adjusted by a geographic wage index. This wage index applies to the labor-related portion of the proposed Federal per diem base rate, hereafter referred to as the labor-related share.
The labor-related share is determined by identifying the national average proportion of operating costs that are related to, influenced by, or vary with the local labor market. Using our current definition of labor-related, the labor-related share is the sum of the relative importance of wages and salaries, fringe benefits, professional fees, labor-intensive services, and a portion of the capital share from an appropriate market basket. We used the FY 2002-based RPL market basket costs to determine the labor-related share for the IPF PPS. The labor-related share for RY 2007 is the sum of the RY 2007 relative importance of each labor-related cost category, and reflects the different rates of price change for these cost categories between the base year (FY 2002) and RY 2007. The sum of the relative importance for RY 2007 for operating costs (wages and salaries, employee benefits, professional fees, and labor-intensive services) is 71.586, as shown in Table 6 below. The portion of capital that is influenced by the local labor market is estimated to be 46 percent, which is the same percentage used in the FY 1997-based IRF and IPF payment systems. Since the relative importance for capital is 8.867 percent of the FY 2002-based RPL market basket in RY 2007, we are taking 46 percent of 8.867 percent to determine the labor-related share of capital for RY 2007. The result is 4.079 percent, which we added to 71.586 percent for the operating cost amount to determine the total labor-related share for RY 2007. Thus, the labor-related share that we are using for IPF PPS in RY 2007 is 75.665 percent. This labor-related share is determined using the same methodology as employed in calculating all previous IPF labor-related shares (69 FR 66952).
Comment: One commenter noted that the proposed labor-related share based on the RPL market basket would benefit hospitals with a wage index greater than or equal to 1.000. The commenter also recommended that CMS ensure that the labor-related share is calculated appropriately, based on recent and comprehensive data for the facilities in the market basket.
Response: We recognize that the labor-related share would benefit hospitals with a wage index greater than 1.000. However, the wage index is estimated independently from the labor-related share. We do not take into consideration which hospitals would benefit from the revised and rebased labor-related share. We calculated the labor-related share using the same methodology used for the IPF implementation year and reflected the most recent and comprehensive data available. The labor-related share represents the national average while the wage index reflects geographical cost differences.
The proposed change in the labor-related share is primarily attributable to the exclusion of children's and cancer hospitals (which are less labor intensive than IRFs, IPFs, and LTCHs) and the update of the base year to reflect FY 2002 data. The FY 2002 data, the most recent and comprehensive data available, reflects that labor-related costs are increasing faster than aggregate non-labor-related costs. We will continue to analyze RPL cost report data on a regular basis to ensure it accurately reflects the cost structures facing IRFs, IPFs, and LTCHs serving Medicare beneficiaries.
Table 6 below shows the RY 2007 relative importance of labor-related shares using the FY 2002-based RPL market basket and the FY 1997-based excluded hospital with capital market basket.
Table 6.—Total Labor-Related Share—Relative Importance for RY 2007
Cost category FY 2002-based RPL market basket relative importance (percent) RY 2007 FY 1997 excluded hospital with capital market basket relative importance (percent) RY 2007 Wages and salaries 52.506 48.021 Employee benefits 14.042 11.534 Professional fees 2.886 4.495 All other labor-intensive services 2.152 4.411 Subtotal 71.586 68.461 Labor-related share of capital costs 4.079 3.222 Total 75.665 71.683 IPFs Paid Based on a Blend of the Reasonable Cost-Based Payments
Under the broad authority of sections 1886(b)(3)(A) and (b)(3)(B) of the Act and as stated in the FY 2006 IPPS final rule (70 FR 47399), for IPFs that are transitioning to the fully Federal prospective payment rate, we are now using the rebased and revised FY 2002-based excluded hospital market basket to update the reasonable cost-based portion of their payments. We rebase the market basket periodically so that the cost weights reflect changes in the mix of goods and services that hospitals purchase to furnish inpatient care between base periods. We chose FY 2002 as the base year for the excluded hospital market basket because we believe this is the most recent, complete year of Medicare cost report data.
The reasonable cost-based payments, subject to TEFRA limits, are determined on a FY basis. The FY 2007 update factor for the portion of the IPF PPS transitional blend payment based on reasonable costs will be published in the FY 2007 IPPS proposed and final rules.
VI. Update of the IPF PPS Adjustment Factors
A. Overview of the IPF PPS Adjustment Factors
In developing the IPF PPS, in order to ensure that the IPF PPS would be able to account adequately for each IPF's case-mix, we performed an extensive regression analysis of the relationship between the per diem costs and certain patient and facility characteristics to determine those characteristics associated with statistically significant cost differences on a per diem basis. For Start Printed Page 27055characteristics with statistically significant cost differences, we used the regression coefficients of those variables to determine the size of the corresponding payment adjustments.
The IPF PPS payment adjustments were derived from a regression analysis of 100 percent of the FY 2002 MedPAR data file which contained 483,038 cases. We are using the same results of this regression analysis to implement the RY 2007 IPF PPS final rule (See 69 FR 66935 through 66936 for a more detailed description of the data file used for the regression analysis.)
We computed a per diem cost for each Medicare inpatient psychiatric stay, including routine operating, ancillary, and capital components using information from the FY 2002 MedPAR file and data from the FY 2002 Medicare cost reports. To calculate the cost per day for each inpatient psychiatric stay, routine costs were estimated by multiplying the routine cost per day from the IPF's FY 2002 Medicare cost report by the number of Medicare covered days on the FY 2002 MedPAR stay record. Ancillary costs were estimated by multiplying each departmental cost-to-charge ratio by the corresponding ancillary charges on the MedPAR stay record. The total cost per day was calculated by summing routine and ancillary costs for the stay and dividing it by the number of Medicare covered days for each day of the stay.
The IPF PPS includes a payment adjustment for IPFs with qualifying Emergency Departments (EDs), and IPFs that are part of acute care hospitals and CAHs with qualifying EDs. As a result, ED costs were excluded from the dependent variable used in the cost regression in order to remove the effects of ED costs from other payment adjustment factors with which ED costs may be correlated and thus avoid overpaying ED costs.
The log of per diem cost, like most health care cost measures, appeared to be normally distributed. Therefore, the natural logarithm of the per diem cost was the dependent variable in the regression analysis. We included variables in the regression to control for psychiatric hospitals that do not bill ancillary costs and for ECT costs that we pay separately. The per diem cost was adjusted for differences in labor cost across geographic areas using the FY 2005 hospital wage index unadjusted for geographic reclassifications, in order to be consistent with our use of the market basket labor share in applying the wage index adjustment.
As discussed in the November 2004 IPF PPS final rule (69 FR 66936), we computed a wage adjustment factor for each case by multiplying the Medicare 2005 hospital wage index based on MSA definitions defined by OMB in 1993 for each facility by the labor-related share and adding the non-labor share. We used the 1997-based excluded hospital with capital market basket to determine the labor-related share. The per diem cost for each case was divided by this factor before taking the natural logarithm. The payment adjustment for the wage index was computed consistently with the wage adjustment factor, which is equivalent to separating the per diem cost into a labor portion and a non-labor portion and adjusting the labor portion by the wage index.
With the exception of the teaching adjustment, the independent variables were specified as one or more categorical variables. Once the regression model was finalized based on the log normal variables, the regression coefficients for these variables were converted to payment adjustment factors by treating each coefficient as an exponent of the base “e” for natural logarithms, which is approximately equal to 2.718. The payment adjustment factors represent the proportional effect of each variable relative to a reference variable. As a result of the regression analysis, we established patient-level payment adjustments for age, DRG assignment based on patients' principal diagnoses, selected comorbidities, and a day of stay adjustment (the variable per diem adjustments) to reflect higher resource use in the early days of an IPF stay. We also established facility-level payment adjustments for wage area, rural location, teaching status, cost of living adjustment for IPFs located in Alaska and Hawaii, and an adjustment for IPFs with a qualifying ED. We do not plan to update the regression analysis until we analyze IPF PPS data (that is, no earlier than RY 2008). CMS plans to monitor claims and payment data independently from cost report data to assess issues, or whether changes in case-mix or payment shifts have occurred between free standing governmental, non-profit, and private psychiatric hospitals, and/or psychiatric units of general hospital, and other impact issues of importance to psychiatric facilities.
B. Patient-Level Adjustments
In the November 2004 IPF PPS final rule, we provided payment adjustments for the following payment-level characteristics: DRG assignment of the patient's principal diagnosis, selected comorbidities, patient age, and the variable per diem adjustments.
1. Adjustment for DRG Assignment
The IPF PPS includes payment adjustments for the psychiatric DRG assigned to the claim based on each patient's principal diagnosis. In the November 2004 IPF PPS final rule, we explained that the IPF PPS includes 15 diagnosis-related group (DRG) adjustment factors (69 FR 66936). The adjustment factors were expressed relative to the most frequently reported DRG in FY 2002, that is, DRG 430. The coefficient values and adjustment factors were derived from the regression analysis.
In accordance with § 412.27, payment under the IPF PPS is made for claims with a principal diagnosis included in the Diagnostic and Statistical Manual of Mental Disorder—Fourth Edition—Text Revision (DSM-IV-TR) or Chapter Five of the International Classification of Diseases—9th Revision—Clinical Modifications (ICD-9-CM). The Standards for Electronic Transaction final rule published in the Federal Register on August 17, 2000 (65 FR 50312), adopted the ICD-9-CM as the designated code set for reporting diseases, injuries, impairments, other health related problems, their manifestations, and causes of injury, disease, impairment, or other health-related problems. As a result, the DSM-IV-TR, while essential for the diagnosis and treatment of mentally ill patients, may not be reported on Medicare claims. However, in order to recognize the importance of the DSM-IV-TR in mental health treatment, we updated the reference to the DSM in § 412.27 from DSM-III-TR to DSM-IV-TR in the November 2004 IPF PPS final rule. As a result, under the revised § 412.27, IPFs that are distinct part psychiatric units of acute care hospitals and CAHs may only admit patients who have a principal diagnosis in the DSM-IV-TR or Chapter Five of the ICD-9-CM although DSM codes may not be reported on medical claims.
IPF claims with a principal diagnosis included in Chapter Five of the ICD-9-CM or the DSM-IV-TR will be paid the Federal per diem base rate under the IPF PPS. Psychiatric principal diagnoses that do not group to one of the 15 designated DRGs receive the Federal per diem base rate and all other applicable adjustments, but the payment would not include a DRG adjustment. Only those claims with diagnoses that group to one of these psychiatric DRGs would receive a DRG adjustment.
We believe it is vital to maintain the same diagnostic coding and DRG classification for IPFs that is used under the IPPS for providing the same Start Printed Page 27056psychiatric care. As we explained in the IPF PPS proposed rule (68 FR 66924), all changes to the ICD-9-CM coding system that would impact the IPF PPS are addressed annually in the IPPS proposed and final rules published each year. The updated codes are effective October 1 of each year and must be used to report diagnostic or procedure information. The official version of the ICD-9-CM is available on CD-ROM from the U.S. Government Printing Office. The FY 2006 version can be ordered by contacting the Superintendent of Documents, U.S. Government Printing Office, Department 50, Washington, DC 20402-9329, telephone number (202) 512-1800. The stock number is 017-022-01544-7, and the price is $25.00. In addition, private vendors publish the ICD-9-CM. Questions concerning the ICD-9-CM should be directed to Patricia E. Brooks, Co-Chairperson, ICD-9-CM Coordination and Maintenance Committee, CMS, Center for Medicare Management, Hospital and Ambulatory Policy Group, Division of Acute Care, Mailstop C4-08-06, 7500 Security Boulevard, Baltimore, Maryland 21244-1850. Questions and comments may be sent via e-mail to: Patricia.Brooks1@cms.hhs.gov.
Further information concerning the Official Version of the ICD-9-CM can be found in the IPPS final regulation, “Changes to the Hospital Inpatient Prospective Payment Systems and Fiscal Year 2006 Rates; Final Rule,” in the August 12, 2005 Federal Register (70 FR 47278) and at http://www.cms.hhs.gov/QuarterlyProviderUpdates/downloads/cms1500f.pdf.
The following two tables below list the FY 2006 new ICD diagnosis codes and FY 2006 revised diagnosis code titles, respectively. These tables are only a listing of FY 2006 changes and do not reflect all of the currently valid and applicable ICD codes classified in the DRGs. Table 7 below lists the new FY 2006 ICD diagnosis codes that are classified to one of the 15 DRGs that are provided a DRG adjustment in the IPF PPS. When coded as a principal code or diagnosis, these codes receive the correlating DRG adjustment.
Table 7.—FY 2006 New Diagnosis Codes
Diagnosis code Description DRG 291.82 Alcohol induced sleep disorders 521, 522, 523 292.85 Drug induced sleep disorders 521, 522, 523 327.00 Organic insomnia, unspecified 432 327.01 Insomnia due to medical condition classified elsewhere 432 327.02 Insomnia due to mental disorder 432 327.09 Other organic insomnia 432 327.10 Organic hypersomnia, unspecified 432 327.11 Idiopathic hypersomnia with long sleep time 432 327.12 Idiopathic hypersomnia without long sleep time 432 327.13 Recurrent hypersomnia 432 327.14 Hypersomnia due to medical condition classified elsewhere 432 327.15 Hypersomnia due to mental disorder 432 327.19 Other organic hypersomnia 432 Table 8 below lists ICD diagnosis codes whose titles have been modified in FY 2006. Title changes do not impact the DRG adjustment. When used as a principal diagnosis, these codes still receive the correlating DRG adjustment.
Table 8.—Revised Diagnosis Code Titles
Diagnosis code Description DRG 307.45 Circadian rhythm sleep disorder of nonorganic origin 432 780.52 Insomnia, unspecified 432 780.54 Hypersomnia, unspecified 432 780.55 Disruption of 24 hour sleep wake cycle, unspecified 432 780.58 Sleep related movement disorder, unspecified 432 In addition to the aforementioned, in the August 2005 IPPS final rule, we finalized ICD code 305.1, Tobacco Use Disorder, in order to designate this code as a noncovered Medicare service when reported as the principal diagnosis. Below we have republished the explanation that was included in the IPPS final rule (70 FR 47312) and published on the CMS Web site at http://www.cms.hhs.gov/QuarterlyProviderUpdates/downloads/cms1500f.pdf.
“We have become aware of the possible need to add code 305.1 (Tobacco use disorder) to the MCE in order to make admissions for tobacco use disorder a noncovered Medicare service when code 305.1 is reported as the principal diagnosis. On March 22, 2005, CMS published a final decision memorandum and related national coverage determination (NCD) on smoking cessation counseling services on its Web site: (http://www.cms.hhs.gov/coverage/). Among other things, this NCD provides that: ‘Inpatient hospital stays with the principal diagnosis of 305.1, Tobacco Use Disorder, are not reasonable and necessary for the effective delivery of tobacco cessation counseling services. Therefore, we will not cover tobacco cessation services if tobacco cessation is the primary reason for the patient's hospital stay.’ Therefore, in order to maintain internal consistency with CMS programs and decisions, we proposed to add code 305.1 to the MCE edit ‘Questionable Admission—Principal Diagnosis Only’ in order to make tobacco use disorder a noncovered admission.” (70 FR 47312).
In order to maintain consistency with the IPPS, for discharges on or after October 1, 2005, ICD code 305.1, Tobacco Use Disorder, will not be a covered principal diagnosis under the IPF PPS.
Although we are updating the IPF PPS to reflect ICD-9-CM coding changes and DRG classification changes discussed in the annual update to the IPPS, in the RY 2007 IPF PPS final rule, the DRG adjustment factors currently being paid to IPFs will remain the same (that is, for discharges occurring during the RY July Start Printed Page 270571, 2006 through June 30, 2007). As indicated in the November 2004 IPF PPS final rule, we do not plan to update the regression analysis until we analyze IPF PPS data.
As a result, we are adopting the DRG adjustments factors, the ICD-9-CM coding changes and the DRG classification changes that are currently being paid as indicated in Table 9 below.
Table 9.—FY 2006 DRGs and Adjustment Factor
DRG DRG definition Adjustment factor DRG 424 O.R. Procedure with Principal Diagnosis of Mental Illness 1.22 DRG 425 Acute Adjustment Reaction & Psychosocial Dysfunction 1.05 DRG 426 Depressive Neurosis 0.99 DRG 427 Neurosis, Except Depressive 1.02 DRG 428 Disorders of Personality & Impulse Control 1.02 DRG 429 Organic Disturbances & Mental Retardation 1.03 DRG 430 Psychoses 1.00 DRG 431 Childhood Mental Disorders 0.99 DRG 432 Other Mental Disorder Diagnoses 0.92 DRG 433 Alcohol/Drug Abuse or Dependence, Leave Against Medical Advice (LAMA) 0.97 DRG 521 Alcohol/Drug Abuse or Dependence with CC 1.02 DRG 522 Alcohol/Drug Abuse or Dependence with RehabilitationTherapy without CC 0.98 DRG 523 Alcohol/Drug Abuse or Dependence without Rehabilitation Therapy without CC 0.88 DRG 12 Degenerative Nervous System Disorders 1.05 DRG 23 Non-traumatic Stupor & Coma 1.07 Section 412.424(d) separately identifies both “Diagnosis-related group assignment” and “Principal diagnosis” as patient level adjustments. Since publication of the November 2004 IPF PPS final rule, we have received inquiries related to whether the IPF PPS includes two patient-level payment adjustments for principal diagnosis, an adjustment for the diagnosis-related group assignment, and a separate adjustment for providing a principal diagnosis in general. We intended that the IPF PPS provide one patient-level adjustment for principal diagnosis, which is “Diagnosis-related group assignment.”
In order to clarify our policy, we proposed to modify the language in section 412.424(d) by deleting sub-paragraph § 412.424(d)(2)(iii). We received no public comments on the proposed amendment. We are adopting this change in our final rule.
Public comments and our responses on the proposed changes on the adjustment for DRG assignment are summarized below.
Comment: We received several comments concerning the update to the DRG adjustment factors. Overall, the commenters supported our decision to delay updating the patient-level adjustment factors, stating that a delay in running the regression analysis would allow CMS to use more comprehensive and accurate patient-level coding data.
However, one commenter recommended that CMS update the DRGs and adjustment factors on an on-going basis.
Response: We do not plan to update the regression analysis until we analyze IPF PPS data. We believe that this will provide the best indication of current IPF practices. Therefore, the DRG adjustment factors currently being paid to IPFs will remain the same for the RY 2007 (that is, for discharges occurring during the RY July 1, 2006 through June 30, 2007).
Comment: Several commenters requested clarification on the “code first” instructions, believing them to be contrary to regulations at § 412.27. The commenters stated that § 412.27 requires that psychiatric units only admit those patients who have a psychiatric principal diagnosis listed in the DSM or the Chapter Five of the ICD.
Response: Section 412.27 and the “code first” instructions are not contrary to each other. As explained in the November 2004 final rule (69 FR 66922) and in three subsequent Change Requests (CR) (that is, CR 3541, published December 1, 2004; CR 3678, published January 21, 2005; and CR 3752, published March 4, 2005), correct coding conventions should always be followed, including “code first” situations. According to the ICD-9-CM Official Guidelines for Coding and Reporting, when a primary diagnosis code has a code first notation, the provider follows the applicable ICD-9-CM coding convention which requires the underlying condition (etiology) to be sequenced first, followed by the manifestation due to the underlying condition. Therefore, we consider “code first” diagnoses to be the primary diagnosis. The submitted claim goes through the IPF PPS claims processing system which identifies the primary diagnosis code as non-psychiatric and searches the secondary codes for a psychiatric code to assign the DRG in order to pay “code first” claims properly.
For more coding guidance, please refer to the ICD-9-CM Official Guidelines for Coding and Reporting which can be located on the CMS Web site at http://new.cms.hhs.gov/ICD9ProviderDiagnosticCodes/.
Comment: Commenters requested that CMS include the ICD-9-CM obstetrical series of codes 648.30 to 648.34 and 648.40 to 648.44, since they are subject to sequencing priority guidelines, in our code first logic.
Response: At this point in time, we do not intend to update the regression analysis until we have analyzed one year of IPF PPS claims and cost report data. However, when we update the regression analysis, we will review the obstetric codes noted above and consider the appropriateness of including them in our code first logic. For RY 2007, no DRG Adjustment will be made to these codes.
Final Rule Action: In summary, we received no public comments concerning the proposal to amend § 412.424(d). In order to clarify our policy that the IPF PPS provides one patient level adjustment for principal diagnoses, we are modifying the language in section § 412.424(d) by deleting sub-paragraph § 412.424(d)(2)(iii). In addition, we are adopting the DRG adjustment currently in effect and as shown in Table 9. Start Printed Page 27058
2. Payment for Comorbid Conditions
In the November 2004 IPF PPS final rule, we established 17 comorbidity categories and identified the ICD-9-CM diagnosis codes that generate a payment adjustment under the IPF PPS.
Comorbidities are specific patient conditions that are secondary to the patient's primary diagnosis, and that require treatment during the stay. Diagnoses that relate to an earlier episode of care and have no bearing on the current hospital stay are excluded and not reported on IPF claims. Comorbid conditions must co-exist at the time of admission, develop subsequently, affect the treatment received, affect the length of stay or affect both treatment and LOS.
The intent of the comorbidity adjustment was to recognize the increased cost associated with comorbid conditions by providing additional payments for certain concurrent medical or psychiatric conditions that are expensive to treat. For each claim, an IPF may receive only one comorbidity adjustment per comorbidity category, but it may receive an adjustment for more than one comorbidity category. Billing instructions require that IPFs must enter the full ICD-9-CM codes for up to 8 additional diagnoses if they co-exist at the time of admission or developed subsequently.
The comorbidity adjustments were determined based on regression analysis using the diagnoses reported by hospitals in FY 2002. The principal diagnoses were used to establish the DRG adjustment and were not accounted for in establishing the comorbidity category adjustments, except where ICD-9-CM “code first” instructions apply. As we explained in the November 2004 IPF PPS final rule (69 FR 66922), the code first rule applies when a condition has both an underlying etiology and a manifestation due to the underlying etiology. For these conditions, the ICD-9-CM has a coding convention that requires the underlying conditions to be sequenced first followed by the manifestation. Whenever a combination exists, there is a “use additional code” note at the etiology code and a “code first” note at the manifestation code.
Although we are updating the IPF PPS to reflect updates to the ICD-9-CM codes, the comorbidity adjustment factors currently in effect will remain in effect for the RY beginning July 1, 2006. As we indicated in the November 2004 IPF PPS final rule, we do not plan to update the regression analysis until we analyze IPF PPS data. The comorbidity adjustments are shown in Table 12 below.
As previously discussed in the DRG section, we believe it is essential to maintain the same diagnostic coding set for IPFs that is used under the IPPS for providing the same psychiatric care. Therefore, as proposed and in this final rule, we are using the most current FY 2006 ICD codes. They are reflected in the FY 2006 GROUPER, version 23.0 and are effective for discharges occurring on or after October 1, 2005.
Table 10 lists the updated FY 2006 new ICD diagnosis codes that impact the comorbidity adjustment under the IPF PPS and Table 11 lists the invalid ICD codes no longer applicable for the comorbidity adjustment. Table 10 only lists the FY 2006 new codes and does not reflect all of the currently valid ICD codes applicable for the IPF PPS comorbidity adjustment.
We note that ICD diagnosis code 585 Chronic Renal Failure was modified in two ways—(1) By expanding the level of specificity to include seven new codes; and (2) by changing the original code of 585 to invalid, thereby leaving the remaining more specific codes reportable. Since diagnosis code 585 is no longer valid, we are eliminating this code from the comorbidity category “Renal Failure, Chronic.”
ICD diagnosis code 585 “Chronic Renal Failure” is defined in the ICD-9-CM as “Progressive, persistent inadequate kidney function characterized by anuria, accumulation of urea and other nitrogenous bodies in the blood, nausea, vomiting, gastrointestinal bleeding, and yellowish-brown discoloration of the skin.” This code included the various stages of chronic kidney disease, but it is no longer valid. The new codes listed below reflect the various stages of chronic kidney failure.
In this final rule, we are adopting as proposed comorbidity adjustments for 585.3, “Chronic kidney disease, Stage III (moderate),” 585.4, “Chronic kidney disease, Stage IV (severe),” 585.5, “Chronic kidney disease, Stage V,” 585.6, “End Stage renal disease,” and 585.9, “Chronic kidney disease, unspecified.” However, since the purpose of the comorbidity adjustment is to account for the higher resource costs associated with comorbid conditions that are expensive to treat on a per diem basis, we are not providing a comorbidity adjustment for 585.1, “Chronic kidney disease, Stage I” and 585.2, “Chronic kidney disease, Stage II (mild).”
We believe that these conditions (585.1 and 585.2) are less costly to treat on a per diem basis because patients with these conditions are either asymptomatic or may have only mild symptoms. These conditions represent a minimal to mild decrease in kidney function that is almost completely compensated such that the only finding is typically an abnormal laboratory test. Unlike patients with more significant kidney dysfunction, these patients do not usually require more costly patient care interventions such as additional laboratory tests to monitor renal function, special pharmacy attention to reduced dosages or kidney-sparing medications, or fluid and electrolyte precautions with special diets, frequent weights, input/output balance, and fluid restriction. The resources and costs that these patients require for staff time, medications and supplies, and administrative services are expected to be similar to other patients without these conditions.
Start Printed Page 27059Table 10.—FY 2006 New ICD Codes Applicable for the Comorbidity Adjustment
Diagnosis code Description DRG Comorbidity category 585.3 Chronic kidney disease, Stage III (moderate) 315-316 Renal Failure, Chronic. 585.4 Chronic kidney disease, Stage IV(severe) 315-316 Renal Failure, Chronic. 585.5 Chronic kidney disease, Stage V 315-316 Renal Failure,Chronic. 585.6 End stage renal disease 315-316 Renal Failure,Chronic. 585.9 Chronic kidney disease, unspecified 315-316 Renal Failure, Chronic. V46.13 Encounter for weaning from respirator [ventilator] 467 Chronic Obstructive Pulmonary Disease. V46.14 Mechanical complication of respirator [ventilator] 467 Chronic Obstructive Pulmonary Disease. In Table 11 below, we list the FY 2006 invalid ICD diagnosis code 585 that we will be removing from the comorbidity adjustment under the IPF PPS. This table does not reflect all of the currently valid ICD codes applicable for the IPF PPS comorbidity adjustment.
Table 11.—FY 2006 Invalid ICD Codes No Longer Applicable for the Comorbidity Adjustment
Diagnosis code Description DR Comorbidity category 585 Chronic renal failure 315-36 Renal Failure, Chronic. The seventeen comorbidity categories for which we are providing an adjustment, their respective codes, including the new FY 2006 ICD codes, and their respective adjustment factors, are listed below in Table 12.
Table 12.—FY 2006 Diagnosis Codes and Adjustment Factors for Comorbidity Categories
Description of comorbidity ICD-9CM code Adjustment factor Developmental Disabilities 317, 3180, 3181, 3182, and 319 1.04 Coagulation Factor Deficits 2860 through 2864 1.13 Tracheostomy 51900—through 51909 and V440 1.06 Renal Failure, Acute 5845 through 5849, 63630, 63631, 63632, 63730, 63731, 63732, 6383, 6393, 66932, 66934, 9585 1.11 Renal Failure, Chronic 40301, 40311, 40391, 40402, 40412, 40413, 40492, 40493, 5853, 5854, 5855, 5856, 5859, 586, V451, V560, V561, and V562 1.11 Oncology Treatment 1400 through 2390 with a radiation therapy code 92.21-92.29 or chemotherapy code 99.25 1.07 Uncontrolled Diabetes-Mellitus with or without complications 25002, 25003, 25012, 25013, 25022, 25023, 25032, 25033, 25042, 25043, 25052, 25053, 25062, 25063, 25072, 25073, 25082, 25083, 25092, and 25093 1.05 Severe Protein Calorie Malnutrition 260 through 262 1.13 Eating and Conduct Disorders 3071, 30750, 31203, 31233, and 31234 1.12 Infectious Disease 01000 through 04110, 042, 04500 through 05319, 05440 through 05449, 0550 through 0770, 0782 through 07889, and 07950 through 07959 1.07 Drug and/or Alcohol Induced Mental Disorders 2910, 2920, 29212, 2922, 30300, and 30400 1.03 Cardiac Conditions 3910, 3911, 3912, 40201, 40403, 4160, 4210, 4211, and 4219 1.11 Gangrene 44024 and 7854 1.10 Chronic Obstructive Pulmonary Disease 49121, 4941, 5100, 51883, 51884, V4611 and V4612, V4613 and V4614 1.12 Artificial Openings—Digestive and Urinary 56960 through 56969, 9975, and V441 through V446 1.08 Severe Musculoskeletal and Connective Tissue Diseases 6960, 7100, 73000 through 73009, 73010 through 73019, and 73020 through 73029 1.09 Poisoning 96500 through 96509, 9654, 9670 through 9699, 9770, 9800 through 9809,9830 through 9839, 986, 9890 through 9897 1.11 We received several comments offering suggestions on how we could improve the comorbidity adjustment category list. The suggestions ranged from requests for the addition of a single ICD-9-CM code to a request for expanding the comorbidity categories to account for every ICD-9-CM code.
Public comments and our responses to the proposed changes to payment for comorbid conditions are summarized below.
Comment: We received a comment expressing concern that the comorbidity adjustment list does not include the more common conditions seen in psychiatric patients. This commenter indicated that most psychiatric patients are treated for multiple common conditions and illnesses (for example, heart conditions, and stroke), none of which would trigger a payment adjustment under the IPF PPS.
Response: We explained in the November 2004 IPF PPS final rule (69 FR 66922), that the data used in calculating the Federal per diem base rate included all the costs for comorbid diagnoses submitted in the FY 2002 claims. Therefore, the cost for providing patient care (for example, medications, routine nursing care) required for common conditions seen in the psychiatric population, and recommended for comorbidity adjustment by commenters (that is, heart conditions or strokes) are already included in the Federal per diem base rate and a comorbidity adjustment for their presence was duplicative and unnecessary.
Further, the design of the IPF PPS with its Federal per diem base rate, provides numerous adjustments for complex cases and the availability of outlier payments, and stop loss payments during the 3-year transition.
Comment: A few commenters stated that the range of diagnostic codes proposed for adjustment did not include all the ICD-9-CM codes within a diagnostic category. A particular commenter indicated that the list of codes under diabetes did not include all the diabetes codes. In addition, other commenters provided a list of ICD-9-CM codes and comorbidity adjustments that they believe should be included in the comorbidity adjustment category list.
Response: The intent of the comorbidity adjustment is to provide Start Printed Page 27060additional payments for concurrent medical or psychiatric conditions that are expensive to treat and require comparatively more costly treatment during an IPF stay than other comorbid conditions.
Although we are updating the IPF PPS to reflect updates to the ICD-9-CM codes, the comorbidity adjustment categories and factors currently in effect will remain in effect for the RY beginning July 1, 2006. As indicated in the November 2004 IPF PPS final rule, we do not plan to update the regression analysis until we analyze IPF PPS data.
Comment: A commenter recommended that code 404.03 hypertensive heart and renal disease, malignant, with heart failure and renal failure continue to qualify for both Cardiac Conditions and Chronic Renal Failure comorbidity adjustments.
Response: We are aware that ICD code 404.03, hypertensive heart and renal disease, malignant, with heart failure and renal failure, has caused confusion since this ICD code is currently used to code an adjustment in two separate IPF comorbidity categories, (that is, both “Renal Failure, Chronic” and “Cardiac Conditions”). We believe that it more appropriately corresponds to the “Cardiac Conditions” comorbidity than to the “Renal Failure, Chronic” comorbidity. Therefore, to be more clinically cohesive and to eliminate confusion, we are removing ICD code 404.03 from the comorbidity adjustment category “Renal Failure, Chronic,” but retaining it in the “Cardiac Conditions” comorbidity category. Since both comorbidity categories have the same adjustment factor of 1.11, we believe no negative payment consequence will result from this change.
Final Rule Action: We are adopting the comorbidity adjustments currently in effect and as shown in Table 12 above for RY 2007 beginning July 1, 2006.
3. Patient Age Adjustments
As explained in the November 2004 IPF PPS final rule, we analyzed the impact of age on per diem cost by examining the age variable (that is, the range of ages) for payment adjustments.
In general, we found that the cost per day increases with increasing age. The older age groups are more costly than the under 45 years of age group; the differences in per diem cost increase for each successive age group, and the differences are statistically significant.
Based on the results of the regression analysis, we established 8 adjustment factors for age beginning with age groupings 45 and under 50, 50 and under 55, 55 and under 60, 60 and under 65, 65 and under 70, 70 and under 75, 75 and under 80, and 80 years of age and over. Patients under 45 years of age are assigned an age adjustment factor of 1.00. As we indicated in the November 2004 IPF PPS final rule, we do not plan to update the regression analysis until we analyze IPF PPS data. As a result, we are adopting the patient age adjustments currently in effect and shown in Table 13 below.
Table 13.—Age Groupings and Adjustment Factors
Age Adjustment factor Under 45 1.00 45 and under 50 1.01 50 and under 55 1.02 55 and under 60 1.04 60 and under 65 1.07 65 and under 70 1.10 70 and under 75 1.13 75 and under 80 1.15 80 and over 1.17 Final Rule Action: In response to the RY 2007 proposed rule, we received no comments concerning the age adjustment. We are adopting the age adjustments currently in effect and as shown in Table 13 above, for RY 2007.
4. Variable Per Diem Adjustments
We explained in the November 2004 IPF PPS final rule that cost regressions indicated that per diem cost declines as the LOS increases (69 FR 66947). The variable per diem adjustments to the Federal per diem base rate account for ancillary and administrative costs that occur disproportionately in the first days after admission to an IPF.
We used regression analysis to estimate the average differences in per diem cost among stays of different length. Regression analysis simultaneously controls for cost differences associated with the other variables (for example, age, DRG, and presence of specific comorbidities). The regression coefficients measure the relative average cost per day for stays of differing lengths compared to a reference group's LOS. We analyzed through cost regression the relative cost per day for day 1 through day 30. We determined that the average per diem cost declined smoothly until the 22nd day. As a result of this analysis, we established variable per diem adjustments that begin on day 1 and decline gradually until day 21 of a patient's stay. For day 22 and thereafter, the variable per diem adjustment remains the same each day for the remainder of the stay. However, the adjustment applied to day 1 depends upon whether the IPF has a qualifying emergency department (ED). If an IPF has a qualifying ED, it receives a 1.31 adjustment for day 1 of each patient stay. If an IPF does not have a qualifying ED, it receives a 1.19 adjustment for day 1 of the stay. The ED adjustment is explained in more detail in section VI.C.5 of this final rule.
As we indicated in the November 2004 IPF PPS final rule, we do not plan to make changes to the regression analysis until we analyze IPF PPS data. As a result, for the RY beginning July 1, 2006, we are adopting the variable per diem adjustment factors currently in effect. Table 14 below shows the variable per diem adjustments that we will be using for updating the IPF PPS.
Table 14.—Variable Per Diem Adjustments
Day-of-stay Adjustment factor Day 1—IPF Without a Qualified ED 1.19 Day 1—IPF With a Qualified ED 1.31 Day 2 1.12 Day 3 1.08 Day 4 1.05 Day 5 1.04 Day 6 1.02 Day 7 1.01 Day 8 1.01 Day 9 1.00 Day 10 1.00 Day 11 0.99 Day 12 0.99 Day 13 0.99 Day 14 0.99 Day 15 0.98 Day 16 0.97 Day 17 0.97 Day 18 0.96 Day 19 0.95 Day 20 0.95 Day 21 0.95 After Day 21 0.92 Final Rule Action: In response to the RY 2007 proposed rule, we received no comments concerning the proposed variable per diem adjustments. We are adopting the variable per diem adjustment factors currently in effect, and as shown in Table 14 above for RY 2007.
C. Facility-Level Adjustments
The IPF PPS includes facility-level adjustments for the wage index, IPFs located in rural areas, teaching IPFs, cost of living adjustments for IPFs located in Alaska and Hawaii, and IPFs with a qualifying ED. Start Printed Page 27061
1. Wage Index Adjustment
a. Revisions of IPF PPS Geographic Classifications
In the November 2004 IPF PPS final rule, we explained that in establishing an adjustment for area wage levels, the labor-related portion of an IPF's Federal prospective payment is adjusted by using an appropriate wage index. We also explained that an IPF's wage index is determined based on the location of the IPF in an urban or rural area as defined in § 412.62(f)(1)(ii) and (f)(1)(iii), respectively.
An urban area under the IPF PPS is defined at § 412.62(f)(1)(ii)(A) and (B). In general, an urban area is defined as a Metropolitan Statistical Area (MSA) or New England County Metropolitan Area (NECMA) as defined by the Office of Management and Budget (OMB). In addition, a few counties located outside of MSAs are considered urban as specified at § 412.62(f)(1)(ii)(B). Under § 412.62(f)(1)(iii), a rural area is defined as any area outside of an urban area. The geographic classifications defined in § 412.62(f)(1)(ii) and (f)(1)(iii), were used under the IPPS from FYs 1984 through 2004 (§ 412.62(f) and § 412.63(b)), and have been used under the IPF PPS since it was implemented for cost reporting periods beginning on or after January 1, 2005.
Under the IPPS, the wage index is calculated and assigned to hospitals on the basis of the labor market area in which the hospital is located or geographically reclassified to in accordance with sections 1886(d)(8) and (d)(10) of the Act. Under the IPF PPS, the wage index is calculated using IPPS wage index data (as discussed below in section VI.C.1.d of this preamble) on the basis of the labor market area in which the IPF is located, without taking into account geographic reclassification under sections 1886(d)(8) and (d)(10) of the Act and without applying the “rural floor” established under section 4410 of the BBA. (Section 4410 of the BBA provides that for the purposes of section 1886(d)(3)(E) of the Act, the area wage index applicable to hospitals located in an urban area of a State may not be less than the area wage index applicable to hospitals located in rural areas in the State. This provision is commonly referred to as the “rural floor” under the IPPS.) However, when we established the IPF PPS, we did not apply the rural floor to IPFs. For this reason, the hospital wage index used for IPFs is commonly referred to as the “pre-floor” hospital wage index indicating that the “rural floor” provision of the BBA is not applied. As a result, the applicable IPF wage index value is assigned to the IPF on the basis of the labor market area in which the IPF is geographically located.
As noted above, the current IPF PPS labor market areas are defined based on the definitions of MSAs, Primary MSAs (PMSAs), and NECMAs issued by the OMB (commonly referred to collectively as “MSAs”). The MSA definitions, which are discussed in greater detail below, are currently used under the IPF PPS and other PPSs (that is, the IRF PPS, the LTCH PPS, and the PPSs for home health agencies (HHA PPS) and skilled nursing facilities (SNF PPS)). In the FY 2005 IPPS final rule (69 FR 49026 through 49034), revised labor market area definitions were adopted under the IPPS (§ 412.64(b)), which were effective October 1, 2004. These new standards, called Core-Based Statistical Areas (CBSAs), were announced by the OMB late in CY 2000 and are discussed in greater detail below.
b. Current IPF PPS Labor Market Areas Based on MSAs
When we published the November 2004 IPF PPS final rule, we explained that we were not adopting the new statistical area definitions defined by OMB for the following reasons. First, the change in labor market areas under the IPPS had not changed at the time we published the IPF PPS proposed rule on November 28, 2003. As a result, IPFs and other interested parties were not afforded an opportunity to comment on the use of the new labor market area definitions under the IPF PPS. Second, we wanted to conduct a thorough analysis of the impact of the new labor market area definitions on payments under the IPF PPS. Finally, in the November 2004 IPF PPS final rule, we indicated our intent to publish in a proposed rule any changes we were considering for new labor market definitions.
The analysis of the impact of the new labor market definitions has been completed. In the RY 2007 proposed rule, we proposed to adopt the new CBSA-based labor market area definitions. In this final rule, we are adopting these labor market area definitions for the IPF PPS. We believe it is helpful to provide a detailed description of the current IPF PPS labor market areas to help explain the changes to the IPF PPS labor market areas.
As mentioned earlier, since the implementation of the IPF PPS, we have used labor market areas to further characterize urban and rural areas as determined under § 412.62(f)(1)(ii) and (iii). To this end, we have defined labor market areas under the IPF PPS based on the definitions of MSAs, PMSAs, and NECMAs issued by the OMB in 1993, which is consistent with the IPPS approach prior to FY 2005. We note that OMB also defines Consolidated MSAs (CMSAs). A CMSA is a metropolitan area with a population of 1 million or more, comprising two or more PMSAs (identified by their separate economic and social character). However, for purposes of the wage index, we use the PMSAs rather than CMSAs because they allow a more precise breakdown of labor costs. If a metropolitan area is not designated as part of a PMSA, we use the applicable MSA.
These different designations use counties as the building blocks upon which they are based. Therefore, under the IPF PPS, hospitals are assigned to either an MSA, PMSA, or NECMA based on whether the county in which the IPF is located is part of that area. All of the counties in a State outside a designated MSA, PMSA, or NECMA are designated as rural.
c. Core-Based Statistical Areas
The OMB reviews its Metropolitan Area definitions preceding each decennial census. As discussed in the FY 2005 IPPS final rule (69 FR 49026), in the fall of 1998, OMB chartered the Metropolitan Area Standards Review Committee to examine the Metropolitan Area standards and develop recommendations for possible changes to those standards. Three notices related to the review of the standards, providing an opportunity for public comment on the recommendations of the Committee, were published in the Federal Register on the following dates: December 21, 1998 (63 FR 70526); October 20, 1999 (64 FR 56628); and August 22, 2000 (65 FR 51060).
In the December 27, 2000 Federal Register (65 FR 82228 through 82238), OMB announced its new standards. In that notice, OMB defines a Core-Based Statistical Area (CBSA), beginning in 2003, as “a geographic entity associated with at least one core of 10,000 or more population, plus adjacent territory that has a high degree of social and economic integration with the core as measured by commuting ties. The standards designate and define two categories of CBSAs: Metropolitan Statistical Areas and Micropolitan Statistical Areas.” (65 FR 82236 through 82238).
According to the OMB, MSAs are based on urbanized areas of 50,000 or more population, and Micropolitan Statistical Areas (referred to in this discussion as Micropolitan Areas) are based on urban clusters of at least 10,000 population, but less than 50,000 population. Counties that do not fall Start Printed Page 27062within CBSAs (either MSAs or Micropolitan Areas) are deemed “Outside CBSAs.” In the past, OMB defined MSAs around areas with a minimum core population of 50,000, and smaller areas were “Outside MSAs.” On June 6, 2003, the OMB announced the new CBSAs, comprised of MSAs and the new Micropolitan Areas based on Census 2000 data. (A copy of the announcement may be obtained at the following Internet address: http://www.whitehouse.gov/omb/bulletins/fy04/b04-03.html.)
The new CBSA designations recognize 49 new MSAs and 565 new Micropolitan Areas, and extensively revise the composition of many of the existing MSAs. There are 1,090 counties in MSAs under the new CBSA designations (previously, there were 848 counties in MSAs). Of these 1,090 counties, 737 are in the same MSA as they were prior to the change in designations, 65 are in a different MSA, and 288 were not previously designated to any MSA. There are 674 counties in Micropolitan Areas. Of these, 41 were previously in an MSA, while 633 were not previously designated to an MSA. There are five counties that previously were designated to an MSA but are no longer designated to either an MSA or a new Micropolitan Area: Carter County, KY; St. James Parish, LA; Kane County, UT; Culpepper County, VA; and King George County, VA. For a more detailed discussion of the conceptual basis of the new CBSAs, refer to the FY 2005 IPPS final rule (67 FR 49026 through 49034).
d. Revision of the IPF PPS Labor Market Areas
In its June 6, 2003 announcement, OMB cautioned that these new definitions “should not be used to develop and implement Federal, State, and local nonstatistical programs and policies without full consideration of the effects of using these definitions for such purposes. These areas should not serve as a general-purpose geographic framework for nonstatistical activities, and they may or may not be suitable for use in program funding formulas.”
We currently use MSAs to define labor market areas for purposes of Medicare wage indices in the IPF PPS since its implementation for cost reporting periods beginning on or after January 1, 2005. Until recently, MSAs were used to define labor market areas for purposes of the wage index for many of the other Medicare payment systems (for example, IRF PPS, SNF PPS, HHA PPS, and Outpatient PPS). While we recognize MSAs are not designed specifically to define labor market areas, we believe they represent a useful proxy for this purpose, because they are based upon characteristics we believe also generally reflect the characteristics of unified labor market areas. For example, CBSAs consist of a core population plus an adjacent territory that reflects a high degree of social and economic integration. This integration is measured by commuting ties, thus demonstrating that these areas may draw workers from the same general areas. In addition, the most recent CBSAs reflect the most up-to-date information. Our analysis and discussion here are focused on issues related to adopting the new CBSA designations to define labor market areas for the purposes of the IPF PPS.
Historically, Medicare PPSs have utilized Metropolitan Area definitions developed by the OMB. As noted above, the labor market areas currently used under the IPF PPS are based on the Metropolitan Area definitions issued by the OMB and the OMB reviews its Metropolitan Area definitions preceding each decennial census to reflect more recent population changes. The CBSAs are OMB's latest Metropolitan Area definitions based on the Census 2000 data. Because we believe that the OMB's latest Metropolitan Area designations more accurately reflect the local economies and wage levels of the areas in which hospitals are currently located, we adopted the revised labor market area designations based on the OMB's CBSA designations under the IPPS effective October 1, 2004. When we implemented the wage index adjustment at § 412.424(d)(1)(i) under the November 2004 IPF PPS final rule (69 FR 66952 through 66954), we explained that the IPF PPS wage index adjustment was intended to reflect the relative hospital wage levels in the geographic area of the hospital as compared to the national average hospital wage level. The OMB's CBSA designations based on Census 2000 data reflect the most recent available geographic classifications (Metropolitan Area definitions). Therefore, we are revising the labor market area definitions used under the IPF PPS based on the OMB's CBSA designations. This change ensures that the IPF PPS wage index adjustment most appropriately accounts for and reflects the relative hospital wage levels in the geographic area of the hospital as compared to the national average hospital wage level.
Specifically, we are revising the IPF PPS labor market definitions based on the OMB's new CBSA designations (as discussed in greater detail below) effective for IPF PPS discharges occurring on or after July 1, 2006. Accordingly, we are revising § 412.402, definitions for rural and urban areas. Effective for discharges occurring on or after July 1, 2006, “rural” and “urban” areas will be defined in § 412.64(b)(1)(ii)(A) through (C). These definitions are the labor market definitions based on OMB's CBSA designations. For clarity, we are also revising the regulation text to include the urban and rural definitions applicable to discharges occurring during cost reporting periods beginning on or after January 1, 2005, but before July 1, 2006, under § 412.62(f)(1)(ii) and § 412.62(f)(1)(iii).
We note that these are the same labor market area definitions (based on the OMB's new CBSA designations) implemented for acute care hospitals under the IPPS at § 412.64(b), which were effective for those hospitals beginning October 1, 2004 as discussed in the FY 2005 IPPS final rule (69 FR 49026-49034). The IPF PPS uses the acute care inpatient hospitals' wage data in calculating the IPF PPS wage index. However, unlike the IPPS, and similar to other Medicare payment systems (for example, SNF PPS and IRF PPS), the IPF PPS uses the pre-floor, pre-reclassified hospital wage index.
Below, we discuss the composition of the RY 2007 IPF PPS labor market areas based on OMB's new CBSA designations. It should be noted that OMB's new CBSA designations are comprised of several county-based area definitions as explained above, which include Metropolitan Areas, Micropolitan Areas, and areas “outside CBSAs.” We implemented the IPF PPS using two types of labor market areas, that is, urban and rural. In this final rule, we are adopting the revised labor market areas based on OMB's new CBSA-based designations. As proposed in the RY 2007 proposed rule, we will continue to have 2 types of labor market areas (urban and rural). In the discussion that follows, we explain how we are recognizing Metropolitan Areas, which include New England MSAs and Metropolitan Divisions, as urban. We also explain how we are recognizing Micropolitan Areas and areas “outside CBSAs” as rural. As discussed below in this final rule and as described in the RY 2007 proposed rule, we describe the methodology for mapping OMB's CBSA-based designations into the IPF PPS (urban area or rural area) format.
i. New England MSAs
As stated above, we currently use NECMAs to define labor market areas in New England, because these are county-based designations, rather than the 1990 MSA definitions for New England, which used minor civil divisions such Start Printed Page 27063as cities and towns. Under the current MSA definitions, NECMAs provided more consistency in labor market definitions for New England compared with the rest of the country, where MSAs are county-based. Under the new CBSAs, the OMB has now defined the MSAs and Micropolitan Areas in New England on the basis of counties. The OMB also established New England City and Town Areas, which are similar to the previous New England MSAs.
In order to create consistency across all IPF labor market areas, as proposed and in this final rule, we are using the county-based areas for all MSAs in the nation, including those in New England. The OMB has now defined the New England area based on counties, creating a city- and town-based system as an alternative. We believe that adopting county-based labor market areas for the entire country except those in New England will lead to inconsistencies in our designations. Adopting county-based labor market areas for the entire country provides consistency and stability in Medicare program payment because all of the labor market areas throughout the country, including New England, will be defined using the same system (that is, counties) rather than different systems in different areas of the county, and minimizes programmatic complexity.
In addition, we have consistently employed a county-based system for New England for precisely that reason: To maintain consistency with the labor market definitions used throughout the country. Since we have never used cities and towns for defining IPF labor market areas, employing a county-based system in New England maintains that consistent practice. We note that this is consistent with the implementation of the CBSA-based designations under the IPPS for New England (69 FR 49028). Accordingly, for the IPF PPS, we are using the New England MSAs as determined under the new CBSA-based labor market area definitions in defining the revised IPF PPS labor market areas.
ii. Metropolitan Divisions
Under OMB's new CBSA designations, a Metropolitan Division is a county or group of counties within a CBSA that contains a core population of at least 2.5 million, representing an employment center, plus adjacent counties associated with the main county or counties through commuting ties. A county qualifies as a main county if 65 percent or more of its employed residents work within the county and the ratio of the number of jobs located in the county to the number of employed residents is at least 0.75. A county qualifies as a secondary county if 50 percent or more, but less than 65 percent, of its employed residents work within the county and the ratio of the number of jobs located in the county to the number of employed residents is at least 0.75. After all the main and secondary counties are identified and grouped, each additional county that already has qualified for inclusion in the MSA falls within the Metropolitan Division associated with the main/secondary county or counties with which the county at issue has the highest employment interchange measure. Counties in a Metropolitan Division must be contiguous (65 FR 82236).
The construct of relatively large MSAs being comprised of Metropolitan Divisions is similar to the current construct of CMSAs comprised of PMSAs. As noted above, in the past, the OMB designated CMSAs as Metropolitan Areas with a population of 1 million or more and comprised of two or more PMSAs. Under the IPF PPS, we currently use the PMSAs rather than CMSAs to define labor market areas because they comprise a smaller geographic area with potentially varying labor costs due to different local economies. We believe that CMSAs may be too large of an area with a relatively large number of hospitals, to accurately reflect the local labor costs of all of the individual hospitals included in that relatively “large” area. A large market area designation increases the likelihood of including many hospitals located in areas with very different labor market conditions within the same market area designation. This variation could increase the difficulty in calculating a single wage index that will be relevant for all hospitals within the market area designation. Similarly, we believe that MSAs with a population of 2.5 million or greater may be too large of an area to accurately reflect the local labor costs of all of the individual hospitals included in that relatively “large” area. Furthermore, as indicated above, Metropolitan Divisions represent the closest approximation to PMSAs, the building block of the current IPF PPS labor market area definitions, and therefore, will most accurately maintain our current structuring of the IPF PPS labor market areas. As implemented under the IPPS (69 FR 49029), we proposed and for this final rule, we are using the Metropolitan Divisions where applicable (as described below) under the new CBSA-based labor market area definitions.
In addition to being comparable to the organization of the labor market areas under current MSA designations (that is, the use of PMSAs rather than CMSAs), we believe that using Metropolitan Divisions where applicable (as described below) under the IPF PPS will result in a more accurate adjustment for the variation in local labor market areas for IPFs. Specifically, if we recognize the relatively “larger” CBSA that comprises two or more Metropolitan Divisions as an independent labor market area for purposes of the wage index, it will be too large and include data from too many hospitals to compute a wage index that will accurately reflect the various local labor costs of all of the individual hospitals included in that relatively “large” CBSA. As mentioned earlier, a large market area designation increases the likelihood of including many hospitals located in areas with very different labor market conditions within the same market area designation. This variation could increase the difficulty in calculating a single wage index that will be relevant for all hospitals within the market area designation. Rather, by recognizing the Metropolitan Divisions where applicable (as described below) under the proposed new CBSA-based labor market area definitions under the IPF PPS, we believe that in addition to more accurately maintaining the current structuring of the IPF PPS labor market areas, the local labor costs will be more accurately reflected, thereby resulting in a wage index adjustment that better reflects the variation in the local labor costs of the local economies of the IPFs located in these relatively “smaller” areas.
Below we describe where Metropolitan Divisions will be applicable under the new CBSA-based labor market area definitions under the IPF PPS.
Under OMB's new CBSA-based designations, there are 11 MSAs containing Metropolitan Divisions: Boston; Chicago; Dallas; Detroit; Los Angeles; Miami; New York; Philadelphia; San Francisco; Seattle; and Washington, D.C. Although these MSAs were also CMSAs under the prior definitions, in some cases these areas have been significantly altered. Under the current IPF PPS MSA designations, Boston is a single NECMA. Under the CBSA-based labor market area designations, it is comprised of four Metropolitan Divisions. Los Angeles will go from four PMSAs under the current IPF PPS MSA designations to two Metropolitan Divisions under the CBSA-based labor market area designations because two MSAs became separate MSAs. The New York CMSA will go from 15 PMSAs under the Start Printed Page 27064current IPF PPS MSA designations to only four Metropolitan Divisions under the CBSA-based labor market area designations. The five PMSAs in Connecticut under the current IPF PPS MSA designations will become separate MSAs under the CBSA-based labor market area designations, and the number of PMSAs in New Jersey under the current IPF PPS MSA designations will go from five to two, with the consolidation of two New Jersey PMSAs (Bergen-Passaic and Jersey City) into the New York-Wayne-White Plains, NY-NJ Division, under the CBSA-based labor market area designations. In San Francisco, under the CBSA-based labor market area designations, there are only two Metropolitan Divisions. Currently, there are six PMSAs, some of which are now separate MSAs under the current IPF PPS labor market area designations.
Under the current IPF PPS labor market area designations, Cincinnati, Cleveland, Denver, Houston, Milwaukee, Portland, Sacramento, and San Juan are all designated as CMSAs, but will no longer be designated as CMSAs under the CBSA-based labor market area designations. As noted previously, the population threshold to be designated as a CMSA under the current IPF PPS labor market area designations is 1 million. In most of these cases, counties currently in a PMSA under the current IPF PPS labor market area designations will become separate, independent MSAs under the CBSA-based labor market area designations.
We note that subsequent to the publication of the RY 2007 IPF PPS proposed rule, titles to certain CBSAs were changed based on OMB Bulletin No. 06-01 (December 2005). The title changes listed below are nomenclatures that do not result in substantive changes to the CBSA-based designations. Thus, these changes are listed below and will be incorporated into the FY 2007 CBSA-based urban wage index tables.
- CBSA 26900: Indianapolis-Carmel, IN
- CBSA 42680: Sebastian-Vero Beach, FL
- CBSA 19780: Des Moines-West Des Moines, IA
- CBSA 47644: Warren-Troy-Farmington Hills, MI
- CBSA 31140: Louisville-Jefferson County, KY-IN
iii. Micropolitan Areas
Under OMB's new CBSA-based designations, Micropolitan Areas are essentially a third area definition consisting primarily of currently rural areas, but also include some or all of areas that are currently designated as an urban MSA. As discussed in greater detail in the FY 2005 IPPS final rule (69 FR 49029 through 49032), how these areas are treated will have significant impacts on the calculation and application of the wage index. Specifically, whether or not Micropolitan Areas are included as part of the respective statewide rural wage indices will impact the value of statewide rural wage index of any State that contains a Micropolitan Area because a hospital's classification as urban or rural affects which hospitals' wage data are included in the statewide rural wage index. We combine all of the counties in a State outside a designated urban area together to calculate the statewide rural wage index for each State.
Including Micropolitan Areas as part of the statewide rural labor market area would result in an increase to the statewide rural wage index because hospitals located in those Micropolitan Areas typically have higher labor costs than other rural hospitals in the State. Alternatively, if Micropolitan Areas were to be recognized as independent labor market areas, because there would be so few hospitals in each labor market area, the wage indices for IPFs in those areas could become relatively unstable as they might change considerably from year to year.
We currently use MSAs to define urban labor market areas and group all the hospitals in counties within each State that are not assigned to an MSA together into a statewide rural labor market area. We have used the terms “urban” and “rural” wage indexes in the past for ease of reference. However, the introduction of Micropolitan Areas by the OMB potentially complicates this terminology because these areas include many hospitals that are currently included in the statewide rural labor market areas.
We proposed to treat Micropolitan Areas as rural labor market areas under the IPF PPS for the reasons outlined below. That is, counties that are assigned to a Micropolitan Area under the CBSA-based designations would be treated the same as other “rural” counties that are not assigned to either an MSA (Metropolitan Statistical Area) or a Micropolitan Area. Therefore, in determining an IPF's applicable wage index (based on IPPS hospital wage index data), an IPF in a Micropolitan Area under OMB's CBSA-based designations would be classified as “rural” and would be assigned the statewide rural wage index for the State in which it resides.
In the FY 2005 IPPS final rule (69 FR 49029 through 49032), we discuss our evaluation of the impact of treating Micropolitan Areas as part of the statewide rural labor market area instead of treating Micropolitan Areas as independent labor market areas for hospitals paid under the IPPS. As discussed in that same final rule, one of the reasons Micropolitan Areas have such a dramatic impact on the wage index is because Micropolitan Areas encompass smaller populations than MSAs. In addition, they tend to include fewer hospitals per Micropolitan Area. Currently, there are only 25 MSAs with one hospital in the MSA. However, under the new CBSA-based definitions, there are 373 Micropolitan Areas with one hospital, and 49 MSAs with only one hospital.
Since Micropolitan Areas encompass smaller populations than MSAs, they tend to include fewer hospitals per Micropolitan Area, recognizing Micropolitan Areas as independent labor market areas will generally increase the potential for dramatic shifts in those areas' wage indices from 1 year to the next because a single hospital (or group of hospitals) could have a disproportionate effect on the wage index of the area. The large number of labor market areas with only one hospital and the increased potential for dramatic shifts in the wage indexes from 1 year to the next is a problem for several reasons. First, it creates instability in the wage index from year to year for a large number of hospitals. Second, it reduces the averaging effect (averaging effect allows for more data points to be used to calculate a representative standard of measured labor costs within a market area.) lessening some of the incentive for hospitals to operate efficiently. This incentive is inherent in a system based on the average hourly wages for a large number of hospitals, as hospitals could profit more by operating below that average. In labor market areas with a single hospital, high wage costs are passed directly into the wage index with no counterbalancing averaging with lower wages paid at nearby competing hospitals. Third, it creates an arguably inequitable system when so many hospitals have wage indexes based solely on their own wages, while other hospitals' wage indexes are based on an average hourly wage across many hospitals.
For the reasons noted above, and consistent with the treatment of these areas under the IPPS, as proposed and consist with this final rule, we are not adopting Micropolitan Areas as independent labor market areas under the IPF PPS. Under the CBSA-based labor market area definitions, Start Printed Page 27065Micropolitan Areas are considered a part of the statewide rural labor market area. Accordingly, we will determine an IPF PPS statewide rural wage index using the acute-care IPPS hospital wage data from hospitals located in non-MSA areas (for example, rural areas, including Micropolitan Areas) and that statewide rural wage index will be assigned to IPFs located in those non-MSA areas.
e. Implementation of the Revised Labor Market Areas Under the IPF PPS
Section 124 of the BBRA is broadly written and gives the Secretary discretion in developing and making adjustments to the IPF PPS.
When the revised labor market areas based on the OMB's new CBSA-based designations were adopted under the acute care hospital IPPS beginning on October 1, 2004, a transition to the new labor market area designations was established due to the scope and substantial implications of these new boundaries and to buffer the subsequent significant impacts it may have on payments to numerous hospitals. As discussed in the FY 2005 IPPS final rule (69 FR 49032), during FY 2005, a blend of wage indexes is calculated for those acute care IPPS hospitals experiencing a drop in their wage indexes because of the adoption of the new labor market areas.
While we recognize that, just like IPPS hospitals, some IPFs may experience decreases in their wage index as a result of the labor market area changes, our analysis shows that a majority of IPFs either expect no change in wage index or an increase in wage index based on CBSA definitions. In addition, a very small number of IPFs (fewer than 3 percent) will experience a decline of 5 percent or more in the wage index based on CBSA designations. We also found that a very small number of IPFs (approximately 5 percent) will experience a change in either rural or urban designation under the CBSA-based definitions. Since a majority of IPFs will not be significantly impacted by the labor market areas, we believe it is not necessary for a transition to the new CBSA-based labor market area for the purposes of the IPF PPS wage index.
We received several comments on our proposed changes for implementing the area wage adjustments. Public comments and our responses on the proposed changes for implementing the area wage adjustments are summarized below:
Comment: Several commenters requested that CMS provide a transition period to phase in the CBSA-based labor market definitions. One commenter requested that IPFs should be allowed to choose whether or not they wanted a phase-in of the CBSA wage indices.
Response: For cost reporting periods beginning in 2006, IPFs are paid based on a blend of 50 percent reasonable cost payments and 50 percent PPS payments. The wage index adjustment is being phased in on the PPS portion of the payment. Since we are already in the middle of a transition to a full wage-index adjustment under the IPF PPS, we believe that the effects on the IPF PPS wage index from the changes to the IPF PPS labor market areas definitions will be mitigated. Specifically, most IPFs will be in their FY 2006 cost reporting period and therefore will be in the second year of the 3-year phase-in of the IPF PPS wage index adjustment when the revised labor market area designations will be applied. During the second year of the transition to the IPF PPS, the applicable wage index value is one-half (50 percent) of the applicable full IPF PPS wage index adjustment. Since most IPFs will be in the second year of the 3-year phase-in of the wage index adjustment, for most IPFs, the labor-related portion of the Federal rate is only adjusted by 50 percent of the applicable full wage index (that is, one-half wage index value). As noted above, the IPF PPS wage index adjustment is made by multiplying the labor-related share of the IPF PPS Federal per diem base rate (75.66 percent) by the applicable wage index value.
Consequently, for most IPFs, only approximately 38 percent of the Federal per diem base rate is affected by the wage index adjustment (75.665 percent × 0.50 = 37.8325 percent), and the revision to the labor market area definitions based on OMB's new CBSA-based designations will only have a minimal impact on IPF PPS payments.
For the reasons discussed above, and also addressed in the RY 2007 proposed rule (71 FR 3633), we are not providing a transition under the IPF PPS from the current MSA-based labor market areas designations to the new CBSA-based labor market area designations. Rather, we are adopting the current CBSA-based labor market area definitions beginning July 1, 2006 without a transition period.
Comment: Several commenters do not believe that because the IPF PPS is in the second year of the transition blend, the effects of the wage index changes would be mitigated. The commenters stated that similar wage transitions have been applied in HHA and IRF, and therefore inconsistencies exist between payment systems.
Response: We do not believe a need exists to implement a separate transition for the wage index changes. We acknowledge that similar wage transitions exist in other PPSs. However, unlike the IPF PPS, in those instances, the payment systems were not already in a transition period (as described above).
Comment: Several commenters agreed with CMS's approach to wait 1 full year until IPF PPS claims and cost report data could be analyzed before changing the wage index definitions. Other commenters indicated that if CMS were to implement this change now, it would be inconsistent with the approach to wait a year before analyzing IPF PPS data.
The same commenters expressed concern that if CMS changes urban and rural classifications without any recourse (such as the Medicare Geographic Classification Review Board (MGCRB)) when CMS analyzes the PPS data and compares urban and rural IPFs, rural IPF data under MSA definitions would not be comparable to rural IPF data under CBSA definitions.
Response: In the November 2004 IPF PPS rule, we stated that we would use the best available hospital wage index data, and that we would propose any changes to the wage index in a proposed rule. We note that all of the other PPSs have adopted, or begun to adopt, the CBSA definitions. Consistent with other Medicare PPSs, and in order to utilize the best available data, as we indicated we would do, the IPF PPS will adopt the CBSA definitions. We want to ensure that the IPF PPS wage index adjustment most appropriately accounts for and reflects the relative hospital wage levels in the geographic area of the hospital as compared to the national average hospital wage level, and we believe that OMB's CBSA designations based on Census 2000 data reflect the most recent available geographic classifications.
With respect to the last comment, the meaning is not completely clear. If the commenters are concerned that changes to the area wage definitions will limit our ability to analyze the impact of the IPF PPS, CMS does not believe this is an issue. When we analyze the first year of IPF PPS claims and cost report data, the urban and rural designations will be under MSA definitions. We are now adopting the latest OMB definitions of urban and rural under CBSAs and we will view rural IPFs under these definitions. Finally, we want to note that, since the IPF PPS Provider Specific File is cumulative, CMS will have a record of which IPFs changed designations.
Comment: One commenter expressed support for the proposed change to the CBSA-based labor market definitions. The commenter believes that the CBSAs Start Printed Page 27066provide an accurate measure of the labor market areas in the United States.
Response: We agree with the commenter that the CBSAs represent the best available wage data.
Comment: The IPPS adopted a hold-harmless policy and an “out-commuting adjustment.” Several commenters believe that since the majority of IPFs are distinct part units, there is an inconsistency when the acute care hospitals are paid the out-commuting or out-migration adjustment and the IPFs are not paid the adjustment. The commenters stated that CMS should assume that IPF employees follow the same commuting patterns as those who work in the acute care hospital.
In addition, the commenters indicated that distinct part units would be at a disadvantage in recruiting and retaining workers for the IPF unless CMS adopted an out-commuting or out-migration adjustment.
Response: We are not providing a hold harmless policy or an “out-commuting” adjustment under the IPF PPS from the current MSA-based labor market areas designations to the new CBSA-based labor market area designations. Nor do we believe that we are required to provide an out-commuting adjustment. We note that section 505 of the MMA established new section 1886(d)(13) of the Act. Section 1886(d)(13) of the Act requires that the Secretary establish a process to make adjustments to the hospital wage index based on commuting patterns of hospital employees. We believe that this requirement for an “out-commuting” or “out-migration” adjustment applies specifically to the IPPS and not to other PPS. Therefore, consistent with other PPS (for example, IRF and LTCH PPS), we did not propose out-commuting or out-migration adjustment under the IPF PPS, nor are we establishing such an adjustment under the IPF PPS in this final rule.
We believe that our decisions not to adopt a transition or an out-commuting adjustment are appropriate for IPFs because, despite some similarities between the IPF PPS and the IPPS, there are clear distinctions between the payment systems, particularly regarding wage index issues.
For example, a wage index adjustment has been a stable feature of the acute care hospital IPPS since its 1983 implementation and the IPPS had utilized the prior MSA-based labor market area designation for over 10 years. The IPF PPS has only been implemented since January 1, 2005.
The most significant distinction between acute care hospitals under the IPPS and IPFs is that acute care hospitals have been paid using full wage index adjusted payments since 1983 and had used the previous IPPS MSA-based labor market area designations for over 10 years, whereas under the IPF PPS, a wage index adjustment is being phased-in over a 3-year period. As previously explained, the impact that the wage index can have on IPF PPS payments is limited at this point, since only a small percentage of the IPF PPS Federal per diem base rate is affected by the wage index (approximately 38 percent in most cases) because of the 3-year phase-in of the wage index adjustment.
In contrast, a transition policy to the revised IPPS labor market area definitions under the IPPS was appropriate because there is no phase-in of a wage index adjustment under the IPPS and the full labor-related share of the IPPS standardized amount (that is, Federal rate) is affected by the IPPS wage index adjustment, which resulted in a more significant projected impact for acute care hospitals under the IPPS.
Comment: Several commenters indicated that IPFs that are distinct part units should be allowed to be reclassified to the same geographic area as the acute care hospital. The commenters also stated that wage issues between acute care hospitals and IPFs are similar, and that it is not logical for IPFs that are distinct part units to receive a different area wage index value than the acute care hospital. Commenters requested that CMS implement a rural floor like that of IPPS.
Response: As stated above, the IPF PPS wage index is calculated using IPPS wage index data on the basis of the labor market area in which the IPF is located, without taking into account geographic reclassification under sections 1886(d)(8) and (d)(10) of the Act and without applying the “rural floor” established under section 4410 of the BBA. We believe that the actual location of an IPF (as opposed to the location of affiliated providers) is most appropriate for determining the wage adjustment because the prevailing wages in the area in which the IPF is located influence the cost of a case. In addition, we are using the latest OMB labor market area definitions based on 2000 Census data. Since these data are more recent than the data used for the wage index in the IPF PPS implementation year (2000 versus 1993 data), we do not see a need for a reclassification policy. Finally, as discussed above, by recognizing the Metropolitan Divisions where applicable under the new CBSA-based labor market area definitions under the IPF PPS, we believe that the local labor costs will be more accurately reflected, thereby resulting in a wage index adjustment that better reflects the variation in the local labor costs of the local economies of the IPFs located in these relatively “smaller” areas when compared with CMSAs.
Although some commenters request CMS to develop a “rural floor” like the IPPS, we believe the “rural floor” is required only for the acute care hospital payment system because, as stated in section VI.B.2, section 4410 of the Balanced Budget Act of 1997 (Pub. L. 105-33) applies specifically to acute care hospitals and not excluded hospitals and excluded units. We believe that the “pre-reclassification and pre-floor” wage data is the best proxy and most appropriate wage index for IPFs.
Comment: Many commenters expressed concern regarding those IPFs who would lose the rural adjustment if they are redefined as urban under the CBSA-based labor market definitions. Specifically, the commenters stated that IPFs' reimbursement would decrease over the next several years due to the wage index changes. The commenters also indicated that the loss of the rural adjustment would increase the financial vulnerability of IPFs that are necessary to provide continued access to care in previously rural areas. As a result, the commenters requested that CMS provide a grandfathering provision to allow IPFs to continue to receive the rural adjustment or a hold harmless provision that would prevent payments from dropping below what the IPF would have received had they remained designated as a rural IPF.
Response: We are finalizing our proposal to transition IPFs to CBSA-based labor market definitions. We recognize that IPFs that were previously considered rural will lose the 17 percent rural facility-level adjustment when they are redesignated as urban. However, as discussed above, since we are currently in the middle of a transition period from reasonable-cost based payments to PPS payments, the effects of changing to CBSA-based definitions are mitigated, since currently the wage index affects approximately 38 percent of an IPF's payment, and the rural adjustment affects 50 percent of an IPF's payment.
In addition, the IPF PPS has a stop-loss policy in place to protect IPFs that receive less than 70 percent of what they would have received under TEFRA. In general, the group of providers that stands to lose the rural adjustment did well under TERFA, and the purpose of the transition from TERFA to PPS is to allow IPFs to control and reduce their costs. Start Printed Page 27067
As discussed in the August 11, 2004 IPPS final rule (69 FR 49032), during FY 2005, a hold harmless policy was implemented to minimize the overall impact of hospitals that were designated in FY 2004 as urban under the MSA designations, but would become rural under the CBSA designations. In the same final rule, hospitals were afforded a 3-year hold harmless policy because the IPPS determined that acute-care hospitals that changed designations from urban to rural would be substantially impacted by the significant change in wage index. Currently, under the IPF PPS, urban facilities that become rural would receive the rural facility adjustment (that is, 17 percent). As discussed in section VI.C.2 of this final rule, we are adopting the 17 percent rural adjustment. The rural facility adjustment will be applied in the same way to urban facilities that will become rural under the CBSA-based definitions. Thus, we believe that the impact of the wage index changes on any urban facilities that become rural under the new definitions will be mitigated by the rural adjustment. Finally, as discussed above, the IPF PPS has a stop-loss policy in effect during the transition from TEFRA to PPS payments. Therefore, we do not believe it is appropriate or necessary to adopt a hold harmless policy for facilities that would experience a change in designation under the CBSA-based definitions.
We note that for the CBSA designations, we identified some geographic areas where there were no hospitals, and thus no hospital wage index data on which to base the calculation of the RY 2007 IPF PPS wage index. In addressing this situation, we proposed approaches that we believe would serve as proxies for hospital wage data and provide an appropriate standard that accounts for geographic variation in labor costs.
The first situation involves rural locations in Massachusetts and Puerto Rico. We have determined that there are no rural hospitals in those locations. Since there is no reasonable proxy for more recent rural data within those areas, we are using last year's wage index value for rural Massachusetts and rural Puerto Rico. This approach is consistent with other Medicare PPSs (for example, SNF PPS and IRF PPS).
The second situation has to do with the urban area of Hinesville, GA (CBSA 25980). Under the new labor market areas there are no urban hospitals within this area. Therefore, we are using the urban areas within the State to serve as a reasonable proxy for the urban areas without specific hospital wage index data in determining the IPF PPS wage index. In this final rule, we are calculating the urban wage index value for purposes of the wage index for these areas without urban hospital data as the average wage index for all urban areas within the State. This approach is consistent with other Medicare PPSs (for example, SNF PPS and IRF PPS).
We could not apply a similar averaging in rural areas because in the rural areas there are no State rural hospital wage data available for averaging on a State-wide basis. We did not receive comments on these approaches for calculating the wage index values for areas without hospitals for RY 2007 and subsequent years. We are adopting the proposed approach in this final rule.
To facilitate an understanding of the policies related to the changes to the IPF PPS labor market areas discussed above, in the MSA/CBSA Crosswalk included as Addendum B of this final rule, we are providing a listing of each Social Security Administration (SSA) State and county location code; State and county name; existing MSA-based labor market area designation; MSA-based wage index value; CBSA-based labor market area; and the new CBSA-based wage index value. We are also providing in Addenda C the wage index for urban and rural areas based on CBSA labor market areas.
Final Rule Action: In summary, we are finalizing our proposal to adopt the CBSA labor market area definitions without a transition, without a hold-harmless policy, and without an out-commuting or out-migration adjustment.
f. Wage Index Budget Neutrality
Any adjustment or update to the IPF wage index will be made in a budget neutral manner that assures that the estimated aggregated payments under this subsection in the RY beginning July 1, 2006 are not greater or less than those that would have been made in the year without such an adjustment. Therefore, as proposed and in this final rule, we calculate a budget-neutral wage index adjustment factor using the following steps:
Steps 1: Determine the total amount of the estimated IPF PPS payments for the implementation year using the labor-related share and wage indices from FY 2005 (based on MSAs).
Step 2: Calculate the total amount of estimated IPF PPS payments for RY 2007 using the labor-related share and wage indices from FY 2006 (based on CBSAs).
Step 3: Divide the amount calculated in Step 1 by the amount calculated in Step 2 which yields a RY 2007 budget-neutral wage adjustment of 1.0042.
This factor is applied in the update of the Federal per diem base rate for RY 2007.
2. Adjustment for Rural Location
In the November 2004 IPF PPS final rule, we provided a 17 percent payment adjustment for IPFs located in a rural area. This adjustment was based on the regression analysis which indicated that the per diem cost of rural facilities was 17 percent higher than that of urban facilities after accounting for the influence of the other variables included in the regression. Many rural IPFs are small psychiatric units within small general acute care hospitals. We also stated in the November 2004 IPF PPS final rule that small-scale facilities are more costly on a per diem basis because there are minimum levels of fixed costs that cannot be avoided, and they do not have the economies of size advantage.
Based on the results of our regression analysis, we provided a payment adjustment for IPFs located in rural areas of 17 percent. In this final rule, we are not changing this adjustment factor. In addition, we stated in the November 2004 IPF PPS final rule that we do not plan to conduct another regression analysis until we analyze IPF PPS data. At that time, we can compare rural and urban IPFs to determine how much more costly rural facilities are on a per diem basis under the IPF PPS. In the meantime, we are applying a 17 percent payment adjustment for IPFs located in a rural area as defined at § 412.64(b)(1)(ii)(C).
Final Rule Action: In summary, we are adopting the 17 percent rural adjustment currently in effect for RY 2007.
3. Teaching Adjustment
In the November 2004 IPF PPS final rule, we established a facility-level adjustment for IPFs that are, or are part of, teaching institutions. The teaching status adjustment accounts for the higher indirect operating costs experienced by facilities that participate in graduate medical education (GME) programs. We have received numerous requests for clarification of the IPF PPS teaching adjustment, especially with regard to comparisons with the IPPS IME adjustment that were included in the November 2004 IPF PPS final rule. As a result, we are including an expanded explanation of the IPF PPS teaching status adjustment and are clarifying the changes to § 412.424(d)(1)(iii) regarding the teaching adjustment.
Medicare makes direct GME payments (for direct costs such as resident and teaching physician salaries, and other Start Printed Page 27068direct teaching costs) to all teaching hospitals including those paid under the IPPS, and those that were once paid under the TEFRA rate-of-increase limits but are now paid under other PPSs. These direct GME payments are made separately from payments for hospital operating costs and are not part of the PPSs. However, the direct GME payments do not address the higher indirect operating costs experienced by teaching hospitals. For teaching hospitals paid under the TEFRA rate-of-increase limits, Medicare did not make separate medical education payments because payments to these hospitals were based on the hospitals' reasonable costs. Since payments under TEFRA were based on hospitals' reasonable costs, the higher indirect costs that might be associated with teaching programs would automatically have been factored into the TEFRA payments.
As previously mentioned, we conducted regression analysis of FY 2002 IPF data as the basis for the payment adjustments included in the November 2004 IPF PPS final rule. In conducting the analysis, we used the resident counts reported on hospital cost reports (worksheet S-3, Part 1, line 12, column 7 for freestanding psychiatric hospitals and worksheet S-3, Part 1, line 14 (or line 14.01 for subprovider 2), column 7 for psychiatric units of acute care hospitals). That is, for the freestanding psychiatric hospitals, we used the number of residents and interns reported for the entire hospital. For the psychiatric units of acute care hospitals, we used the number of residents and interns reported for the psychiatric unit, which are reported separately on the cost report from the number reported for the rest of the hospital.
The regression analysis (with the logarithm of costs as the dependent variable) showed that the indirect teaching cost variable is significant in explaining the higher costs of IPFs that have teaching programs. We calculated the teaching adjustment based on the IPF's “teaching variable,” which is one plus the ratio of the number of full-time equivalent (FTE) residents training in the IPF (subject to limitations described below) to the IPF's average daily census (ADC).
In the cost regressions conducted for the November 2004 IPF PPS final rule, the logarithm of the teaching variable had a coefficient value of 0.5150. We converted this cost effect to a teaching payment adjustment by treating the regression coefficient as an exponent and raising the teaching variable to a power equal to the coefficient value. In other words, the teaching adjustment is calculated by raising the teaching variable (1 + FTE residents/ADC) to the 0.5150 power. To compute the percentage increase in the IPF PPS payment attributable to the teaching adjustment (that is, the amount to be reconciled at cost report settlement), raise the teaching variable (1 + FTE residents/ADC) to the 0.5150 power. For example, for an IPF with a teaching variable of 0.10 and using a coefficient value of 0.5150, the per diem payment would increase by 5.03 percent; for an IPF with a teaching variable of 0.05, the per diem payment would increase by 2.54 percent. We note that the coefficient value of 0.5150 was based on regression analysis holding all other components of the payment system constant.
In addition, we established the teaching adjustment in a manner that limited the incentives for IPFs to add FTE residents for the purpose of increasing their teaching adjustment. We imposed a cap on the number of FTE residents that may be counted for purposes of calculating the teaching adjustment, similar to that established by sections 4621 (IME FTE cap for IPPS hospitals) and 4623 (direct GME FTE cap for all hospitals) of the BBA. We emphasize that the cap limits the number of FTE residents that teaching IPFs may count for the purposes of calculating the IPF PPS teaching adjustment, not the number of residents teaching institutions can hire or train.
The FTE resident cap is applied the same way in freestanding teaching psychiatric hospitals and in distinct part psychiatric units with GME programs. Similar to the regulations for counting FTE residents under the IPPS as described in § 412.105(f), we calculated the number of FTE residents that trained in the IPF during a “base year” and use that FTE resident number as the cap. An IPF's FTE resident cap would ultimately be determined based on the final settlement of the IPF's most recent cost report filed before November 15, 2004 (that is, the publication date of the IPF PPS final rule).
Similar to teaching hospitals under the IPPS, IPFs that first begin training residents after November 15, 2004 initially receive an FTE cap of “0”. The FTE caps for teaching IPFs (whether they are new or existing IPFs) that start training residents in a new GME program may be subsequently adjusted in accordance with the IPPS policies described in § 412.105(f)(1)(vii) and GME policies described in § 413.79(e)(1)(i) and (ii). For purposes of the teaching status adjustment for IPFs, a new graduate medical education program means a medical education program that receives initial accreditation by the appropriate accrediting body or begins training residents on or after November 15, 2004. However, contrary to the policy for IME FTE resident caps under the IPPS, we do not allow IPFs to aggregate the FTE resident caps used to compute the IPF PPS teaching adjustment through affiliation agreements. We included these policies because we believe it is important to limit the total pool of resident FTE cap positions within the IPF community and avoid incentives for IPFs to add FTE residents in order to increase their payments.
Residents with less than full-time status and residents rotating through the psychiatric hospital or unit for less than the entire cost reporting period are counted in proportion to the time they spend in their assignment with the IPF. For example, a 3-month rotation by a full-time resident to the IPF during a 12-month cost reporting period will be counted as 0.25 FTE for purposes of counting residents to calculate the ratio. No FTE resident time counted for purposes of the IPPS IME adjustment is permitted to be counted for purposes of the teaching status adjustment for the IPF PPS.
As noted previously, the denominator used to calculate the teaching adjustment under the IPF PPS is the IPF's ADC from the current cost reporting period. We chose to use the ADC because it is closely related to the IPF's patient load, which affects the number of interns and residents the IPF can train. We also believe the ADC is a measure that can be defined precisely and is difficult to manipulate. Although the IPPS IME adjustment uses the hospital's number of beds as the denominator, the capital PPS (as specified at § 412.322) and the IRF PPS (as specified at § 412.624(e)(4) both use the ADC as the denominator for the indirect medical education and teaching adjustments, respectively.
If a psychiatric hospital's or unit's FTE count of residents in a given year is higher than the FTE count in the base year (the base year being used to establish the cap), we base payments in that year on the lower number (the cap amount). This approach is consistent with the IME adjustment under the IPPS and the teaching adjustment under the IRF PPS. The IPF remains free to add FTE residents above the cap amount, but it cannot count the number of FTE residents above the cap for purposes of calculating the teaching adjustment. This means that the cap serves as an upper limit on the number of FTE residents that may be counted for purposes of calculating the teaching Start Printed Page 27069status adjustment. IPFs can adjust their number of FTE residents counted for purposes of calculating the teaching adjustment as long as they remain under the cap. On the other hand, if a psychiatric hospital or unit were to have fewer FTE residents in a given year than in the base year (that is, fewer residents than its FTE resident cap), teaching adjustment payments in that year would be based on the lower number (that is, the current year's FTE count of resident).
In response to inquiries about how the teaching adjustment is applied under the IPF PPS, we proposed to add a new paragraph § 412.424(d)(1)(iii)(E) to clarify that the teaching adjustment is made on a claim basis as an interim payment and the final payment for the claim would be made in full during the final settlement of the cost report. The difference between those interim payments and the actual teaching adjustment amount computed in the cost report would be adjusted through lump sum payments/recoupments when the cost report is filed and later settled.
As noted in section VI.D.1.a of this final rule, in reviewing the methodology used to simulate the IPF PPS payments used for the November 2004 IPF PPS final rule, we discovered that the computer code incorrectly assigned non-teaching status to most teaching facilities. As a result, total IPF PPS payments were underestimated by about 1.36 percent. To resolve the issue, as discussed in section V.B.3 of this final rule, we are amending the Federal per diem base rate prospectively for all IPFs.
As with other adjustment factors derived through the regression analysis, we do not plan to rerun the regression analysis until we analyze IPF PPS data. Until then, as proposed, we are retaining the 0.5150 teaching adjustment to the Federal per diem base rate.
Public comments and our responses on the proposed changes for implementing the teaching adjustment are summarized below:
Comment: A commenter stated that the use of “final settled” cost reports may allow hospitals to report accurate counts during the audit process. However, the commenter indicated that if this is not correct, or if certain hospitals' 2004 cost reports have already gone through final settlement, CMS should take action to ensure that accurate resident counts for purposes of determining the IPF teaching adjustment resident cap.
The commenter indicated that for the regression analysis, CMS used the resident count reported on Worksheet S-3, Part 1, lines 14 and 14.01, column 7 for psychiatric units of acute care hospitals. The commenter expressed concern regarding the data used for the regression analysis due to the ambiguity of the cost reporting instructions. The commenter believes that this count may not accurately reflect the resident count in the hospital's psychiatric unit. Specifically, since the cost reporting instructions state that one should “enter the number of interns and full time equivalents in an approved program determined in accordance with 42 CFR 412.105(g) for the indirect medical education adjustment.” The commenter further stated that for cost reports before November 15, 2004, psychiatric unit resident counts were not eligible to be counted for purposes of the acute inpatient IME adjustment.
Response: As explained in the November 2004 IPF PPS final rule and the RY 2007 proposed rule, similar to the regulations for counting FTE residents under the IPPS as described in § 412.105(f), we calculate the number of FTE residents that trained in the IPF during a “base year” and use that FTE resident number as the cap. An IPF's FTE resident cap would ultimately be determined based on the final settlement of the IPF's most recent cost report filed before November 15, 2004.
Although we are concerned about the accuracy of the information reported in the cost report, including the number of FTE residents reported on Wkst. S-3, Part 1, Column 7, it is, foremost, the hospital's responsibility to report this data accurately. An official of the hospital certifies that the information on all the worksheets in the cost report is correct to the best of his or her knowledge and belief.
Although the instructions for Column 7 of Wkst. S-3, Part I contain an outdated reference to § 412.105(g) (that is, this reference was changed in the Code of Federal Regulations to § 412.105(f) in 1997 but the Wkst. S-3, Part I instructions were not updated accordingly), these instructions specify that the FTE resident count to be reported in Column 7 is determined in accordance with the policies for IME adjustment. We do not believe the redesignation of the relevant regulation should have caused confusion.
If the hospitals believe that the FTE resident counts on the base year cost report are incorrect, they have an option of submitting an amended cost report or requesting a reopening.
Comment: One commenter indicated a discrepancy between the reference to the regulation regarding the base period for determining the IPF's FTE resident in the RY 2007 IPF PPS proposed rule (71 FR 3653) and the reference to that regulation in the current Code of Federal Regulations (CFR). The commenter stated that the RY 2007 IPF PPS proposed rule cited § 412.424(d)(1)(iii)(C) as the relevant regulation, while the current CFR reference can be found at § 412.424(d)(1)(iii)(B)(1).
Response: The existing regulation at § 412.424(d)(1)(iii)(C) implements the FTE resident cap for purposes of the IPF teaching status adjustment. The FTE resident cap is established in the base period as specified in the November 2004 IPF PPS final rule (69 FR 66979), and codified in regulations at § 412.424(d)(1)(iii)(B)(1). The reference in the RY 2007 IPF PPS proposed rule (71 FR 3653) reflects the proposal to redesignate portions of the reference to the teaching status adjustment. In this final rule, we will finalize the reference (and all other changes as proposed) to the base period to be § 412.424(d)(1)(iii)(C) and will replace § 412.424(d)(1)(iii)(B)(1) currently in the CFR.
Comment: One commenter requested clarification about application of the FTE resident cap for those IPFs that begin training residents after November 15, 2004.
Response: As we indicated in the RY 2007 proposed rule, IPFs that did not train interns and residents during the time period of the IPF's most recent cost report filed before November 15, 2005 would receive an FTE cap of “zero”. As a result, we would not apply a teaching adjustment to claims submitted by the IPF. However, if the IPF (whether it is new or existing) begins training residents in a new medical residency training program after that date, the IPF will begin to receive the teaching adjustment under the IPF PPS in the next cost reporting period based on the FTE intern and resident count in accordance with the policies applicable under the IPPS.
In this case, the FTE resident cap would not be revised until the beginning of the fourth year of the new training program. The cap is set based on a review of the number of interns and residents in each of the first three program years. Before the completion of the third year of the new training program, the actual intern and resident count is reported on the cost report and used for the calculation of the teaching adjustment for the first three years of the new teaching program. After the third year of the new program, we revise the IPF's FTE resident cap to reflect the new training program. The revised cap is calculated by multiplying the highest number of interns and residents in any program year by the number of years in Start Printed Page 27070which residents are expected to complete the program.
For subsequent years, we compare the actual number of interns and residents trained in the IPF that year to the revised FTE resident cap and base the teaching adjustment on the lower number.
Final Rule Action: In summary, we are retaining the coefficient value of 0.5150 for the teaching adjustment. In § 412.402, we are providing a definition for “new graduate medical education program” to mean a medical education program that receives initial accreditation by the appropriate accrediting body or begins training residents on or after November 15, 2004.
We are also clarifying at § 412.424(d)(1)(iii)(E) that the teaching adjustment is made on a claim basis as an interim payment, and the final payment in full for the claim is made during the final settlement of the cost report.
4. Cost of Living Adjustment for IPFs Located in Alaska and Hawaii
The IPF PPS includes a payment adjustment for IPFs located in Alaska and Hawaii based upon the county in which the IPF is located. As we explained in the November 2004 IPF PPS final rule, the FY 2002 data demonstrated that IPFs in Alaska and Hawaii had per diem costs that were disproportionately higher than other IPFs. Other Medicare PPSs (for example, IPPS and IRF PPS) have adopted a cost of living adjustment (COLA) to account for the cost differential of care furnished in Alaska and Hawaii. We analyzed the effect of applying a COLA to payments for IPFs located in Alaska and Hawaii. The results of our analysis demonstrated that a COLA for IPFs located in Alaska and Hawaii would improve payment equity for these facilities. As a result of this analysis, we provided a COLA adjustment in the November 2004 IPF PPS final rule. We are also adopting the same COLA adjustment in this final rule.
In general, the COLA accounts for the higher costs in the IPF and eliminates the projected loss that IPFs in Alaska and Hawaii would experience absent the COLA. A COLA factor for IPFs located in Alaska and Hawaii is made by multiplying the non-labor share of the Federal per diem base rate by the applicable COLA factor based on the county in which the IPF is located.
Table 15 below lists the specific COLA for Alaska and Hawaii IPFs. The COLA factors were obtained from the U.S. Office of Personnel Management (OPM). The COLA factors are published on the U.S. Office of Personnel Management (OPM) Web site (http://www.opm.gov/oca/cola/rates.asp). As proposed and in this final rule, we are adopting the COLA adjustments obtained from OPM. We will update the COLA factors if OPM updates them and as updated by OPM. Any change in the COLA factors will be made in one of our IPF PPS RY update documents. We are also amending § 412.428 to enable us to update the COLA factors if appropriate.
Table 15.—Proposed COLA Factors for Alaska and Hawaii IPFs
Location COLA Alaska All areas 1.25 Hawaii Honolulu County 1.25 Hawaii County 1.165 Kauai County 1.2325 Maui County 1.2375 Kalawao County 1.2375 Final Rule Action: In summary, we did not receive any public comments on the proposed COLA for IPFs located in Alaska and Hawaii. We are adopting the COLA adjustments obtained from OPM currently in effect, and as shown in Table 15 above. We will update the COLA factors as updated by OPM. In addition, we are amending § 412.428 to enable us to update the COLA factors, if appropriate.
5. Adjustment for IPFs With a Qualifying Emergency Department (ED)
Currently, the IPF PPS includes a facility-level adjustment for IPFs with qualifying EDs. As explained in the November 2004 IPF PPS final rule, we provide an adjustment to the standardized Federal per diem base rate to account for the costs associated with maintaining a full-service ED. The adjustment is intended to account for ED costs allocated to the hospital's distinct part psychiatric unit for preadmission services otherwise payable under Medicare Part B furnished to a beneficiary during the day immediately preceding the date of admission to the IPF (see § 413.40(c)) and the overhead cost of maintaining the ED. This payment is a facility-level adjustment that applies to all IPF admissions (with the one exception as described below), regardless of whether a particular patient receives preadmission services in the hospital's ED.
The ED adjustment is incorporated into the variable per diem adjustment for the first day of each stay for IPFs with a qualifying ED. That is, IPFs with a qualifying ED receive a 31 percent adjustment as the variable per diem adjustment for day 1 of each stay. If an IPF does not have a qualifying ED, it receives a 19 percent adjustment as the variable per diem adjustment for day 1 of each patient stay.
While any IPF with a qualifying ED receives the adjustment, the adjustment is paid most often to IPFs that are psychiatric units of acute care hospitals or critical access hospitals because these providers are more likely to have an ED that meets the definition of a qualified ED in § 412.424(d)(1)(v). We defined a qualifying ED in order to avoid providing the ED adjustment to an intake unit that is not comparable to a full-service ED with respect to the array of emergency services available or cost. We defined a qualifying ED as one that is staffed and equipped to furnish a comprehensive array of emergency services and that meets the definition of a “dedicated emergency department” as specified in § 489.24(b) and the definition of “provider-based status” as specified in § 413.65. We intended that a qualifying ED provide a comprehensive array of medical and psychiatric services. In order to clarify that a comprehensive array of emergency services includes medical as well as psychiatric services, we proposed to amend § 412.424(d)(1)(v)(A).
As specified in § 489.24, a dedicated ED means “any department or facility of the hospital, regardless of whether it is located on or off the main hospital campus, that meets at least one of the following requirements:
- It is licensed by the State in which it is located under applicable State law as an emergency room or emergency department;
- It is held out to the public (by name, posted signs, advertising, or other means) as a place that provides care for emergency medical conditions on an urgent basis without requiring a previously scheduled appointment; or
- During the calendar year immediately preceding the calendar year in which a determination under this section is being made, based on a representative sample of patient visits that occurred during the calendar year, it provides at least one-third of all its outpatient visits for the treatment of emergency medical conditions on an urgent basis without requiring a previously scheduled appointment.”
As specified in § 413.65, provider-based status means “the relationship between a main provider and a provider-based entity or a department of a provider, remote location of a hospital, or satellite facility that complies with the provisions.” Including provider-based status in the definition of a qualifying ED reflects the common Start Printed Page 27071ownership of the hospital and the distinct part psychiatric unit.
As discussed in the November 2004 IPF PPS final rule, three steps were involved in the calculation of the ED adjustment factor.
Step 1: We estimated the proportion by which the ED costs of a case would increase the cost of the first day of the stay. Using the IPFs with ED admissions in FY 2002, we divided their average ED cost per stay admitted through the ED ($198) by their average cost per day ($715), which equals 0.28.
Step 2: We adjusted the factor estimated in step 1 to account for the fact that we would pay the higher first day adjustment for all cases in the qualifying IPFs, not just the cases admitted through the ED. Since on average, 44 percent of the cases in IPFs with ED admissions are admitted through the ED, we multiplied 0.28 by 0.44, which equals 0.12.
Step 3: We added the adjusted factor calculated in the previous 2 steps to the variable per diem adjustment derived from the regression equation that we used to derive our other payment adjustment factors. The first day payment factor from this regression is 1.19. Adding the 0.12, we obtained a first day variable per diem adjustment for IPFs with a qualifying ED equal to 1.31.
The ED adjustment is made on every qualifying claim except as described below. As specified in § 412.424(d)(1)(v)(B), the ED adjustment is not made where a patient is discharged from an acute care hospital or CAH and admitted to the same hospital's or CAH's psychiatric unit. An ED adjustment is not made in this case because the costs associated with ED services are reflected in the DRG payment to the acute care hospital or through the reasonable cost payment made to the CAH. As we explained in the November 2004 IPF PPS final rule, if we provided the ED adjustment in these cases, the hospital would be paid twice for the overhead costs of the ED (69 FR 66960).
Therefore, when patients are discharged from an acute care hospital or CAH and admitted to the same hospital's or CAH's psychiatric unit, the IPF receives the 1.19 adjustment factor as the variable per diem adjustment for the first day of the patient's stay in the IPF. We do not intend to conduct a new regression analysis for this IPF PPS update. Rather, we plan to wait until we analyze IPF PPS data. Therefore, we are retaining the 1.31 adjustment factor for IPFs with qualifying EDs for the RY beginning July 1, 2006.
As we indicated in the November 2004 IPF PPS final rule, in FY 2002, one third of the IPFs admissions were through the ED. In the November 2003 IPF proposed rule (68 FR 66920) the percentage of admissions through the ED were understated. We plan to monitor claims data to determine the number of IPF admissions admitted through the ED.
Public comments and our responses on the proposed adjustment for IPFs with qualifying EDs are summarized below:
Comment: A few commenters questioned whether IPFs would have to reapply for the ED adjustment annually. Specifically, commenters asked whether it is necessary to re-submit verification of a qualifying ED each year.
Other commenters asked for clarification as to whether the ED adjustment can still be applied based on the date the attestation letter is received or would the IPFs lose the adjustment for the entire cost reporting year.
Response: We indicated in instructions ( Transmittal 384, CR 3541 dated December 1, 2004 and Transmittal 444, CR 3678 dated January 21, 2005) that IPFs should notify their FIs 30 days before the beginning of their cost reporting period regarding if they have a qualifying ED. FIs have the discretion as to how they wish to be notified and as to the type of documentation they require. Once the FI is satisfied that the IPF has a qualifying ED, the FI should enter the information in the provider-specific file within a reasonable timeframe so that the IPF can begin to receive the ED adjustment. This is a one-time verification. Application of the ED adjustment is prospective.
FIs may also use the date the documentation was received from the IPF to implement the ED adjustment. The provider-specific file can be updated from the date of the attestation and claims processed from that date will receive the ED adjustment. We do not intend that IPFs would have to wait until the beginning of their next cost report period to receive the ED adjustment.
However, if an IPF no longer meets the definition of a qualified ED, the IPF must notify their FI. The FI would immediately remove the flag from the provider-specific file and the provider will not receive the ED adjustment. If the provider should once again meet the definition of a qualified ED, they should contact their FI immediately in order to update their file.
Comment: One commenter asked what criteria CMS would use to determine what constitutes a “comprehensive” array of medical as well as psychiatric services. In addition, the commenter asked if the criteria are appropriate and would ensure high-quality care for psychiatric patients.
Response: In most cases, the FI would be familiar enough with the providers they service to know if the hospital has a qualifying ED. In those rare cases where the FI does not know whether the hospital's ED meets our definition of a qualifying ED (for example, new IPFs), the FI will establish that the IPF's ED is staffed and equipped to furnish a comprehensive array of emergency services. In response to the comment, we are clarifying in § 412.424(d)(1)(v)(A) that a qualifying ED is staffed and equipped to furnish both medical as well as psychiatric emergency services.
Final Rule Action: We are retaining the 1.31 percent adjustment factor for IPFs with qualifying EDs for the RY 2007.
a. New Source of Admission Code to Implement the ED Adjustment
In order to ensure that the ED adjustment is not paid for patients who are discharged from an acute care hospital or CAH and admitted to the same hospital's or CAH's psychiatric unit, we directed IPFs to enter source of admission code “4” (transfers from hospital inpatient) on those claims. The source of admission code is a required field on Medicare claims and indicates the source of the patient admissions. However, as we implemented the IPF PPS, we realized that admission code “4” is too broad to distinguish these claims because it reflects transfers from any acute care hospital or CAH. Currently, where admission code “4” is entered on a claim, the ED adjustment is not paid, even if the patient is transferred from a different acute hospital or CAH.
In order to pay these IPF claims appropriately, CMS requested a new source of admission code from the National Uniform Billing Committee to identify transfers from the same hospital or CAH. On June 07, 2005, the National Uniform Billing Committee granted our request to establish a new source of admission code to indicate transfers from the same hospital or CAH. The new source of admission code “D” is effective April 1, 2006. As proposed and in this final rule, the new code will be used by IPFs to identify IPF patients who have been transferred to the IPF from the same hospital or CAH. Claims with source of admission code “D” will not receive the ED adjustment.
Public comments and our response on the proposed new source of admission code to implement the ED adjustment are summarized below: Start Printed Page 27072
Comment: Several commenters indicated that CMS should not penalize IPFs if they receive a transfer from the acute care medical-surgical units of the same hospital. A commenter stated that there may only be one hospital with a psychiatric emergency department in a particular area. The commenter believes that to penalize the transfers is unfair; each facility whether it is the ED, surgical unit, medical unit or psychiatric unit is doing their job and should be appropriately compensated.
Response: As stated in the November 2004 final rule and the RY 2007 proposed rule, in § 412.424(d)(1)(v)(B) we specify that the ED adjustment is not made when a patient is discharged from an acute care hospital or CAH and admitted to the same hospital's or CAH's psychiatric unit. The ED adjustment is not made in this case because the costs associated with the ED services are already reflected in the DRG payment paid to the acute care hospital or through the reasonable cost payment made to the CAH. As explained in the November 2004 IPF PPS final rule and in the RY 2007 proposed rule, if we provided the ED adjustment in these cases, the hospital would be paid twice for overhead costs of the ED (see 69 FR 66960 and 71 FR 3641 respectively).
We note that the ED adjustment is a facility-level adjustment, rather than a patient-level adjustment. This facility-level adjustment applies to psychiatric hospitals and acute care hospitals with distinct part units, and CAHs that maintain a qualifying ED. We are providing the adjustment to psychiatric units in acute care hospitals or CAHs, and psychiatric hospitals because the costs of the ED are allocated to all hospital departments, including the psychiatric units. Also, the adjustment is intended to account for ED costs allocated to the distinct part psychiatric unit for preadmission services otherwise payable under Medicare Part B furnished to a beneficiary during the day immediately preceding the date of admission to the IPF and the overhead cost of maintaining the ED.
In order to ensure that Medicare does not pay twice for these types of transfers, we proposed that admission code “D” be used by IPFs to identify IPF patients who have been transferred to the IPF from the same hospital or CAH. Claims with source of admission code “D” will not receive the ED adjustment.
Final Rule Action: We are finalizing our decision to adopt the new source of admission code “D”. Claims with source of admission code “D” will not receive the ED adjustment.
b. Applicability of the ED Adjustment to IPFs in Critical Access Hospitals
The BBA created the CAH program, designed to represent a separate provider type to provide acute care services in rural areas. Generally, in order to qualify as a CAH, a hospital must—
- Be located in a rural area;
- Provide 24-hour emergency care services;
- Have an average LOS of 96 hours or less;
- Operate up to 25 beds for inpatient critical access care;
- Be located more than 35 miles from a hospital or another CAH or more than 15 miles in mountainous terrain or only secondary roads;
- Or be certified by the State as of December 31, 2005 as being a “necessary provider” of health care services to residents in the area.
Section 405(g) of the MMA authorizes CAHs to establish distinct part psychiatric and rehabilitation units of up to 10 beds effective for cost reporting periods beginning on or after October 1, 2004. Services in these units are paid under the payment methodology that would apply if the services were provided in a distinct part psychiatric or rehabilitation unit of a hospital. As a result, IPFs that are distinct part units of CAHs are paid the same as if they were a distinct part unit of a hospital. Otherwise, the CAH is paid on a reasonable cost basis for inpatient critical access services.
In the November 2004 IPF PPS final rule, we amended § 413.70(e) to clarify that payments for services of distinct part psychiatric units in CAHs are made in accordance with the IPF PPS. In order to pay CAHs the same as other IPFs, CAHs would be subject to the 1-day preadmission services bundling provision specified in § 413.40(c)(2) for patients who are admitted to the CAH's IPF. As a result, the cost of preadmission services, including ED services furnished to CAH IPF patients would be allocated to the IPF.
D. Other Payment Adjustments and Policies
The IPF PPS includes the following payment adjustments: (1) An outlier policy to promote access to IPF care for those patients who require expensive care and to limit the financial risk of IPFs treating unusually costly patients; (2) a stop-loss provision, applicable during the transition period, to reduce financial risk to IPFs projected to experience substantial reductions in Medicare payments under the IPF PPS; (3) an interrupted stay policy to avoid overpaying stays that include a brief absence from the IPF followed by readmission to the IPF; and (4) a payment for patients who receive ECT. As proposed, we are updating those policies in this final rule. We are also making clarifications to the physician certification and recertification requirements in order to ensure consistent practices across IPFs. In addition, we are clarifying coverage of recreation therapy.
1. Outlier Payments
In the November 2004 IPF PPS final rule, we implemented regulations at § 412.424(d)(3)(i) to provide a payment adjustment for IPF stays that have extraordinarily high costs. Providing additional payments for outlier cases to IPFs that are beyond the IPF's control strongly improves the accuracy of the IPF PPS in determining resource costs at the patient and facility level because facilities receive additional compensation over and above the adjusted Federal prospective payment amount for uniquely high-cost cases. These additional payments reduce the financial losses that would otherwise be caused by treating patients who require more costly care and, therefore, reduce the incentives to under-serve these patients.
Under the IPF PPS, outlier payments are made on a per case basis rather than on a per diem basis because it is the overall financial “gain” or “loss” of the case, and not of individual days, that determines an IPF's financial risk. In addition, because patient-level charges (from which costs are estimated) are typically aggregated for the entire IPF stay, they are not reported in a manner that would permit accurate accounting on a daily basis.
Currently, we make outlier payments for discharges in which an IPF's estimated total cost for a case exceeds a fixed dollar loss threshold amount (multiplied by the IPF's facility-level adjustments) plus the Federal per diem payment amount for the case.
In instances when the case qualifies for an outlier payment, we pay 80 percent of the difference between the estimated cost for the case and the adjusted threshold amount for days 1 through 9 of the stay (consistent with the median length of stay for IPFs in FY 2002), and 60 percent of the difference for day 10 and thereafter. We established the 80 percent and 60 percent loss sharing ratios because we were concerned that a single ratio established at 80 percent (like other Medicare hospital PPSs) might provide an incentive under the IPF per diem payment system to increase length of Start Printed Page 27073stay in order to receive additional payments. After establishing the loss sharing ratios, we determined the current fixed dollar loss threshold amount of $5,700 through payment simulations designed to compute a dollar loss beyond which payments are estimated to meet the 2 percent outlier spending target.
a. Update to the Outlier Fixed Dollar Loss Threshold Amount
As indicated in section II.A. of this final rule, in accordance with the update methodology described in § 412.428(d), we are updating the fixed dollar loss threshold amount used under the IPF PPS outlier policy. Based on the regression analysis and payment simulations used to develop the IPF PPS, we established a 2 percent outlier policy to make an appropriate balance between protecting IPFs from extraordinarily costly cases while ensuring the adequacy of the Federal per diem base rate for all other cases that are not outlier cases.
We continue to believe a 2 percent outlier policy is an appropriate target percentage and proposed to retain the 2 percent outlier policy. However, we believe it is necessary to update the fixed dollar loss threshold amount because analysis of the latest available data and rate increases indicates adjusting the fixed dollar loss amount is necessary in order to maintain an outlier percentage that equals 2 percent of total estimated IPF PPS payments. We intend to continue to analyze estimated outlier payments for subsequent years using the best available data in order to maintain estimated outlier payments at 2 percent of total estimated IPF PPS payments.
We have determined that in certain sections of the November 2004 IPF PPS final rule, we used the phrase “Fixed-dollar loss threshold” and, in other sections, we used the phrase “Fixed-dollar loss amount” to describe the dollar amount by which the costs of a case exceed payment in order to qualify for an outlier payment. In order to avoid confusion regarding these phrases, we are using the term “fixed-dollar loss threshold amount” when we are referring to the dollar amount by which the costs of a case exceed payment in order to qualify for an outlier payment.
As a result of this clarification, in § 412.402, we are revising the term “Fixed dollar loss threshold” to “Fixed dollar loss threshold amount.” We are also making clarifying changes to § 412.424(d)(3)(i) and § 412.424(d)(3)(i)(A) to state that we will provide an outlier payment if an IPF's estimated total cost for a case exceeds a “fixed dollar loss threshold amount” plus the total IPF adjusted payment amount for the stay, and that it is the fixed dollar loss threshold amount that is adjusted by the IPF's facility-level adjustments.
Aside from updating the terminology “fixed dollar loss threshold amount” and making the conforming changes to the regulation text described above, we did not propose to make any other changes to the outlier policy. Therefore, we will continue to adjust the fixed dollar loss threshold amount by the applicable facility-level payment adjustments and add this amount to the IPF PPS payment amount in order to determine if a case qualifies for an outlier payment. For cases that meet the threshold amount, we will pay 80 percent for days 1 through 9 and 60 percent for day 10 and thereafter.
In the November 2004 IPF PPS final rule, we described the process by which we calculate the outlier fixed dollar loss threshold amount. We will continue to use this process in this final rule. We begin by simulating aggregate payments with and without an outlier policy, and applying an iterative process to a fixed dollar loss amount that will result in outlier payments being equal to 2 percent of total simulated payments under the simulation. Based on this process, we proposed a fixed dollar loss threshold amount of $6200 for RY 2007. In this final rule, we are finalizing this amount. For RY 2007, IPF PPS will use $6200 as the fixed dollar loss threshold amount in the outlier calculation in order to maintain the proposed 2 percent outlier policy.
We note that the simulation analysis used to calculate the $6200 fixed dollar loss threshold amount includes all of the changes to the IPF PPS discussed in this final rule.
Public comments and our responses to changes to the outlier fixed dollar loss threshold amount are summarized below.
Comment: Several commenters requested that CMS use FY 2005 claims data to ensure that the fixed dollar loss threshold amount is correctly set, and if that data are not available, the commenters recommended that CMS keep the threshold at its current level.
Other commenters suggested that since CMS is not making any other changes to the major adjustments, changes should not be made to adjust the fixed dollar loss threshold amount. They felt that an increase in the threshold is unnecessary and might lead to a financial burden on IPFs. One commenter asked how CMS could accurately determine that 2 percent is the best outlier percentage and that the threshold amounts are appropriate.
Response: A complete set of FY 2005 claims data will not be available until later in the year, therefore we will not be able to analyze this data in time for publication of this final rule. It is necessary to update the fixed dollar loss threshold amount because we are increasing the Federal per diem base rate and the ECT payment rate. We are using the best available data to compute the updated fixed dollar loss threshold amount in our payment simulations. As stated above, we believe 2 percent is the optimal outlier percentage because it strikes an appropriate balance between protecting IPFs from extraordinarily costly cases while ensuring the adequacy of the Federal per diem base rate for all other cases that are not outlier cases. In the future, as IPF PPS data becomes available, we can analyze the accuracy of the fixed dollar loss threshold amount.
Comment: Several commenters recommended that CMS provide a detailed description of the methodology used in calculating the fixed dollar loss threshold amount.
Response: We estimate the cost of each case and inflate these costs to RY 2007 dollars in our simulations. We used FY 2002 claims and cost report data to estimate the cost per stay. We calculated these costs by taking routine per diem costs from the cost report (for the routine costs) and by taking departmental charges and cost-to-charge ratios (for the ancillary costs). These are the costs we then inflated to RY 2007 dollars in our payment simulations. We then applied RY 2007 rates and policies in our payment simulations to compute the updated fixed dollar loss threshold amount.
Comment: Several commenters requested that CMS use the same methodology as IPPS to calculate the threshold.
Response: The cost-to-charge ratio applied to charges provides Medicare the most accurate measure of a provider's per-case cost for the purpose of paying for high-cost outlier cases at the point that we process the initial claim. The cost-to-charge ratio is based on the providers' own cost and charge information as reported by the providers. In this final rule, we have applied the cost-to-charge ratios to the reported charges to estimate the cost per case, and inflated the costs to current dollars. In the future, when more recent data is available, we will consider whether using the IPPS methodology of inflating the charges and applying the latest cost-to-charge ratios to estimate the cost per case is an even more accurate method of calculating the threshold amount. Start Printed Page 27074
Comment: One commenter suggested that CMS investigate the possibility and legality of carrying over any unused outlier money from year to year.
Response: We have responded to similar comments a number of times in the context of other PPS regulations, ((70 FR 24168), (70 FR 24196 through 24197), (57 FR 39784), (58 FR 46347), (59 FR 45408), (60 FR 45856), (61 FR 27496), (56 FR 43227), and (61 FR 46229 through 46230)). As we have explained before and as explained below, we do not make adjustments to PPS payment rates to account for differences between projected and actual outlier payments in a previous year.
We implemented the IPF PPS outlier policy at § 412.424(d)(3)(i). We set outlier criteria so that outlier payments are projected to equal 2 percent of estimated total IPF PPS payments. In doing so, we use the best available data at the time to make our estimates.
Outlier payments are “funded” through a prospective adjustment to the base rate. We do not set money aside into a discrete “pool” dedicated solely for outlier payments. Outlier payments are based on estimates. If outlier payments for a given year are greater than projected, we do not recoup money from IPFs; if outlier payments for a given year are lower than projected, we do not make an adjustment to account for the difference. If estimates turn out to be inaccurate, we believe the more appropriate action is to continue to examine the outlier policy and to try to refine the methodology for setting outlier thresholds. Thus, consistent with this approach, for this final rule we are finalizing our decision to update the outlier threshold amount to $6200 for RY 2007 to make estimated outlier payments equal to 2 percent of total estimated IRF PPS payments in RY 2007.
Final Rule Action: In this final rule, we are adopting $6200 as the fixed dollar loss threshold amount for RY 2007.
b. Statistical Accuracy of Cost-to-Charge Ratios
As stated previously, under the IPF PPS, an outlier payment is made if an IPF's cost for a stay exceeds a fixed dollar loss threshold amount. In order to establish an IPF's cost for a particular case, we multiply the IPF's reported charges on the discharge bill by their overall cost to charge ratio (CCR). This approach to determining a provider's cost is consistent with the approach used under the IPPS and other prospective payment systems. In FY 2004, we implemented changes to the IPPS outlier policy used to determine CCRs for acute care hospitals because we became aware that payment vulnerabilities resulted in inappropriate outlier payments. Under the IPPS, we established a statistical measure of accuracy for CCRs in order to ensure that aberrant CCR data did not result in inappropriate outlier payments. As we indicated in the November 2004 IPF PPS final rule, because we believe the IPF outlier policy is susceptible to the same payment vulnerabilities as the IPPS, we adopted an approach to ensure the statistical accuracy of CCRs under the IPF PPS. Therefore, we adopted the following in the November 2004 IPF PPS final rule:
- We calculated two national ceilings, one for IPFs located in rural areas and one for IPFs located in urban areas. We computed the ceilings by first calculating the national average and the standard deviation of the CCR for both urban and rural IPFs.
To determine the rural and urban ceilings, we multiplied each of the standard deviations by 3 and added the result to the appropriate national CCR average (either rural or urban). The upper threshold CCR for IPFs in RY 2007 is 1.7447 for rural IPFs, and 1.7179 for urban IPFs, based upon CBSA-based geographic designations. If an IPF's CCR is above the applicable ceiling, the ratio is considered statistically inaccurate and we assign the appropriate national (either rural or urban) median CCR to the IPF.
Additional information regarding the national median CCRs is included in the November 2004 IPF PPS final rule (69 FR 66961).
- We do not apply the applicable national median CCR when an IPF's CCR falls below a floor. We made this decision because using the national median CCR in place of the provider's actual CCR would overstate the IPF's costs. We are applying the national CCRs to the following situations:
++ New IPFs that have not yet submitted their first Medicare cost report.
++ IPFs whose operating or capital CCR is in excess of 3 standard deviations above the corresponding national geometric mean (that is, above the ceiling).
++ Other IPFs for whom the fiscal intermediary obtains inaccurate or incomplete data with which to calculate either an operating or capital CCR or both.
For new facilities, we are using these national ratios until the facility's actual CCR can be computed using the first tentatively settled or final settled cost report, which will then be used for the subsequent cost report period.
We are not making any changes to the procedures for ensuring the statistical accuracy of CCRs in RY 2007. However, we are updating the national urban and rural CCRs (ceilings and medians) for IPFs for RY 2007 based on the full CY 2005 CCRs entered in the provider-specific file. In addition, we are updating the ceilings and national median CCRs will be based on CBSA-based geographic designations because the CBSAs are the geographic designations we are adopting for purposes of computing the proposed wage index adjustment to IPF payments beginning July 1, 2006. The national CCRs for RY 2007 were estimated to be 0.7100 for rural IPFs and 0.5500 for urban IPFs and will be used in each of the three situations cited above. These estimates were based on the IPF's location (either urban or rural) using the CBSA-based geographic designations.
In this final rule, we are finalizing our decision to update the national urban and rural CCRs (median and ceilings) based on the previous full CYs' provider-specific file. These CCRs will be announced in each year's annual notice of prospective payment rates published in the Federal Register. We are adding a new paragraph (g) to § 412.428 to clarify that we intend to update the national urban and rural ceilings and medians as part of the annual update of the IPF PPS and to specify when the national median urban and rural CCRs will be used.
Comment: One commenter asked that a provision be added to the national median CCR policy that an exception to the computed CCR be allowed to be filed with the FI if using the national median CCR overstates the IPF's costs.
Response: CMS believes that the actual CCR reported on the cost report should be used to calculate outlier payments. In the vast majority of cases, the IPF's CCR will be updated within a year, when the next cost report is filed. An interim cost report can be filed for special cases, in which case the updated CCR can be used. However, allowing IPFs to continually submit cost and charge data could create a burden for Fiscal Intermediaries. Finally, if the IPF is dissatisfied with the amount of payment, they can invoke existing appeal rights.
2. Stop-Loss Provision
In the November 2004 IPF PPS final rule, we implemented a stop-loss policy to reduce financial risk for those facilities expected to experience substantial reductions in Medicare payments during the IPF PPS transition period. This stop-loss policy guarantees that each facility receives total IPF PPS Start Printed Page 27075payments that are no less than 70 percent of its TEFRA payments, had the IPF PPS not been implemented.
This policy is applied to the IPF PPS portion of Medicare payments during the 3-year transition. Hence, during year 1, when three-quarters of the payment were based on TEFRA and one-quarter on the IPF PPS; stop loss payments guarantee payments which are at least 70 percent of the TEFRA payments. The resulting 92.5 percent of TEFRA payments in year 1 is the sum of 75 percent and 25 percent times 70 percent.
In year 2, one-half of the payment will be based on TEFRA and one-half on the IPF PPS. In year 3, one-quarter of the payment will be based on TEFRA and three-quarters on the IPF PPS. In year 4 of the IPF PPS, Medicare payments are based 100 percent on the IPF PPS.
The combined effects of the transition and the stop-loss policies will be to ensure that the total estimated IPF PPS payments are no less than 92.5 percent in year 1, 85 percent in year 2, and 77.5 percent in year 3. We are not making any changes to the Stop-Loss provision.
3. Patients Who Receive Electroconvulsive Therapy (ECT)
In developing the IPF PPS, we received numerous public comments recommending that we include a payment adjustment for patients who receive ECT treatments during their IPF stay because furnishing ECT treatment, either directly or under arrangements, adds significantly to the cost of these stays. When we analyzed the FY 2002 MedPAR data, we found that ECT cases comprised about 6 percent of all cases and that almost 95 percent of ECT cases were treated in IPFs that are psychiatric units of acute care hospitals. Even among psychiatric units, ECT cases are concentrated among a relatively small number of facilities. Overall, approximately 450 facilities had cases with ECT. Among these facilities, we estimated the mean number of ECT cases per facility to be approximately 25. In addition, approximately one-half of the IPFs providing ECT had no more than 15 cases in FY 2002.
Our analysis confirmed that cases with ECT are substantially more costly than cases without ECT. We found that on a per case basis, ECT cases are approximately twice as expensive as non-ECT cases ($16,287 compared to $7,684). Most of this difference is due to variation in LOS (20.5 days for ECT cases compared to 11.6 days for non-ECT cases). In addition, the ancillary costs per case for ECT cases are $2,740 higher than those for non-ECT cases.
Although we are able to determine the cost of stays with ECT, we are unable to develop an ECT cost per treatment using the FY 2002 IPF claims data because the claims do not include the number of treatments. As a result, in the November 2004 IPF PPS final rule, we established the following methodology for calculating the IPF PPS ECT payment adjustment.
We established an ECT base rate using the pre-scaled and pre-adjusted median hospital cost for CPT procedure code 90870 used for payment under hospital outpatient PPS (OPPS), based on hospital claims data. The median cost for all OPPS services are posted after publication of the OPPS proposed rule at the following address: http://www.cms.hhs.gov/hospitaloutpatientPPS. We used unadjusted hospital claims data under the OPPS, that is, the pre-scaled and pre-adjusted median hospital cost per treatment, to establish the ECT base rate because we did not want the ECT payment under the IPF PPS to be affected by factors that are relevant to OPPS but not specifically applicable to IPFs. The median cost ($311.88) was then standardized and adjusted for budget neutrality, resulting in an ECT payment adjustment of $247.96 per treatment. The ECT base rate is adjusted for wage and COLA differences in the same manner that we adjust the Federal per diem base rate.
In order to receive the payment adjustment, IPFs must indicate on their claims the revenue code for ECT (901), along with the total number of units (ECT treatments) provided to the patient during their IPF stay. In addition, IPFs must include the ICD-9-CM procedure code for ECT (94.27) and the date of the last ECT treatment the patient received.
As we stated in the November 2004 IPF PPS final rule, although we established the ECT adjustment as a distinct payment under the IPF PPS, our preferred approach would be to include a patient level adjustment as a component of the model (for example, determined through the regression analyses) to account for the higher costs associated with ECT (69 FR 66951). We believe the approach will better control incentives towards over-utilization and be more consistent with the approach used for other patient level adjustments under the PPS. During the transition period we expect to collect more data on the number of ECT treatments per stay, and associated costs. We will utilize these data to evaluate alternative approaches for incorporating an adjustment for ECT in the payment system. To the extent that we change the payment methodology, we would propose the change first in a future rulemaking. Although our analysis will continue, we do not plan to redo the regression analysis until we analyze IPF PPS data.
It is important to note that since ECT treatment is a specialized procedure, not all providers are equipped to provide the treatment. Therefore, many patients who need ECT treatment during their IPF stay must be referred to other providers to receive the ECT treatments, and then return to the IPF. In accordance with § 412.404(d)(3), in these cases where the IPF is not able to furnish necessary treatment directly, the IPF would furnish ECT under arrangements with another provider. While a patient is an inpatient of the IPF, the IPF is responsible for all services furnished, including those furnished under arrangements by another provider. As a result, the IPF claim for these cases should reflect the services furnished under arrangements by other providers.
Public comments and our responses on the proposed ECT payment policy are summarized below.
Comment: Several commenters asked why CMS was continuing to adjust the ECT rate by the standardization factor, behavioral offset, stop-loss adjustment, and outlier adjustment when the IPF PPS is no longer budget neutral after the implementation year.
Response: We proposed to treat the ECT rate in a similar manner to the Federal per diem base rate. Specifically, we proposed to adjust the CY 2006 OPPS median rate for ECT by the standardization factor, behavioral offset, stop-loss adjustment, and outlier adjustment in addition to applying the wage index budget neutrality factor. This way, all of the adjustments that are incorporated into the Federal per diem base rate would be incorporated into the ECT rate. However, based on the comments we received, and in order to improve consistency and give more predictability in the ECT rate from year to year, we believe it is more appropriate to use the CY 2005 ECT rate as a base, and then update that amount by the market basket each rate year.
This methodology, we believe, will be even more consistent with the methodology we use to update the Federal per diem base rate because we will use the RPL market basket increase to increase both rates. Exactly as the standardization factor, behavioral offset, stop-loss adjustment, and outlier adjustment are already built into the Federal per diem base rate before we apply the market basket and the wage index budget neutrality factor, the implementation year ECT rate of Start Printed Page 27076$247.96 includes the standardization factor, behavioral offset, stop-loss adjustment, and outlier adjustment. Then, just as we updated the federal per diem base rate, we will then apply the corrected standardization factor (please see section V.B for a discussion of how we adjust this factor on Federal per diem base rate), the market basket increase of 4.3 percent, and the wage index budget neutrality factor of 1.0042 to compute a RY 2007 ECT rate of $256.20.
We will monitor ECT payments and usage under the IPF PPS and the OPPS to ensure that the increased payments for ECT do not lead to changes in the frequency of utilization by reviewing the FY 2005 MedPAR claims data.
Comment: One commenter stated that CMS should ensure that the ECT amount adequately reflects the cost of providing the treatment.
Response: We believe using the CY 2005 median cost for ECT under the OPPS as a basis for our ECT payment rate is the best option at this time to ensure the most appropriate payment for ECT. We will continue to monitor ECT payments as new data become available, and will make changes, if warranted.
Final Rule Action: In summary, we will finalize the update methodology for the ECT rate by using the CY 2005 ECT rate as a base and then updating that amount by the market basket increase each rate year. We will also continue to monitor ECT payments under the IPF PPS and the OPPS.
4. Physician Certification and Recertification Requirements
Since the publication of the November 2004 IPF PPS final rule, we have received inquiries related to physician certification and recertification. It appears that some psychiatric units in acute care hospitals have been following the timeframes that are applicable to the acute care hospital of which they are a part (as specified in § 424.13) rather than those that apply to psychiatric hospitals (as specified in § 424.14).
To eliminate the confusion that we believe may be caused by the titles of § 424.13 and § 424.14 and to ensure consistency in compliance with the requirements among all IPFs, in the RY 2007 proposed rule (71 FR 3616), we proposed to revise the title of § 424.14 from “Requirements for inpatient services of psychiatric hospitals” to “Requirements for inpatient services of inpatient psychiatric facilities.” In addition, we proposed that for the purposes of payment under the IPF PPS, all IPFs would follow the physician certification and recertification requirements as specified in § 424.14.
In the November 28, 2003 IPF PPS proposed rule (68 FR 66920), we proposed to—(1) amend § 424.14 to state that in recertifying a patient's need for continued inpatient care in an IPF, a physician must indicate that the patient continues to need, on a daily basis, inpatient psychiatric care (furnished directly by or requiring the supervision of IPF personnel) or other professional services that, as a practical matter, can be provided only on an inpatient basis; and (2) revise § 424.14(d) to require that a physician recertify a patient's continued need for inpatient psychiatric care on the 10th day following admission to the IPF rather than the 18th day following admission to the IPF (68 FR 66939).
However, in the November 2004 IPF PPS final rule, we did not include the proposed physician recertification requirement changes because most of the public comments we received on this issue did not support the proposed changes and indicated that there are inconsistencies in the timeframes currently required for IPFs that warranted additional analysis. Instead, we stated that we would continue to require that a physician recertify a patient's continued need for inpatient psychiatric care on the 18th day following admission to the IPF.
Since publication of the November 2004 IPF PPS final rule, we have received additional inquiries related to the physician certification and recertification timeframes that currently apply to IPFs. As noted above, it appears that some psychiatric units in acute care hospitals have continued to follow the timeframes that are applicable to the acute care hospital of which they are a part (as specified in § 424.13) rather than those that apply to psychiatric hospitals (as specified in § 424.14). Section 424.13(d) requires the initial certification no later than as of the 12th day of hospitalization and the first recertification is required no later than as of the 18th day of hospitalization. Section § 424.14(d) requires certification at the time of admission or as soon thereafter as is reasonable and practicable and the first recertification is required as of the 18th day of hospitalization.
In order to clarify requirements and establish further consistency among provider types, for purposes of payment under the IPF PPS, we proposed that all IPFs (distinct part units of acute care hospitals and CAHs and psychiatric hospitals) meet the physician certification and recertification timeframes in § 424.14.
As proposed, we are revising § 424.14(d) to provide that the initial physician certification will be required at the time of admission or as soon thereafter as is reasonable and practicable and the first recertification will be required as of the 12th day of hospitalization. Subsequent recertifications will be required at intervals established by the hospital's UR committee (on a case-by-case basis if desired), but no less frequently then every 30 days.
We chose to propose the 12th day because it is more in line with the median LOS and it is current practice for certification in psychiatric units.
In addition, we received inquiries from FIs requesting guidance on the content requirement of physician certifications at § 424.14(c), relating to the medical necessity of continued inpatient psychiatric care. As a result, we are adding language to clarify that for purposes of payment under the IPF PPS, the physician will also recertify that the patient continues to need, on a daily basis, active treatment furnished directly by or requiring the supervision of inpatient psychiatric facility personnel.
We received several comments related to the various changes we proposed making to the Certification and Plan of Treatment Requirements of § 424.14.
Commenters were silent with respect to our proposed title revision to § 424.14 from “Requirements for inpatient services of psychiatric hospitals” to “Requirements for inpatient services of inpatient psychiatric facilities.” We are finalizing the title revision for § 424.14 as “Requirements for inpatient services of inpatient psychiatric facilities.”
Overall, commenters supported making the physician certification requirements consistent among distinct part psychiatric units of acute care hospitals and CAHs and psychiatric hospitals. Therefore, for the purposes of payment under the IPF PPS, we are requiring that all IPFs (distinct part psychiatric units of acute care hospitals and CAHs and psychiatric hospitals) follow the physician certification and recertification requirements as specified in § 424.14.
We received mixed responses from commenters concerning our proposed physician certification and recertification timeframes.
Specific comments and our responses on the proposed changes implementing physician certification and recertification requirements are summarized below.
Comment: One hospital association expressed support for a 12-day recertification requirement, finding it Start Printed Page 27077preferable to 18 days. Other commenters requested the current requirement of 18 days for the initial recertification remain in place, citing added administrative burden since most patients are discharged before the 18th day. A couple of the commenters recommended maintaining the 18-day recertification requirement since it is part of the original language for § 424.14 and further believe it is the established practice in psychiatric hospitals.
Response: When § 424.14(d)(2) was developed in the 1980s, the average LOS for inpatient psychiatric hospitalization was much longer than the current median LOS of 9 days, thereby necessitating a parallel recertification requirement of 18 days, which was reflective of current treatment practice at that time. However, as inpatient psychiatric treatment has evolved with the development of new medications and therapies, so has the average length of inpatient care.
According to the MedPar 2002 claims data, the median LOS for Medicare beneficiaries in IPFs is 9 days. Since the duration of inpatient psychiatric hospitalization stays have shortened, the certification and recertification timeframe and practices need to be updated in order to remain consistent with current practice. Thus, an earlier recertification timeframe is indicated by the shorter LOS for inpatient psychiatric hospitalization. Therefore, we continue to believe that an 18-day recertification requirement is outdated and not reflective of current inpatient psychiatric treatment.
As a result, we are finalizing that for § 424.14(d)(2), the first recertification is required as of the 12th day of hospitalization. Subsequent recertifications will be required at intervals established by the hospital's Utilization Review committee (on a case-by-case basis if desired), but no less frequently then every 30 days.
Comment: In general, commenters were silent concerning our proposal to modify the certification and recertification language of § 424.14(c), relating to the medical necessity of continued inpatient psychiatric care. However, a couple of commenters requested that the language required for certification and recertification remain consistent with § 424.14(b) and § 424.14(c). Another commenter requested clarification on the proposed language requiring “the physician would recertify that the patient continues to need, on a daily basis* * *”. The commenter questioned whether physicians would need to chart daily in the patient's record that the patient continues to need active treatment.
Response: We proposed only one modification to § 424.14(c), “Content of recertification”, by adding language requiring that the physician would also recertify that the patient continues to need, on a daily basis, active treatment furnished directly by or requiring the supervision of inpatient psychiatric facility personnel. This means, the patient continues to need daily, active treatment that is furnished directly by or requiring the supervision of inpatient psychiatric facility personnel. To clarify, physician certification and recertification, under § 424.14, are not the same as progress notes. A physician must certify the necessity of the services and, in some instances, recertify the continued need for those services to ensure that Medicare pays only for services of the type appropriate for Medicare coverage. Progress notes, under § 412.27(c)(4), must also be recorded by the patient's physician, in addition to a nurse, social worker, and when appropriate, others significantly involved in active treatment modalities, but are used to document the progress of the patient's treatment, and are more frequent than the certification and recertification timelines. In addition to the purpose of clarifying the recertification content requirements, this modification is consistent with the medical necessity requirement for continued inpatient psychiatric care.
As a result, for purposes of payment under the IPF PPS, the physician would also recertify that the patient continues to need, on a daily basis, active treatment furnished directly by or requiring the supervision of inpatient psychiatric facility personnel.
Final Rule Action: In summary, we are changing the title for § 424.14 from “Requirements for inpatient services of psychiatric hospitals” to “Requirements for inpatient services of inpatient psychiatric facilities.”
In addition, for the purposes of payment under the IPF PPS, we are requiring that all IPFs (distinct part psychiatric units of acute care hospitals and CAHs and psychiatric hospitals) follow the physician certification and recertification requirements as specified in § 424.14.
Furthermore, § 424.14(d)(2) will require the first recertification as of the 12th day of hospitalization. Subsequent recertifications will be required at intervals established by the hospital's UR committee (on a case-by-case basis if desired), but no less frequently than every 30 days.
We are also finalizing the content requirement of physician certifications at § 424.14(c)(iii) by adding the following language, “the physician will also recertify that the patient continues to need, on a daily basis, active treatment furnished directly by or requiring the supervision of inpatient psychiatric facility personnel.”
5. Provision of Therapeutic Recreation in IPFs
Before the implementation of the IPPS payment methodology, Medicare coverage guidelines gave specific recognition to therapeutic recreation in inpatient psychiatric hospitals. The guidelines in § 3102.1.A of the Medicare Intermediary Manual, Part 3 (MIM-3), and in § 212.1 of the Medicare Hospital Manual (which now appear in the CMS Internet Online Manual at Pub. 100-02, Chapter 2, § 20.1ff.) specifically identify therapeutic recreation as one of the services that can constitute “active treatment” in this setting when they are—
- Provided under an individualized treatment or diagnostic plan;
- Reasonably expected to improve the patient's condition or for the purpose of diagnosis; and
- Supervised and evaluated by a physician.
However, these guidelines refer to therapeutic recreation in terms of being an “adjunctive” therapy, indicating that even in this setting, it will not independently serve as a patient's sole or primary form of therapeutic treatment, but rather, will be furnished in support of (but subordinate to) some other, primary form of therapy.
When the IPPS was developed in 1983, to the extent that therapeutic recreation and other services had been furnished during the IPPS base period, the bundled IPPS payment for that setting would reflect these costs. However, during the IPPS rulemaking process, we received public comments concerned that, “the cost-saving incentives of the PPS would lead hospitals paid under the system to stop providing recreational therapy services.” In response, in the January 3, 1984 IPPS final rule (49 FR 242) we indicated that implementation of the IPPS would not, in fact, prohibit the provision of recreational therapy services, and that “these services will continue to be covered to the same extent they always have been under existing Medicare policies”.
In implementing the IPPS regulations, we included criteria for identifying certain types of institutions (for example, psychiatric hospitals) that would be excluded from the IPPS and, thus, would continue to be paid under some other methodology. The Start Printed Page 27078regulations also introduced criteria for identifying an IPPS-excluded inpatient psychiatric unit housed within a larger acute-care hospital that would itself be subject to the IPPS. One of these identifying criteria at 42 CFR 405.471(c)(4)(ii)(B) (later recodified at 42 CFR 412.27(b)) was the provision, through the use of qualified personnel, of a number of specified types of services, including psychological services, social work services, psychiatric nursing, occupational therapy, and recreational therapy.
As we explained in the IPPS interim final rule published on September 1, 1983 (48 FR 39758), the regulations designated these particular services because their provision “is typical of units which treat patients whose characteristics are like those in psychiatric hospitals. Consequently, the provision of these services is an identifier of such a patient population”. We note that the designation of these particular services in this context did not serve to define the scope of their coverage under Medicare, nor to mandate their provision in this setting, but merely to identify them as being characteristic of the type of psychiatric unit that would qualify for exclusion from the IPPS.
At the same time the IPPS was being developed, a parallel evolution was taking place in the certification requirements that facilities must meet in order to participate in the Medicare program: a shift from primarily “process-oriented” requirements to more “outcome-oriented” requirements, which focus more on direct indicators of the quality of care actually being furnished to the facility's patients (as reflected in the presence of positive results and the absence of negative ones), and less on the specific “process” through which the facility achieves the desired outcome.
In order to participate in the Medicare program, psychiatric hospitals not only had to meet the conditions of participation (COPs) that apply to general, acute-care hospitals, but additionally had to meet special conditions related to medical records and staffing. Consistent with the recognition of therapeutic recreation as constituting active treatment in this one particular setting (as discussed above), the original COPs for psychiatric hospitals at 42 CFR 405.1038(g) mandated the presence of qualified therapists, assistants, or aides “sufficient in number to provide comprehensive therapeutic activities, including at least occupational, recreational and physical therapy, as needed, to assure that appropriate treatment is rendered for each patient, and to establish and maintain a therapeutic milieu.” Furthermore, 42 CFR 405.1038(g)(3) specified that “recreational or activity therapy services are available under the direct supervision of a member of the staff who has demonstrated competence in therapeutic recreation programs,” and § 405.1038(g)(4) and § 405.1038(g)(5) went on to prescribe additional standards regarding therapy assistants or aides and overall staffing for recreational and activity therapy.
However, when the special medical record and staffing COPs for psychiatric hospitals were subsequently recodified at § 482.62(g), the specific references to recreation therapy were deleted and replaced with a more general requirement to provide a therapeutic activities program. In response to public comments that recommended us to restore the deleted requirements, we indicated that we believe that the deleted requirements concerning therapeutic activities were overly and unnecessarily prescriptive and that the hospital should have the flexibility to determine which activities are most appropriate to its patient population and to determine the criteria to be met by employees providing these services. (See the IPPS PPS rule published on June 17, 1986 (51 FR 22032)).
However, when the 1986 COP changes applicable to psychiatric hospitals were made, we inadvertently retained specific references to recreation therapy in § 412.27. Since the intent of § 412.27(b) is to identify services provided in psychiatric units that are characteristic of services furnished in psychiatric hospitals, we believe it is no longer appropriate to include references to specific therapies in § 412.27. Therefore, in order to have consistent requirements among IPFs, in the RY 2007 IPF PPS proposed rule, we proposed removing recreational therapy from § 412.27(b).
We went on to further explain in the RY 2007 IPF PPS proposed rule that in addition to being consistent with current provisions, we believe the IPF PPS base rate which was developed using FY 2002 data, already reflects the provision of recreation therapy.
We received a few public comments concerning our proposal to remove reference to recreational therapy in § 412.27(b). Overall the commenters recommended that we not delete the reference to recreational therapy.
Public comments and our responses on the proposed changes for removing the reference to recreational therapy are summarized below:
Comment: An industry organization suggested that if CMS'; goal is to maintain consistency, CMS should adopt the language as specified in § 482.62 from the COPs for § 412.27(b).
Response: We believe that this commenter raises a valid concern in terms of maintaining consistency. We also agree with the suggestion of applying the same language to both § 482.62 and § 412.27(b), thereby maintaining consistent requirements among IPFs. Since § 482.62 refers to “therapeutic activities,” we are revising § 412.27(b), to be consistent with § 482.62, by replacing the reference to recreational and occupational therapy with the term “therapeutic activities.”
Comment: Several commenters stated that the inclusion of recreational therapy in § 412.27(b), is no more specific than the references included for social work or occupational therapy.
Response: As we indicated in the RY 2007 IPF PPS proposed rule, since the intent of § 412.27(b) is to identify services provided in psychiatric units that are characteristic of services furnished in psychiatric hospitals, we believe it is essential to maintain consistency among the provisions for § 482.62 and § 412.27(b). Therefore, we are removing the reference to both recreational and occupational therapy from § 412.27(b) and replacing them with the more general reference to therapeutic activities which is currently used in § 482.62.
However, we believe it is important to maintain the reference to social work services in § 412.27, since it is currently included in § 482.62.
Comment: One commenter requested that CMS continue to pay for recreational therapy. Other commenters were concerned that if the reference to recreational therapy is removed, people may not know that Medicare has traditionally recognized recreational therapy as an adjunctive therapy in psychiatric facilities.
Response: As we discussed in the RY 2007 IPF PPS proposed rule, we believe the IPF PPS base rate, which was developed using FY 2002 data, reflects the provision of recreation and occupational therapy. Even though we are removing the specific reference to recreation and occupational therapy in § 412.27(b), both recreational and occupational therapy services will continue to be covered to the same extent they always have been under existing Medicare policies.
In addition, although we are removing the specific references to recreational and occupational therapy from § 412.27(b), we want to emphasize that both therapies are, and continue to be, Start Printed Page 27079valuable therapeutic interventions in psychiatric treatment.
Final Rule Action: In summary, for consistency, we are adopting the language as specified in § 482.62 from the COPs for § 412.27(b). Specifically, 412.27(b) will state—“Furnish, through the use of qualified personnel, psychological services, social work services, psychiatric nursing services and therapeutic activities.”
6. Same Day Transfers
Currently, when a transfer, discharge, or death occurs on the same day as an admission to an IPF, the IPF PPS PRICER does not recognize any covered IPF days and the IPF claims are suspended. Based on review of a limited sample of the IPF and subsequent IPPS claims, it appears that many of these patients are first seen in a hospital's ED, are admitted to the hospital's psychiatric unit and, later the same day, determined to be too medically compromised to be managed in the psychiatric unit. This scenario may occur because the patient presents at the ED and is admitted to the psychiatric unit in the middle of the night, and when the patient's admission to the unit is reviewed by a psychiatrist the next morning, the physician determines that the patient should be discharged for acute care. In other cases, a patient may have been admitted to a freestanding psychiatric hospital based on the information furnished by an ED of an acute care hospital. However, after admission, the psychiatric hospital staff evaluates the patient and determines that the patient has medical needs that they are not staffed or equipped to meet.
The Provider Reimbursement Manual addresses the same day transfer issue from the perspective of counting Medicare days for the purpose of Medicare cost reporting. Section 2205 indicates that only full patient days may be used to apportion inpatient routine care service costs and that a day begins at midnight and ends 24 hours later. However, section 2205.1 explains how to count a day if the day of admission and the day of discharge are the same. Section 2205.1 indicates that when a patient is admitted and then transferred from one participating provider to another before midnight of the same day, a day (except for utilization purposes) is counted at both providers. A day of Medicare utilization is charged only for the admission to the second provider. This distinction is important for psychiatric admissions because IPF stays are subject to the 190-day lifetime limit on inpatient psychiatric care.
Section 1812(b) of the Act and 42 CFR 409.62 indicate that payment is not available for inpatient psychiatric hospital services furnished beyond the 190-day lifetime limit. Thus, Medicare coverage of IPF services, specifically IPF services furnished in freestanding psychiatric hospitals is limited to 190 days. In consideration of the limit on coverage of IPF services, where there is a same day transfer between Medicare participating providers, we only count the second admission for utilization purposes. Therefore, the initial admission to the IPF does not count against a beneficiary's lifetime psychiatric services limit.
We have some concerns regarding same day transfers from an IPF. Under TEFRA, a hospital receives its cost up to the hospital's TEFRA limit. The TEFRA limit is based on the hospital's average cost per discharge in a base period. When an admission and discharge occur on the same day, the hospital's cost is unlikely to exceed the TEFRA limit, so the hospital receives its cost for the day. These same day transfers also improve the hospital's payment under TEFRA by slightly reducing its cost per discharge. We are also concerned that when the transfer occurs in the same hospital, this practice circumvents bundling rules under the IPPS, in that it unbundles the ED charges from the IPPS claim and allocates the ED costs to the psychiatric unit even though the patient may have been inappropriately admitted to the unit.
Based on the review of IPF PPS claims we conducted, it did not appear that the admissions to the IPF were medically reasonable and necessary. However, we believe it is important to base a decision regarding coverage of these days on a comprehensive review of the claims. Therefore, in the RY 2007 IPF PPS proposed rule, we did not propose a change in payment policy. However, we did consider several alternative methods for addressing same day transfers under the IPF PPS which are described below. Any change to treatment of same day transfers would be made prospectively.
We could treat these days as covered days under the IPF PPS. However, under the IPF PPS, a 19 percent adjustment to the base rate is applied to day 1 of the stay to reflect the additional administrative and clinical costs associated with admission and the day 1 adjustment is increased to 31 percent when the IPF has a qualifying ED. The IPF may also receive, for example, a teaching adjustment or rural adjustment, for these partial days of care. Several of the claims in our analysis indicate a stay of 2 hours. We are concerned that this approach would overpay IPFs and encourage inappropriate admissions and transfers.
Another option would be to make no PPS payment, but continue making TEFRA payments during the IPF PPS transition period. For example, for cost reporting periods beginning in 2006, IPFs would receive a blended payment consisting of 50 percent PPS and 50 percent TEFRA. Therefore, under this approach we would allow some payment for these days for cost reporting periods in 2006 and 2007, but once the IPF PPS transition period is over, the IPFs would receive no payment for these days. We think this approach would encourage changes in admission practices in order to avoid the need to transfer patients. However, once the IPF PPS transition is over, there would be no payment mechanism to pay IPFs for stays in which there is a circumstance, not reasonably foreseeable by the admitting IPF, for example, a serious change in health status on the day of admission.
We could treat these same day transfer cases as covered days under the IPF PPS but limit payment to the Federal per diem base rate or some other payment amount, for example, half the Federal per diem base rate. This approach would limit payment to IPFs in order to provide an incentive for IPFs to make medical clearance determinations as early in the IPF stay as possible. However, we are concerned that this approach would not lead to changes in admission practices to avoid inappropriate admissions and the need for subsequent transfers.
It is important to note that the cost for these days was included in the cost reports used to develop the IPF PPS, and, as a result, the average cost per day that was used to establish the Federal per diem base rate is higher than it would otherwise have been had those days not been included.
We specifically request public comment from IPFs on this issue to help us to develop a payment policy that pays IPFs appropriately for these days and provides an incentive to avoid same day transfers wherever possible.
Public comments and our responses on the proposed changes for implementing the same day transfers are summarized below.
Comment: We received several comments concerning the issue of an appropriate payment for same day transfers. Many commenters indicated that CMS should conduct a thorough examination of the 2005 claims because they do not believe that same day transfers would be found to be prevalent occurrences. The same commenters also stated that if CMS decides to investigate Start Printed Page 27080other options, the agency should convene the field through an open-door forum or other such venue to discuss the possibilities.
In addition, several commenters requested that when sufficient data is available to fully evaluate same day transfers, CMS should request input from the field before making any changes to current policy. Other commenters also indicated that CMS should continue to reimburse same day transfers as 1-day stays unless it can demonstrate empirically that the cost of the former is sufficiently less than the cost of the latter to justify a partial payment.
Another commenter requested that CMS release a version of the MedPar with relevant information to qualified researchers who would be pleased to conduct an empirical analysis for the agency.
Many commenters supported CMS' instructions for its payment methodology for the suspended IPF PPS same day transfer claims from January 1, 2005. The instructions counted these days as covered for cost reporting purposes if the day of admission and the day of discharge are the same. Other commenters indicated that CMS should not penalize provider's evaluation and treatment efforts, stating that the work was done, therefore providers should be compensated.
Furthermore, commenters support the way section 2205.1 of the Provider Reimbursement Manual instructs FIs to count a day if the day of admission and the day of discharge are the same. The majority of the commenters recommended paying the PPS per diem for these transfers.
Response: We will take all comments into consideration as we develop a payment policy that not only pays appropriately for these days, but will also provide an incentive to avoid same day transfers wherever possible.
Final Rule Action: In summary, we received multiple comments on the same day transfer. We will take all comments into consideration as we develop a payment policy for same day transfers. We will develop the policy for same day transfers in the future, after we analyze IPF PPS data.
VII. Miscellaneous Public Comments Within the Scope of the Proposed Rule
Comment: A commenter requested an inner-city adjustment, indicating that the difficulties of inner-city IPFs are related to a high volume of non-payment in contrast to the more likely rural under use and low volume costs. The commenter suggested a 20 percent adjustment at least, for inner-city IPFs.
Response: We did not include an explicit payment adjustment for inner city facilities in the November 2004 IPF PPS final rule nor did we propose an urban adjustment in the RY 2007 proposed rule. As indicated in the November 2004 IPF PPS final rule (69 FR 66954), we did not include an adjustment for urban IPFs because the regression analysis we conducted did not indicate that urban IPFs were more costly on a per diem basis.
As previously stated, we do not plan to rerun the regression analysis until we analyze IPF PPS data (that is no earlier than FY 2008). When we rerun the regression analysis, we will test for the need for an urban or inner city adjustment.
Comment: A commenter objected to CMS not posting the proposed rule to the CMS Web site until January 18, 2006 while the rule actually went on public display January 13, 2006 and was not published in the Federal Register until January 23, 2006. The commenter stated that if CMS chooses to start the comment period based on the date of display, CMS must ensure that the display copy is promptly posted on the Web site to provide interested parties sufficient time to review the rule and draft comments before the comment period ends.
Response: It is our general practice to post Federal Register documents on our website as soon as practicable after the documents are on public display at the Office of the Federal Register. When we chose to start the comment period from the day of public display, while we are not required to do so, it was our intent to post the proposed rule on CMS website immediately. However, due to circumstances out of our control, we were unable to immediately do so because our Web site at http://www.cms.hhs.gov was being redesigned. However, we did publish a press release on January 13, 2006, announcing the IPF PPS proposed rule went on public display at the Federal Register on January 13, 2006 and that it would be published in the Federal Register on January 23, 2006. In addition, we posted the rule as soon as was practicable for us to do so, on Wednesday, January 18, 2006.
VIII. Provisions of the Final Rule
This final rule essentially incorporates the provisions of the proposed rule, in which we proposed to update the IPF PPS for RY 2007 applicable to IPF discharges occurring during the RY beginning July 1, 2006 through June 30, 2007. In addition, we proposed to adopt the new OMB labor market area definitions for our geographic classifications. The provisions of this final rule that differ from the proposed rule are as follows.
ECT policy Payment
In the RY 2007 IPF PPS proposed rule, we proposed to update the ECT base rate using the pre-scaled pre-adjusted hospital median cost for ECT used for the CY 2006 update of the OPPS. The median cost would then be standardized, adjusted for budget neutrality, and adjusted for wage and COLA differences in the same manner that we adjust the per diem rate.
However, based on the public comments, we are changing the methodology used for calculating the ECT policy payment rate. In order to improve consistency with our updates to the Federal per diem base rate and provide IPFs more predictability for the ECT rate from year to year, we will use the CY 2005 ECT rate as a base, and then update that amount by the market basket increase each rate year.
Section 412.402 Definition
In § 412.402, we are adding the definition of “New GME education program” to mean a medical education program that receives initial accreditation by the appropriate accrediting body or begins training residents on or after November 15, 2004.
Section 412.27 Excluded psychiatric units: Additional requirements.
In § 412.27, we are amending paragraph (b) to remove the specific reference to “occupational therapy, and recreational therapy.” We are adding in its place “therapeutic activities” in order to maintain consistency with current provisions and since the IPF PPS base rate already reflects the provision of recreational therapy.
Section 412.428 Publication of updates to the inpatient psychiatric facility prospective payment system.
In § 412.428, we are revising paragraph (b)(3) to reflect that the rate of increase factor is revised as of October 1 of each year.
Other Issues
In the Inpatient Prospective Payment System proposed rule, published April 25, 2006 (71 FR 23996), we discussed in detail the Health Care Information Transparency Initiative and our efforts to promote effective use of health information technology (HIT) as a means to help improve health care quality and improve efficiency. Specifically, with regard to the transparency initiative, we discuss several potential options for making Start Printed Page 27081pricing and quality information available to the public (71 FR 24120 through 24121). We solicited comments on ways the Department can encourage transparency in health care quality and pricing whether through its leadership on voluntary initiatives or through regulatory requirements. We also are seeking comment on the Department's statutory authority to impose such requirements.
In addition, we discussed the potential for HIT to facilitate improvements in the quality and efficiency of health care services (71 FR 24100 through 24101). We solicited comments on our statutory authority to encourage the adoption and use of HIT. The 2007 Budget states that “the Administration supports the adoption of health information technology (IT) as a normal cost of doing business to ensure patients receive high quality care.” We also are seeking comments on the appropriate role of HIT in potential value-based purchasing program, beyond the intrinsic incentives of a PPS to provide efficient care, encourage the avoidance of unnecessary costs, and increase quality of care. In addition, we are seeking comments on promotion of the use of effective HIT through Medicare conditions of participation.
We intend to consider both the health care information transparency initiative and the use of health information technology as we refine and update all Medicare payment systems. Therefore, while these initiatives are not included in this final rule, we are in the process of seeking input on these initiatives in various proposed Medicare payment rules being issued this year and may pursue these policies in future rulemaking for the IPF PPS.
IX. Collection of Information Requirement
This document does not impose information collection and recordkeeping requirements. Consequently, it need not be reviewed by the Office of Management and Budget under the authority of the Paperwork Reduction Act of 1995.
X. Regulatory Impact Analysis
A. Overall Impact
We have examined the impact of this final rule as required by Executive Order 12866 (September 1993, Regulatory Planning and Review), the Regulatory Flexibility Act (RFA) (September 19, 1980, Pub. L. 96-354), section 1102(b) of the Social Security Act, the Unfunded Mandates Reform Act of 1995 (UMRA) (Pub. L. 104-4), and Executive Order 13132.
Executive Order 12866 (as amended by Executive Order 13258, which merely reassigns responsibility of duties) directs agencies to assess all costs and benefits of available regulatory alternatives and, if regulation is necessary, to select regulatory approaches that maximize net benefits (including potential economic, environmental, public health and safety effects, distributive impacts, and equity). A regulatory impact analysis (RIA) must be prepared for major rules with economically significant effects ($100 million or more in any 1 year).
Based on the impact analysis, we estimate the expenditures from the IPF PPS implementation year to the 2007 IPF PPS RY will be increased by $160 million. The updates to the IPF labor-related share and wage indices are made in a budget neutral manner and thus have no effect on estimated costs to the Medicare program. Therefore, the estimated increased cost to the Medicare program is the result of a combination of the updated IPF market baskets, which is offset by the transition blend and the revision of the standardization factor. The IPF PPS was budget neutral in the implementation year, but it is not budget neutral in RY 2007. As discussed in section V.B.2 of this final rule, the standardization factor and budget neutrality factors (behavioral offset, stop-loss adjustment, and outlier adjustment) are built into the Federal per diem base rate and the ECT rate. We are increasing these rates by the market basket, resulting in a $160 million increase in payments from the implementation year to RY 2007.
We note that aspects of the transition, including the stop-loss policy and the transition to the 50/50 percent blend in RY 2007 and the transition to the 75/25 percent blend in the 2008 IPF PPS RY, were included in the November 2004 IPF PPS final rule and thus are not incremental to this rule. Nevertheless, it is essential to analyze the impact of the transition blend in order to calculate the increase in cost to the Medicare program.
The impact of the transition blend is an approximately 0.2 percent (about $10 million) decrease in overall payments in RY 2007 and the distribution of that impact is summarized in Table 15. Therefore, the impact attributable to the policy changes finalized in this rulemaking, primarily the market basket update and the standardization correction, is approximately $170 million in the IPF PPS RY 2007.
Since costs to the Medicare program are estimated to be greater than $100 million, this final rule is considered a major economic rule, as defined in 5 U.S.C. 40(2).
The RFA requires agencies to analyze options for regulatory relief of small businesses. For purposes of the RFA, small entities include small businesses, nonprofit organizations, and governmental jurisdictions. Most IPFs and most other providers and suppliers are considered small entities, either by nonprofit status or by having revenues of $6 million to $29 million in any 1 year. (For details, see the Small Business Administration's regulation that set forth size standards for health care industries at (65 FR 69432).)
HHS considers that a substantial number of entities are affected if the rule impacts more than 5 percent of the total number of small entities as it does in this rule. We included all freestanding psychiatric hospitals (79 are non-profit hospitals) in the analysis since their total revenues do not exceed the $29 million threshold. We also included psychiatric units of small hospitals, that is, those hospitals with fewer than 100 beds. We did not include psychiatric units within larger hospitals in the analysis because we believe this final rule would not significantly impact total revenues of the entire hospital that supports the unit. We have provided the following RFA analysis in section V.B to emphasize that, although the final rule will impact a substantial number of IPFs that were identified as small entities, we do not believe it will have a significant economic impact. Based on the analysis of the 1063 psychiatric facilities that were classified as small entities as described above, we estimate the combined impact of the IPF PPS will be a 4.2 percent increase in payments in RY 2007 relative to their payments in the implementation year of the IPF PPS. Based on the information available, we believe that Medicare payments may constitute a small portion of governmental IPFs' revenue stream. We have prepared the impact analysis in section X.B.2 to describe the impact of the final rule in order to provide a factual basis for our conclusions regarding small business impact.
In addition, section 1102(b) of the Act requires us to prepare a regulatory impact analysis if a final rule may have a significant impact on the operations of a substantial number of small rural hospitals. This analysis must conform to the provisions of section 604 of the RFA. With the exception of hospitals located in certain New England counties, for purposes of section 1102(b) of the Act, we previously defined a small rural hospital as a hospital with fewer than 100 beds that is located outside of a Metropolitan Statistical Start Printed Page 27082Area (MSA) or New England County Metropolitan Area (NECMA). However, under the new labor market definitions, we will no longer employ NECMAs to define urban areas in New England. Therefore, for purposes of this analysis, we now define a small rural hospital as a hospital with fewer than 100 beds that is located outside of an MSA. We have determined that this final rule will have a substantial impact on hospitals classified as located in rural areas. As discussed earlier in this preamble, we will continue to provide a payment adjustment of 17 percent for IPFs located in rural areas. In addition, we have established a 3-year transition to the new system to allow IPFs an opportunity to adjust to the new system. Therefore, the impacts shown in Table 15 below reflect the adjustments that are designed to minimize or eliminate any potentially significant negative impact that the IPF PPS may otherwise have on small rural IPFs.
Section 202 of the Unfunded Mandates Reform Act of 1995 also requires that agencies assess anticipated costs and benefits before issuing any final rule whose mandates require spending in any 1 year of $100 million in 1995 dollars, updated annually for inflation. That threshold level is currently approximately $120 million. This final rule will not mandate any requirements for State, local, or tribal governments, nor would it affect private sector costs.
Executive Order 13132 establishes certain requirements that an agency must meet when it promulgates a final rule that imposes substantial direct requirement costs on State and local governments, preempts State law, or otherwise has Federalism implications.
We have reviewed this final rule under the criteria set forth in Executive Order 13132 and have determined that the final rule will not have any substantial impact on the rights, roles, and responsibilities of State, local, or tribal governments.
B. Anticipated Effects of the Final Rule
We discuss below the impact of this final rule on the Federal Medicare budget and on IPFs.
1. Budgetary Impact
As discussed in detail in the IPF PPS proposed rule and summarized in section V.B. of this final rule, we applied a budget neutrality factor to the Federal per diem and ECT base rates to ensure that total payments under the IPF PPS in the implementation period would equal the amount that would have been paid if the IPF PPS had not been implemented. The budget neutrality factor includes the following components: outlier adjustment, stop-loss adjustment, and the behavioral offset. We do not plan to change any of these adjustment factors or projections until we analyze IPF PPS data. In accordance with § 412.424(c)(3)(ii), we will evaluate the accuracy of the budget neutrality adjustment within the first 5 years after implementation of the payment system. We may make a one-time prospective adjustment to the Federal per diem and ECT base rates to account for differences between the historical data on cost-based TEFRA payments (the basis of the budget neutrality adjustment) and estimates of TEFRA payments based on actual data from the first year of the IPF PPS. As part of that process, we will re-assess the accuracy of all of the factors impacting budget neutrality.
In addition, as discussed in section VI.C.1 of this final rule, we are adopting the new CBSAs and labor market share in a budget neutral manner by applying a wage index budget neutrality factor to the Federal per diem and ECT base rates. Thus, the budgetary impact to the Medicare program by the update of the IPF PPS will be the combination of the market basket updates (see section V.C of this final rule), the revision of the standardization factor (see section V.B.3 of this final rule), and the planned update of the payment blend discussed below.
2. Impacts on Providers
To understand the impact of the changes to the IPF PPS discussed in this final rule on providers, it is necessary to compare estimated payments under the IPF PPS rates and factors for the RY 2007 to estimated payments under the IPF PPS rates and factors for the IPF PPS implementation year. The estimated payments for the IPF implementation year are a blend of: 75 percent of the facility-specific TEFRA payment and 25 percent of the IPF PPS payment with stop loss payment. The estimated payments for the IPF PPS RY 2007 are a blend of: 50 percent of the facility-specific TEFRA payment and 50 percent of the IPF PPS payment with stop loss payment. We determined the percent change of estimated 2007 IPF PPS RY payments to estimated IPF PPS implementation year payments for each category of IPFs. In addition, for each category of IPFs, we have included the estimated percent change in payments resulting from the revision of the standardization factor (as discussed in section V.B.3 of this final rule, the ratio of estimated total TEFRA payments to estimated total PPS payments in the implementation year was overestimated and therefore needed to be reduced. We will apply the revised standardization factor prospectively to the Federal per diem base rate and ECT amount), the wage index changes for the IPF PPS RY 2007, the market basket update to IPF PPS payments, and the transition blend for the IPF PPS RY 2007 payment and the facility-specific TEFRA payment.
To illustrate the impacts of the final RY 2007 changes, our analysis begins with an implementation year baseline simulation model based on FY 2002 IPF payments inflated to 2005 with market baskets; the estimated outlier payments in 2005; the estimated stop-loss payments in 2005; the MSA designations for IPFs based on OMB's MSA definitions before June 2003; the 2005 MSA wage index; the implementation year labor-market share; and the implementation year percentage amount of the rural adjustment. During the simulation, the outlier payment is maintained at the target of 2 percent of total PPS payments.
Each of the following changes is added incrementally to this baseline model in order for us to isolate the effects of each change:
- IPF PPS payments adjusted by the revised standardization factor.
- The new CBSAs based on new geographic area definitions announced by OMB in June 2003 and the RY 2007 final budget-neutral labor-related share and wage index adjustment.
- A blended market basket update of 4.5 percent resulting in an update to the hospital-specific TEFRA target amount and an update to the IPF PPS base rates as discussed below.
++ In the IPPS final rule published August 12, 2005 (70 FR 47707), we established an update factor of 3.8 percent effective for cost reporting periods beginning on or after October 1, 2005 using the 2002-based excluded hospital market basket. The 3.8 percent update is applied to the IPF's established TEFRA target amount for cost reporting periods beginning on or after October 1, 2005. However, since the midpoints of the RY 2007 and the IPF PPS implementation period are 15 months apart, the TEFRA payment increase is projected to be 4.6 percent.
++ An update to the Federal per diem base rate of 4.3 percent based on the 2002-based RPL market basket (see section V.C.1.b of this final rule). The market basket update is based on a 15-month time period (from the midpoint of the IPF PPS implementation period to the midpoint of the RY 2007).
- The transition to 50 percent IPF PPS payment and 50 percent facility-specific TEFRA payment. Start Printed Page 27083
Our final comparison illustrates the percent change in payments from the IPF PPS implementation year (that is, January 1, 2005 to June 30, 2006) to RY 2007 (that is, July 1, 2006 to June 30, 2007).
Table 15.—Projected Impacts
Facility by type (1) Number of facilities (2) Standardization factor correction (percent) (3) CBSA wage index and labor share (percent) (4) Market basket (percent) (5) Transition blend (percent) (6) Total (percent) (7) All Facilities 1,806 −0.3 0.0 4.5 −0.2 4.0 By Type of Ownership: Psychiatric Hospitals: Government 178 −0.5 0.1 4.5 11.0 15.6 Non-profit 79 −0.4 0.1 4.5 1.6 6.0 For-profit 150 −0.4 0.1 4.5 4.3 8.7 Psychiatric Units 1,399 −0.3 0.0 4.5 −1.8 2.3 Rural 385 −0.3 0.0 4.5 −0.9 3.2 Urban 1,421 −0.3 0.0 4.5 −0.1 4.1 By Urban or Rural Classification: Urban by Facility Type: Psychiatric Hospitals: Government 144 −0.5 0.1 4.5 10.9 15.4 Non-profit 73 −0.4 0.1 4.5 1.7 6.1 For-profit 143 −0.4 0.1 4.5 4.4 8.8 Psychiatric Units 1,061 −0.3 0.0 4.5 −1.7 2.4 Rural by Facility Type: Psychiatric Hospitals: Government 34 −0.5 −0.1 4.5 12.0 16.3 Non-profit 6 −0.3 0.3 4.5 −0.7 3.9 For-profit 7 −0.2 −0.1 4.5 −1.8 2.4 Psychiatric Units 338 −0.3 0.0 4.5 −2.0 2.1 By Teaching Status: Non-teaching 1,537 −0.3 0.0 4.5 −0.4 3.8 Less than 10% interns and residents to beds 148 −0.3 0.1 4.5 0.5 4.7 10% to 30% interns and residents to beds 72 −0.3 0.0 4.5 0.4 4.6 More than 30% interns and residents to beds 49 −0.4 0.1 4.5 0.0 4.3 By Region: New England 126 −0.3 0.0 4.5 −0.4 3.8 Mid-Atlantic 306 −0.4 0.2 4.5 2.9 7.3 South Atlantic 238 −0.3 −0.2 4.5 0.1 4.0 East North Central 325 −0.3 −0.1 4.5 −1.5 2.6 East South Central 159 −0.4 −0.1 4.5 −0.3 3.7 West North Central 169 −0.3 −0.2 4.5 −1.0 3.0 West South Central 237 −0.3 −0.1 4.5 −2.7 1.4 Mountain 83 −0.3 −0.1 4.5 −0.4 3.7 Pacific 156 −0.3 0.3 4.5 −0.5 4.0 By Bed Size: Start Printed Page 27084 Psychiatric Hospitals: Under 12 beds 26 −0.2 0.1 4.5 −3.8 0.6 12 to 25 beds 46 −0.3 −0.2 4.5 0.2 4.3 25 to 50 beds 91 −0.4 0.1 4.5 4.2 8.6 50 to 75 beds 82 −0.4 0.1 4.5 3.8 8.3 Over 75 beds 162 −0.5 0.1 4.5 8.6 13.0 Psychiatric Units: Under 12 beds 600 −0.3 −0.1 4.5 −4.5 −0.5 12 to 25 beds 474 −0.3 0.0 4.5 −1.9 2.2 25 to 50 beds 228 −0.3 0.0 4.5 −0.6 3.5 50 to 75 beds 58 −0.3 0.0 4.5 0.1 4.3 Over 75 beds 39 −0.4 0.0 4.5 1.3 5.5 3. Results
Table 15 above displays the results of our analysis. The table groups IPFs into the categories listed below based on characteristics provided in the Online Survey and Certification and Reporting (OSCAR) file and the FY 2002 cost report data from HCRIS:
- Facility Type
- Location
- Teaching Status Adjustment
- Census Region
- Size
The top row of the table shows the overall impact on the 1,806 IPFs included in the analysis.
In column 3, we present the effects of the revised standardization factor (see section V.B.3 of this final rule for a discussion of this revision). This is defined to be the comparison of the simulated implementation year payments under the revised standardization factor to the simulated implementation year payments under the original standardization factor. In aggregate, the revision is projected to result in a 0.3 percent decrease in overall payments to IPFs. There are small distributional effects among different categories of IPFs. For example, urban and rural government psychiatric hospitals and psychiatric hospitals with over 75 beds will receive the largest decrease of 0.5 percent, while rural for-profit psychiatric hospitals and psychiatric hospitals with fewer than 12 beds will receive the smallest decrease of 0.2 percent.
In column 4, we present the effects of the budget-neutral update to the labor-related share and the wage index adjustment under the new CBSA geographic area definitions announced by OMB in June 2003. This is a comparison of the simulated implementation year payments under revised budget neutral factor and labor-related share and wage index under CBSA classification to the simulated implementation year payments under revised budget neutral factor and labor-related share and wage index under current MSA classifications. There is no projected change in aggregate payments to IPFs, as indicated in the first row of column 4. There would, however, be small distributional effects among different categories of IPFs. For example, several categories of IPFs, such as IPFs located in the South Atlantic and West North Central regions, and psychiatric hospitals with between 12 and 25 beds, will experience a 0.2 percent decrease in payments. Rural non-profit hospitals and hospitals located in the Pacific region will receive the largest increase of 0.3 percent.
In column 5, we present the effects of the market basket update to the IPF PPS payments by applying the TEFRA and PPS updates to payments under revised budget neutral factor and labor-related share and wage index under CBSA classification. In the aggregate this update is projected to be a 4.5 percent increase in overall payments to IPFs. This 4.5 percent reflects the current blend of the 4.6 percent update for IPF TEFRA payments and the 4.3 percent update for the IPF PPS payments.
In column 6, we present the effects of the payment change in transition blend percentages to transition year 2 (TEFRA Rate Percentage = 50 percent, IPF PPS Federal Rate Percentage = 50 percent) from transition year 1 (TEFRA Rate Percentage = 75 percent, IPF PPS Federal Rate Percentage = 25 percent) of the IPF PPS under revised budget neutral factor, labor-related share and wage index under CBSA classification, and TEFRA and PPS updates to RY 2007. The overall aggregate effect, across all hospital groups, is projected to be a 0.2 percent decrease in payments to IPFs. There are distributional effects of these changes among different categories of IPFs. The largest increases will be among government psychiatric hospitals, with rural government hospitals receiving a 12.0 percent increase and urban government hospitals receiving a 10.9 percent increase. Alternatively, psychiatric hospitals and units with fewer than 12 beds will receive the largest decreases of 3.8 percent and 4.5 percent, respectively.
Column 7 compares our estimates of the changes reflected in this final rule for RY 2007, to our estimates of payments in the implementation year Start Printed Page 27085(without these changes). This column reflects all RY 2007 changes relative to the implementation year (as shown in columns 3 through 6). The average increase for all IPFs is approximately 4.0 percent. This increase includes the effects of the market basket updates resulting in a 4.5 percent increase in total RY 2007 payments. It also includes a 0.3 percent decrease in RY 2007 payments for the standardization factor revision and a 0.2 percent decrease in RY 2007 payments for the transition blend.
Overall, the largest payment increase is projected to be among government IPFs. Urban government psychiatric hospitals will receive a 15.4 percent increase and rural government psychiatric hospitals will receive a 16.3 percent increase. Psychiatric hospitals with fewer than 12 beds will receive a 0.6 percent increase and psychiatric units with fewer than 12 beds will receive a 0.5 percent decrease.
4. Effect on the Medicare Program
Based on actuarial projections resulting from our experience with other PPSs, we estimate that Medicare spending (total Medicare program payments) for IPF services over the next 5 years would be as follows:
Table 16.—Estimated Payments
Rate year Dollars in millions July 1, 2006 to June 30, 2007 $4,299 July 1, 2007 to June 30, 2008 4,427 July 1, 2008 to June 30, 2009 4,613 July 1, 2009 to June 30, 2010 4,813 July 1, 2010 to June 30, 2011 5,033 These estimates are based on the current estimate of increases in the excluded hospital with capital market basket as follows:
- 3.4 percent for RY 2007;
- 3.1 percent for RY 2008;
- 2.8 percent for RY 2009;
- 2.3 percent for RY 2010; and
- 2.7 percent for RY 2011.
We estimate that there would be a change in fee-for-service Medicare beneficiary enrollment as follows:
- −0.3 percent in RY 2007;
- 0.1 percent in RY 2008;
- 0.2 percent in RY 2009;
- −0.3 percent in RY 2010; and
- −0.2 percent in RY 2011.
In the implementation year we estimated aggregate payments under the IPF PPS to equal the estimated aggregate payments that would be made if the IPF PPS were not implemented. Our methodology for estimating payments for purposes of the budget-neutrality calculations uses the best available data.
We will evaluate the accuracy of the assumptions used to compute the budget-neutrality calculation in the implementation year. We intend to analyze claims and cost report data from the implementation year of the IPF PPS to determine whether the factors used to develop the Federal per diem base rate are not significantly different from the actual results experienced in that year. We plan to compare payments under the final IPF PPS (which relies on an estimate of cost-based TEFRA payments using historical data from a base year and assumptions that trend the data to the initial implementation period) to estimated cost-based TEFRA payments based on actual data from the first year of the IPF PPS. If we find that an adjustment is necessary, the percent difference (either positive or negative) would be applied prospectively to the established prospective payment rates to ensure the rates accurately reflect the payment levels intended by the statute.
Section 124 of Pub. L. 106-113 provides the Secretary broad authority to make an adjustment. We intend to perform this analysis within the first 5 years of the implementation of the IPF PPS.
5. Effect on Beneficiaries
Under the IPF PPS, IPFs will receive payment based on the average resources consumed by patients for each day. We do not expect changes in the quality of care or access to services for Medicare beneficiaries under the IPF PPS. In fact, we believe that access to IPF services will be enhanced due to the patient and facility level adjustment factors, all of which are intended to adequately reimburse IPFs for expensive cases. Finally, the stop-loss policy is intended to assist IPFs during the transition. In addition, we expect that setting payment rates prospectively for IPF services would enhance the efficiency of the Medicare program.
6. Computer Hardware and Software
We do not anticipate that IPFs would incur additional systems operating costs in order to effectively participate in the IPF PPS. We believe that IPFs and CAHs possess the computer hardware capability to handle the billing requirements under the IPF PPS. Our belief is based on indications that approximately 99 percent of hospital inpatient claims are submitted electronically. In addition, we are not adopting significant changes in claims processing.
C. Accounting Statement
As required by OMB Circular A-4 (available at http://www.whitehouse.gov/omb/circulars/a004/a-4.pdf), in Table 17 below, we have prepared an accounting statement showing the classification of the expenditures associated with the provisions of this final rule. This table provides our best estimate of the increase in Medicare payments under the IPF PPS as a result of the changes presented in this final rule based on the data for 1,806 IPFs in our database. All expenditures are classified as transfers to Medicare providers (that is, IPFs).
Table 17.—Accounting Statement: Classification of Estimated Expenditures, From the 2006 IPF PPS RY to the 2007 IPF PPS RY
[In millions]
Category Transfers Annualized Monetized Transfers $170. From Whom To Whom? Federal Government To IPFs Medicare Providers. D. Alternatives Considered
We considered the following alternatives in developing the update to the IPF PPS:
One option we considered was incorporating a transition from MSA-based labor market definitions to CBSA-based labor market definitions for the purpose of applying the area wage index. As stated in section VI.C.1.e of this final rule, we are not adopting a transition policy here because IPFs are already in a transition from reasonable cost based reimbursement to IPF PPS payments. In addition, as evident in Table 15 above, the wage index change does not appear to have a large impact on IPFs.
We also considered increasing our outlier percentage so that outlier payments would be projected to be 3 percent (or higher) of total PPS payments. However, this approach would not target the truly costly cases. Instead, implementing such a policy would have the effect of lowering the fixed dollar loss threshold amount, therefore spreading outlier payments across more IPFs. In addition, the Federal per diem base rate would have to be reduced by another percentage point. Start Printed Page 27086
In this final rule, we used the best available complete data set (that is, FY 2002 claims and cost report data) to assess the impact of the various policy changes. As previously stated, we will not know the true impact of the wage index changes, the transition blend period, or the market basket increases until we analyze IPF PPS data.
We considered alternative policies in order to reduce financial risk to facilities in the event that they experience substantial reductions in Medicare payments during the period of transition to the IPF PPS. The stop-loss adjustment is applied to the IPF PPS portion of Medicare payments during the transition. We estimate that about 10 percent of IPFs would receive additional payments under the stop-loss policy.
The 70 percent of TEFRA stop-loss policy required a reduction in the per diem rate to make the stop-loss policy budget neutral during the implementation year. As a result, in the November 2004 IPF PPS final rule, we made a reduction to the Federal per diem base rate of 0.4 percent for budget neutrality.
In developing this final rule, we again considered an 80 percent stop-loss policy for RY 2007. Adopting an 80 percent policy would require a reduction in the Federal per diem base rate of over 2.5 percent, and we estimate that about 29 percent of IPFs would receive additional payments. We chose to stay with the 70 percent policy for the same reasons discussed in the November 2004 IPF PPS final rule. Specifically, the 70 percent stop-loss policy targets the IPFs that experience the greatest impact relative to current payments, and it limits the size of the reduction to the Federal per diem base rate.
In accordance with the provisions of Executive Order 12866, this rule was previously reviewed by OMB.
Start List of SubjectsList of Subjects
42 CFR Part 412
- Administrative practice and procedure
- Health facilities
- Medicare
- Puerto Rico
- Reporting and recordkeeping requirements
42 CFR Part 424
- Emergency medical services
- Health facilities
- Health professions
- Medicare
- Reporting and recordkeeping requirements
For the reasons set forth in the preamble, the Centers for Medicare & Medicaid Services amends 42 CFR chapter IV as follows:
End Amendment Part Start PartPART 412—PROSPECTIVE PAYMENT SYSTEMS FOR HOSPITAL SERVICES
End Part Start Amendment Part1. The authority citation for part 412 is revised to read as follows:
End Amendment Part Start Amendment Part2. Amend § 412.27 by revising paragraph (b) to read as follows:
End Amendment PartExcluded psychiatric units: Additional requirements.* * * * *(b) Furnish, through the use of qualified personnel, psychological services, social work services, psychiatric nursing, and therapeutic activities.
* * * * *Start Amendment Part3. Section 412.402 is amended by—
End Amendment Part Start Amendment PartA. Republishing the introductory text.
End Amendment Part Start Amendment PartB. Removing the definition of “Fixed dollar loss threshold.”
End Amendment Part Start Amendment PartC. Adding the definitions of “Fixed dollar loss threshold amount,” and “new graduate medical education program” in alphabetical order.
End Amendment Part Start Amendment PartD. Revising the definitions of “Qualifying emergency department,” “Rural area,” and “Urban area.”
End Amendment PartThe revisions and additions read as follows:
Definitions.As used in this subpart—
* * * * *Fixed dollar loss threshold amount means a dollar amount which, when added to the Federal payment amount for a case, the estimated costs of a case must exceed in order for the case to qualify for an outlier payment.
* * * * *New graduate medical education program means a medical education program that receives initial accreditation by the appropriate accrediting body or begins training residents on or after November 15, 2004.
* * * * *Qualifying emergency department means an emergency department that is staffed and equipped to furnish a comprehensive array of emergency services and meeting the definitions of a dedicated emergency department as specified in § 489.24(b) of this chapter and the definition of “provider-based status” as specified in § 413.65 of this chapter.
Rural area means for cost reporting periods beginning January 1, 2005, with respect to discharges occurring during the period covered by such cost reports but before July 1, 2006, an area as defined in § 412.62(f)(1)(iii). For discharges occurring on or after July 1, 2006, rural area means an area as defined in § 412.64(b)(1)(ii)(C).
Urban area means for cost reporting periods beginning on or after January 1, 2005, with respect to discharges occurring during the period covered by such cost reports but before July 1, 2006, an area as defined in § 412.62(f)(1)(ii). For discharges occurring on or after July 1, 2006, urban area means an area as defined in § 412.64(b)(1)(ii)(A) and § 412.64(b)(1)(ii)(B).
4. Section 412.424 is amended by—
End Amendment Part Start Amendment PartA. Revising paragraph (d)(l)(iii).
End Amendment Part Start Amendment PartB. Republishing the heading of paragraph (d)(1)(v).
End Amendment Part Start Amendment PartC. Revising paragraph (d)(1)(v)(A).
End Amendment Part Start Amendment PartD. Adding paragraph (d)(2) introductory text.
End Amendment Part Start Amendment PartE. Removing and reserving paragraph (d)(2)(iii).
End Amendment Part Start Amendment PartF. Revising paragraphs (d)(3)(i) introductory text and (d)(3)(i)(A).
End Amendment PartThe revisions and additions read as follows:
Methodology for calculating the Federal per diem payment amount.* * * * *(d) * * *
(1) * * *
(iii) Teaching adjustment. CMS adjusts the Federal per diem base rate by a factor to account for indirect teaching costs.
(A) An inpatient psychiatric facility's teaching adjustment is based on the ratio of the number of full-time equivalent residents training in the inpatient psychiatric facility divided by the facility's average daily census.
(B) Residents with less than full-time status and residents rotating through the inpatient psychiatric facility for less than a full year will be counted in proportion to the time they spend in the inpatient psychiatric facility.
(C) Except as described in paragraph (d)(1)(iii)(D) of this section, the actual number of current year full-time equivalent residents used in calculating the teaching adjustment is limited to the number of full-time equivalent residents in the inpatient psychiatric facility's most recently filed cost report filed with its fiscal intermediary before November 15, 2004 (base year).
(D) If the inpatient psychiatric facility first begins training residents in a new approved graduate medical education program after November 15, 2004, the number of full-time equivalent residents determined under paragraph (d)(1)(iii)(C) of this section may be adjusted using the method described in § 413.79(e)(1)(i) and (ii) of this chapter.
(E) The teaching adjustment is made on a claim basis as an interim payment, Start Printed Page 27087and the final payment in full for the claim is made during the final settlement of the cost report.
* * * * *(v) Adjustment for IPF with qualifying emergency departments. (A) CMS adjusts the Federal per diem base rate to account for the costs associated with maintaining a qualifying emergency department. A qualifying emergency department is staffed and equipped to furnish a comprehensive array of emergency services (medical and psychiatric) and meets the requirements of § 489.24(b) and § 413.65 of this chapter.
* * * * *(2) Patient-level adjustments. The inpatient psychiatric facility must identify a principal psychiatric diagnosis as specified in § 412.27(a) for each patient. CMS adjusts the Federal per diem base rate by a factor to account for the diagnosis-related group assignment associated with the principal diagnosis, as specified by CMS.
* * * * *(3) Other adjustments. (i) Outlier payments. CMS provides an outlier payment if an inpatient psychiatric facility's estimated total cost for a case exceeds a fixed dollar loss threshold amount for an inpatient psychiatric facility as defined in § 412.402 plus the Federal payment amount for the case.
(A) The fixed dollar loss threshold amount is adjusted for the inpatient psychiatric facility's adjustments for wage area, teaching, rural locations, and cost of living adjustment for facilities located in Alaska and Hawaii.
* * * * *[Amended]5. In § 412.426, paragraph (a) introductory text is amended by removing the reference “§ 412.424(c)” and adding the reference “§ 412.424(d)” in its place.
End Amendment Part Start Amendment Part6. Section 412.428 is amended by—
End Amendment Part Start Amendment PartA. Republishing the introductory text.
End Amendment Part Start Amendment PartB. Revising paragraph (b) and (d).
End Amendment Part Start Amendment PartC. Adding a new paragraph (g).
End Amendment Part Start Amendment PartD. Adding a new paragraph (h).
End Amendment PartThe revision and additions reads as follows:
Publication of updates to the inpatient psychiatric facility prospective payment system.CMS will publish annually in the Federal Register information pertaining to updates to the inpatient psychiatric facility prospective payment system. This information includes:
* * * * *(b)(1) For discharges occurring on or after January 1, 2005 but before July 1, 2006, the rate of increase factor, described in § 412.424(a)(2)(iii), for the Federal portion of the inpatient psychiatric facility's payment is based on the excluded hospital with capital market basket under the update methodology described in section 1886(b)(3)(B)(ii) of the Act for each year.
(2) For discharges occurring on or after July 1, 2006, the rate of increase factor for the Federal portion of the inpatient psychiatric facility's payment is based on the Rehabilitation, Psychiatric, and Long-Term Care (RPL) market basket.
(3) For discharges occurring on or after January 1, 2005 but before October 1, 2005, the rate of increase factor, described in § 412.424(a)(2)(iii), for the reasonable cost portion of the inpatient psychiatric facility's payment is based on the 1997-based excluded hospital market basket under the updated methodology described in section 1886(b)(3)(B)(ii) of the Act for each year.
(4) For discharges occurring on or after October 1, 2005, the rate of increase factor for the reasonable cost portion of the inpatient psychiatric facility's payment is based on the 2002-based excluded hospital market basket.
* * * * *(d) Updates to the fixed dollar loss threshold amount in order to maintain the appropriate outlier percentage.
* * * * *(g) Update the national urban and rural cost to charge ratio median and ceilings. CMS will apply the national cost to charge ratio to—
(1) New inpatient psychiatric facilities that have not submitted their first Medicare cost report.
(2) Inpatient psychiatric facilities whose operating or capital cost to charge ratio is in excess of 3 standard deviations above the corresponding national geometric mean.
(3) Other inpatient psychiatric facilities for which the fiscal intermediary obtains inaccurate or incomplete data with which to calculate either an operating or capital cost to charge ratio or both.
(h) Update the cost of living adjustment factor if appropriate.
PART 424—CONDITIONS FOR MEDICARE PAYMENT
End Part Start Amendment Part7. The authority citation for part 424 continues to read as follows:
End Amendment Part Start Amendment Part8. Section 424.14 is amended by—
End Amendment Part Start Amendment PartA. Revising the heading.
End Amendment Part Start Amendment PartB. Adding a new paragraph (c)(3).
End Amendment Part Start Amendment PartC. Revising paragraph (d)(2).
End Amendment PartThe addition and revisions read as follows:
Requirements for inpatient services of inpatient psychiatric facilities.* * * * *(c) * * *
(3) The patient continues to need, on a daily basis, active inpatient psychiatric care (furnished directly by or requiring the supervision of inpatient psychiatric facility personnel) or other professional services that can only be provided on an inpatient basis.
(d) * * *
(2) The first recertification is required as of the 12th day of hospitalization. Subsequent recertifications are required at intervals established by the UR committee (on a case-by-case basis if it so chooses), but no less frequently than every 30 days.
* * * * *(Catalog of Federal Domestic Assistance Program No. 93.778, Medical Assistance Program)
(Catalog of Federal Domestic Assistance Program No. 93.773, Medicare—Hospital Insurance; and Program No. 93.774, Medicare—Supplementary Medical Insurance Program)
Start SignatureDated: April 19, 2006.
Mark B. McClellan,
Administrator, Centers for Medicare & Medicaid Services.
Approved: April 28, 2006.
Michael O. Leavitt,
Secretary.
Addendum A—Rate and Adjustment Factors
Per Diem Rate
Federal Per Diem Base Rate $595.09 Labor Share (0.75665) 450.27 Non-Labor Share (0.24335) 144.82 Fixed Dollar Loss Threshold Amount
$6200 Facility Adjustments
Rural Adjustment Factor 1.17. Teaching Adjustment Factor 0.5150. Wage Index Pre-reclass Hospital Wage Index (FY2006). Cost of Living Adjustments (COLAs)
Alaska 1.25 Hawaii: Start Printed Page 27088 Honolulu County 1.25 Hawaii County 1.165 Kauai County 1.2325 Maui County 1.2375 Kalawao County 1.2375 Patient Adjustments
ECT—Per Treatment $256.20 Variable Per Diem Adjustments
Adjustment factor Day 1—Facility Without a Qualifying Emergency Department 1.19 Day 1—Facility With a Qualifying Emergency Department 1.31 Day 2 1.12 Day 3 1.08 Day 4 1.05 Day 5 1.04 Day 6 1.02 Day 7 1.01 Day 8 1.01 Day 9 1.00 Day 10 1.00 Day 11 0.99 Day 12 0.99 Day 13 0.99 Day 14 0.99 Day 15 0.98 Day 16 0.97 Day 17 0.97 Day 18 0.96 Day 19 0.95 Day 20 0.95 Day 21 0.95 After Day 21 0.92 Age Adjustments
Age (in years) Adjustment factor Under 45 1.00 45 and under 50 1.01 50 and under 55 1.02 55 and under 60 1.04 60 and under 65 1.07 65 and under 70 1.10 70 and under 75 1.13 75 and under 80 1.15 80 and over 1.17 DRG Adjustments
DRG DRG definition Adjustment factor DRG 424 O.R. Procedure with Principal Diagnosis of Mental Illness 1.22 DRG 425 Acute Adjustment Reaction & Psychosocial Dysfunction 1.05 DRG 426 Depressive Neurosis 0.99 DRG 427 Neurosis, Except Depressive 1.02 DRG 428 Disorders of Personality & Impulse Control 1.02 DRG 429 Organic Disturbances & Mental Retardation 1.03 DRG 430 Psychosis 1.00 DRG 431 Childhood Mental Disorders 0.99 DRG 432 Other Mental Disorders Diagnoses 0.92 DRG 433 Alcohol/Drug Abuse or Dependence Leave Against Medical Advice (LAMA) 0.97 DRG 521 Alcohol/Drug Abuse or Dependence with Comorbid Conditions 1.02 DRG 522 Alcohol/Drug Abuse or Dependence with Rehabilitation Therapy without Comorbid Conditions 0.98 DRG 523 Alcohol/Drug Abuse or Dependence without Rehabilitation Therapy 0.88 DRG 12 Degenerative Nervous System Disorders without Comorbid Conditions 1.05 DRG 23 Non-traumatic Stupor & Coma 1.07 Comorbidity Adjustments
Comorbidity Adjustment factor Developmental Disabilities 1.04 Coagulation Factor Deficit 1.13 Tracheostomy 1.06 Eating and Conduct Disorders 1.12 Infectious Diseases 1.07 Renal Failure, Acute 1.11 Renal Failure, Chronic 1.11 Oncology Treatment 1.07 Uncontrolled Diabetes Mellitus with or without Complications 1.05 Severe Protein Calorie Malnutrition 1.13 Drug/Alcohol Induced Mental Disorders 1.03 Cardiac Conditions 1.11 Gangrene 1.10 Chronic Obstructive Pulmonary Disease 1.12 Artificial Openings - Digestive & Urinary 1.08 Severe Musculoskeletal & Connective Tissue Diseases 1.09 Poisoning 1.11 Addendum B—RY 2007 IPF PPS Wage Index Table
SSA State/County Code County name MSA No. MSA urban/rural 2006 MSA-based WI CBSA No. CBSA urban/rural 2006 CBSA-based WI 01000 Autauga County, Alabama 5240 Urban 0.8618 33860 Urban 0.8618 01010 Baldwin County, Alabama 5160 Urban 0.7861 99901 Rural 0.7446 01020 Barbour County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01030 Bibb County, Alabama 01 Rural 0.7432 13820 Urban 0.8959 01040 Blount County, Alabama 1000 Urban 0.9000 13820 Urban 0.8959 01050 Bullock County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01060 Butler County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01070 Calhoun County, Alabama 0450 Urban 0.7682 11500 Urban 0.7682 Start Printed Page 27089 01080 Chambers County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01090 Cherokee County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01100 Chilton County, Alabama 01 Rural 0.7432 13820 Urban 0.8959 01110 Choctaw County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01120 Clarke County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01130 Clay County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01140 Cleburne County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01150 Coffee County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01160 Colbert County, Alabama 2650 Urban 0.8272 22520 Urban 0.8272 01170 Conecuh County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01180 Coosa County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01190 Covington County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01200 Crenshaw County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01210 Cullman County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01220 Dale County, Alabama 2180 Urban 0.7701 99901 Rural 0.7446 01230 Dallas County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01240 De Kalb County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01250 Elmore County, Alabama 5240 Urban 0.8618 33860 Urban 0.8618 01260 Escambia County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01270 Etowah County, Alabama 2880 Urban 0.7938 23460 Urban 0.7938 01280 Fayette County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01290 Franklin County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01300 Geneva County, Alabama 01 Rural 0.7432 20020 Urban 0.7721 01310 Greene County, Alabama 01 Rural 0.7432 46220 Urban 0.8645 01320 Hale County, Alabama 01 Rural 0.7432 46220 Urban 0.8645 01330 Henry County, Alabama 01 Rural 0.7432 20020 Urban 0.7721 01340 Houston County, Alabama 2180 Urban 0.7701 20020 Urban 0.7721 01350 Jackson County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01360 Jefferson County, Alabama 1000 Urban 0.9000 13820 Urban 0.8959 01370 Lamar County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01380 Lauderdale County, Alabama 2650 Urban 0.8272 22520 Urban 0.8272 01390 Lawrence County, Alabama 2030 Urban 0.8469 19460 Urban 0.8469 01400 Lee County, Alabama 0580 Urban 0.8100 12220 Urban 0.8100 01410 Limestone County, Alabama 3440 Urban 0.9146 26620 Urban 0.9146 01420 Lowndes County, Alabama 01 Rural 0.7432 33860 Urban 0.8618 01430 Macon County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01440 Madison County, Alabama 3440 Urban 0.9146 26620 Urban 0.9146 01450 Marengo County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01460 Marion County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01470 Marshall County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01480 Mobile County, Alabama 5160 Urban 0.7861 33660 Urban 0.7891 01490 Monroe County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01500 Montgomery County, Alabama 5240 Urban 0.8618 33860 Urban 0.8618 01510 Morgan County, Alabama 2030 Urban 0.8469 19460 Urban 0.8469 01520 Perry County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01530 Pickens County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01540 Pike County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01550 Randolph County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01560 Russell County, Alabama 1800 Urban 0.8560 17980 Urban 0.8560 01570 St Clair County, Alabama 1000 Urban 0.9000 13820 Urban 0.8959 01580 Shelby County, Alabama 1000 Urban 0.9000 13820 Urban 0.8959 01590 Sumter County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01600 Talladega County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01610 Tallapoosa County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01620 Tuscaloosa County, Alabama 8600 Urban 0.8764 46220 Urban 0.8645 01630 Walker County, Alabama 01 Rural 0.7432 13820 Urban 0.8959 01640 Washington County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01650 Wilcox County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 01660 Winston County, Alabama 01 Rural 0.7432 99901 Rural 0.7446 02013 Aleutians County East, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02016 Aleutians County West, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02020 Anchorage County, Alaska 0380 Urban 1.1784 11260 Urban 1.1895 02030 Angoon County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02040 Barrow-North Slope County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02050 Bethel County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02060 Bristol Bay Borough County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02068 Denali County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02070 Bristol Bay County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02080 Cordova-Mc Carthy County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02090 Fairbanks County, Alaska 02 Rural 1.1888 21820 Urban 1.1408 02100 Haines County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02110 Juneau County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 Start Printed Page 27090 02120 Kenai-Cook Inlet County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02122 Kenai Peninsula Borough, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02130 Ketchikan County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02140 Kobuk County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02150 Kodiak County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02160 Kuskokwin County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02164 Lake and Peninsula Borough, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02170 Matanuska County, Alaska 02 Rural 1.1888 11260 Urban 1.1895 02180 Nome County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02185 North Slope Borough, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02188 Northwest Arctic Borough, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02190 Outer Ketchikan County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02200 Prince Of Wales County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02201 Prince of Wales-Outer Ketchikan Census Area, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02210 Seward County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02220 Sitka County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02230 Skagway-Yakutat County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02231 Skagway-Yakutat-Angoon Census Area, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02232 Skagway-Hoonah-Angoon Census Area, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02240 Southeast Fairbanks County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02250 Upper Yukon County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02260 Valdz-Chitna-Whitier County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02261 Valdex-Cordove Census Area, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02270 Wade Hampton County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02280 Wrangell-Petersburg County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02282 Yakutat Borough, Alaska 02 Rural 1.1888 99902 Rural 1.1977 02290 Yukon-Koyukuk County, Alaska 02 Rural 1.1888 99902 Rural 1.1977 03000 Apache County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03010 Cochise County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03020 Coconino County, Arizona 2620 Urban 1.1845 22380 Urban 1.2092 03030 Gila County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03040 Graham County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03050 Greenlee County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03055 La Paz County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03060 Maricopa County, Arizona 6200 Urban 1.0127 38060 Urban 1.0127 03070 Mohave County, Arizona 4120 Urban 1.1155 99903 Rural 0.8768 03080 Navajo County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03090 Pima County, Arizona 8520 Urban 0.9007 46060 Urban 0.9007 03100 Pinal County, Arizona 6200 Urban 1.0127 38060 Urban 1.0127 03110 Santa Cruz County, Arizona 03 Rural 0.9045 99903 Rural 0.8768 03120 Yavapai County, Arizona 03 Rural 0.9045 39140 Urban 0.9869 03130 Yuma County, Arizona 9360 Urban 0.9126 49740 Urban 0.9126 04000 Arkansas County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04010 Ashley County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04020 Baxter County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04030 Benton County, Arkansas 2580 Urban 0.8661 22220 Urban 0.8661 04040 Boone County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04050 Bradley County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04060 Calhoun County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04070 Carroll County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04080 Chicot County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04090 Clark County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04100 Clay County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04110 Cleburne County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04120 Cleveland County, Arkansas 04 Rural 0.7744 38220 Urban 0.8680 04130 Columbia County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04140 Conway County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04150 Craighead County, Arkansas 3700 Urban 0.7911 27860 Urban 0.7911 04160 Crawford County, Arkansas 2720 Urban 0.8246 22900 Urban 0.8230 04170 Crittenden County, Arkansas 4920 Urban 0.9416 32820 Urban 0.9397 04180 Cross County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04190 Dallas County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04200 Desha County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04210 Drew County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04220 Faulkner County, Arkansas 4400 Urban 0.8747 30780 Urban 0.8747 04230 Franklin County, Arkansas 04 Rural 0.7744 22900 Urban 0.8230 04240 Fulton County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04250 Garland County, Arkansas 04 Rural 0.7744 26300 Urban 0.9005 04260 Grant County, Arkansas 04 Rural 0.7744 30780 Urban 0.8747 04270 Greene County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04280 Hempstead County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04290 Hot Spring County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 Start Printed Page 27091 04300 Howard County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04310 Independence County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04320 Izard County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04330 Jackson County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04340 Jefferson County, Arkansas 6240 Urban 0.8680 38220 Urban 0.8680 04350 Johnson County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04360 Lafayette County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04370 Lawrence County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04380 Lee County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04390 Lincoln County, Arkansas 04 Rural 0.7744 38220 Urban 0.8680 04400 Little River County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04410 Logan County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04420 Lonoke County, Arkansas 4400 Urban 0.8747 30780 Urban 0.8747 04430 Madison County, Arkansas 04 Rural 0.7744 22220 Urban 0.8661 04440 Marion County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04450 Miller County, Arkansas 8360 Urban 0.8283 45500 Urban 0.8283 04460 Mississippi County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04470 Monroe County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04480 Montgomery County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04490 Nevada County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04500 Newton County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04510 Ouachita County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04520 Perry County, Arkansas 04 Rural 0.7744 30780 Urban 0.8747 04530 Phillips County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04540 Pike County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04550 Poinsett County, Arkansas 04 Rural 0.7744 27860 Urban 0.7911 04560 Polk County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04570 Pope County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04580 Prairie County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04590 Pulaski County, Arkansas 4400 Urban 0.8747 30780 Urban 0.8747 04600 Randolph County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04610 St Francis County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04620 Saline County, Arkansas 4400 Urban 0.8747 30780 Urban 0.8747 04630 Scott County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04640 Searcy County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04650 Sebastian County, Arkansas 2720 Urban 0.8246 22900 Urban 0.8230 04660 Sevier County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04670 Sharp County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04680 Stone County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04690 Union County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04700 Van Buren County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04710 Washington County, Arkansas 2580 Urban 0.8661 22220 Urban 0.8661 04720 White County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04730 Woodruff County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 04740 Yell County, Arkansas 04 Rural 0.7744 99904 Rural 0.7466 05000 Alameda County, California 5775 Urban 1.5346 36084 Urban 1.5346 05010 Alpine County, California 05 Rural 1.0775 99905 Rural 1.1054 05020 Amador County, California 05 Rural 1.0775 99905 Rural 1.1054 05030 Butte County, California 1620 Urban 1.0511 17020 Urban 1.0511 05040 Calaveras County, California 05 Rural 1.0775 99905 Rural 1.1054 05050 Colusa County, California 05 Rural 1.0775 99905 Rural 1.1054 05060 Contra Costa County, California 5775 Urban 1.5346 36084 Urban 1.5346 05070 Del Norte County, California 05 Rural 1.0775 99905 Rural 1.1054 05080 Eldorado County, California 6920 Urban 1.3143 40900 Urban 1.2969 05090 Fresno County, California 2840 Urban 1.0428 23420 Urban 1.0538 05100 Glenn County, California 05 Rural 1.0775 99905 Rural 1.1054 05110 Humboldt County, California 05 Rural 1.0775 99905 Rural 1.1054 05120 Imperial County, California 05 Rural 1.0775 20940 Urban 0.8906 05130 Inyo County, California 05 Rural 1.0775 99905 Rural 1.1054 05140 Kern County, California 0680 Urban 1.0470 12540 Urban 1.0470 05150 Kings County, California 05 Rural 1.0775 25260 Urban 1.0036 05160 Lake County, California 05 Rural 1.0775 99905 Rural 1.1054 05170 Lassen County, California 05 Rural 1.0775 99905 Rural 1.1054 05200 Los Angeles County, California 4480 Urban 1.1783 31084 Urban 1.1783 05210 Los Angeles County, California 4480 Urban 1.1783 31084 Urban 1.1783 05300 Madera County, California 2840 Urban 1.0428 31460 Urban 0.8713 05310 Marin County, California 7360 Urban 1.4994 41884 Urban 1.4994 05320 Mariposa County, California 05 Rural 1.0775 99905 Rural 1.1054 05330 Mendocino County, California 05 Rural 1.0775 99905 Rural 1.1054 05340 Merced County, California 4940 Urban 1.1109 32900 Urban 1.1109 05350 Modoc County, California 05 Rural 1.0775 99905 Rural 1.1054 05360 Mono County, California 05 Rural 1.0775 99905 Rural 1.1054 Start Printed Page 27092 05370 Monterey County, California 7120 Urban 1.4128 41500 Urban 1.4128 05380 Napa County, California 8720 Urban 1.3983 34900 Urban 1.2643 05390 Nevada County, California 05 Rural 1.0775 99905 Rural 1.1054 05400 Orange County, California 5945 Urban 1.1559 42044 Urban 1.1559 05410 Placer County, California 6920 Urban 1.3143 40900 Urban 1.2969 05420 Plumas County, California 05 Rural 1.0775 99905 Rural 1.1054 05430 Riverside County, California 6780 Urban 1.1027 40140 Urban 1.1027 05440 Sacramento County, California 6920 Urban 1.3143 40900 Urban 1.2969 05450 San Benito County, California 05 Rural 1.0775 41940 Urban 1.5099 05460 San Bernardino County, California 6780 Urban 1.1027 40140 Urban 1.1027 05470 San Diego County, California 7320 Urban 1.1413 41740 Urban 1.1413 05480 San Francisco County, California 7360 Urban 1.4994 41884 Urban 1.4994 05490 San Joaquin County, California 8120 Urban 1.1307 44700 Urban 1.1307 05500 San Luis Obispo County, California 7460 Urban 1.1349 42020 Urban 1.1349 05510 San Mateo County, California 7360 Urban 1.4994 41884 Urban 1.4994 05520 Santa Barbara County, California 7480 Urban 1.1694 42060 Urban 1.1694 05530 Santa Clara County, California 7400 Urban 1.5118 41940 Urban 1.5099 05540 Santa Cruz County, California 7485 Urban 1.5166 42100 Urban 1.5166 05550 Shasta County, California 6690 Urban 1.2203 39820 Urban 1.2203 05560 Sierra County, California 05 Rural 1.0775 99905 Rural 1.1054 05570 Siskiyou County, California 05 Rural 1.0775 99905 Rural 1.1054 05580 Solano County, California 8720 Urban 1.3983 46700 Urban 1.4936 05590 Sonoma County, California 7500 Urban 1.3493 42220 Urban 1.3493 05600 Stanislaus County, California 5170 Urban 1.1885 33700 Urban 1.1885 05610 Sutter County, California 9340 Urban 1.0921 49700 Urban 1.0921 05620 Tehama County, California 05 Rural 1.0775 99905 Rural 1.1054 05630 Trinity County, California 05 Rural 1.0775 99905 Rural 1.1054 05640 Tulare County, California 8780 Urban 1.0123 47300 Urban 1.0123 05650 Tuolumne County, California 05 Rural 1.0775 99905 Rural 1.1054 05660 Ventura County, California 8735 Urban 1.1622 37100 Urban 1.1622 05670 Yolo County, California 9270 Urban 0.9950 40900 Urban 1.2969 05680 Yuba County, California 9340 Urban 1.0921 49700 Urban 1.0921 06000 Adams County, Colorado 2080 Urban 1.0723 19740 Urban 1.0723 06010 Alamosa County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06020 Arapahoe County, Colorado 2080 Urban 1.0723 19740 Urban 1.0723 06030 Archuleta County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06040 Baca County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06050 Bent County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06060 Boulder County, Colorado 1125 Urban 0.9734 14500 Urban 0.9734 06070 Chaffee County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06080 Cheyenne County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06090 Clear Creek County, Colorado 06 Rural 0.9380 19740 Urban 1.0723 06100 Conejos County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06110 Costilla County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06120 Crowley County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06130 Custer County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06140 Delta County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06150 Denver County, Colorado 2080 Urban 1.0723 19740 Urban 1.0723 06160 Dolores County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06170 Douglas County, Colorado 2080 Urban 1.0723 19740 Urban 1.0723 06180 Eagle County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06190 Elbert County, Colorado 06 Rural 0.9380 19740 Urban 1.0723 06200 El Paso County, Colorado 1720 Urban 0.9468 17820 Urban 0.9468 06210 Fremont County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06220 Garfield County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06230 Gilpin County, Colorado 06 Rural 0.9380 19740 Urban 1.0723 06240 Grand County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06250 Gunnison County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06260 Hinsdale County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06270 Huerfano County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06280 Jackson County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06290 Jefferson County, Colorado 2080 Urban 1.0723 19740 Urban 1.0723 06300 Kiowa County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06310 Kit Carson County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06320 Lake County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06330 La Plata County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06340 Larimer County, Colorado 2670 Urban 1.0122 22660 Urban 1.0122 06350 Las Animas County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06360 Lincoln County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06370 Logan County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06380 Mesa County, Colorado 2995 Urban 0.9550 24300 Urban 0.9550 06390 Mineral County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 Start Printed Page 27093 06400 Moffat County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06410 Montezuma County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06420 Montrose County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06430 Morgan County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06440 Otero County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06450 Ouray County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06460 Park County, Colorado 06 Rural 0.9380 19740 Urban 1.0723 06470 Phillips County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06480 Pitkin County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06490 Prowers County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06500 Pueblo County, Colorado 6560 Urban 0.8623 39380 Urban 0.8623 06510 Rio Blanco County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06520 Rio Grande County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06530 Routt County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06540 Saguache County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06550 San Juan County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06560 San Miguel County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06570 Sedgwick County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06580 Summit County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06590 Teller County, Colorado 06 Rural 0.9380 17820 Urban 0.9468 06600 Washington County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06610 Weld County, Colorado 3060 Urban 0.9570 24540 Urban 0.9570 06620 Yuma County, Colorado 06 Rural 0.9380 99906 Rural 0.9380 06630 Broomfield County, Colorado 2080 Urban 1.0723 19740 Urban 1.0723 07000 Fairfield County, Connecticut 5483 Urban 1.2196 14860 Urban 1.2592 07010 Hartford County, Connecticut 3283 Urban 1.1073 25540 Urban 1.1073 07020 Litchfield County, Connecticut 3283 Urban 1.1073 25540 Urban 1.1073 07030 Middlesex County, Connecticut 3283 Urban 1.1073 25540 Urban 1.1073 07040 New Haven County, Connecticut 5483 Urban 1.2196 35300 Urban 1.1887 07050 New London County, Connecticut 5523 Urban 1.1345 35980 Urban 1.1345 07060 Tolland County, Connecticut 3283 Urban 1.1073 25540 Urban 1.1073 07070 Windham County, Connecticut 07 Rural 1.1730 99907 Rural 1.1730 08000 Kent County, Delaware 2190 Urban 0.9776 20100 Urban 0.9776 08010 New Castle County, Delaware 9160 Urban 1.0527 48864 Urban 1.0471 08020 Sussex County, Delaware 08 Rural 0.9579 99908 Rural 0.9579 09000 Washington Dc County, Dist Of Col 8840 Urban 1.0976 47894 Urban 1.0926 10000 Alachua County, Florida 2900 Urban 0.9388 23540 Urban 0.9388 10010 Baker County, Florida 10 Rural 0.8677 27260 Urban 0.9290 10020 Bay County, Florida 6015 Urban 0.8005 37460 Urban 0.8005 10030 Bradford County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10040 Brevard County, Florida 4900 Urban 0.9839 37340 Urban 0.9839 10050 Broward County, Florida 2680 Urban 1.0432 22744 Urban 1.0432 10060 Calhoun County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10070 Charlotte County, Florida 6580 Urban 0.9255 39460 Urban 0.9255 10080 Citrus County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10090 Clay County, Florida 3600 Urban 0.9299 27260 Urban 0.9290 10100 Collier County, Florida 5345 Urban 1.0139 34940 Urban 1.0139 10110 Columbia County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10120 Dade County, Florida 5000 Urban 0.9750 33124 Urban 0.9750 10130 De Soto County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10140 Dixie County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10150 Duval County, Florida 3600 Urban 0.9299 27260 Urban 0.9290 10160 Escambia County, Florida 6080 Urban 0.8096 37860 Urban 0.8096 10170 Flagler County, Florida 2020 Urban 0.9325 99910 Rural 0.8568 10180 Franklin County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10190 Gadsden County, Florida 8240 Urban 0.8688 45220 Urban 0.8688 10200 Gilchrist County, Florida 10 Rural 0.8677 23540 Urban 0.9388 10210 Glades County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10220 Gulf County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10230 Hamilton County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10240 Hardee County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10250 Hendry County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10260 Hernando County, Florida 8280 Urban 0.9233 45300 Urban 0.9233 10270 Highlands County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10280 Hillsborough County, Florida 8280 Urban 0.9233 45300 Urban 0.9233 10290 Holmes County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10300 Indian River County, Florida 10 Rural 0.8677 42680 Urban 0.9434 10310 Jackson County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10320 Jefferson County, Florida 10 Rural 0.8677 45220 Urban 0.8688 10330 Lafayette County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10340 Lake County, Florida 5960 Urban 0.9464 36740 Urban 0.9464 10350 Lee County, Florida 2700 Urban 0.9356 15980 Urban 0.9356 Start Printed Page 27094 10360 Leon County, Florida 8240 Urban 0.8688 45220 Urban 0.8688 10370 Levy County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10380 Liberty County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10390 Madison County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10400 Manatee County, Florida 7510 Urban 0.9639 42260 Urban 0.9639 10410 Marion County, Florida 5790 Urban 0.8925 36100 Urban 0.8925 10420 Martin County, Florida 2710 Urban 1.0123 38940 Urban 1.0123 10430 Monroe County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10440 Nassau County, Florida 3600 Urban 0.9299 27260 Urban 0.9290 10450 Okaloosa County, Florida 2750 Urban 0.8872 23020 Urban 0.8872 10460 Okeechobee County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10470 Orange County, Florida 5960 Urban 0.9464 36740 Urban 0.9464 10480 Osceola County, Florida 5960 Urban 0.9464 36740 Urban 0.9464 10490 Palm Beach County, Florida 8960 Urban 1.0067 48424 Urban 1.0067 10500 Pasco County, Florida 8280 Urban 0.9233 45300 Urban 0.9233 10510 Pinellas County, Florida 8280 Urban 0.9233 45300 Urban 0.9233 10520 Polk County, Florida 3980 Urban 0.8912 29460 Urban 0.8912 10530 Putnam County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10540 Johns County, Florida 3600 Urban 0.9299 27260 Urban 0.9290 10550 St Lucie County, Florida 2710 Urban 1.0123 38940 Urban 1.0123 10560 Santa Rosa County, Florida 6080 Urban 0.8096 37860 Urban 0.8096 10570 Sarasota County, Florida 7510 Urban 0.9639 42260 Urban 0.9639 10580 Seminole County, Florida 5960 Urban 0.9464 36740 Urban 0.9464 10590 Sumter County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10600 Suwannee County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10610 Taylor County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10620 Union County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10630 Volusia County, Florida 2020 Urban 0.9325 19660 Urban 0.9299 10640 Wakulla County, Florida 10 Rural 0.8677 45220 Urban 0.8688 10650 Walton County, Florida 10 Rural 0.8677 99910 Rural 0.8568 10660 Washington County, Florida 10 Rural 0.8677 99910 Rural 0.8568 11000 Appling County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11010 Atkinson County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11011 Bacon County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11020 Baker County, Georgia 11 Rural 0.8166 10500 Urban 0.8628 11030 Baldwin County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11040 Banks County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11050 Barrow County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11060 Bartow County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11070 Ben Hill County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11080 Berrien County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11090 Bibb County, Georgia 4680 Urban 0.9277 31420 Urban 0.9443 11100 Bleckley County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11110 Brantley County, Georgia 11 Rural 0.8166 15260 Urban 0.9311 11120 Brooks County, Georgia 11 Rural 0.8166 46660 Urban 0.8866 11130 Bryan County, Georgia 7520 Urban 0.9461 42340 Urban 0.9461 11140 Bulloch County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11150 Burke County, Georgia 11 Rural 0.8166 12260 Urban 0.9748 11160 Butts County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11161 Calhoun County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11170 Camden County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11180 Candler County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11190 Carroll County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11200 Catoosa County, Georgia 1560 Urban 0.9088 16860 Urban 0.9088 11210 Charlton County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11220 Chatham County, Georgia 7520 Urban 0.9461 42340 Urban 0.9461 11230 Chattahoochee County, Georgia 1800 Urban 0.8560 17980 Urban 0.8560 11240 Chattooga County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11250 Cherokee County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11260 Clarke County, Georgia 0500 Urban 0.9855 12020 Urban 0.9855 11270 Clay County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11280 Clayton County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11281 Clinch County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11290 Cobb County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11291 Coffee County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11300 Colquitt County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11310 Columbia County, Georgia 0600 Urban 0.9808 12260 Urban 0.9748 11311 Cook County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11320 Coweta County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11330 Crawford County, Georgia 11 Rural 0.8166 31420 Urban 0.9443 11340 Crisp County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11341 Dade County, Georgia 1560 Urban 0.9088 16860 Urban 0.9088 Start Printed Page 27095 11350 Dawson County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11360 Decatur County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11370 De Kalb County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11380 Dodge County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11381 Dooly County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11390 Dougherty County, Georgia 0120 Urban 0.8628 10500 Urban 0.8628 11400 Douglas County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11410 Early County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11420 Echols County, Georgia 11 Rural 0.8166 46660 Urban 0.8866 11421 Effingham County, Georgia 7520 Urban 0.9461 42340 Urban 0.9461 11430 Elbert County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11440 Emanuel County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11441 Evans County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11450 Fannin County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11451 Fayette County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11460 Floyd County, Georgia 11 Rural 0.8166 40660 Urban 0.9414 11461 Forsyth County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11462 Franklin County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11470 Fulton County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11471 Gilmer County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11480 Glascock County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11490 Glynn County, Georgia 11 Rural 0.8166 15260 Urban 0.9311 11500 Gordon County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11510 Grady County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11520 Greene County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11530 Gwinnett County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11540 Habersham County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11550 Hall County, Georgia 11 Rural 0.8166 23580 Urban 0.8874 11560 Hancock County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11570 Haralson County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11580 Harris County, Georgia 1800 Urban 0.8560 17980 Urban 0.8560 11581 Hart County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11590 Heard County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11591 Henry County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11600 Houston County, Georgia 4680 Urban 0.9277 47580 Urban 0.8645 11601 Irwin County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11610 Jackson County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11611 Jasper County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11612 Jeff Davis County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11620 Jefferson County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11630 Jenkins County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11640 Johnson County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11650 Jones County, Georgia 4680 Urban 0.9277 31420 Urban 0.9443 11651 Lamar County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11652 Lanier County, Georgia 11 Rural 0.8166 46660 Urban 0.8866 11660 Laurens County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11670 Lee County, Georgia 0120 Urban 0.8628 10500 Urban 0.8628 11680 Liberty County, Georgia 11 Rural 0.8166 25980 Urban 1 0.91981 11690 Lincoln County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11691 Long County, Georgia 11 Rural 0.8166 25980 Urban 1 0.91981 11700 Lowndes County, Georgia 11 Rural 0.8166 46660 Urban 0.8866 11701 Lumpkin County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11702 Mc Duffie County, Georgia 0600 Urban 0.9808 12260 Urban 0.9748 11703 Mc Intosh County, Georgia 11 Rural 0.8166 15260 Urban 0.9311 11710 Macon County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11720 Madison County, Georgia 0500 Urban 0.9855 12020 Urban 0.9855 11730 Marion County, Georgia 11 Rural 0.8166 17980 Urban 0.8560 11740 Meriwether County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11741 Miller County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11750 Mitchell County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11760 Monroe County, Georgia 11 Rural 0.8166 31420 Urban 0.9443 11770 Montgomery County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11771 Morgan County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11772 Murray County, Georgia 11 Rural 0.8166 19140 Urban 0.9079 11780 Muscogee County, Georgia 1800 Urban 0.8560 17980 Urban 0.8560 11790 Newton County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11800 Oconee County, Georgia 0500 Urban 0.9855 12020 Urban 0.9855 11801 Oglethorpe County, Georgia 11 Rural 0.8166 12020 Urban 0.9855 11810 Paulding County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11811 Peach County, Georgia 4680 Urban 0.9277 99911 Rural 0.7662 11812 Pickens County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11820 Pierce County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 Start Printed Page 27096 11821 Pike County, Georgia 11 Rural 0.8166 12060 Urban 0.9793 11830 Polk County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11831 Pulaski County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11832 Putnam County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11833 Quitman County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11834 Rabun County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11835 Randolph County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11840 Richmond County, Georgia 0600 Urban 0.9808 12260 Urban 0.9748 11841 Rockdale County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11842 Schley County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11850 Screven County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11851 Seminole County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11860 Spalding County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11861 Stephens County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11862 Stewart County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11870 Sumter County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11880 Talbot County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11881 Taliaferro County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11882 Tattnall County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11883 Taylor County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11884 Telfair County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11885 Terrell County, Georgia 11 Rural 0.8166 10500 Urban 0.8628 11890 Thomas County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11900 Tift County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11901 Toombs County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11902 Towns County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11903 Treutlen County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11910 Troup County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11911 Turner County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11912 Twiggs County, Georgia 4680 Urban 0.9277 31420 Urban 0.9443 11913 Union County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11920 Upson County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11921 Walker County, Georgia 1560 Urban 0.9088 16860 Urban 0.9088 11930 Walton County, Georgia 0520 Urban 0.9793 12060 Urban 0.9793 11940 Ware County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11941 Warren County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11950 Washington County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11960 Wayne County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11961 Webster County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11962 Wheeler County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11963 White County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11970 Whitfield County, Georgia 11 Rural 0.8166 19140 Urban 0.9079 11971 Wilcox County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11972 Wilkes County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11973 Wilkinson County, Georgia 11 Rural 0.8166 99911 Rural 0.7662 11980 Worth County, Georgia 11 Rural 0.8166 10500 Urban 0.8628 12005 Kalawao County, Hawaii 12 Rural 1.0551 99912 Rural 1.0551 12010 Hawaii County, Hawaii 12 Rural 1.0551 99912 Rural 1.0551 12020 Honolulu County, Hawaii 3320 Urban 1.1214 26180 Urban 1.1214 12040 Kauai County, Hawaii 12 Rural 1.0551 99912 Rural 1.0551 12050 Maui County, Hawaii 12 Rural 1.0551 99912 Rural 1.0551 13000 Ada County, Idaho 1080 Urban 0.9052 14260 Urban 0.9052 13010 Adams County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13020 Bannock County, Idaho 6340 Urban 0.9351 38540 Urban 0.9351 13030 Bear Lake County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13040 Benewah County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13050 Bingham County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13060 Blaine County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13070 Boise County, Idaho 13 Rural 0.9097 14260 Urban 0.9052 13080 Bonner County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13090 Bonneville County, Idaho 13 Rural 0.9097 26820 Urban 0.9420 13100 Boundary County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13110 Butte County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13120 Camas County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13130 Canyon County, Idaho 1080 Urban 0.9052 14260 Urban 0.9052 13140 Caribou County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13150 Cassia County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13160 Clark County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13170 Clearwater County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13180 Custer County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13190 Elmore County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13200 Franklin County, Idaho 13 Rural 0.9097 30860 Urban 0.9164 Start Printed Page 27097 13210 Fremont County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13220 Gem County, Idaho 13 Rural 0.9097 14260 Urban 0.9052 13230 Gooding County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13240 Idaho County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13250 Jefferson County, Idaho 13 Rural 0.9097 26820 Urban 0.9420 13260 Jerome County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13270 Kootenai County, Idaho 13 Rural 0.9097 17660 Urban 0.9647 13280 Latah County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13290 Lemhi County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13300 Lewis County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13310 Lincoln County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13320 Madison County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13330 Minidoka County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13340 Nez Perce County, Idaho 13 Rural 0.9097 30300 Urban 0.9886 13350 Oneida County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13360 Owyhee County, Idaho 13 Rural 0.9097 14260 Urban 0.9052 13370 Payette County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13380 Power County, Idaho 13 Rural 0.9097 38540 Urban 0.9351 13390 Shoshone County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13400 Teton County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13410 Twin Falls County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13420 Valley County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 13430 Washington County, Idaho 13 Rural 0.9097 99913 Rural 0.8037 14000 Adams County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14010 Alexander County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14020 Bond County, Illinois 14 Rural 0.8301 41180 Urban 0.8954 14030 Boone County, Illinois 6880 Urban 0.9984 40420 Urban 0.9984 14040 Brown County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14050 Bureau County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14060 Calhoun County, Illinois 14 Rural 0.8301 41180 Urban 0.8954 14070 Carroll County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14080 Cass County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14090 Champaign County, Illinois 1400 Urban 0.9594 16580 Urban 0.9594 14100 Christian County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14110 Clark County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14120 Clay County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14130 Clinton County, Illinois 7040 Urban 0.8962 41180 Urban 0.8954 14140 Coles County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14141 Cook County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14150 Crawford County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14160 Cumberland County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14170 De Kalb County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14180 De Witt County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14190 Douglas County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14250 Du Page County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14310 Edgar County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14320 Edwards County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14330 Effingham County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14340 Fayette County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14350 Ford County, Illinois 14 Rural 0.8301 16580 Urban 0.9594 14360 Franklin County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14370 Fulton County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14380 Gallatin County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14390 Greene County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14400 Grundy County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14410 Hamilton County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14420 Hancock County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14421 Hardin County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14440 Henderson County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14450 Henry County, Illinois 1960 Urban 0.8724 19340 Urban 0.8724 14460 Iroquois County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14470 Jackson County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14480 Jasper County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14490 Jefferson County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14500 Jersey County, Illinois 7040 Urban 0.8962 41180 Urban 0.8954 14510 Jo Daviess County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14520 Johnson County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14530 Kane County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14540 Kankakee County, Illinois 3740 Urban 1.0721 28100 Urban 1.0721 14550 Kendall County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14560 Knox County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14570 Lake County, Illinois 1600 Urban 1.0783 29404 Urban 1.0429 Start Printed Page 27098 14580 La Salle County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14590 Lawrence County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14600 Lee County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14610 Livingston County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14620 Logan County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14630 Mc Donough County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14640 Mc Henry County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14650 Mclean County, Illinois 1040 Urban 0.9075 14060 Urban 0.9075 14660 Macon County, Illinois 2040 Urban 0.8067 19500 Urban 0.8067 14670 Macoupin County, Illinois 14 Rural 0.8301 41180 Urban 0.8954 14680 Madison County, Illinois 7040 Urban 0.8962 41180 Urban 0.8954 14690 Marion County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14700 Marshall County, Illinois 14 Rural 0.8301 37900 Urban 0.8870 14710 Mason County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14720 Massac County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14730 Menard County, Illinois 7880 Urban 0.8792 44100 Urban 0.8792 14740 Mercer County, Illinois 14 Rural 0.8301 19340 Urban 0.8724 14750 Monroe County, Illinois 7040 Urban 0.8962 41180 Urban 0.8954 14760 Montgomery County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14770 Morgan County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14780 Moultrie County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14790 Ogle County, Illinois 6880 Urban 0.9984 99914 Rural 0.8271 14800 Peoria County, Illinois 6120 Urban 0.8870 37900 Urban 0.8870 14810 Perry County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14820 Piatt County, Illinois 14 Rural 0.8301 16580 Urban 0.9594 14830 Pike County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14831 Pope County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14850 Pulaski County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14860 Putnam County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14870 Randolph County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14880 Richland County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14890 Rock Island County, Illinois 1960 Urban 0.8724 19340 Urban 0.8724 14900 St Clair County, Illinois 7040 Urban 0.8962 41180 Urban 0.8954 14910 Saline County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14920 Sangamon County, Illinois 7880 Urban 0.8792 44100 Urban 0.8792 14921 Schuyler County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14940 Scott County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14950 Shelby County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14960 Stark County, Illinois 14 Rural 0.8301 37900 Urban 0.8870 14970 Stephenson County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14980 Tazewell County, Illinois 6120 Urban 0.8870 37900 Urban 0.8870 14981 Union County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14982 Vermilion County, Illinois 14 Rural 0.8301 19180 Urban 0.9028 14983 Wabash County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14984 Warren County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14985 Washington County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14986 Wayne County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14987 White County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14988 Whiteside County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14989 Will County, Illinois 1600 Urban 1.0783 16974 Urban 1.0790 14990 Williamson County, Illinois 14 Rural 0.8301 99914 Rural 0.8271 14991 Winnebago County, Illinois 6880 Urban 0.9984 40420 Urban 0.9984 14992 Woodford County, Illinois 6120 Urban 0.8870 37900 Urban 0.8870 15000 Adams County, Indiana 2760 Urban 0.9706 99915 Rural 0.8624 15010 Allen County, Indiana 2760 Urban 0.9706 23060 Urban 0.9793 15020 Bartholomew County, Indiana 15 Rural 0.8739 18020 Urban 0.9588 15030 Benton County, Indiana 15 Rural 0.8739 29140 Urban 0.8736 15040 Blackford County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15050 Boone County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15060 Brown County, Indiana 15 Rural 0.8739 26900 Urban 0.9920 15070 Carroll County, Indiana 15 Rural 0.8739 29140 Urban 0.8736 15080 Cass County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15090 Clark County, Indiana 4520 Urban 0.9293 31140 Urban 0.9251 15100 Clay County, Indiana 8320 Urban 0.8337 45460 Urban 0.8304 15110 Clinton County, Indiana 3920 Urban 0.8736 99915 Rural 0.8624 15120 Crawford County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15130 Daviess County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15140 Dearborn County, Indiana 1640 Urban 0.9734 17140 Urban 0.9615 15150 Decatur County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15160 De Kalb County, Indiana 2760 Urban 0.9706 99915 Rural 0.8624 15170 Delaware County, Indiana 5280 Urban 0.8930 34620 Urban 0.8930 15180 Dubois County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 Start Printed Page 27099 15190 Elkhart County, Indiana 2330 Urban 0.9627 21140 Urban 0.9627 15200 Fayette County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15210 Floyd County, Indiana 4520 Urban 0.9293 31140 Urban 0.9251 15220 Fountain County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15230 Franklin County, Indiana 15 Rural 0.8739 17140 Urban 0.9615 15240 Fulton County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15250 Gibson County, Indiana 15 Rural 0.8739 21780 Urban 0.8713 15260 Grant County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15270 Greene County, Indiana 15 Rural 0.8739 14020 Urban 0.8447 15280 Hamilton County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15290 Hancock County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15300 Harrison County, Indiana 4520 Urban 0.9293 31140 Urban 0.9251 15310 Hendricks County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15320 Henry County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15330 Howard County, Indiana 3850 Urban 0.9508 29020 Urban 0.9508 15340 Huntington County, Indiana 2760 Urban 0.9706 99915 Rural 0.8624 15350 Jackson County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15360 Jasper County, Indiana 15 Rural 0.8739 23844 Urban 0.9395 15370 Jay County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15380 Jefferson County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15390 Jennings County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15400 Johnson County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15410 Knox County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15420 Kosciusko County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15430 Lagrange County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15440 Lake County, Indiana 2960 Urban 0.9395 23844 Urban 0.9395 15450 La Porte County, Indiana 15 Rural 0.8739 33140 Urban 0.9399 15460 Lawrence County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15470 Madison County, Indiana 3480 Urban 0.9865 11300 Urban 0.8586 15480 Marion County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15490 Marshall County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15500 Martin County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15510 Miami County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15520 Monroe County, Indiana 1020 Urban 0.8447 14020 Urban 0.8447 15530 Montgomery County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15540 Morgan County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15550 Newton County, Indiana 15 Rural 0.8739 23844 Urban 0.9395 15560 Noble County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15570 Ohio County, Indiana 1640 Urban 0.9734 17140 Urban 0.9615 15580 Orange County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15590 Owen County, Indiana 15 Rural 0.8739 14020 Urban 0.8447 15600 Parke County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15610 Perry County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15620 Pike County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15630 Porter County, Indiana 2960 Urban 0.9395 23844 Urban 0.9395 15640 Posey County, Indiana 2440 Urban 0.8713 21780 Urban 0.8713 15650 Pulaski County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15660 Putnam County, Indiana 15 Rural 0.8739 26900 Urban 0.9920 15670 Randolph County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15680 Ripley County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15690 Rush County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15700 St Joseph County, Indiana 7800 Urban 0.9788 43780 Urban 0.9788 15710 Scott County, Indiana 4520 Urban 0.9293 99915 Rural 0.8624 15720 Shelby County, Indiana 3480 Urban 0.9865 26900 Urban 0.9920 15730 Spencer County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15740 Starke County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15750 Steuben County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15760 Sullivan County, Indiana 15 Rural 0.8739 45460 Urban 0.8304 15770 Switzerland County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15780 Tippecanoe County, Indiana 3920 Urban 0.8736 29140 Urban 0.8736 15790 Tipton County, Indiana 3850 Urban 0.9508 29020 Urban 0.9508 15800 Union County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15810 Vanderburgh County, Indiana 2440 Urban 0.8713 21780 Urban 0.8713 15820 Vermillion County, Indiana 8320 Urban 0.8337 45460 Urban 0.8304 15830 Vigo County, Indiana 8320 Urban 0.8337 45460 Urban 0.8304 15840 Wabash County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15850 Warren County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15860 Warrick County, Indiana 2440 Urban 0.8713 21780 Urban 0.8713 15870 Washington County, Indiana 15 Rural 0.8739 31140 Urban 0.9251 15880 Wayne County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 15890 Wells County, Indiana 2760 Urban 0.9706 23060 Urban 0.9793 15900 White County, Indiana 15 Rural 0.8739 99915 Rural 0.8624 Start Printed Page 27100 15910 Whitley County, Indiana 2760 Urban 0.9706 23060 Urban 0.9793 16000 Adair County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16010 Adams County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16020 Allamakee County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16030 Appanoose County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16040 Audubon County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16050 Benton County, Iowa 16 Rural 0.8594 16300 Urban 0.8825 16060 Black Hawk County, Iowa 8920 Urban 0.8557 47940 Urban 0.8557 16070 Boone County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16080 Bremer County, Iowa 16 Rural 0.8594 47940 Urban 0.8557 16090 Buchanan County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16100 Buena Vista County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16110 Butler County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16120 Calhoun County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16130 Carroll County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16140 Cass County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16150 Cedar County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16160 Cerro Gordo County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16170 Cherokee County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16180 Chickasaw County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16190 Clarke County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16200 Clay County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16210 Clayton County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16220 Clinton County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16230 Crawford County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16240 Dallas County, Iowa 2120 Urban 0.9669 19780 Urban 0.9669 16250 Davis County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16260 Decatur County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16270 Delaware County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16280 Des Moines County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16290 Dickinson County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16300 Dubuque County, Iowa 2200 Urban 0.9024 20220 Urban 0.9024 16310 Emmet County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16320 Fayette County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16330 Floyd County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16340 Franklin County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16350 Fremont County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16360 Greene County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16370 Grundy County, Iowa 16 Rural 0.8594 47940 Urban 0.8557 16380 Guthrie County, Iowa 16 Rural 0.8594 19780 Urban 0.9669 16390 Hamilton County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16400 Hancock County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16410 Hardin County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16420 Harrison County, Iowa 16 Rural 0.8594 36540 Urban 0.9560 16430 Henry County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16440 Howard County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16450 Humboldt County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16460 Ida County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16470 Iowa County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16480 Jackson County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16490 Jasper County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16500 Jefferson County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16510 Johnson County, Iowa 3500 Urban 0.9747 26980 Urban 0.9747 16520 Jones County, Iowa 16 Rural 0.8594 16300 Urban 0.8825 16530 Keokuk County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16540 Kossuth County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16550 Lee County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16560 Linn County, Iowa 1360 Urban 0.8825 16300 Urban 0.8825 16570 Louisa County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16580 Lucas County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16590 Lyon County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16600 Madison County, Iowa 16 Rural 0.8594 19780 Urban 0.9669 16610 Mahaska County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16620 Marion County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16630 Marshall County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16640 Mills County, Iowa 16 Rural 0.8594 36540 Urban 0.9560 16650 Mitchell County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16660 Monona County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16670 Monroe County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16680 Montgomery County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16690 Muscatine County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16700 O Brien County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 Start Printed Page 27101 16710 Osceola County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16720 Page County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16730 Palo Alto County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16740 Plymouth County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16750 Pocahontas County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16760 Polk County, Iowa 2120 Urban 0.9669 19780 Urban 0.9669 16770 Pottawattamie County, Iowa 5920 Urban 0.9560 36540 Urban 0.9560 16780 Poweshiek County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16790 Ringgold County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16800 Sac County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16810 Scott County, Iowa 1960 Urban 0.8724 19340 Urban 0.8724 16820 Shelby County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16830 Sioux County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16840 Story County, Iowa 16 Rural 0.8594 11180 Urban 0.9536 16850 Tama County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16860 Taylor County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16870 Union County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16880 Van Buren County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16890 Wapello County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16900 Warren County, Iowa 2120 Urban 0.9669 19780 Urban 0.9669 16910 Washington County, Iowa 16 Rural 0.8594 26980 Urban 0.9747 16920 Wayne County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16930 Webster County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16940 Winnebago County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16950 Winneshiek County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16960 Woodbury County, Iowa 7720 Urban 0.9416 43580 Urban 0.9381 16970 Worth County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 16980 Wright County, Iowa 16 Rural 0.8594 99916 Rural 0.8509 17000 Allen County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17010 Anderson County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17020 Atchison County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17030 Barber County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17040 Barton County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17050 Bourbon County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17060 Brown County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17070 Butler County, Kansas 9040 Urban 0.9175 48620 Urban 0.9153 17080 Chase County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17090 Chautauqua County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17100 Cherokee County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17110 Cheyenne County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17120 Clark County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17130 Clay County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17140 Cloud County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17150 Coffey County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17160 Comanche County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17170 Cowley County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17180 Crawford County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17190 Decatur County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17200 Dickinson County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17210 Doniphan County, Kansas 17 Rural 0.8040 41140 Urban 0.9519 17220 Douglas County, Kansas 4150 Urban 0.8537 29940 Urban 0.8537 17230 Edwards County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17240 Elk County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17250 Ellis County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17260 Ellsworth County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17270 Finney County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17280 Ford County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17290 Franklin County, Kansas 17 Rural 0.8040 28140 Urban 0.9476 17300 Geary County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17310 Gove County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17320 Graham County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17330 Grant County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17340 Gray County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17350 Greeley County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17360 Greenwood County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17370 Hamilton County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17380 Harper County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17390 Harvey County, Kansas 9040 Urban 0.9175 48620 Urban 0.9153 17391 Haskell County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17410 Hodgeman County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17420 Jackson County, Kansas 17 Rural 0.8040 45820 Urban 0.8920 17430 Jefferson County, Kansas 17 Rural 0.8040 45820 Urban 0.8920 Start Printed Page 27102 17440 Jewell County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17450 Johnson County, Kansas 3760 Urban 0.9490 28140 Urban 0.9476 17451 Kearny County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17470 Kingman County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17480 Kiowa County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17490 Labette County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17500 Lane County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17510 Leavenworth County, Kansas 3760 Urban 0.9490 28140 Urban 0.9476 17520 Lincoln County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17530 Linn County, Kansas 17 Rural 0.8040 28140 Urban 0.9476 17540 Logan County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17550 Lyon County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17560 Mc Pherson County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17570 Marion County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17580 Marshall County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17590 Meade County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17600 Miami County, Kansas 3760 Urban 0.9490 28140 Urban 0.9476 17610 Mitchell County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17620 Montgomery County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17630 Morris County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17640 Morton County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17650 Nemaha County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17660 Neosho County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17670 Ness County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17680 Norton County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17690 Osage County, Kansas 17 Rural 0.8040 45820 Urban 0.8920 17700 Osborne County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17710 Ottawa County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17720 Pawnee County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17730 Phillips County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17740 Pottawatomie County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17750 Pratt County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17760 Rawlins County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17770 Reno County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17780 Republic County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17790 Rice County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17800 Riley County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17810 Rooks County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17820 Rush County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17830 Russell County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17840 Saline County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17841 Scott County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17860 Sedgwick County, Kansas 9040 Urban 0.9175 48620 Urban 0.9153 17870 Seward County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17880 Shawnee County, Kansas 8440 Urban 0.8920 45820 Urban 0.8920 17890 Sheridan County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17900 Sherman County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17910 Smith County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17920 Stafford County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17921 Stanton County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17940 Stevens County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17950 Sumner County, Kansas 17 Rural 0.8040 48620 Urban 0.9153 17960 Thomas County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17970 Trego County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17980 Wabaunsee County, Kansas 17 Rural 0.8040 45820 Urban 0.8920 17981 Wallace County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17982 Washington County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17983 Wichita County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17984 Wilson County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17985 Woodson County, Kansas 17 Rural 0.8040 99917 Rural 0.8035 17986 Wyandotte County, Kansas 3760 Urban 0.9490 28140 Urban 0.9476 18000 Adair County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18010 Allen County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18020 Anderson County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18030 Ballard County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18040 Barren County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18050 Bath County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18060 Bell County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18070 Boone County, Kentucky 1640 Urban 0.9734 17140 Urban 0.9615 18080 Bourbon County, Kentucky 4280 Urban 0.8988 30460 Urban 0.9075 18090 Boyd County, Kentucky 3400 Urban 0.9477 26580 Urban 0.9477 18100 Boyle County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 Start Printed Page 27103 18110 Bracken County, Kentucky 18 Rural 0.7858 17140 Urban 0.9615 18120 Breathitt County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18130 Breckinridge County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18140 Bullitt County, Kentucky 4520 Urban 0.9293 31140 Urban 0.9251 18150 Butler County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18160 Caldwell County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18170 Calloway County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18180 Campbell County, Kentucky 1640 Urban 0.9734 17140 Urban 0.9615 18190 Carlisle County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18191 Carroll County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18210 Carter County, Kentucky 3400 Urban 0.9477 99918 Rural 0.7766 18220 Casey County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18230 Christian County, Kentucky 1660 Urban 0.8284 17300 Urban 0.8284 18240 Clark County, Kentucky 4280 Urban 0.8988 30460 Urban 0.9075 18250 Clay County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18260 Clinton County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18270 Crittenden County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18271 Cumberland County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18290 Daviess County, Kentucky 5990 Urban 0.8780 36980 Urban 0.8780 18291 Edmonson County, Kentucky 18 Rural 0.7858 14540 Urban 0.8211 18310 Elliott County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18320 Estill County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18330 Fayette County, Kentucky 4280 Urban 0.8988 30460 Urban 0.9075 18340 Fleming County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18350 Floyd County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18360 Franklin County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18361 Fulton County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18362 Gallatin County, Kentucky 1640 Urban 0.9734 17140 Urban 0.9615 18390 Garrard County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18400 Grant County, Kentucky 1640 Urban 0.9734 17140 Urban 0.9615 18410 Graves County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18420 Grayson County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18421 Green County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18440 Greenup County, Kentucky 3400 Urban 0.9477 26580 Urban 0.9477 18450 Hancock County, Kentucky 18 Rural 0.7858 36980 Urban 0.8780 18460 Hardin County, Kentucky 18 Rural 0.7858 21060 Urban 0.8802 18470 Harlan County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18480 Harrison County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18490 Hart County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18500 Henderson County, Kentucky 2440 Urban 0.8713 21780 Urban 0.8713 18510 Henry County, Kentucky 18 Rural 0.7858 31140 Urban 0.9251 18511 Hickman County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18530 Hopkins County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18540 Jackson County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18550 Jefferson County, Kentucky 4520 Urban 0.9293 31140 Urban 0.9251 18560 Jessamine County, Kentucky 4280 Urban 0.8988 30460 Urban 0.9075 18570 Johnson County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18580 Kenton County, Kentucky 1640 Urban 0.9734 17140 Urban 0.9615 18590 Knott County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18600 Knox County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18610 Larue County, Kentucky 18 Rural 0.7858 21060 Urban 0.8802 18620 Laurel County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18630 Lawrence County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18640 Lee County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18650 Leslie County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18660 Letcher County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18670 Lewis County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18680 Lincoln County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18690 Livingston County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18700 Logan County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18710 Lyon County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18720 Mc Cracken County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18730 Mc Creary County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18740 Mc Lean County, Kentucky 18 Rural 0.7858 36980 Urban 0.8780 18750 Madison County, Kentucky 4280 Urban 0.8988 99918 Rural 0.7766 18760 Magoffin County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18770 Marion County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18780 Marshall County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18790 Martin County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18800 Mason County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18801 Meade County, Kentucky 18 Rural 0.7858 31140 Urban 0.9251 18802 Menifee County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 Start Printed Page 27104 18830 Mercer County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18831 Metcalfe County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18850 Monroe County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18860 Montgomery County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18861 Morgan County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18880 Muhlenberg County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18890 Nelson County, Kentucky 18 Rural 0.7858 31140 Urban 0.9251 18900 Nicholas County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18910 Ohio County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18920 Oldham County, Kentucky 4520 Urban 0.9293 31140 Urban 0.9251 18930 Owen County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18931 Owsley County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18932 Pendleton County, Kentucky 1640 Urban 0.9734 17140 Urban 0.9615 18960 Perry County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18970 Pike County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18971 Powell County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18972 Pulaski County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18973 Robertson County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18974 Rockcastle County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18975 Rowan County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18976 Russell County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18977 Scott County, Kentucky 4280 Urban 0.8988 30460 Urban 0.9075 18978 Shelby County, Kentucky 18 Rural 0.7858 31140 Urban 0.9251 18979 Simpson County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18980 Spencer County, Kentucky 18 Rural 0.7858 31140 Urban 0.9251 18981 Taylor County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18982 Todd County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18983 Trigg County, Kentucky 18 Rural 0.7858 17300 Urban 0.8284 18984 Trimble County, Kentucky 18 Rural 0.7858 31140 Urban 0.9251 18985 Union County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18986 Warren County, Kentucky 18 Rural 0.7858 14540 Urban 0.8211 18987 Washington County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18988 Wayne County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18989 Webster County, Kentucky 18 Rural 0.7858 21780 Urban 0.8713 18990 Whitley County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18991 Wolfe County, Kentucky 18 Rural 0.7858 99918 Rural 0.7766 18992 Woodford County, Kentucky 4280 Urban 0.8988 30460 Urban 0.9075 19000 Acadia County, Louisiana 3880 Urban 0.8251 99919 Rural 0.7411 19010 Allen County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19020 Ascension County, Louisiana 0760 Urban 0.8643 12940 Urban 0.8593 19030 Assumption County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19040 Avoyelles County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19050 Beauregard County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19060 Bienville County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19070 Bossier County, Louisiana 7680 Urban 0.8737 43340 Urban 0.8760 19080 Caddo County, Louisiana 7680 Urban 0.8737 43340 Urban 0.8760 19090 Calcasieu County, Louisiana 3960 Urban 0.7858 29340 Urban 0.7833 19100 Caldwell County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19110 Cameron County, Louisiana 19 Rural 0.7340 29340 Urban 0.7833 19120 Catahoula County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19130 Claiborne County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19140 Concordia County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19150 De Soto County, Louisiana 19 Rural 0.7340 43340 Urban 0.8760 19160 East Baton Rouge County, Louisiana 0760 Urban 0.8643 12940 Urban 0.8593 19170 East Carroll County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19180 East Feliciana County, Louisiana 19 Rural 0.7340 12940 Urban 0.8593 19190 Evangeline County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19200 Franklin County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19210 Grant County, Louisiana 19 Rural 0.7340 10780 Urban 0.8033 19220 Iberia County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19230 Iberville County, Louisiana 19 Rural 0.7340 12940 Urban 0.8593 19240 Jackson County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19250 Jefferson County, Louisiana 5560 Urban 0.8995 35380 Urban 0.8995 19260 Jefferson Davis County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19270 Lafayette County, Louisiana 3880 Urban 0.8251 29180 Urban 0.8428 19280 Lafourche County, Louisiana 3350 Urban 0.7894 26380 Urban 0.7894 19290 La Salle County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19300 Lincoln County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19310 Livingston County, Louisiana 0760 Urban 0.8643 12940 Urban 0.8593 19320 Madison County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19330 Morehouse County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19340 Natchitoches County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 Start Printed Page 27105 19350 Orleans County, Louisiana 5560 Urban 0.8995 35380 Urban 0.8995 19360 Ouachita County, Louisiana 5200 Urban 0.8044 33740 Urban 0.8031 19370 Plaquemines County, Louisiana 5560 Urban 0.8995 35380 Urban 0.8995 19380 Pointe Coupee County, Louisiana 19 Rural 0.7340 12940 Urban 0.8593 19390 Rapides County, Louisiana 0220 Urban 0.8033 10780 Urban 0.8033 19400 Red River County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19410 Richland County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19420 Sabine County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19430 St Bernard County, Louisiana 5560 Urban 0.8995 35380 Urban 0.8995 19440 St Charles County, Louisiana 5560 Urban 0.8995 35380 Urban 0.8995 19450 St Helena County, Louisiana 19 Rural 0.7340 12940 Urban 0.8593 19460 St James County, Louisiana 5560 Urban 0.8995 99919 Rural 0.7411 19470 St John Baptist County, Louisiana 5560 Urban 0.8995 35380 Urban 0.8995 19480 St Landry County, Louisiana 3880 Urban 0.8251 99919 Rural 0.7411 19490 St Martin County, Louisiana 3880 Urban 0.8251 29180 Urban 0.8428 19500 St Mary County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19510 St Tammany County, Louisiana 5560 Urban 0.8995 35380 Urban 0.8995 19520 Tangipahoa County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19530 Tensas County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19540 Terrebonne County, Louisiana 3350 Urban 0.7894 26380 Urban 0.7894 19550 Union County, Louisiana 19 Rural 0.7340 33740 Urban 0.8031 19560 Vermilion County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19570 Vernon County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19580 Washington County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19590 Webster County, Louisiana 7680 Urban 0.8737 99919 Rural 0.7411 19600 West Baton Rouge County, Louisiana 0760 Urban 0.8643 12940 Urban 0.8593 19610 West Carroll County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 19620 West Feliciana County, Louisiana 19 Rural 0.7340 12940 Urban 0.8593 19630 Winn County, Louisiana 19 Rural 0.7340 99919 Rural 0.7411 20000 Androscoggin County, Maine 4243 Urban 0.9331 30340 Urban 0.9331 20010 Aroostook County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20020 Cumberland County, Maine 6403 Urban 1.0382 38860 Urban 1.0382 20030 Franklin County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20040 Hancock County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20050 Kennebec County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20060 Knox County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20070 Lincoln County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20080 Oxford County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20090 Penobscot County, Maine 0733 Urban 0.9993 12620 Urban 0.9993 20100 Piscataquis County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20110 Sagadahoc County, Maine 6403 Urban 1.0382 38860 Urban 1.0382 20120 Somerset County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20130 Waldo County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20140 Washington County, Maine 20 Rural 0.8843 99920 Rural 0.8843 20150 York County, Maine 6403 Urban 1.0382 38860 Urban 1.0382 21000 Allegany County, Maryland 1900 Urban 0.9317 19060 Urban 0.9317 21010 Anne Arundel County, Maryland 0720 Urban 0.9897 12580 Urban 0.9897 21020 Baltimore County, Maryland 0720 Urban 0.9897 12580 Urban 0.9897 21030 Baltimore City County, Maryland 0720 Urban 0.9897 12580 Urban 0.9897 21040 Calvert County, Maryland 8840 Urban 1.0976 47894 Urban 1.0926 21050 Caroline County, Maryland 21 Rural 0.9230 99921 Rural 0.9353 21060 Carroll County, Maryland 0720 Urban 0.9897 12580 Urban 0.9897 21070 Cecil County, Maryland 9160 Urban 1.0527 48864 Urban 1.0471 21080 Charles County, Maryland 8840 Urban 1.0976 47894 Urban 1.0926 21090 Dorchester County, Maryland 21 Rural 0.9230 99921 Rural 0.9353 21100 Frederick County, Maryland 8840 Urban 1.0976 13644 Urban 1.1483 21110 Garrett County, Maryland 21 Rural 0.9230 99921 Rural 0.9353 21120 Harford County, Maryland 0720 Urban 0.9897 12580 Urban 0.9897 21130 Howard County, Maryland 0720 Urban 0.9897 12580 Urban 0.9897 21140 Kent County, Maryland 21 Rural 0.9230 99921 Rural 0.9353 21150 Montgomery County, Maryland 8840 Urban 1.0976 13644 Urban 1.1483 21160 Prince Georges County, Maryland 8840 Urban 1.0976 47894 Urban 1.0926 21170 Queen Annes County, Maryland 0720 Urban 0.9897 12580 Urban 0.9897 21180 St Marys County, Maryland 21 Rural 0.9230 99921 Rural 0.9353 21190 Somerset County, Maryland 21 Rural 0.9230 41540 Urban 0.9064 21200 Talbot County, Maryland 21 Rural 0.9230 99921 Rural 0.9353 21210 Washington County, Maryland 3180 Urban 0.9869 25180 Urban 0.9489 21220 Wicomico County, Maryland 21 Rural 0.9230 41540 Urban 0.9064 21230 Worcester County, Maryland 21 Rural 0.9230 99921 Rural 0.9353 22000 Barnstable County, Massachusetts 0743 Urban 1.2600 12700 Urban 1.2600 22010 Berkshire County, Massachusetts 6323 Urban 1.0181 38340 Urban 1.0181 22020 Bristol County, Massachusetts 1123 Urban 1.1178 39300 Urban 1.0966 Start Printed Page 27106 22030 Dukes County, Massachusetts 22 Rural 1.0216 99922 Rural 1.0216 22040 Essex County, Massachusetts 1123 Urban 1.1178 21604 Urban 1.0538 22060 Franklin County, Massachusetts 22 Rural 1.0216 44140 Urban 1.0248 22070 Hampden County, Massachusetts 8003 Urban 1.0263 44140 Urban 1.0248 22080 Hampshire County, Massachusetts 8003 Urban 1.0263 44140 Urban 1.0248 22090 Middlesex County, Massachusetts 1123 Urban 1.1178 15764 Urban 1.1172 22120 Nantucket County, Massachusetts 22 Rural 1.0216 99922 Rural 1.0216 22130 Norfolk County, Massachusetts 1123 Urban 1.1178 14484 Urban 1.1558 22150 Plymouth County, Massachusetts 1123 Urban 1.1178 14484 Urban 1.1558 22160 Suffolk County, Massachusetts 1123 Urban 1.1178 14484 Urban 1.1558 22170 Worcester County, Massachusetts 1123 Urban 1.1178 49340 Urban 1.1028 23000 Alcona County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23010 Alger County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23020 Allegan County, Michigan 3000 Urban 0.9445 99923 Rural 0.8895 23030 Alpena County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23040 Antrim County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23050 Arenac County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23060 Baraga County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23070 Barry County, Michigan 23 Rural 0.8824 24340 Urban 0.9390 23080 Bay County, Michigan 6960 Urban 0.9241 13020 Urban 0.9343 23090 Benzie County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23100 Berrien County, Michigan 0870 Urban 0.8879 35660 Urban 0.8879 23110 Branch County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23120 Calhoun County, Michigan 3720 Urban 1.0143 12980 Urban 0.9508 23130 Cass County, Michigan 23 Rural 0.8824 43780 Urban 0.9788 23140 Charlevoix County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23150 Cheboygan County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23160 Chippewa County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23170 Clare County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23180 Clinton County, Michigan 4040 Urban 0.9794 29620 Urban 0.9794 23190 Crawford County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23200 Delta County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23210 Dickinson County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23220 Eaton County, Michigan 4040 Urban 0.9794 29620 Urban 0.9794 23230 Emmet County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23240 Genesee County, Michigan 2640 Urban 1.0655 22420 Urban 1.0655 23250 Gladwin County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23260 Gogebic County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23270 Grand Traverse County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23280 Gratiot County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23290 Hillsdale County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23300 Houghton County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23310 Huron County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23320 Ingham County, Michigan 4040 Urban 0.9794 29620 Urban 0.9794 23330 Ionia County, Michigan 23 Rural 0.8824 24340 Urban 0.9390 23340 Iosco County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23350 Iron County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23360 Isabella County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23370 Jackson County, Michigan 3520 Urban 0.9304 27100 Urban 0.9304 23380 Kalamazoo County, Michigan 3720 Urban 1.0143 28020 Urban 1.0381 23390 Kalkaska County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23400 Kent County, Michigan 3000 Urban 0.9445 24340 Urban 0.9390 23410 Keweenaw County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23420 Lake County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23430 Lapeer County, Michigan 2160 Urban 1.0147 47644 Urban 0.9871 23440 Leelanau County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23450 Lenawee County, Michigan 0440 Urban 1.0707 99923 Rural 0.8895 23460 Livingston County, Michigan 0440 Urban 1.0707 47644 Urban 0.9871 23470 Luce County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23480 Mackinac County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23490 Macomb County, Michigan 2160 Urban 1.0147 47644 Urban 0.9871 23500 Manistee County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23510 Marquette County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23520 Mason County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23530 Mecosta County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23540 Menominee County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23550 Midland County, Michigan 6960 Urban 0.9241 99923 Rural 0.8895 23560 Missaukee County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23570 Monroe County, Michigan 2160 Urban 1.0147 33780 Urban 0.9468 23580 Montcalm County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23590 Montmorency County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23600 Muskegon County, Michigan 3000 Urban 0.9445 34740 Urban 0.9664 Start Printed Page 27107 23610 Newaygo County, Michigan 23 Rural 0.8824 24340 Urban 0.9390 23620 Oakland County, Michigan 2160 Urban 1.0147 47644 Urban 0.9871 23630 Oceana County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23640 Ogemaw County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23650 Ontonagon County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23660 Osceola County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23670 Oscoda County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23680 Otsego County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23690 Ottawa County, Michigan 3000 Urban 0.9445 26100 Urban 0.9055 23700 Presque Isle County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23710 Roscommon County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23720 Saginaw County, Michigan 6960 Urban 0.9241 40980 Urban 0.9088 23730 St Clair County, Michigan 2160 Urban 1.0147 47644 Urban 0.9871 23740 St Joseph County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23750 Sanilac County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23760 Schoolcraft County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23770 Shiawassee County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23780 Tuscola County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 23790 Van Buren County, Michigan 3720 Urban 1.0143 28020 Urban 1.0381 23800 Washtenaw County, Michigan 0440 Urban 1.0707 11460 Urban 1.0859 23810 Wayne County, Michigan 2160 Urban 1.0147 19804 Urban 1.0424 23830 Wexford County, Michigan 23 Rural 0.8824 99923 Rural 0.8895 24000 Aitkin County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24010 Anoka County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24020 Becker County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24030 Beltrami County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24040 Benton County, Minnesota 6980 Urban 0.9965 41060 Urban 0.9965 24050 Big Stone County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24060 Blue Earth County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24070 Brown County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24080 Carlton County, Minnesota 24 Rural 0.9132 20260 Urban 1.0213 24090 Carver County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24100 Cass County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24110 Chippewa County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24120 Chisago County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24130 Clay County, Minnesota 2520 Urban 0.8486 22020 Urban 0.8486 24140 Clearwater County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24150 Cook County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24160 Cottonwood County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24170 Crow Wing County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24180 Dakota County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24190 Dodge County, Minnesota 24 Rural 0.9132 40340 Urban 1.1131 24200 Douglas County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24210 Faribault County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24220 Fillmore County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24230 Freeborn County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24240 Goodhue County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24250 Grant County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24260 Hennepin County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24270 Houston County, Minnesota 3870 Urban 0.9564 29100 Urban 0.9564 24280 Hubbard County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24290 Isanti County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24300 Itasca County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24310 Jackson County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24320 Kanabec County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24330 Kandiyohi County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24340 Kittson County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24350 Koochiching County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24360 Lac Qui Parle County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24370 Lake County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24380 Lake Of Woods County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24390 Le Sueur County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24400 Lincoln County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24410 Lyon County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24420 Mc Leod County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24430 Mahnomen County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24440 Marshall County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24450 Martin County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24460 Meeker County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24470 Mille Lacs County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24480 Morrison County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24490 Mower County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 Start Printed Page 27108 24500 Murray County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24510 Nicollet County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24520 Nobles County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24530 Norman County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24540 Olmsted County, Minnesota 6820 Urban 1.1131 40340 Urban 1.1131 24550 Otter Tail County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24560 Pennington County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24570 Pine County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24580 Pipestone County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24590 Polk County, Minnesota 2985 Urban 0.7901 24220 Urban 0.7901 24600 Pope County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24610 Ramsey County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24620 Red Lake County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24630 Redwood County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24640 Renville County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24650 Rice County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24660 Rock County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24670 Roseau County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24680 St Louis County, Minnesota 2240 Urban 1.0213 20260 Urban 1.0213 24690 Scott County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24700 Sherburne County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24710 Sibley County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24720 Stearns County, Minnesota 6980 Urban 0.9965 41060 Urban 0.9965 24730 Steele County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24740 Stevens County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24750 Swift County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24760 Todd County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24770 Traverse County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24780 Wabasha County, Minnesota 24 Rural 0.9132 40340 Urban 1.1131 24790 Wadena County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24800 Waseca County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24810 Washington County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24820 Watonwan County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24830 Wilkin County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24840 Winona County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 24850 Wright County, Minnesota 5120 Urban 1.1075 33460 Urban 1.1075 24860 Yellow Medicine County, Minnesota 24 Rural 0.9132 99924 Rural 0.9132 25000 Adams County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25010 Alcorn County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25020 Amite County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25030 Attala County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25040 Benton County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25050 Bolivar County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25060 Calhoun County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25070 Carroll County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25080 Chickasaw County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25090 Choctaw County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25100 Claiborne County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25110 Clarke County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25120 Clay County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25130 Coahoma County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25140 Copiah County, Mississippi 25 Rural 0.7634 27140 Urban 0.8311 25150 Covington County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25160 Desoto County, Mississippi 4920 Urban 0.9416 32820 Urban 0.9397 25170 Forrest County, Mississippi 3285 Urban 0.7601 25620 Urban 0.7601 25180 Franklin County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25190 George County, Mississippi 25 Rural 0.7634 37700 Urban 0.8156 25200 Greene County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25210 Grenada County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25220 Hancock County, Mississippi 0920 Urban 0.8706 25060 Urban 0.8929 25230 Harrison County, Mississippi 0920 Urban 0.8706 25060 Urban 0.8929 25240 Hinds County, Mississippi 3560 Urban 0.8382 27140 Urban 0.8311 25250 Holmes County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25260 Humphreys County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25270 Issaquena County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25280 Itawamba County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25290 Jackson County, Mississippi 0920 Urban 0.8706 37700 Urban 0.8156 25300 Jasper County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25310 Jefferson County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25320 Jefferson Davis County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25330 Jones County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25340 Kemper County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 Start Printed Page 27109 25350 Lafayette County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25360 Lamar County, Mississippi 3285 Urban 0.7601 25620 Urban 0.7601 25370 Lauderdale County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25380 Lawrence County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25390 Leake County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25400 Lee County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25410 Leflore County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25420 Lincoln County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25430 Lowndes County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25440 Madison County, Mississippi 3560 Urban 0.8382 27140 Urban 0.8311 25450 Marion County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25460 Marshall County, Mississippi 25 Rural 0.7634 32820 Urban 0.9397 25470 Monroe County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25480 Montgomery County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25490 Neshoba County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25500 Newton County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25510 Noxubee County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25520 Oktibbeha County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25530 Panola County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25540 Pearl River County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25550 Perry County, Mississippi 25 Rural 0.7634 25620 Urban 0.7601 25560 Pike County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25570 Pontotoc County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25580 Prentiss County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25590 Quitman County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25600 Rankin County, Mississippi 3560 Urban 0.8382 27140 Urban 0.8311 25610 Scott County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25620 Sharkey County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25630 Simpson County, Mississippi 25 Rural 0.7634 27140 Urban 0.8311 25640 Smith County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25650 Stone County, Mississippi 25 Rural 0.7634 25060 Urban 0.8929 25660 Sunflower County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25670 Tallahatchie County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25680 Tate County, Mississippi 25 Rural 0.7634 32820 Urban 0.9397 25690 Tippah County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25700 Tishomingo County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25710 Tunica County, Mississippi 25 Rural 0.7634 32820 Urban 0.9397 25720 Union County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25730 Walthall County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25740 Warren County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25750 Washington County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25760 Wayne County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25770 Webster County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25780 Wilkinson County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25790 Winston County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25800 Yalobusha County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 25810 Yazoo County, Mississippi 25 Rural 0.7634 99925 Rural 0.7674 26000 Adair County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26010 Andrew County, Missouri 7000 Urban 0.9519 41140 Urban 0.9519 26020 Atchison County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26030 Audrain County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26040 Barry County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26050 Barton County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26060 Bates County, Missouri 26 Rural 0.7959 28140 Urban 0.9476 26070 Benton County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26080 Bollinger County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26090 Boone County, Missouri 1740 Urban 0.8345 17860 Urban 0.8345 26100 Buchanan County, Missouri 7000 Urban 0.9519 41140 Urban 0.9519 26110 Butler County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26120 Caldwell County, Missouri 26 Rural 0.7959 28140 Urban 0.9476 26130 Callaway County, Missouri 26 Rural 0.7959 27620 Urban 0.8387 26140 Camden County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26150 Cape Girardeau County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26160 Carroll County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26170 Carter County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26180 Cass County, Missouri 3760 Urban 0.9490 28140 Urban 0.9476 26190 Cedar County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26200 Chariton County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26210 Christian County, Missouri 7920 Urban 0.8250 44180 Urban 0.8237 26220 Clark County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26230 Clay County, Missouri 3760 Urban 0.9490 28140 Urban 0.9476 26240 Clinton County, Missouri 3760 Urban 0.9490 28140 Urban 0.9476 Start Printed Page 27110 26250 Cole County, Missouri 26 Rural 0.7959 27620 Urban 0.8387 26260 Cooper County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26270 Crawford County, Missouri 26 Rural 0.7959 41180 Urban 0.8954 26280 Dade County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26290 Dallas County, Missouri 26 Rural 0.7959 44180 Urban 0.8237 26300 Daviess County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26310 De Kalb County, Missouri 26 Rural 0.7959 41140 Urban 0.9519 26320 Dent County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26330 Douglas County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26340 Dunklin County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26350 Franklin County, Missouri 7040 Urban 0.8962 41180 Urban 0.8954 26360 Gasconade County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26370 Gentry County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26380 Greene County, Missouri 7920 Urban 0.8250 44180 Urban 0.8237 26390 Grundy County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26400 Harrison County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26410 Henry County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26411 Hickory County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26412 Holt County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26440 Howard County, Missouri 26 Rural 0.7959 17860 Urban 0.8345 26450 Howell County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26460 Iron County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26470 Jackson County, Missouri 3760 Urban 0.9490 28140 Urban 0.9476 26480 Jasper County, Missouri 3710 Urban 0.8582 27900 Urban 0.8582 26490 Jefferson County, Missouri 7040 Urban 0.8962 41180 Urban 0.8954 26500 Johnson County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26510 Knox County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26520 Laclede County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26530 Lafayette County, Missouri 3760 Urban 0.9490 28140 Urban 0.9476 26540 Lawrence County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26541 Lewis County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26560 Lincoln County, Missouri 7040 Urban 0.8962 41180 Urban 0.8954 26570 Linn County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26580 Livingston County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26590 Mc Donald County, Missouri 26 Rural 0.7959 22220 Urban 0.8661 26600 Macon County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26601 Madison County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26620 Maries County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26630 Marion County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26631 Mercer County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26650 Miller County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26660 Mississippi County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26670 Moniteau County, Missouri 26 Rural 0.7959 27620 Urban 0.8387 26680 Monroe County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26690 Montgomery County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26700 Morgan County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26710 New Madrid County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26720 Newton County, Missouri 3710 Urban 0.8582 27900 Urban 0.8582 26730 Nodaway County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26740 Oregon County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26750 Osage County, Missouri 26 Rural 0.7959 27620 Urban 0.8387 26751 Ozark County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26770 Pemiscot County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26780 Perry County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26790 Pettis County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26800 Phelps County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26810 Pike County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26820 Platte County, Missouri 3760 Urban 0.9490 28140 Urban 0.9476 26821 Polk County, Missouri 26 Rural 0.7959 44180 Urban 0.8237 26840 Pulaski County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26850 Putnam County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26860 Ralls County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26870 Randolph County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26880 Ray County, Missouri 3760 Urban 0.9490 28140 Urban 0.9476 26881 Reynolds County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26900 Ripley County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26910 St Charles County, Missouri 7040 Urban 0.8962 41180 Urban 0.8954 26911 St Clair County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26930 St Francois County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26940 St Louis County, Missouri 7040 Urban 0.8962 41180 Urban 0.8954 26950 St Louis City County, Missouri 7040 Urban 0.8962 41180 Urban 0.8954 26960 Ste Genevieve County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 Start Printed Page 27111 26970 Saline County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26980 Schuyler County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26981 Scotland County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26982 Scott County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26983 Shannon County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26984 Shelby County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26985 Stoddard County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26986 Stone County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26987 Sullivan County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26988 Taney County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26989 Texas County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26990 Vernon County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26991 Warren County, Missouri 7040 Urban 0.8962 41180 Urban 0.8954 26992 Washington County, Missouri 26 Rural 0.7959 41180 Urban 0.8954 26993 Wayne County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26994 Webster County, Missouri 7920 Urban 0.8250 44180 Urban 0.8237 26995 Worth County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 26996 Wright County, Missouri 26 Rural 0.7959 99926 Rural 0.7900 27000 Beaverhead County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27010 Big Horn County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27020 Blaine County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27030 Broadwater County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27040 Carbon County, Montana 27 Rural 0.8762 13740 Urban 0.8834 27050 Carter County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27060 Cascade County, Montana 3040 Urban 0.9052 24500 Urban 0.9052 27070 Chouteau County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27080 Custer County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27090 Daniels County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27100 Dawson County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27110 Deer Lodge County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27113 Yellowstone National Park, Montana 27 Rural 0.8762 99927 Rural 0.8762 27120 Fallon County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27130 Fergus County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27140 Flathead County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27150 Gallatin County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27160 Garfield County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27170 Glacier County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27180 Golden Valley County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27190 Granite County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27200 Hill County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27210 Jefferson County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27220 Judith Basin County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27230 Lake County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27240 Lewis And Clark County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27250 Liberty County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27260 Lincoln County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27270 Mc Cone County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27280 Madison County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27290 Meagher County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27300 Mineral County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27310 Missoula County, Montana 5140 Urban 0.9473 33540 Urban 0.9473 27320 Musselshell County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27330 Park County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27340 Petroleum County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27350 Phillips County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27360 Pondera County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27370 Powder River County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27380 Powell County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27390 Prairie County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27400 Ravalli County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27410 Richland County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27420 Roosevelt County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27430 Rosebud County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27440 Sanders County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27450 Sheridan County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27460 Silver Bow County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27470 Stillwater County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27480 Sweet Grass County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27490 Teton County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27500 Toole County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27510 Treasure County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27520 Valley County, Montana 27 Rural 0.8762 99927 Rural 0.8762 Start Printed Page 27112 27530 Wheatland County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27540 Wibaux County, Montana 27 Rural 0.8762 99927 Rural 0.8762 27550 Yellowstone County, Montana 0880 Urban 0.8834 13740 Urban 0.8834 28000 Adams County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28010 Antelope County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28020 Arthur County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28030 Banner County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28040 Blaine County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28050 Boone County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28060 Box Butte County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28070 Boyd County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28080 Brown County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28090 Buffalo County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28100 Burt County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28110 Butler County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28120 Cass County, Nebraska 5920 Urban 0.9560 36540 Urban 0.9560 28130 Cedar County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28140 Chase County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28150 Cherry County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28160 Cheyenne County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28170 Clay County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28180 Colfax County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28190 Cuming County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28200 Custer County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28210 Dakota County, Nebraska 7720 Urban 0.9416 43580 Urban 0.9381 28220 Dawes County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28230 Dawson County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28240 Deuel County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28250 Dixon County, Nebraska 28 Rural 0.8657 43580 Urban 0.9381 28260 Dodge County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28270 Douglas County, Nebraska 5920 Urban 0.9560 36540 Urban 0.9560 28280 Dundy County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28290 Fillmore County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28300 Franklin County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28310 Frontier County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28320 Furnas County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28330 Gage County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28340 Garden County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28350 Garfield County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28360 Gosper County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28370 Grant County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28380 Greeley County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28390 Hall County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28400 Hamilton County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28410 Harlan County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28420 Hayes County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28430 Hitchcock County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28440 Holt County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28450 Hooker County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28460 Howard County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28470 Jefferson County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28480 Johnson County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28490 Kearney County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28500 Keith County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28510 Keya Paha County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28520 Kimball County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28530 Knox County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28540 Lancaster County, Nebraska 4360 Urban 1.0214 30700 Urban 1.0214 28550 Lincoln County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28560 Logan County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28570 Loup County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28580 Mc Pherson County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28590 Madison County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28600 Merrick County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28610 Morrill County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28620 Nance County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28630 Nemaha County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28640 Nuckolls County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28650 Otoe County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28660 Pawnee County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28670 Perkins County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28680 Phelps County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 Start Printed Page 27113 28690 Pierce County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28700 Platte County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28710 Polk County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28720 Redwillow County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28730 Richardson County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28740 Rock County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28750 Saline County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28760 Sarpy County, Nebraska 5920 Urban 0.9560 36540 Urban 0.9560 28770 Saunders County, Nebraska 28 Rural 0.8657 36540 Urban 0.9560 28780 Scotts Bluff County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28790 Seward County, Nebraska 28 Rural 0.8657 30700 Urban 1.0214 28800 Sheridan County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28810 Sherman County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28820 Sioux County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28830 Stanton County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28840 Thayer County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28850 Thomas County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28860 Thurston County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28870 Valley County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28880 Washington County, Nebraska 5920 Urban 0.9560 36540 Urban 0.9560 28890 Wayne County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28900 Webster County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28910 Wheeler County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 28920 York County, Nebraska 28 Rural 0.8657 99928 Rural 0.8657 29000 Churchill County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29010 Clark County, Nevada 4120 Urban 1.1155 29820 Urban 1.1437 29020 Douglas County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29030 Elko County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29040 Esmeralda County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29050 Eureka County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29060 Humboldt County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29070 Lander County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29080 Lincoln County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29090 Lyon County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29100 Mineral County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29110 Nye County, Nevada 4120 Urban 1.1155 99929 Rural 0.9065 29120 Carson City County, Nevada 29 Rural 0.9687 16180 Urban 1.0234 29130 Pershing County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 29140 Storey County, Nevada 29 Rural 0.9687 39900 Urban 1.0982 29150 Washoe County, Nevada 6720 Urban 1.0982 39900 Urban 1.0982 29160 White Pine County, Nevada 29 Rural 0.9687 99929 Rural 0.9065 30000 Belknap County, New Hampshire 30 Rural 1.0817 99930 Rural 1.0817 30010 Carroll County, New Hampshire 30 Rural 1.0817 99930 Rural 1.0817 30020 Cheshire County, New Hampshire 30 Rural 1.0817 99930 Rural 1.0817 30030 Coos County, New Hampshire 30 Rural 1.0817 99930 Rural 1.0817 30040 Grafton County, New Hampshire 30 Rural 1.0817 99930 Rural 1.0817 30050 Hillsboro County, New Hampshire 1123 Urban 1.1178 31700 Urban 1.0354 30060 Merrimack County, New Hampshire 1123 Urban 1.1178 31700 Urban 1.0354 30070 Rockingham County, New Hampshire 1123 Urban 1.1178 40484 Urban 1.0374 30080 Strafford County, New Hampshire 1123 Urban 1.1178 40484 Urban 1.0374 30090 Sullivan County, New Hampshire 30 Rural 1.0817 99930 Rural 1.0817 31000 Atlantic County, New Jersey 0560 Urban 1.1496 12100 Urban 1.1615 31100 Bergen County, New Jersey 0875 Urban 1.1651 35644 Urban 1.3188 31150 Burlington County, New Jersey 6160 Urban 1.0922 15804 Urban 1.0517 31160 Camden County, New Jersey 6160 Urban 1.0922 15804 Urban 1.0517 31180 Cape May County, New Jersey 0560 Urban 1.1496 36140 Urban 1.1011 31190 Cumberland County, New Jersey 8760 Urban 0.9827 47220 Urban 0.9827 31200 Essex County, New Jersey 5640 Urban 1.1834 35084 Urban 1.1883 31220 Gloucester County, New Jersey 6160 Urban 1.0922 15804 Urban 1.0517 31230 Hudson County, New Jersey 3640 Urban 1.1338 35644 Urban 1.3188 31250 Hunterdon County, New Jersey 5015 Urban 1.1167 35084 Urban 1.1883 31260 Mercer County, New Jersey 8480 Urban 1.0834 45940 Urban 1.0834 31270 Middlesex County, New Jersey 5015 Urban 1.1167 20764 Urban 1.1249 31290 Monmouth County, New Jersey 5190 Urban 1.1260 20764 Urban 1.1249 31300 Morris County, New Jersey 5640 Urban 1.1834 35084 Urban 1.1883 31310 Ocean County, New Jersey 5190 Urban 1.1260 20764 Urban 1.1249 31320 Passaic County, New Jersey 0875 Urban 1.1651 35644 Urban 1.3188 31340 Salem County, New Jersey 6160 Urban 1.0922 48864 Urban 1.0471 31350 Somerset County, New Jersey 5015 Urban 1.1167 20764 Urban 1.1249 31360 Sussex County, New Jersey 5640 Urban 1.1834 35084 Urban 1.1883 31370 Union County, New Jersey 5640 Urban 1.1834 35084 Urban 1.1883 31390 Warren County, New Jersey 5640 Urban 1.1834 10900 Urban 0.9818 Start Printed Page 27114 32000 Bernalillo County, New Mexico 0200 Urban 0.9684 10740 Urban 0.9684 32010 Catron County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32020 Chaves County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32025 Cibola County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32030 Colfax County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32040 Curry County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32050 De Baca County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32060 Dona Ana County, New Mexico 4100 Urban 0.8467 29740 Urban 0.8467 32070 Eddy County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32080 Grant County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32090 Guadalupe County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32100 Harding County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32110 Hidalgo County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32120 Lea County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32130 Lincoln County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32131 Los Alamos County, New Mexico 7490 Urban 1.0748 99932 Rural 0.8635 32140 Luna County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32150 Mc Kinley County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32160 Mora County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32170 Otero County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32180 Quay County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32190 Rio Arriba County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32200 Roosevelt County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32210 Sandoval County, New Mexico 0200 Urban 0.9684 10740 Urban 0.9684 32220 San Juan County, New Mexico 32 Rural 0.8563 22140 Urban 0.8509 32230 San Miguel County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32240 Santa Fe County, New Mexico 7490 Urban 1.0748 42140 Urban 1.0920 32250 Sierra County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32260 Socorro County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32270 Taos County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32280 Torrance County, New Mexico 32 Rural 0.8563 10740 Urban 0.9684 32290 Union County, New Mexico 32 Rural 0.8563 99932 Rural 0.8635 32300 Valencia County, New Mexico 0200 Urban 0.9684 10740 Urban 0.9684 33000 Albany County, New York 0160 Urban 0.8559 10580 Urban 0.8589 33010 Allegany County, New York 33 Rural 0.8395 99933 Rural 0.8154 33020 Bronx County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33030 Broome County, New York 0960 Urban 0.8562 13780 Urban 0.8562 33040 Cattaraugus County, New York 33 Rural 0.8395 99933 Rural 0.8154 33050 Cayuga County, New York 8160 Urban 0.9492 99933 Rural 0.8154 33060 Chautauqua County, New York 3610 Urban 0.7544 99933 Rural 0.8154 33070 Chemung County, New York 2335 Urban 0.8250 21300 Urban 0.8250 33080 Chenango County, New York 33 Rural 0.8395 99933 Rural 0.8154 33090 Clinton County, New York 33 Rural 0.8395 99933 Rural 0.8154 33200 Columbia County, New York 33 Rural 0.8395 99933 Rural 0.8154 33210 Cortland County, New York 33 Rural 0.8395 99933 Rural 0.8154 33220 Delaware County, New York 33 Rural 0.8395 99933 Rural 0.8154 33230 Dutchess County, New York 2281 Urban 1.0475 39100 Urban 1.0891 33240 Erie County, New York 1280 Urban 0.9511 15380 Urban 0.9511 33260 Essex County, New York 33 Rural 0.8395 99933 Rural 0.8154 33270 Franklin County, New York 33 Rural 0.8395 99933 Rural 0.8154 33280 Fulton County, New York 33 Rural 0.8395 99933 Rural 0.8154 33290 Genesee County, New York 6840 Urban 0.9049 99933 Rural 0.8154 33300 Greene County, New York 33 Rural 0.8395 99933 Rural 0.8154 33310 Hamilton County, New York 33 Rural 0.8395 99933 Rural 0.8154 33320 Herkimer County, New York 8680 Urban 0.8358 46540 Urban 0.8358 33330 Jefferson County, New York 33 Rural 0.8395 99933 Rural 0.8154 33331 Kings County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33340 Lewis County, New York 33 Rural 0.8395 99933 Rural 0.8154 33350 Livingston County, New York 6840 Urban 0.9049 40380 Urban 0.9121 33360 Madison County, New York 8160 Urban 0.9492 45060 Urban 0.9574 33370 Monroe County, New York 6840 Urban 0.9049 40380 Urban 0.9121 33380 Montgomery County, New York 0160 Urban 0.8559 99933 Rural 0.8154 33400 Nassau County, New York 5380 Urban 1.2719 35004 Urban 1.2719 33420 New York County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33500 Niagara County, New York 1280 Urban 0.9511 15380 Urban 0.9511 33510 Oneida County, New York 8680 Urban 0.8358 46540 Urban 0.8358 33520 Onondaga County, New York 8160 Urban 0.9492 45060 Urban 0.9574 33530 Ontario County, New York 6840 Urban 0.9049 40380 Urban 0.9121 33540 Orange County, New York 5660 Urban 1.1207 39100 Urban 1.0891 33550 Orleans County, New York 6840 Urban 0.9049 40380 Urban 0.9121 33560 Oswego County, New York 8160 Urban 0.9492 45060 Urban 0.9574 33570 Otsego County, New York 33 Rural 0.8395 99933 Rural 0.8154 Start Printed Page 27115 33580 Putnam County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33590 Queens County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33600 Rensselaer County, New York 0160 Urban 0.8559 10580 Urban 0.8589 33610 Richmond County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33620 Rockland County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33630 St Lawrence County, New York 33 Rural 0.8395 99933 Rural 0.8154 33640 Saratoga County, New York 0160 Urban 0.8559 10580 Urban 0.8589 33650 Schenectady County, New York 0160 Urban 0.8559 10580 Urban 0.8589 33660 Schoharie County, New York 0160 Urban 0.8559 10580 Urban 0.8589 33670 Schuyler County, New York 33 Rural 0.8395 99933 Rural 0.8154 33680 Seneca County, New York 33 Rural 0.8395 99933 Rural 0.8154 33690 Steuben County, New York 33 Rural 0.8395 99933 Rural 0.8154 33700 Suffolk County, New York 5380 Urban 1.2719 35004 Urban 1.2719 33710 Sullivan County, New York 33 Rural 0.8395 99933 Rural 0.8154 33720 Tioga County, New York 0960 Urban 0.8562 13780 Urban 0.8562 33730 Tompkins County, New York 33 Rural 0.8395 27060 Urban 0.9793 33740 Ulster County, New York 33 Rural 0.8395 28740 Urban 0.9255 33750 Warren County, New York 2975 Urban 0.8559 24020 Urban 0.8559 33760 Washington County, New York 2975 Urban 0.8559 24020 Urban 0.8559 33770 Wayne County, New York 6840 Urban 0.9049 40380 Urban 0.9121 33800 Westchester County, New York 5600 Urban 1.3464 35644 Urban 1.3188 33900 Wyoming County, New York 33 Rural 0.8395 99933 Rural 0.8154 33910 Yates County, New York 33 Rural 0.8395 99933 Rural 0.8154 34000 Alamance County, N Carolina 3120 Urban 0.9018 15500 Urban 0.8905 34010 Alexander County, N Carolina 3290 Urban 0.8921 25860 Urban 0.8921 34020 Alleghany County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34030 Anson County, N Carolina 34 Rural 0.8462 16740 Urban 0.9750 34040 Ashe County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34050 Avery County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34060 Beaufort County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34070 Bertie County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34080 Bladen County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34090 Brunswick County, N Carolina 9200 Urban 0.9582 48900 Urban 0.9582 34100 Buncombe County, N Carolina 0480 Urban 0.9737 11700 Urban 0.9285 34110 Burke County, N Carolina 3290 Urban 0.8921 25860 Urban 0.8921 34120 Cabarrus County, N Carolina 1520 Urban 0.9715 16740 Urban 0.9750 34130 Caldwell County, N Carolina 3290 Urban 0.8921 25860 Urban 0.8921 34140 Camden County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34150 Carteret County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34160 Caswell County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34170 Catawba County, N Carolina 3290 Urban 0.8921 25860 Urban 0.8921 34180 Chatham County, N Carolina 6640 Urban 1.0034 20500 Urban 1.0244 34190 Cherokee County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34200 Chowan County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34210 Clay County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34220 Cleveland County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34230 Columbus County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34240 Craven County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34250 Cumberland County, N Carolina 2560 Urban 0.9416 22180 Urban 0.9416 34251 Currituck County, N Carolina 5720 Urban 0.8799 47260 Urban 0.8799 34270 Dare County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34280 Davidson County, N Carolina 3120 Urban 0.9018 99934 Rural 0.8540 34290 Davie County, N Carolina 3120 Urban 0.9018 49180 Urban 0.8944 34300 Duplin County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34310 Durham County, N Carolina 6640 Urban 1.0034 20500 Urban 1.0244 34320 Edgecombe County, N Carolina 6895 Urban 0.8915 40580 Urban 0.8915 34330 Forsyth County, N Carolina 3120 Urban 0.9018 49180 Urban 0.8944 34340 Franklin County, N Carolina 6640 Urban 1.0034 39580 Urban 0.9691 34350 Gaston County, N Carolina 1520 Urban 0.9715 16740 Urban 0.9750 34360 Gates County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34370 Graham County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34380 Granville County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34390 Greene County, N Carolina 34 Rural 0.8462 24780 Urban 0.9425 34400 Guilford County, N Carolina 3120 Urban 0.9018 24660 Urban 0.9104 34410 Halifax County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34420 Harnett County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34430 Haywood County, N Carolina 34 Rural 0.8462 11700 Urban 0.9285 34440 Henderson County, N Carolina 34 Rural 0.8462 11700 Urban 0.9285 34450 Hertford County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34460 Hoke County, N Carolina 34 Rural 0.8462 22180 Urban 0.9416 34470 Hyde County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34480 Iredell County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 Start Printed Page 27116 34490 Jackson County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34500 Johnston County, N Carolina 6640 Urban 1.0034 39580 Urban 0.9691 34510 Jones County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34520 Lee County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34530 Lenoir County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34540 Lincoln County, N Carolina 1520 Urban 0.9715 99934 Rural 0.8540 34550 Mc Dowell County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34560 Macon County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34570 Madison County, N Carolina 0480 Urban 0.9737 11700 Urban 0.9285 34580 Martin County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34590 Mecklenburg County, N Carolina 1520 Urban 0.9715 16740 Urban 0.9750 34600 Mitchell County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34610 Montgomery County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34620 Moore County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34630 Nash County, N Carolina 6895 Urban 0.8915 40580 Urban 0.8915 34640 New Hanover County, N Carolina 9200 Urban 0.9582 48900 Urban 0.9582 34650 Northampton County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34660 Onslow County, N Carolina 3605 Urban 0.8236 27340 Urban 0.8236 34670 Orange County, N Carolina 6640 Urban 1.0034 20500 Urban 1.0244 34680 Pamlico County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34690 Pasquotank County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34700 Pender County, N Carolina 34 Rural 0.8462 48900 Urban 0.9582 34710 Perquimans County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34720 Person County, N Carolina 34 Rural 0.8462 20500 Urban 1.0244 34730 Pitt County, N Carolina 3150 Urban 0.9425 24780 Urban 0.9425 34740 Polk County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34750 Randolph County, N Carolina 3120 Urban 0.9018 24660 Urban 0.9104 34760 Richmond County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34770 Robeson County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34780 Rockingham County, N Carolina 34 Rural 0.8462 24660 Urban 0.9104 34790 Rowan County, N Carolina 1520 Urban 0.9715 99934 Rural 0.8540 34800 Rutherford County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34810 Sampson County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34820 Scotland County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34830 Stanly County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34840 Stokes County, N Carolina 3120 Urban 0.9018 49180 Urban 0.8944 34850 Surry County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34860 Swain County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34870 Transylvania County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34880 Tyrrell County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34890 Union County, N Carolina 1520 Urban 0.9715 16740 Urban 0.9750 34900 Vance County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34910 Wake County, N Carolina 6640 Urban 1.0034 39580 Urban 0.9691 34920 Warren County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34930 Washington County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34940 Watauga County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34950 Wayne County, N Carolina 2980 Urban 0.8775 24140 Urban 0.8775 34960 Wilkes County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34970 Wilson County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 34980 Yadkin County, N Carolina 3120 Urban 0.9018 49180 Urban 0.8944 34981 Yancey County, N Carolina 34 Rural 0.8462 99934 Rural 0.8540 35000 Adams County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35010 Barnes County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35020 Benson County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35030 Billings County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35040 Bottineau County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35050 Bowman County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35060 Burke County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35070 Burleigh County, N Dakota 1010 Urban 0.7574 13900 Urban 0.7574 35080 Cass County, N Dakota 2520 Urban 0.8486 22020 Urban 0.8486 35090 Cavalier County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35100 Dickey County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35110 Divide County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35120 Dunn County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35130 Eddy County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35140 Emmons County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35150 Foster County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35160 Golden Valley County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35170 Grand Forks County, N Dakota 2985 Urban 0.7901 24220 Urban 0.7901 35180 Grant County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35190 Griggs County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35200 Hettinger County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 Start Printed Page 27117 35210 Kidder County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35220 La Moure County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35230 Logan County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35240 Mc Henry County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35250 Mc Intosh County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35260 Mc Kenzie County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35270 Mc Lean County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35280 Mercer County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35290 Morton County, N Dakota 1010 Urban 0.7574 13900 Urban 0.7574 35300 Mountrail County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35310 Nelson County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35320 Oliver County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35330 Pembina County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35340 Pierce County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35350 Ramsey County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35360 Ransom County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35370 Renville County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35380 Richland County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35390 Rolette County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35400 Sargent County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35410 Sheridan County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35420 Sioux County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35430 Slope County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35440 Stark County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35450 Steele County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35460 Stutsman County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35470 Towner County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35480 Traill County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35490 Walsh County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35500 Ward County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35510 Wells County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 35520 Williams County, N Dakota 35 Rural 0.7261 99935 Rural 0.7261 36000 Adams County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36010 Allen County, Ohio 4320 Urban 0.9119 30620 Urban 0.9225 36020 Ashland County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36030 Ashtabula County, Ohio 1680 Urban 0.9183 99936 Rural 0.8826 36040 Athens County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36050 Auglaize County, Ohio 4320 Urban 0.9119 99936 Rural 0.8826 36060 Belmont County, Ohio 9000 Urban 0.7161 48540 Urban 0.7161 36070 Brown County, Ohio 1640 Urban 0.9734 17140 Urban 0.9615 36080 Butler County, Ohio 3200 Urban 0.8951 17140 Urban 0.9615 36090 Carroll County, Ohio 1320 Urban 0.8935 15940 Urban 0.8935 36100 Champaign County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36110 Clark County, Ohio 2000 Urban 0.8980 44220 Urban 0.8396 36120 Clermont County, Ohio 1640 Urban 0.9734 17140 Urban 0.9615 36130 Clinton County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36140 Columbiana County, Ohio 9320 Urban 0.8848 99936 Rural 0.8826 36150 Coshocton County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36160 Crawford County, Ohio 4800 Urban 0.9891 99936 Rural 0.8826 36170 Cuyahoga County, Ohio 1680 Urban 0.9183 17460 Urban 0.9213 36190 Darke County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36200 Defiance County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36210 Delaware County, Ohio 1840 Urban 0.9874 18140 Urban 0.9860 36220 Erie County, Ohio 36 Rural 0.8921 41780 Urban 0.9019 36230 Fairfield County, Ohio 1840 Urban 0.9874 18140 Urban 0.9860 36240 Fayette County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36250 Franklin County, Ohio 1840 Urban 0.9874 18140 Urban 0.9860 36260 Fulton County, Ohio 8400 Urban 0.9574 45780 Urban 0.9574 36270 Gallia County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36280 Geauga County, Ohio 1680 Urban 0.9183 17460 Urban 0.9213 36290 Greene County, Ohio 2000 Urban 0.8980 19380 Urban 0.9064 36300 Guernsey County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36310 Hamilton County, Ohio 1640 Urban 0.9734 17140 Urban 0.9615 36330 Hancock County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36340 Hardin County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36350 Harrison County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36360 Henry County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36370 Highland County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36380 Hocking County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36390 Holmes County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36400 Huron County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36410 Jackson County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 Start Printed Page 27118 36420 Jefferson County, Ohio 8080 Urban 0.7819 48260 Urban 0.7819 36430 Knox County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36440 Lake County, Ohio 1680 Urban 0.9183 17460 Urban 0.9213 36450 Lawrence County, Ohio 3400 Urban 0.9477 26580 Urban 0.9477 36460 Licking County, Ohio 1840 Urban 0.9874 18140 Urban 0.9860 36470 Logan County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36480 Lorain County, Ohio 1680 Urban 0.9183 17460 Urban 0.9213 36490 Lucas County, Ohio 8400 Urban 0.9574 45780 Urban 0.9574 36500 Madison County, Ohio 1840 Urban 0.9874 18140 Urban 0.9860 36510 Mahoning County, Ohio 9320 Urban 0.8848 49660 Urban 0.8603 36520 Marion County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36530 Medina County, Ohio 1680 Urban 0.9183 17460 Urban 0.9213 36540 Meigs County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36550 Mercer County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36560 Miami County, Ohio 2000 Urban 0.8980 19380 Urban 0.9064 36570 Monroe County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36580 Montgomery County, Ohio 2000 Urban 0.8980 19380 Urban 0.9064 36590 Morgan County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36600 Morrow County, Ohio 36 Rural 0.8921 18140 Urban 0.9860 36610 Muskingum County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36620 Noble County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36630 Ottawa County, Ohio 36 Rural 0.8921 45780 Urban 0.9574 36640 Paulding County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36650 Perry County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36660 Pickaway County, Ohio 1840 Urban 0.9874 18140 Urban 0.9860 36670 Pike County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36680 Portage County, Ohio 0080 Urban 0.8982 10420 Urban 0.8982 36690 Preble County, Ohio 36 Rural 0.8921 19380 Urban 0.9064 36700 Putnam County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36710 Richland County, Ohio 4800 Urban 0.9891 31900 Urban 0.9891 36720 Ross County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36730 Sandusky County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36740 Scioto County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36750 Seneca County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36760 Shelby County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36770 Stark County, Ohio 1320 Urban 0.8935 15940 Urban 0.8935 36780 Summit County, Ohio 0080 Urban 0.8982 10420 Urban 0.8982 36790 Trumbull County, Ohio 9320 Urban 0.8848 49660 Urban 0.8603 36800 Tuscarawas County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36810 Union County, Ohio 36 Rural 0.8921 18140 Urban 0.9860 36820 Van Wert County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36830 Vinton County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36840 Warren County, Ohio 1640 Urban 0.9734 17140 Urban 0.9615 36850 Washington County, Ohio 6020 Urban 0.8270 37620 Urban 0.8270 36860 Wayne County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36870 Williams County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 36880 Wood County, Ohio 8400 Urban 0.9574 45780 Urban 0.9574 36890 Wyandot County, Ohio 36 Rural 0.8921 99936 Rural 0.8826 37000 Adair County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37010 Alfalfa County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37020 Atoka County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37030 Beaver County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37040 Beckham County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37050 Blaine County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37060 Bryan County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37070 Caddo County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37080 Canadian County, Oklahoma 5880 Urban 0.9025 36420 Urban 0.9031 37090 Carter County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37100 Cherokee County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37110 Choctaw County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37120 Cimarron County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37130 Cleveland County, Oklahoma 5880 Urban 0.9025 36420 Urban 0.9031 37140 Coal County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37150 Comanche County, Oklahoma 4200 Urban 0.7872 30020 Urban 0.7872 37160 Cotton County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37170 Craig County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37180 Creek County, Oklahoma 8560 Urban 0.8587 46140 Urban 0.8543 37190 Custer County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37200 Delaware County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37210 Dewey County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37220 Ellis County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37230 Garfield County, Oklahoma 2340 Urban 0.8666 99937 Rural 0.7581 Start Printed Page 27119 37240 Garvin County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37250 Grady County, Oklahoma 37 Rural 0.7442 36420 Urban 0.9031 37260 Grant County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37270 Greer County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37280 Harmon County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37290 Harper County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37300 Haskell County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37310 Hughes County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37320 Jackson County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37330 Jefferson County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37340 Johnston County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37350 Kay County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37360 Kingfisher County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37370 Kiowa County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37380 Latimer County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37390 Le Flore County, Oklahoma 37 Rural 0.7442 22900 Urban 0.8230 37400 Lincoln County, Oklahoma 37 Rural 0.7442 36420 Urban 0.9031 37410 Logan County, Oklahoma 5880 Urban 0.9025 36420 Urban 0.9031 37420 Love County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37430 Mc Clain County, Oklahoma 5880 Urban 0.9025 36420 Urban 0.9031 37440 Mc Curtain County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37450 Mc Intosh County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37460 Major County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37470 Marshall County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37480 Mayes County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37490 Murray County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37500 Muskogee County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37510 Noble County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37520 Nowata County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37530 Okfuskee County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37540 Oklahoma County, Oklahoma 5880 Urban 0.9025 36420 Urban 0.9031 37550 Okmulgee County, Oklahoma 37 Rural 0.7442 46140 Urban 0.8543 37560 Osage County, Oklahoma 8560 Urban 0.8587 46140 Urban 0.8543 37570 Ottawa County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37580 Pawnee County, Oklahoma 37 Rural 0.7442 46140 Urban 0.8543 37590 Payne County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37600 Pittsburg County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37610 Pontotoc County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37620 Pottawatomie County, Oklahoma 5880 Urban 0.9025 99937 Rural 0.7581 37630 Pushmataha County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37640 Roger Mills County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37650 Rogers County, Oklahoma 8560 Urban 0.8587 46140 Urban 0.8543 37660 Seminole County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37670 Sequoyah County, Oklahoma 2720 Urban 0.8246 22900 Urban 0.8230 37680 Stephens County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37690 Texas County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37700 Tillman County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37710 Tulsa County, Oklahoma 8560 Urban 0.8587 46140 Urban 0.8543 37720 Wagoner County, Oklahoma 8560 Urban 0.8587 46140 Urban 0.8543 37730 Washington County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37740 Washita County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37750 Woods County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 37760 Woodward County, Oklahoma 37 Rural 0.7442 99937 Rural 0.7581 38000 Baker County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38010 Benton County, Oregon 1890 Urban 1.0729 18700 Urban 1.0729 38020 Clackamas County, Oregon 6440 Urban 1.1266 38900 Urban 1.1266 38030 Clatsop County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38040 Columbia County, Oregon 6440 Urban 1.1266 38900 Urban 1.1266 38050 Coos County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38060 Crook County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38070 Curry County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38080 Deschutes County, Oregon 38 Rural 1.0052 13460 Urban 1.0786 38090 Douglas County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38100 Gilliam County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38110 Grant County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38120 Harney County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38130 Hood River County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38140 Jackson County, Oregon 4890 Urban 1.0225 32780 Urban 1.0225 38150 Jefferson County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38160 Josephine County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38170 Klamath County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38180 Lake County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 Start Printed Page 27120 38190 Lane County, Oregon 2400 Urban 1.0818 21660 Urban 1.0818 38200 Lincoln County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38210 Linn County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38220 Malheur County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38230 Marion County, Oregon 7080 Urban 1.0442 41420 Urban 1.0442 38240 Morrow County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38250 Multnomah County, Oregon 6440 Urban 1.1266 38900 Urban 1.1266 38260 Polk County, Oregon 7080 Urban 1.0442 41420 Urban 1.0442 38270 Sherman County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38280 Tillamook County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38290 Umatilla County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38300 Union County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38310 Wallowa County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38320 Wasco County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38330 Washington County, Oregon 6440 Urban 1.1266 38900 Urban 1.1266 38340 Wheeler County, Oregon 38 Rural 1.0052 99938 Rural 0.9826 38350 Yamhill County, Oregon 6440 Urban 1.1266 38900 Urban 1.1266 39000 Adams County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39010 Allegheny County, Pennsylvania 6280 Urban 0.8860 38300 Urban 0.8845 39070 Armstrong County, Pennsylvania 39 Rural 0.8319 38300 Urban 0.8845 39080 Beaver County, Pennsylvania 6280 Urban 0.8860 38300 Urban 0.8845 39100 Bedford County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39110 Berks County, Pennsylvania 6680 Urban 0.9686 39740 Urban 0.9686 39120 Blair County, Pennsylvania 0280 Urban 0.8944 11020 Urban 0.8944 39130 Bradford County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39140 Bucks County, Pennsylvania 6160 Urban 1.0922 37964 Urban 1.1038 39150 Butler County, Pennsylvania 6280 Urban 0.8860 38300 Urban 0.8845 39160 Cambria County, Pennsylvania 3680 Urban 0.8086 27780 Urban 0.8354 39180 Cameron County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39190 Carbon County, Pennsylvania 0240 Urban 0.9845 10900 Urban 0.9818 39200 Centre County, Pennsylvania 8050 Urban 0.8356 44300 Urban 0.8356 39210 Chester County, Pennsylvania 6160 Urban 1.0922 37964 Urban 1.1038 39220 Clarion County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39230 Clearfield County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39240 Clinton County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39250 Columbia County, Pennsylvania 7560 Urban 0.8524 99939 Rural 0.8291 39260 Crawford County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39270 Cumberland County, Pennsylvania 3240 Urban 0.9233 25420 Urban 0.9313 39280 Dauphin County, Pennsylvania 3240 Urban 0.9233 25420 Urban 0.9313 39290 Delaware County, Pennsylvania 6160 Urban 1.0922 37964 Urban 1.1038 39310 Elk County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39320 Erie County, Pennsylvania 2360 Urban 0.8737 21500 Urban 0.8737 39330 Fayette County, Pennsylvania 6280 Urban 0.8860 38300 Urban 0.8845 39340 Forest County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39350 Franklin County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39360 Fulton County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39370 Greene County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39380 Huntingdon County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39390 Indiana County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39400 Jefferson County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39410 Juniata County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39420 Lackawanna County, Pennsylvania 7560 Urban 0.8524 42540 Urban 0.8540 39440 Lancaster County, Pennsylvania 4000 Urban 0.9694 29540 Urban 0.9694 39450 Lawrence County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39460 Lebanon County, Pennsylvania 3240 Urban 0.9233 30140 Urban 0.8459 39470 Lehigh County, Pennsylvania 0240 Urban 0.9845 10900 Urban 0.9818 39480 Luzerne County, Pennsylvania 7560 Urban 0.8524 42540 Urban 0.8540 39510 Lycoming County, Pennsylvania 9140 Urban 0.8364 48700 Urban 0.8364 39520 Mc Kean County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39530 Mercer County, Pennsylvania 7610 Urban 0.7793 49660 Urban 0.8603 39540 Mifflin County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39550 Monroe County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39560 Montgomery County, Pennsylvania 6160 Urban 1.0922 37964 Urban 1.1038 39580 Montour County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39590 Northampton County, Pennsylvania 0240 Urban 0.9845 10900 Urban 0.9818 39600 Northumberland County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39610 Perry County, Pennsylvania 3240 Urban 0.9233 25420 Urban 0.9313 39620 Philadelphia County, Pennsylvania 6160 Urban 1.0922 37964 Urban 1.1038 39630 Pike County, Pennsylvania 5660 Urban 1.1207 35084 Urban 1.1883 39640 Potter County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39650 Schuylkill County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39670 Snyder County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 Start Printed Page 27121 39680 Somerset County, Pennsylvania 3680 Urban 0.8086 99939 Rural 0.8291 39690 Sullivan County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39700 Susquehanna County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39710 Tioga County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39720 Union County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39730 Venango County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39740 Warren County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39750 Washington County, Pennsylvania 6280 Urban 0.8860 38300 Urban 0.8845 39760 Wayne County, Pennsylvania 39 Rural 0.8319 99939 Rural 0.8291 39770 Westmoreland County, Pennsylvania 6280 Urban 0.8860 38300 Urban 0.8845 39790 Wyoming County, Pennsylvania 7560 Urban 0.8524 42540 Urban 0.8540 39800 York County, Pennsylvania 9280 Urban 0.9347 49620 Urban 0.9347 40010 Adjuntas County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40020 Aguada County, Puerto Rico 0060 Urban 0.4876 10380 Urban 0.4738 40030 Aguadilla County, Puerto Rico 0060 Urban 0.4876 10380 Urban 0.4738 40040 Aguas Buenas County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40050 Aibonito County, Puerto Rico 40 Rural 0.3604 41980 Urban 0.4621 40060 Anasco County, Puerto Rico 4840 Urban 0.4243 10380 Urban 0.4738 40070 Arecibo County, Puerto Rico 0470 Urban 0.4112 41980 Urban 0.4621 40080 Arroyo County, Puerto Rico 40 Rural 0.3604 25020 Urban 0.3181 40090 Barceloneta County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40100 Barranquitas County, Puerto Rico 40 Rural 0.3604 41980 Urban 0.4621 40110 Bayamon County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40120 Cabo Rojo County, Puerto Rico 4840 Urban 0.4243 41900 Urban 0.4650 40130 Caguas County, Puerto Rico 1310 Urban 0.4120 41980 Urban 0.4621 40140 Camuy County, Puerto Rico 0470 Urban 0.4112 41980 Urban 0.4621 40145 Canovanas County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40150 Carolina County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40160 Catano County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40170 Cayey County, Puerto Rico 1310 Urban 0.4120 41980 Urban 0.4621 40180 Ceiba County, Puerto Rico 7440 Urban 0.4752 21940 Urban 0.4153 40190 Ciales County, Puerto Rico 40 Rural 0.3604 41980 Urban 0.4621 40200 Cidra County, Puerto Rico 1310 Urban 0.4120 41980 Urban 0.4621 40210 Coamo County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40220 Comerio County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40230 Corozal County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40240 Culebra County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40250 Dorado County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40260 Fajardo County, Puerto Rico 7440 Urban 0.4752 21940 Urban 0.4153 40265 Florida County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40270 Guanica County, Puerto Rico 40 Rural 0.3604 49500 Urban 0.4408 40280 Guayama County, Puerto Rico 40 Rural 0.3604 25020 Urban 0.3181 40290 Guayanilla County, Puerto Rico 6360 Urban 0.4881 49500 Urban 0.4408 40300 Guaynabo County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40310 Gurabo County, Puerto Rico 1310 Urban 0.4120 41980 Urban 0.4621 40320 Hatillo County, Puerto Rico 0470 Urban 0.4112 41980 Urban 0.4621 40330 Hormigueros County, Puerto Rico 4840 Urban 0.4243 32420 Urban 0.4020 40340 Humacao County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40350 Isabela County, Puerto Rico 40 Rural 0.3604 10380 Urban 0.4738 40360 Jayuya County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40370 Juana Diaz County, Puerto Rico 6360 Urban 0.4881 38660 Urban 0.4939 40380 Juncos County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40390 Lajas County, Puerto Rico 40 Rural 0.3604 41900 Urban 0.4650 40400 Lares County, Puerto Rico 40 Rural 0.3604 10380 Urban 0.4738 40410 Las Marias County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40420 Las Piedras County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40430 Loiza County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40440 Luquillo County, Puerto Rico 7440 Urban 0.4752 21940 Urban 0.4153 40450 Manati County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40460 Maricao County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40470 Maunabo County, Puerto Rico 40 Rural 0.3604 41980 Urban 0.4621 40480 Mayaguez County, Puerto Rico 4840 Urban 0.4243 32420 Urban 0.4020 40490 Moca County, Puerto Rico 0060 Urban 0.4876 10380 Urban 0.4738 40500 Morovis County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40510 Naguabo County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40520 Naranjito County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40530 Orocovis County, Puerto Rico 40 Rural 0.3604 41980 Urban 0.4621 40540 Patillas County, Puerto Rico 40 Rural 0.3604 25020 Urban 0.3181 40550 Penuelas County, Puerto Rico 6360 Urban 0.4881 49500 Urban 0.4408 40560 Ponce County, Puerto Rico 6360 Urban 0.4881 38660 Urban 0.4939 40570 Quebradillas County, Puerto Rico 40 Rural 0.3604 41980 Urban 0.4621 40580 Rincon County, Puerto Rico 40 Rural 0.3604 10380 Urban 0.4738 Start Printed Page 27122 40590 Rio Grande County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40610 Sabana Grande County, Puerto Rico 4840 Urban 0.4243 41900 Urban 0.4650 40620 Salinas County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40630 San German County, Puerto Rico 4840 Urban 0.4243 41900 Urban 0.4650 40640 San Juan County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40650 San Lorenzo County, Puerto Rico 1310 Urban 0.4120 41980 Urban 0.4621 40660 San Sebastian County, Puerto Rico 40 Rural 0.3604 10380 Urban 0.4738 40670 Santa Isabel County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40680 Toa Alta County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40690 Toa Baja County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40700 Trujillo Alto County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40710 Utuado County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40720 Vega Alta County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40730 Vega Baja County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40740 Vieques County, Puerto Rico 40 Rural 0.3604 99940 Rural 0.4047 40750 Villalba County, Puerto Rico 6360 Urban 0.4881 38660 Urban 0.4939 40760 Yabucoa County, Puerto Rico 7440 Urban 0.4752 41980 Urban 0.4621 40770 Yauco County, Puerto Rico 6360 Urban 0.4881 49500 Urban 0.4408 41000 Bristol County, Rhode Island 6483 Urban 1.1058 39300 Urban 1.0966 41010 Kent County, Rhode Island 6483 Urban 1.1058 39300 Urban 1.0966 41020 Newport County, Rhode Island 6483 Urban 1.1058 39300 Urban 1.0966 41030 Providence County, Rhode Island 6483 Urban 1.1058 39300 Urban 1.0966 41050 Washington County, Rhode Island 6483 Urban 1.1058 39300 Urban 1.0966 42000 Abbeville County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42010 Aiken County, S Carolina 0600 Urban 0.9808 12260 Urban 0.9748 42020 Allendale County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42030 Anderson County, S Carolina 3160 Urban 0.9615 11340 Urban 0.8997 42040 Bamberg County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42050 Barnwell County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42060 Beaufort County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42070 Berkeley County, S Carolina 1440 Urban 0.9245 16700 Urban 0.9245 42080 Calhoun County, S Carolina 42 Rural 0.8631 17900 Urban 0.9057 42090 Charleston County, S Carolina 1440 Urban 0.9245 16700 Urban 0.9245 42100 Cherokee County, S Carolina 3160 Urban 0.9615 99942 Rural 0.8638 42110 Chester County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42120 Chesterfield County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42130 Clarendon County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42140 Colleton County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42150 Darlington County, S Carolina 42 Rural 0.8631 22500 Urban 0.8947 42160 Dillon County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42170 Dorchester County, S Carolina 1440 Urban 0.9245 16700 Urban 0.9245 42180 Edgefield County, S Carolina 0600 Urban 0.9808 12260 Urban 0.9748 42190 Fairfield County, S Carolina 42 Rural 0.8631 17900 Urban 0.9057 42200 Florence County, S Carolina 2655 Urban 0.9042 22500 Urban 0.8947 42210 Georgetown County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42220 Greenville County, S Carolina 3160 Urban 0.9615 24860 Urban 1.0027 42230 Greenwood County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42240 Hampton County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42250 Horry County, S Carolina 5330 Urban 0.8934 34820 Urban 0.8934 42260 Jasper County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42270 Kershaw County, S Carolina 42 Rural 0.8631 17900 Urban 0.9057 42280 Lancaster County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42290 Laurens County, S Carolina 42 Rural 0.8631 24860 Urban 1.0027 42300 Lee County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42310 Lexington County, S Carolina 1760 Urban 0.9082 17900 Urban 0.9057 42320 Mc Cormick County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42330 Marion County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42340 Marlboro County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42350 Newberry County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42360 Oconee County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42370 Orangeburg County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42380 Pickens County, S Carolina 3160 Urban 0.9615 24860 Urban 1.0027 42390 Richland County, S Carolina 1760 Urban 0.9082 17900 Urban 0.9057 42400 Saluda County, S Carolina 42 Rural 0.8631 17900 Urban 0.9057 42410 Spartanburg County, S Carolina 3160 Urban 0.9615 43900 Urban 0.9172 42420 Sumter County, S Carolina 8140 Urban 0.8377 44940 Urban 0.8377 42430 Union County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42440 Williamsburg County, S Carolina 42 Rural 0.8631 99942 Rural 0.8638 42450 York County, S Carolina 1520 Urban 0.9715 16740 Urban 0.9750 43010 Aurora County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43020 Beadle County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43030 Bennett County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 Start Printed Page 27123 43040 Bon Homme County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43050 Brookings County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43060 Brown County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43070 Brule County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43080 Buffalo County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43090 Butte County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43100 Campbell County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43110 Charles Mix County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43120 Clark County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43130 Clay County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43140 Codington County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43150 Corson County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43160 Custer County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43170 Davison County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43180 Day County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43190 Deuel County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43200 Dewey County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43210 Douglas County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43220 Edmunds County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43230 Fall River County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43240 Faulk County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43250 Grant County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43260 Gregory County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43270 Haakon County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43280 Hamlin County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43290 Hand County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43300 Hanson County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43310 Harding County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43320 Hughes County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43330 Hutchinson County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43340 Hyde County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43350 Jackson County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43360 Jerauld County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43370 Jones County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43380 Kingsbury County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43390 Lake County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43400 Lawrence County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43410 Lincoln County, S Dakota 7760 Urban 0.9635 43620 Urban 0.9635 43420 Lyman County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43430 Mc Cook County, S Dakota 43 Rural 0.8551 43620 Urban 0.9635 43440 Mc Pherson County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43450 Marshall County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43460 Meade County, S Dakota 43 Rural 0.8551 39660 Urban 0.8987 43470 Mellette County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43480 Miner County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43490 Minnehaha County, S Dakota 7760 Urban 0.9635 43620 Urban 0.9635 43500 Moody County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43510 Pennington County, S Dakota 6660 Urban 0.8987 39660 Urban 0.8987 43520 Perkins County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43530 Potter County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43540 Roberts County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43550 Sanborn County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43560 Shannon County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43570 Spink County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43580 Stanley County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43590 Sully County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43600 Todd County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43610 Tripp County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43620 Turner County, S Dakota 43 Rural 0.8551 43620 Urban 0.9635 43630 Union County, S Dakota 43 Rural 0.8551 43580 Urban 0.9381 43640 Walworth County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43650 Washabaugh County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43670 Yankton County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 43680 Ziebach County, S Dakota 43 Rural 0.8551 99943 Rural 0.8560 44000 Anderson County, Tennessee 3840 Urban 0.8397 28940 Urban 0.8441 44010 Bedford County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44020 Benton County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44030 Bledsoe County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44040 Blount County, Tennessee 3840 Urban 0.8397 28940 Urban 0.8441 44050 Bradley County, Tennessee 44 Rural 0.7935 17420 Urban 0.8139 44060 Campbell County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44070 Cannon County, Tennessee 44 Rural 0.7935 34980 Urban 0.9790 Start Printed Page 27124 44080 Carroll County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44090 Carter County, Tennessee 3660 Urban 0.8007 27740 Urban 0.7937 44100 Cheatham County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 44110 Chester County, Tennessee 3580 Urban 0.8964 27180 Urban 0.8964 44120 Claiborne County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44130 Clay County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44140 Cocke County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44150 Coffee County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44160 Crockett County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44170 Cumberland County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44180 Davidson County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 44190 Decatur County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44200 De Kalb County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44210 Dickson County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 44220 Dyer County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44230 Fayette County, Tennessee 4920 Urban 0.9416 32820 Urban 0.9397 44240 Fentress County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44250 Franklin County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44260 Gibson County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44270 Giles County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44280 Grainger County, Tennessee 44 Rural 0.7935 34100 Urban 0.7961 44290 Greene County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44300 Grundy County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44310 Hamblen County, Tennessee 44 Rural 0.7935 34100 Urban 0.7961 44320 Hamilton County, Tennessee 1560 Urban 0.9088 16860 Urban 0.9088 44330 Hancock County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44340 Hardeman County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44350 Hardin County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44360 Hawkins County, Tennessee 3660 Urban 0.8007 28700 Urban 0.8054 44370 Haywood County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44380 Henderson County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44390 Henry County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44400 Hickman County, Tennessee 44 Rural 0.7935 34980 Urban 0.9790 44410 Houston County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44420 Humphreys County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44430 Jackson County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44440 Jefferson County, Tennessee 44 Rural 0.7935 34100 Urban 0.7961 44450 Johnson County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44460 Knox County, Tennessee 3840 Urban 0.8397 28940 Urban 0.8441 44470 Lake County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44480 Lauderdale County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44490 Lawrence County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44500 Lewis County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44510 Lincoln County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44520 Loudon County, Tennessee 3840 Urban 0.8397 28940 Urban 0.8441 44530 Mc Minn County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44540 Mc Nairy County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44550 Macon County, Tennessee 44 Rural 0.7935 34980 Urban 0.9790 44560 Madison County, Tennessee 3580 Urban 0.8964 27180 Urban 0.8964 44570 Marion County, Tennessee 1560 Urban 0.9088 16860 Urban 0.9088 44580 Marshall County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44590 Maury County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44600 Meigs County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44610 Monroe County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44620 Montgomery County, Tennessee 1660 Urban 0.8284 17300 Urban 0.8284 44630 Moore County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44640 Morgan County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44650 Obion County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44660 Overton County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44670 Perry County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44680 Pickett County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44690 Polk County, Tennessee 44 Rural 0.7935 17420 Urban 0.8139 44700 Putnam County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44710 Rhea County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44720 Roane County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44730 Robertson County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 44740 Rutherford County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 44750 Scott County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44760 Sequatchie County, Tennessee 44 Rural 0.7935 16860 Urban 0.9088 44770 Sevier County, Tennessee 3840 Urban 0.8397 99944 Rural 0.7895 44780 Shelby County, Tennessee 4920 Urban 0.9416 32820 Urban 0.9397 44790 Smith County, Tennessee 44 Rural 0.7935 34980 Urban 0.9790 Start Printed Page 27125 44800 Stewart County, Tennessee 44 Rural 0.7935 17300 Urban 0.8284 44810 Sullivan County, Tennessee 3660 Urban 0.8007 28700 Urban 0.8054 44820 Sumner County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 44830 Tipton County, Tennessee 4920 Urban 0.9416 32820 Urban 0.9397 44840 Trousdale County, Tennessee 44 Rural 0.7935 34980 Urban 0.9790 44850 Unicoi County, Tennessee 3660 Urban 0.8007 27740 Urban 0.7937 44860 Union County, Tennessee 3840 Urban 0.8397 28940 Urban 0.8441 44870 Van Buren County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44880 Warren County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44890 Washington County, Tennessee 3660 Urban 0.8007 27740 Urban 0.7937 44900 Wayne County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44910 Weakley County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44920 White County, Tennessee 44 Rural 0.7935 99944 Rural 0.7895 44930 Williamson County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 44940 Wilson County, Tennessee 5360 Urban 0.9808 34980 Urban 0.9790 45000 Anderson County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45010 Andrews County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45020 Angelina County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45030 Aransas County, Texas 45 Rural 0.7931 18580 Urban 0.8550 45040 Archer County, Texas 9080 Urban 0.8365 48660 Urban 0.8285 45050 Armstrong County, Texas 45 Rural 0.7931 11100 Urban 0.9156 45060 Atascosa County, Texas 45 Rural 0.7931 41700 Urban 0.8980 45070 Austin County, Texas 45 Rural 0.7931 26420 Urban 0.9996 45080 Bailey County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45090 Bandera County, Texas 45 Rural 0.7931 41700 Urban 0.8980 45100 Bastrop County, Texas 0640 Urban 0.9437 12420 Urban 0.9437 45110 Baylor County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45113 Bee County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45120 Bell County, Texas 3810 Urban 0.8526 28660 Urban 0.8526 45130 Bexar County, Texas 7240 Urban 0.8984 41700 Urban 0.8980 45140 Blanco County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45150 Borden County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45160 Bosque County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45170 Bowie County, Texas 8360 Urban 0.8283 45500 Urban 0.8283 45180 Brazoria County, Texas 1145 Urban 0.8563 26420 Urban 0.9996 45190 Brazos County, Texas 1260 Urban 0.8900 17780 Urban 0.8900 45200 Brewster County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45201 qBriscoe County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45210 Brooks County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45220 Brown County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45221 Burleson County, Texas 45 Rural 0.7931 17780 Urban 0.8900 45222 Burnet County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45223 Caldwell County, Texas 0640 Urban 0.9437 12420 Urban 0.9437 45224 Calhoun County, Texas 45 Rural 0.7931 47020 Urban 0.8160 45230 Callahan County, Texas 45 Rural 0.7931 10180 Urban 0.7896 45240 Cameron County, Texas 1240 Urban 0.9804 15180 Urban 0.9804 45250 Camp County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45251 Carson County, Texas 45 Rural 0.7931 11100 Urban 0.9156 45260 Cass County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45270 Castro County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45280 Chambers County, Texas 3360 Urban 1.0091 26420 Urban 0.9996 45281 Cherokee County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45290 Childress County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45291 Clay County, Texas 45 Rural 0.7931 48660 Urban 0.8285 45292 Cochran County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45300 Coke County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45301 Coleman County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45310 Collin County, Texas 1920 Urban 1.0205 19124 Urban 1.0228 45311 Collingsworth County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45312 Colorado County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45320 Comal County, Texas 7240 Urban 0.8984 41700 Urban 0.8980 45321 Comanche County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45330 Concho County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45340 Cooke County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45341 Coryell County, Texas 3810 Urban 0.8526 28660 Urban 0.8526 45350 Cottle County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45360 Crane County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45361 Crockett County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45362 Crosby County, Texas 45 Rural 0.7931 31180 Urban 0.8783 45370 Culberson County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45380 Dallam County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45390 Dallas County, Texas 1920 Urban 1.0205 19124 Urban 1.0228 Start Printed Page 27126 45391 Dawson County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45392 Deaf Smith County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45400 Delta County, Texas 45 Rural 0.7931 19124 Urban 1.0228 45410 Denton County, Texas 1920 Urban 1.0205 19124 Urban 1.0228 45420 De Witt County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45421 Dickens County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45430 Dimmit County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45431 Donley County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45440 Duval County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45450 Eastland County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45451 Ector County, Texas 5800 Urban 0.9741 36220 Urban 0.9884 45460 Edwards County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45470 Ellis County, Texas 1920 Urban 1.0205 19124 Urban 1.0228 45480 El Paso County, Texas 2320 Urban 0.8977 21340 Urban 0.8977 45490 Erath County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45500 Falls County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45510 Fannin County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45511 Fayette County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45520 Fisher County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45521 Floyd County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45522 Foard County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45530 Fort Bend County, Texas 3360 Urban 1.0091 26420 Urban 0.9996 45531 Franklin County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45540 Freestone County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45541 Frio County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45542 Gaines County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45550 Galveston County, Texas 2920 Urban 0.9635 26420 Urban 0.9996 45551 Garza County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45552 Gillespie County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45560 Glasscock County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45561 Goliad County, Texas 45 Rural 0.7931 47020 Urban 0.8160 45562 Gonzales County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45563 Gray County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45564 Grayson County, Texas 7640 Urban 0.9507 43300 Urban 0.9507 45570 Gregg County, Texas 4420 Urban 0.8888 30980 Urban 0.8730 45580 Grimes County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45581 Guadaloupe County, Texas 7240 Urban 0.8984 41700 Urban 0.8980 45582 Hale County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45583 Hall County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45590 Hamilton County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45591 Hansford County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45592 Hardeman County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45600 Hardin County, Texas 0840 Urban 0.8412 13140 Urban 0.8412 45610 Harris County, Texas 3360 Urban 1.0091 26420 Urban 0.9996 45620 Harrison County, Texas 4420 Urban 0.8888 99945 Rural 0.8003 45621 Hartley County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45630 Haskell County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45631 Hays County, Texas 0640 Urban 0.9437 12420 Urban 0.9437 45632 Hemphill County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45640 Henderson County, Texas 1920 Urban 1.0205 99945 Rural 0.8003 45650 Hidalgo County, Texas 4880 Urban 0.8934 32580 Urban 0.8934 45651 Hill County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45652 Hockley County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45653 Hood County, Texas 2800 Urban 0.9522 99945 Rural 0.8003 45654 Hopkins County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45660 Houston County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45661 Howard County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45662 Hudspeth County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45670 Hunt County, Texas 1920 Urban 1.0205 19124 Urban 1.0228 45671 Hutchinson County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45672 Irion County, Texas 45 Rural 0.7931 41660 Urban 0.8271 45680 Jack County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45681 Jackson County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45690 Jasper County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45691 Jeff Davis County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45700 Jefferson County, Texas 0840 Urban 0.8412 13140 Urban 0.8412 45710 Jim Hogg County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45711 Jim Wells County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45720 Johnson County, Texas 2800 Urban 0.9522 23104 Urban 0.9486 45721 Jones County, Texas 45 Rural 0.7931 10180 Urban 0.7896 45722 Karnes County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45730 Kaufman County, Texas 1920 Urban 1.0205 19124 Urban 1.0228 Start Printed Page 27127 45731 Kendall County, Texas 45 Rural 0.7931 41700 Urban 0.8980 45732 Kenedy County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45733 Kent County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45734 Kerr County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45740 Kimble County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45741 King County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45742 Kinney County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45743 Kleberg County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45744 Knox County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45750 Lamar County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45751 Lamb County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45752 Lampasas County, Texas 45 Rural 0.7931 28660 Urban 0.8526 45753 La Salle County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45754 Lavaca County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45755 Lee County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45756 Leon County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45757 Liberty County, Texas 3360 Urban 1.0091 26420 Urban 0.9996 45758 Limestone County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45759 Lipscomb County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45760 Live Oak County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45761 Llano County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45762 Loving County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45770 Lubbock County, Texas 4600 Urban 0.8783 31180 Urban 0.8783 45771 Lynn County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45772 Mc Culloch County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45780 Mc Lennan County, Texas 8800 Urban 0.8518 47380 Urban 0.8518 45781 Mc Mullen County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45782 Madison County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45783 Marion County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45784 Martin County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45785 Mason County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45790 Matagorda County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45791 Maverick County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45792 Medina County, Texas 45 Rural 0.7931 41700 Urban 0.8980 45793 Menard County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45794 Midland County, Texas 5800 Urban 0.9741 33260 Urban 0.9514 45795 Milam County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45796 Mills County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45797 Mitchell County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45800 Montague County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45801 Montgomery County, Texas 3360 Urban 1.0091 26420 Urban 0.9996 45802 Moore County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45803 Morris County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45804 Motley County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45810 Nacogdoches County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45820 Navarro County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45821 Newton County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45822 Nolan County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45830 Nueces County, Texas 1880 Urban 0.8550 18580 Urban 0.8550 45831 Ochiltree County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45832 Oldham County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45840 Orange County, Texas 0840 Urban 0.8412 13140 Urban 0.8412 45841 Palo Pinto County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45842 Panola County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45843 Parker County, Texas 2800 Urban 0.9522 23104 Urban 0.9486 45844 Parmer County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45845 Pecos County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45850 Polk County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45860 Potter County, Texas 0320 Urban 0.9156 11100 Urban 0.9156 45861 Presidio County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45870 Rains County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45871 Randall County, Texas 0320 Urban 0.9156 11100 Urban 0.9156 45872 Reagan County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45873 Real County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45874 Red River County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45875 Reeves County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45876 Refugio County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45877 Roberts County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45878 Robertson County, Texas 45 Rural 0.7931 17780 Urban 0.8900 45879 Rockwall County, Texas 1920 Urban 1.0205 19124 Urban 1.0228 45880 Runnels County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45881 Rusk County, Texas 45 Rural 0.7931 30980 Urban 0.8730 Start Printed Page 27128 45882 Sabine County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45883 San Augustine County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45884 San Jacinto County, Texas 45 Rural 0.7931 26420 Urban 0.9996 45885 San Patricio County, Texas 1880 Urban 0.8550 18580 Urban 0.8550 45886 San Saba County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45887 Schleicher County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45888 Scurry County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45889 Shackelford County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45890 Shelby County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45891 Sherman County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45892 Smith County, Texas 8640 Urban 0.9168 46340 Urban 0.9168 45893 Somervell County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45900 Starr County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45901 Stephens County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45902 Sterling County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45903 Stonewall County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45904 Sutton County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45905 Swisher County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45910 Tarrant County, Texas 2800 Urban 0.9522 23104 Urban 0.9486 45911 Taylor County, Texas 0040 Urban 0.8054 10180 Urban 0.7896 45912 Terrell County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45913 Terry County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45920 Throckmorton County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45921 Titus County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45930 Tom Green County, Texas 7200 Urban 0.8271 41660 Urban 0.8271 45940 Travis County, Texas 0640 Urban 0.9437 12420 Urban 0.9437 45941 Trinity County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45942 Tyler County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45943 Upshur County, Texas 4420 Urban 0.8888 30980 Urban 0.8730 45944 Upton County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45945 Uvalde County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45946 Val Verde County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45947 Van Zandt County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45948 Victoria County, Texas 8750 Urban 0.8160 47020 Urban 0.8160 45949 Walker County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45950 Waller County, Texas 3360 Urban 1.0091 26420 Urban 0.9996 45951 Ward County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45952 Washington County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45953 Webb County, Texas 4080 Urban 0.8068 29700 Urban 0.8068 45954 Wharton County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45955 Wheeler County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45960 Wichita County, Texas 9080 Urban 0.8365 48660 Urban 0.8285 45961 Wilbarger County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45962 Willacy County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45970 Williamson County, Texas 0640 Urban 0.9437 12420 Urban 0.9437 45971 Wilson County, Texas 7240 Urban 0.8984 41700 Urban 0.8980 45972 Winkler County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45973 Wise County, Texas 45 Rural 0.7931 23104 Urban 0.9486 45974 Wood County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45980 Yoakum County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45981 Young County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45982 Zapata County, Texas 45 Rural 0.7931 99945 Rural 0.8003 45983 Zavala County, Texas 45 Rural 0.7931 99945 Rural 0.8003 46000 Beaver County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46010 Box Elder County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46020 Cache County, Utah 46 Rural 0.8762 30860 Urban 0.9164 46030 Carbon County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46040 Daggett County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46050 Davis County, Utah 7160 Urban 0.9340 36260 Urban 0.9029 46060 Duchesne County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46070 Emery County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46080 Garfield County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46090 Grand County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46100 Iron County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46110 Juab County, Utah 46 Rural 0.8762 39340 Urban 0.9500 46120 Kane County, Utah 2620 Urban 1.1845 99946 Rural 0.8118 46130 Millard County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46140 Morgan County, Utah 46 Rural 0.8762 36260 Urban 0.9029 46150 Piute County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46160 Rich County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46170 Salt Lake County, Utah 7160 Urban 0.9340 41620 Urban 0.9421 46180 San Juan County, Utah 46 Rural 0.8762 99946 Rural 0.8118 Start Printed Page 27129 46190 Sanpete County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46200 Sevier County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46210 Summit County, Utah 46 Rural 0.8762 41620 Urban 0.9421 46220 Tooele County, Utah 46 Rural 0.8762 41620 Urban 0.9421 46230 Uintah County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46240 Utah County, Utah 6520 Urban 0.9500 39340 Urban 0.9500 46250 Wasatch County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46260 Washington County, Utah 46 Rural 0.8762 41100 Urban 0.9392 46270 Wayne County, Utah 46 Rural 0.8762 99946 Rural 0.8118 46280 Weber County, Utah 7160 Urban 0.9340 36260 Urban 0.9029 47000 Addison County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47010 Bennington County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47020 Caledonia County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47030 Chittenden County, Vermont 1303 Urban 0.9410 15540 Urban 0.9410 47040 Essex County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47050 Franklin County, Vermont 1303 Urban 0.9410 15540 Urban 0.9410 47060 Grand Isle County, Vermont 1303 Urban 0.9410 15540 Urban 0.9410 47070 Lamoille County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47080 Orange County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47090 Orleans County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47100 Rutland County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47110 Washington County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47120 Windham County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 47130 Windsor County, Vermont 47 Rural 0.9830 99947 Rural 0.9830 48010 St Croix County, Virgin Islands 48 Rural 0.7615 99948 Rural 0.7615 48020 St Thomas-John County, Virgin Islands 48 Rural 0.7615 99948 Rural 0.7615 49000 Accomack County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49010 Albemarle County, Virginia 1540 Urban 1.0187 16820 Urban 1.0187 49011 Alexandria City County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49020 Alleghany County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49030 Amelia County, Virginia 49 Rural 0.8417 40060 Urban 0.9328 49040 Amherst County, Virginia 4640 Urban 0.8691 31340 Urban 0.8691 49050 Appomattox County, Virginia 49 Rural 0.8417 31340 Urban 0.8691 49060 Arlington County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49070 Augusta County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49080 Bath County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49088 Bedford City County, Virginia 4640 Urban 0.8691 31340 Urban 0.8691 49090 Bedford County, Virginia 4640 Urban 0.8691 31340 Urban 0.8691 49100 Bland County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49110 Botetourt County, Virginia 6800 Urban 0.8387 40220 Urban 0.8374 49111 Bristol City County, Virginia 3660 Urban 0.8007 28700 Urban 0.8054 49120 Brunswick County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49130 Buchanan County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49140 Buckingham County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49141 Buena Vista City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49150 Campbell County, Virginia 4640 Urban 0.8691 31340 Urban 0.8691 49160 Caroline County, Virginia 49 Rural 0.8417 40060 Urban 0.9328 49170 Carroll County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49180 Charles City County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49190 Charlotte County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49191 Charlottesville City County, Virginia 1540 Urban 1.0187 16820 Urban 1.0187 49194 Chesapeake County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49200 Chesterfield County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49210 Clarke County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49211 Clifton Forge City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49212 Colonial Heights County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49213 Covington City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49220 Craig County, Virginia 49 Rural 0.8417 40220 Urban 0.8374 49230 Culpeper County, Virginia 8840 Urban 1.0976 99949 Rural 0.8013 49240 Cumberland County, Virginia 49 Rural 0.8417 40060 Urban 0.9328 49241 Danville City County, Virginia 1950 Urban 0.8489 19260 Urban 0.8489 49250 Dickenson County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49260 Dinniddie County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49270 Emporia County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49280 Essex County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49288 Fairfax City County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49290 Fairfax County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49291 Falls Church City County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49300 Fauquier County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49310 Floyd County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49320 Fluvanna County, Virginia 1540 Urban 1.0187 16820 Urban 1.0187 49328 Franklin City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 Start Printed Page 27130 49330 Franklin County, Virginia 49 Rural 0.8417 40220 Urban 0.8374 49340 Frederick County, Virginia 49 Rural 0.8417 49020 Urban 1.0214 49342 Fredericksburg City County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49343 Galax City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49350 Giles County, Virginia 49 Rural 0.8417 13980 Urban 0.7954 49360 Gloucester County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49370 Goochland County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49380 Grayson County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49390 Greene County, Virginia 1540 Urban 1.0187 16820 Urban 1.0187 49400 Greensville County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49410 Halifax County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49411 Hampton City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49420 Hanover County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49421 Harrisonburg City County, Virginia 49 Rural 0.8417 25500 Urban 0.9088 49430 Henrico County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49440 Henry County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49450 Highland County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49451 Hopewell City County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49460 Isle Of Wight County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49470 James City Co County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49480 King And Queen County, Virginia 49 Rural 0.8417 40060 Urban 0.9328 49490 King George County, Virginia 8840 Urban 1.0976 99949 Rural 0.8013 49500 King William County, Virginia 49 Rural 0.8417 40060 Urban 0.9328 49510 Lancaster County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49520 Lee County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49522 Lexington County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49530 Loudoun County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49540 Louisa County, Virginia 49 Rural 0.8417 40060 Urban 0.9328 49550 Lunenburg County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49551 Lynchburg City County, Virginia 4640 Urban 0.8691 31340 Urban 0.8691 49560 Madison County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49561 Martinsville City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49563 Manassas City County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49565 Manassas Park City County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49570 Mathews County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49580 Mecklenburg County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49590 Middlesex County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49600 Montgomery County, Virginia 49 Rural 0.8417 13980 Urban 0.7954 49610 Nansemond County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49620 Nelson County, Virginia 49 Rural 0.8417 16820 Urban 1.0187 49621 New Kent County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49622 Newport News City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49641 Norfolk City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49650 Northampton County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49660 Northumberland County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49661 Norton City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49670 Nottoway County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49680 Orange County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49690 Page County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49700 Patrick County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49701 Petersburg City County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49710 Pittsylvania County, Virginia 1950 Urban 0.8489 19260 Urban 0.8489 49711 Portsmouth City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49712 Poquoson City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49720 Powhatan County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49730 Prince Edward County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49740 Prince George County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49750 Prince William County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49770 Pulaski County, Virginia 49 Rural 0.8417 13980 Urban 0.7954 49771 Radford City County, Virginia 49 Rural 0.8417 13980 Urban 0.7954 49780 Rappahannock County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49790 Richmond County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49791 Richmond City County, Virginia 6760 Urban 0.9328 40060 Urban 0.9328 49800 Roanoke County, Virginia 6800 Urban 0.8387 40220 Urban 0.8374 49801 Roanoke City County, Virginia 6800 Urban 0.8387 40220 Urban 0.8374 49810 Rockbridge County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49820 Rockingham County, Virginia 49 Rural 0.8417 25500 Urban 0.9088 49830 Russell County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49838 Salem County, Virginia 6800 Urban 0.8387 40220 Urban 0.8374 49840 Scott County, Virginia 3660 Urban 0.8007 28700 Urban 0.8054 49850 Shenandoah County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49860 Smyth County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 Start Printed Page 27131 49867 South Boston City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49870 Southampton County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49880 Spotsylvania County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49890 Stafford County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49891 Staunton City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49892 Suffolk City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49900 Surry County, Virginia 49 Rural 0.8417 47260 Urban 0.8799 49910 Sussex County, Virginia 49 Rural 0.8417 40060 Urban 0.9328 49920 Tazewell County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49921 Virginia Beach City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49930 Warren County, Virginia 8840 Urban 1.0976 47894 Urban 1.0926 49950 Washington County, Virginia 3660 Urban 0.8007 28700 Urban 0.8054 49951 Waynesboro City County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49960 Westmoreland County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49961 Williamsburg City County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 49962 Winchester City County, Virginia 49 Rural 0.8417 49020 Urban 1.0214 49970 Wise County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49980 Wythe County, Virginia 49 Rural 0.8417 99949 Rural 0.8013 49981 York County, Virginia 5720 Urban 0.8799 47260 Urban 0.8799 50000 Adams County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50010 Asotin County, Washington 50 Rural 1.0217 30300 Urban 0.9886 50020 Benton County, Washington 6740 Urban 1.0619 28420 Urban 1.0619 50030 Chelan County, Washington 50 Rural 1.0217 48300 Urban 1.0070 50040 Clallam County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50050 Clark County, Washington 6440 Urban 1.1266 38900 Urban 1.1266 50060 Columbia County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50070 Cowlitz County, Washington 50 Rural 1.0217 31020 Urban 0.9579 50080 Douglas County, Washington 50 Rural 1.0217 48300 Urban 1.0070 50090 Ferry County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50100 Franklin County, Washington 6740 Urban 1.0619 28420 Urban 1.0619 50110 Garfield County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50120 Grant County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50130 Grays Harbor County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50140 Island County, Washington 7600 Urban 1.1567 99950 Rural 1.0510 50150 Jefferson County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50160 King County, Washington 7600 Urban 1.1567 42644 Urban 1.1577 50170 Kitsap County, Washington 1150 Urban 1.0675 14740 Urban 1.0675 50180 Kittitas County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50190 Klickitat County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50200 Lewis County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50210 Lincoln County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50220 Mason County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50230 Okanogan County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50240 Pacific County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50250 Pend Oreille County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50260 Pierce County, Washington 8200 Urban 1.0742 45104 Urban 1.0742 50270 San Juan County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50280 Skagit County, Washington 50 Rural 1.0217 34580 Urban 1.0454 50290 Skamania County, Washington 50 Rural 1.0217 38900 Urban 1.1266 50300 Snohomish County, Washington 7600 Urban 1.1567 42644 Urban 1.1577 50310 Spokane County, Washington 7840 Urban 1.0905 44060 Urban 1.0905 50320 Stevens County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50330 Thurston County, Washington 5910 Urban 1.0927 36500 Urban 1.0927 50340 Wahkiakum County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50350 Walla Walla County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50360 Whatcom County, Washington 0860 Urban 1.1731 13380 Urban 1.1731 50370 Whitman County, Washington 50 Rural 1.0217 99950 Rural 1.0510 50380 Yakima County, Washington 9260 Urban 1.0155 49420 Urban 1.0155 51000 Barbour County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51010 Berkeley County, W Virginia 8840 Urban 1.0976 25180 Urban 0.9489 51020 Boone County, W Virginia 51 Rural 0.7900 16620 Urban 0.8445 51030 Braxton County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51040 Brooke County, W Virginia 8080 Urban 0.7819 48260 Urban 0.7819 51050 Cabell County, W Virginia 3400 Urban 0.9477 26580 Urban 0.9477 51060 Calhoun County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51070 Clay County, W Virginia 51 Rural 0.7900 16620 Urban 0.8445 51080 Doddridge County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51090 Fayette County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51100 Gilmer County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51110 Grant County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51120 Greenbrier County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51130 Hampshire County, W Virginia 51 Rural 0.7900 49020 Urban 1.0214 Start Printed Page 27132 51140 Hancock County, W Virginia 8080 Urban 0.7819 48260 Urban 0.7819 51150 Hardy County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51160 Harrison County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51170 Jackson County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51180 Jefferson County, W Virginia 8840 Urban 1.0976 47894 Urban 1.0926 51190 Kanawha County, W Virginia 1480 Urban 0.8445 16620 Urban 0.8445 51200 Lewis County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51210 Lincoln County, W Virginia 51 Rural 0.7900 16620 Urban 0.8445 51220 Logan County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51230 Mc Dowell County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51240 Marion County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51250 Marshall County, W Virginia 9000 Urban 0.7161 48540 Urban 0.7161 51260 Mason County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51270 Mercer County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51280 Mineral County, W Virginia 1900 Urban 0.9317 19060 Urban 0.9317 51290 Mingo County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51300 Monongalia County, W Virginia 51 Rural 0.7900 34060 Urban 0.8420 51310 Monroe County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51320 Morgan County, W Virginia 51 Rural 0.7900 25180 Urban 0.9489 51330 Nicholas County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51340 Ohio County, W Virginia 9000 Urban 0.7161 48540 Urban 0.7161 51350 Pendleton County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51360 Pleasants County, W Virginia 51 Rural 0.7900 37620 Urban 0.8270 51370 Pocahontas County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51380 Preston County, W Virginia 51 Rural 0.7900 34060 Urban 0.8420 51390 Putnam County, W Virginia 1480 Urban 0.8445 16620 Urban 0.8445 51400 Raleigh County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51410 Randolph County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51420 Ritchie County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51430 Roane County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51440 Summers County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51450 Taylor County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51460 Tucker County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51470 Tyler County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51480 Upshur County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51490 Wayne County, W Virginia 3400 Urban 0.9477 26580 Urban 0.9477 51500 Webster County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51510 Wetzel County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 51520 Wirt County, W Virginia 51 Rural 0.7900 37620 Urban 0.8270 51530 Wood County, W Virginia 6020 Urban 0.8270 37620 Urban 0.8270 51540 Wyoming County, W Virginia 51 Rural 0.7900 99951 Rural 0.7717 52000 Adams County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52010 Ashland County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52020 Barron County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52030 Bayfield County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52040 Brown County, Wisconsin 3080 Urban 0.9483 24580 Urban 0.9483 52050 Buffalo County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52060 Burnett County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52070 Calumet County, Wisconsin 0460 Urban 0.9239 11540 Urban 0.9288 52080 Chippewa County, Wisconsin 2290 Urban 0.9201 20740 Urban 0.9201 52090 Clark County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52100 Columbia County, Wisconsin 52 Rural 0.9478 31540 Urban 1.0659 52110 Crawford County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52120 Dane County, Wisconsin 4720 Urban 1.0754 31540 Urban 1.0659 52130 Dodge County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52140 Door County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52150 Douglas County, Wisconsin 2240 Urban 1.0213 20260 Urban 1.0213 52160 Dunn County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52170 Eau Claire County, Wisconsin 2290 Urban 0.9201 20740 Urban 0.9201 52180 Florence County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52190 Fond Du Lac County, Wisconsin 52 Rural 0.9478 22540 Urban 0.9640 52200 Forest County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52210 Grant County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52220 Green County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52230 Green Lake County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52240 Iowa County, Wisconsin 52 Rural 0.9478 31540 Urban 1.0659 52250 Iron County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52260 Jackson County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52270 Jefferson County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52280 Juneau County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52290 Kenosha County, Wisconsin 3800 Urban 0.9760 29404 Urban 1.0429 52300 Kewaunee County, Wisconsin 52 Rural 0.9478 24580 Urban 0.9483 Start Printed Page 27133 52310 La Crosse County, Wisconsin 3870 Urban 0.9564 29100 Urban 0.9564 52320 Lafayette County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52330 Langlade County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52340 Lincoln County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52350 Manitowoc County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52360 Marathon County, Wisconsin 8940 Urban 0.9590 48140 Urban 0.9590 52370 Marinette County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52380 Marquette County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52381 Menominee County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52390 Milwaukee County, Wisconsin 5080 Urban 1.0146 33340 Urban 1.0146 52400 Monroe County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52410 Oconto County, Wisconsin 52 Rural 0.9478 24580 Urban 0.9483 52420 Oneida County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52430 Outagamie County, Wisconsin 0460 Urban 0.9239 11540 Urban 0.9288 52440 Ozaukee County, Wisconsin 5080 Urban 1.0146 33340 Urban 1.0146 52450 Pepin County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52460 Pierce County, Wisconsin 5120 Urban 1.1075 33460 Urban 1.1075 52470 Polk County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52480 Portage County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52490 Price County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52500 Racine County, Wisconsin 6600 Urban 0.8997 39540 Urban 0.8997 52510 Richland County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52520 Rock County, Wisconsin 3620 Urban 0.9538 27500 Urban 0.9538 52530 Rusk County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52540 St Croix County, Wisconsin 5120 Urban 1.1075 33460 Urban 1.1075 52550 Sauk County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52560 Sawyer County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52570 Shawano County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52580 Sheboygan County, Wisconsin 7620 Urban 0.8911 43100 Urban 0.8911 52590 Taylor County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52600 Trempealeau County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52610 Vernon County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52620 Vilas County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52630 Walworth County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52640 Washburn County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52650 Washington County, Wisconsin 5080 Urban 1.0146 33340 Urban 1.0146 52660 Waukesha County, Wisconsin 5080 Urban 1.0146 33340 Urban 1.0146 52670 Waupaca County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52680 Waushara County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 52690 Winnebago County, Wisconsin 0460 Urban 0.9239 36780 Urban 0.9183 52700 Wood County, Wisconsin 52 Rural 0.9478 99952 Rural 0.9509 53000 Albany County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53010 Big Horn County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53020 Campbell County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53030 Carbon County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53040 Converse County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53050 Crook County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53060 Fremont County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53070 Goshen County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53080 Hot Springs County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53090 Johnson County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53100 Laramie County, Wyoming 1580 Urban 0.8775 16940 Urban 0.8775 53110 Lincoln County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53120 Natrona County, Wyoming 1350 Urban 0.9026 16220 Urban 0.9026 53130 Niobrara County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53140 Park County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53150 Platte County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53160 Sheridan County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53170 Sublette County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53180 Sweetwater County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53190 Teton County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53200 Uinta County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53210 Washakie County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 53220 Weston County, Wyoming 53 Rural 0.9257 99953 Rural 0.9257 65010 Agana County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65020 Agana Heights County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65030 Agat County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65040 Asan County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65050 Barrigada County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65060 Chalan Pago County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65070 Dededo County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65080 Inarajan County, Guam 65 Rural 0.9611 99965 Rural 0.9611 Start Printed Page 27134 65090 Maite County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65100 Mangilao County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65110 Merizo County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65120 Mongmong County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65130 Ordot County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65140 Piti County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65150 Santa Rita County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65160 Sinajana County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65170 Talofofo County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65180 Tamuning County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65190 Toto County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65200 Umatac County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65210 Yigo County, Guam 65 Rural 0.9611 99965 Rural 0.9611 65220 Yona County, Guam 65 Rural 0.9611 99965 Rural 0.9611 1 At this time, there are no hospitals located in these CBSA-based urban areas on which to base a wage index. Therefore, the wage index value is based on the average wage index for all urban areas within the state. Addendum C—Wage Index Tables
In this addendum, we provide the tables referred to throughout the preamble in this final rule. Tables 1 and 2 below provide the CBSA-based wage index values for urban and rural providers.
Table 1.—Proposed Wage Index For Urban Areas Based On CBSA Labor Market Areas
CBSA code Urban area (constituent counties) Wage index 10180 Abilene, TX 0.7896 Callahan County, TX Jones County, TX Taylor County, TX 10380 Aguadilla-Isabela-San Sebastián, PR 0.4738 Aguada Municipio, PR Aguadilla Municipio, PR Añasco Municipio, PR Isabela Municipio, PR Lares Municipio, PR Moca Municipio, PR Rincón Municipio, PR San Sebastian Municipio, PR 10420 Akron, OH 0.8982 Portage County, OH Summit County, OH 10500 Albany, GA 0.8628 Baker County, GA Dougherty County, GA Lee County, GA Terrell County, GA Worth County, GA 10580 Albany-Schenectady-Troy, NY 0.8589 Albany County, NY Rensselaer County, NY Saratoga County, NY Schenectady County, NY Schoharie County, NY 10740 Albuquerque, NM 0.9684 Bernalillo County, NM Sandoval County, NM Torrance County, NM Valencia County, NM 10780 Alexandria, LA 0.8033 Grant Parish, LA Rapides Parish, LA 10900 Allentown-Bethlehem-Easton, PA-NJ 0.9818 Warren County, NJ Carbon County, PA Lehigh County, PA Northampton County, PA 11020 Altoona, PA 0.8944 Blair County, PA 11100 Amarillo, TX 0.9156 Start Printed Page 27135 Armstrong County, TX Carson County, TX Potter County, TX Randall County, TX 11180 Ames, IA 0.9536 Story County, IA 11260 Anchorage, AK 1.1895 Anchorage Municipality, AK Matanuska-Susitna Borough, AK 11300 Anderson, IN 0.8586 Madison County, IN 11340 Anderson, SC 0.8997 Anderson County, SC 11460 Ann Arbor, MI 1.0859 Washtenaw County, MI 11500 Anniston-Oxford, AL 0.7682 Calhoun County, AL 11540 Appleton, WI 0.9288 Calumet County, WI Outagamie County, WI 11700 Asheville, NC 0.9285 Buncombe County, NC Haywood County, NC Henderson County, NC Madison County, NC 12020 Athens-Clarke County, GA 0.9855 Clarke County, GA Madison County, GA Oconee County, GA Oglethorpe County, GA 12060 Atlanta-Sandy Springs-Marietta, GA 0.9793 Barrow County, GA Bartow County, GA Butts County, GA Carroll County, GA Cherokee County, GA Clayton County, GA Cobb County, GA Coweta County, GA Dawson County, GA DeKalb County, GA Douglas County, GA Fayette County, GA Forsyth County, GA Fulton County, GA Gwinnett County, GA Haralson County, GA Heard County, GA Henry County, GA Jasper County, GA Lamar County, GA Meriwether County, GA Newton County, GA Paulding County, GA Pickens County, GA Pike County, GA Rockdale County, GA Spalding County, GA Walton County, GA 12100 Atlantic City, NJ 1.1615 Atlantic County, NJ 12220 Auburn-Opelika, AL 0.8100 Lee County, AL 12260 Augusta-Richmond County, GA-SC 0.9748 Burke County, GA Columbia County, GA McDuffie County, GA Richmond County, GA Aiken County, SC Edgefield County, SC 12420 Austin-Round Rock, TX 0.9437 Start Printed Page 27136 Bastrop County, TX Caldwell County, TX Hays County, TX Travis County, TX Williamson County, TX 12540 Bakersfield, CA 1.0470 Kern County, CA 12580 Baltimore-Towson, MD 0.9897 Anne Arundel County, MD Baltimore County, MD Carroll County, MD Harford County, MD Howard County, MD Queen Anne's County, MD Baltimore City, MD 12620 Bangor, ME 0.9993 Penobscot County, ME 12700 Barnstable Town, MA 1.2600 Barnstable County, MA 12940 Baton Rouge, LA 0.8593 Ascension Parish, LA East Baton Rouge Parish, LA East Feliciana Parish, LA Iberville Parish, LA Livingston Parish, LA Pointe Coupee Parish, LA St. Helena Parish, LA West Baton Rouge Parish, LA West Feliciana Parish, LA 12980 Battle Creek, MI 0.9508 Calhoun County, MI 13020 Bay City, MI 0.9343 Bay County, MI 13140 Beaumont-Port Arthur, TX 0.8412 Hardin County, TX Jefferson County, TX Orange County, TX 13380 Bellingham, WA 1.1731 Whatcom County, WA 13460 Bend, OR 1.0786 Deschutes County, OR 13644 Bethesda-Gaithersburg-Frederick, MD 1.1483 Frederick County, MD Montgomery County, MD 13740 Billings, MT 0.8834 Carbon County, MT Yellowstone County, MT 13780 Binghamton, NY 0.8562 Broome County, NY Tioga County, NY 13820 Birmingham-Hoover, AL 0.8959 Bibb County, AL Blount County, AL Chilton County, AL Jefferson County, AL St. Clair County, AL Shelby County, AL Walker County, AL 13900 Bismarck, ND 0.7574 Burleigh County, ND Morton County, ND 13980 Blacksburg-Christiansburg-Radford, VA 0.7954 Giles County, VA Montgomery County, VA Pulaski County, VA Radford City, VA 14020 Bloomington, IN 0.8447 Greene County, IN Monroe County, IN Owen County, IN 14060 Bloomington-Normal, IL 0.9075 Start Printed Page 27137 McLean County, IL 14260 Boise City-Nampa, ID 0.9052 Ada County, ID Boise County, ID Canyon County, ID Gem County, ID Owyhee County, ID 14484 Boston-Quincy, MA 1.1558 Norfolk County, MA Plymouth County, MA Suffolk County, MA 14500 Boulder, CO 0.9734 Boulder County, CO 14540 Bowling Green, KY 0.8211 Edmonson County, KY Warren County, KY 14740 Bremerton-Silverdale, WA 1.0675 Kitsap County, WA 14860 Bridgeport-Stamford-Norwalk, CT 1.2592 Fairfield County, CT 15180 Brownsville-Harlingen, TX 0.9804 Cameron County, TX 15260 Brunswick, GA 0.9311 Brantley County, GA Glynn County, GA McIntosh County, GA 15380 Buffalo-Niagara Falls, NY 0.9511 Erie County, NY Niagara County, NY 15500 Burlington, NC 0.8905 Alamance County, NC 15540 Burlington-South Burlington, VT 0.9410 Chittenden County, VT Franklin County, VT Grand Isle County, VT 15764 Cambridge-Newton-Framingham, MA 1.1172 Middlesex County, MA 15804 Camden, NJ 1.0517 Burlington County, NJ Camden County, NJ Gloucester County, NJ 15940 Canton-Massillon, OH 0.8935 Carroll County, OH Stark County, OH 15980 Cape Coral-Fort Myers, FL 0.9356 Lee County, FL 16180 Carson City, NV 1.0234 Carson City, NV 16220 Casper, WY 0.9026 Natrona County, WY 16300 Cedar Rapids, IA 0.8825 Benton County, IA Jones County, IA Linn County, IA 16580 Champaign-Urbana, IL 0.9594 Champaign County, IL Ford County, IL Piatt County, IL 16620 Charleston, WV 0.8445 Boone County, WV Clay County, WV Kanawha County, WV Lincoln County, WV Putnam County, WV 16700 Charleston-North Charleston, SC 0.9245 Berkeley County, SC Charleston County, SC Dorchester County, SC 16740 Charlotte-Gastonia-Concord, NC-SC 0.9750 Anson County, NC Cabarrus County, NC Start Printed Page 27138 Gaston County, NC Mecklenburg County, NC Union County, NC York County, SC 16820 Charlottesville, VA 1.0187 Albemarle County, VA Fluvanna County, VA Greene County, VA Nelson County, VA Charlottesville City, VA 16860 Chattanooga, TN-GA 0.9088 Catoosa County, GA Dade County, GA Walker County, GA Hamilton County, TN Marion County, TN Sequatchie County, TN 16940 Cheyenne, WY 0.8775 Laramie County, WY 16974 Chicago-Naperville-Joliet, IL 1.0790 Cook County, IL DeKalb County, IL DuPage County, IL Grundy County, IL Kane County, IL Kendall County, IL McHenry County, IL Will County, IL 17020 Chico, CA 1.0511 Butte County, CA 17140 Cincinnati-Middletown, OH-KY-IN 0.9615 Dearborn County, IN Franklin County, IN Ohio County, IN Boone County, KY Bracken County, KY Campbell County, KY Gallatin County, KY Grant County, KY Kenton County, KY Pendleton County, KY Brown County, OH Butler County, OH Clermont County, OH Hamilton County, OH Warren County, OH 17300 Clarksville, TN-KY 0.8284 Christian County, KY Trigg County, KY Montgomery County, TN Stewart County, TN 17420 Cleveland, TN 0.8139 Bradley County, TN Polk County, TN 17460 Cleveland-Elyria-Mentor, OH 0.9213 Cuyahoga County, OH Geauga County, OH Lake County, OH Lorain County, OH Medina County, OH 17660 Coeur d'Alene, ID 0.9647 Kootenai County, ID 17780 College Station-Bryan, TX 0.8900 Brazos County, TX Burleson County, TX Robertson County, TX 17820 Colorado Springs, CO 0.9468 El Paso County, CO Teller County, CO 17860 Columbia, MO 0.8345 Boone County, MO Start Printed Page 27139 Howard County, MO 17900 Columbia, SC 0.9057 Calhoun County, SC Fairfield County, SC Kershaw County, SC Lexington County, SC Richland County, SC Saluda County, SC 17980 Columbus, GA-AL 0.8560 Russell County, AL Chattahoochee County, GA Harris County, GA Marion County, GA Muscogee County, GA 18020 Columbus, IN 0.9588 Bartholomew County, IN 18140 Columbus, OH 0.9860 Delaware County, OH Fairfield County, OH Franklin County, OH Licking County, OH Madison County, OH Morrow County, OH Pickaway County, OH Union County, OH 18580 Corpus Christi, TX 0.8550 Aransas County, TX Nueces County, TX San Patricio County, TX 18700 Corvallis, OR 1.0729 Benton County, OR 19060 Cumberland, MD-WV 0.9317 Allegany County, MD Mineral County, WV 19124 Dallas-Plano-Irving, TX 1.0228 Collin County, TX Dallas County, TX Delta County, TX Denton County, TX Ellis County, TX Hunt County, TX Kaufman County, TX Rockwall County, TX 19140 Dalton, GA 0.9079 Murray County, GA Whitfield County, GA 19180 Danville, IL 0.9028 Vermilion County, IL 19260 Danville, VA 0.8489 Pittsylvania County, VA Danville City, VA 19340 Davenport-Moline-Rock Island, IA-IL 0.8724 Henry County, IL Mercer County, IL Rock Island County, IL Scott County, IA 19380 Dayton, OH 0.9064 Greene County, OH Miami County, OH Montgomery County, OH Preble County, OH 19460 Decatur, AL 0.8469 Lawrence County, AL Morgan County, AL 19500 Decatur, IL 0.8067 Macon County, IL 19660 Deltona-Daytona Beach-Ormond Beach, FL 0.9299 Volusia County, FL 19740 Denver-Aurora, CO 1.0723 Adams County, CO Arapahoe County, CO Start Printed Page 27140 Broomfield County, CO Clear Creek County, CO Denver County, CO Douglas County, CO Elbert County, CO Gilpin County, CO Jefferson County, CO Park County, CO 19780 Des Moines-West Des Moines, IA 0.9669 Dallas County, IA Guthrie County, IA Madison County, IA Polk County, IA Warren County, IA 19804 Detroit-Livonia-Dearborn, MI 1.0424 Wayne County, MI 20020 Dothan, AL 0.7721 Geneva County, AL Henry County, AL Houston County, AL 20100 Dover, DE 0.9776 Kent County, DE 20220 Dubuque, IA 0.9024 Dubuque County, IA 20260 Duluth, MN-WI 1.0213 Carlton County, MN St. Louis County, MN Douglas County, WI 20500 Durham, NC 1.0244 Chatham County, NC Durham County, NC Orange County, NC Person County, NC 20740 Eau Claire, WI 0.9201 Chippewa County, WI Eau Claire County, WI 20764 Edison, NJ 1.1249 Middlesex County, NJ Monmouth County, NJ Ocean County, NJ Somerset County, NJ 20940 El Centro, CA 0.8906 Imperial County, CA 21060 Elizabethtown, KY 0.8802 Hardin County, KY Larue County, KY 21140 Elkhart-Goshen, IN 0.9627 Elkhart County, IN 21300 Elmira, NY 0.8250 Chemung County, NY 21340 El Paso, TX 0.8977 El Paso County, TX 21500 Erie, PA 0.8737 Erie County, PA 21604 Essex County, MA 1.0538 Essex County, MA 21660 Eugene-Springfield, OR 1.0818 Lane County, OR 21780 Evansville, IN-KY 0.8713 Gibson County, IN Posey County, IN Vanderburgh County, IN Warrick County, IN Henderson County, KY Webster County, KY 21820 Fairbanks, AK 1.1408 Fairbanks North Star Borough, AK 21940 Fajardo, PR 0.4153 Ceiba Municipio, PR Fajardo Municipio, PR Luquillo Municipio, PR Start Printed Page 27141 22020 Fargo, ND-MN 0.8486 Cass County, ND Clay County, MN 22140 Farmington, NM 0.8509 San Juan County, NM 22180 Fayetteville, NC 0.9416 Cumberland County, NC Hoke County, NC 22220 Fayetteville-Springdale-Rogers, AR-MO 0.8661 Benton County, AR Madison County, AR Washington County, AR McDonald County, MO 22380 Flagstaff, AZ 1.2092 Coconino County, AZ 22420 Flint, MI 1.0655 Genesee County, MI 22500 Florence, SC 0.8947 Darlington County, SC Florence County, SC 22520 Florence-Muscle Shoals, AL 0.8272 Colbert County, AL Lauderdale County, AL 22540 Fond du Lac, WI 0.9640 Fond du Lac County, WI 22660 Fort Collins-Loveland, CO 1.0122 Larimer County, CO 22744 Fort Lauderdale-Pompano Beach-Deerfield Beach, FL 1.0432 Broward County, FL 22900 Fort Smith, AR-OK 0.8230 Crawford County, AR Franklin County, AR Sebastian County, AR Le Flore County, OK Sequoyah County, OK 23020 Fort Walton Beach-Crestview-Destin, FL 0.8872 Okaloosa County, FL 23060 Fort Wayne, IN 0.9793 Allen County, IN Wells County, IN Whitley County, IN 23104 Fort Worth-Arlington, TX 0.9486 Johnson County, TX Parker County, TX Tarrant County, TX Wise County, TX 23420 Fresno, CA 1.0538 Fresno County, CA 23460 Gadsden, AL 0.7938 Etowah County, AL 23540 Gainesville, FL 0.9388 Alachua County, FL Gilchrist County, FL 23580 Gainesville, GA 0.8874 Hall County, GA 23844 Gary, IN 0.9395 Jasper County, IN Lake County, IN Newton County, IN Porter County, IN 24020 Glens Falls, NY 0.8559 Warren County, NY Washington County, NY 24140 Goldsboro, NC 0.8775 Wayne County, NC 24220 Grand Forks, ND-MN 0.7901 Polk County, MN Grand Forks County, ND 24300 Grand Junction, CO 0.9550 Mesa County, CO 24340 Grand Rapids-Wyoming, MI 0.9390 Start Printed Page 27142 Barry County, MI Ionia County, MI Kent County, MI Newaygo County, MI 24500 Great Falls, MT 0.9052 Cascade County, MT 24540 Greeley, CO 0.9570 Weld County, CO 24580 Green Bay, WI 0.9483 Brown County, WI Kewaunee County, WI Oconto County, WI 24660 Greensboro-High Point, NC 0.9104 Guilford County, NC Randolph County, NC Rockingham County, NC 24780 Greenville, NC 0.9425 Greene County, NC Pitt County, NC 24860 Greenville, SC 1.0027 Greenville County, SC Laurens County, SC Pickens County, SC 25020 Guayama, PR 0.3181 Arroyo Municipio, PR Guayama Municipio, PR Patillas Municipio, PR 25060 Gulfport-Biloxi, MS 0.8929 Hancock County, MS Harrison County, MS Stone County, MS 25180 Hagerstown-Martinsburg, MD-WV 0.9489 Washington County, MD Berkeley County, WV Morgan County, WV 25260 Hanford-Corcoran, CA 1.0036 Kings County, CA 25420 Harrisburg-Carlisle, PA 0.9313 Cumberland County, PA Dauphin County, PA Perry County, PA 25500 Harrisonburg, VA 0.9088 Rockingham County, VA Harrisonburg City, VA 25540 Hartford-West Hartford-East Hartford, CT 1.1073 Hartford County, CT Litchfield County, CT Middlesex County, CT Tolland County, CT 25620 Hattiesburg, MS 0.7601 Forrest County, MS Lamar County, MS Perry County, MS 25860 Hickory-Lenoir-Morganton, NC 0.8921 Alexander County, NC Burke County, NC Caldwell County, NC Catawba County, NC 25980 Hinesville-Fort Stewart, GA1 0.9198 Liberty County, GA Long County, GA 26100 Holland-Grand Haven, MI 0.9055 Ottawa County, MI 26180 Honolulu, HI 1.1214 Honolulu County, HI 26300 Hot Springs, AR 0.9005 Garland County, AR 26380 Houma-Bayou Cane-Thibodaux, LA 0.7894 Lafourche Parish, LA Terrebonne Parish, LA 26420 Houston-Sugar Land-Baytown, TX 0.9996 Start Printed Page 27143 Austin County, TX Brazoria County, TX Chambers County, TX Fort Bend County, TX Galveston County, TX Harris County, TX Liberty County, TX Montgomery County, TX San Jacinto County, TX Waller County, TX 26580 Huntington-Ashland, WV-KY-OH 0.9477 Boyd County, KY Greenup County, KY Lawrence County, OH Cabell County, WV Wayne County, WV 26620 Huntsville, AL 0.9146 Limestone County, AL Madison County, AL 26820 Idaho Falls, ID 0.9420 Bonneville County, ID Jefferson County, ID 26900 Indianapolis-Carmel, IN 0.9920 Boone County, IN Brown County, IN Hamilton County, IN Hancock County, IN Hendricks County, IN Johnson County, IN Marion County, IN Morgan County, IN Putnam County, IN Shelby County, IN 26980 Iowa City, IA 0.9747 Johnson County, IA Washington County, IA 27060 Ithaca, NY 0.9793 Tompkins County, NY 27100 Jackson, MI 0.9304 Jackson County, MI 27140 Jackson, MS 0.8311 Copiah County, MS Hinds County, MS Madison County, MS Rankin County, MS Simpson County, MS 27180 Jackson, TN 0.8964 Chester County, TN Madison County, TN 27260 Jacksonville, FL 0.9290 Baker County, FL Clay County, FL Duval County, FL Nassau County, FL St. Johns County, FL 27340 Jacksonville, NC 0.8236 Onslow County, NC 27500 Janesville, WI 0.9538 Rock County, WI 27620 Jefferson City, MO 0.8387 Callaway County, MO Cole County, MO Moniteau County, MO Osage County, MO 27740 Johnson City, TN 0.7937 Carter County, TN Unicoi County, TN Washington County, TN 27780 Johnstown, PA 0.8354 Cambria County, PA 27860 Jonesboro, AR 0.7911 Start Printed Page 27144 Craighead County, AR Poinsett County, AR 27900 Joplin, MO 0.8582 Jasper County, MO Newton County, MO 28020 Kalamazoo-Portage, MI 1.0381 Kalamazoo County, MI Van Buren County, MI 28100 Kankakee-Bradley, IL 1.0721 Kankakee County, IL 28140 Kansas City, MO-KS 0.9476 Franklin County, KS Johnson County, KS Leavenworth County, KS Linn County, KS Miami County, KS Wyandotte County, KS Bates County, MO Caldwell County, MO Cass County, MO Clay County, MO Clinton County, MO Jackson County, MO Lafayette County, MO Platte County, MO Ray County, MO 28420 Kennewick-Richland-Pasco, WA 1.0619 Benton County, WA Franklin County, WA 28660 Killeen-Temple-Fort Hood, TX 0.8526 Bell County, TX Coryell County, TX Lampasas County, TX 28700 Kingsport-Bristol-Bristol, TN-VA 0.8054 Hawkins County, TN Sullivan County, TN Bristol City, VA Scott County, VA Washington County, VA 28740 Kingston, NY 0.9255 Ulster County, NY 28940 Knoxville, TN 0.8441 Anderson County, TN Blount County, TN Knox County, TN Loudon County, TN Union County, TN 29020 Kokomo, IN 0.9508 Howard County, IN Tipton County, IN 29100 La Crosse, WI-MN 0.9564 Houston County, MN La Crosse County, WI 29140 Lafayette, IN 0.8736 Benton County, IN Carroll County, IN Tippecanoe County, IN 29180 Lafayette, LA 0.8428 Lafayette Parish, LA St. Martin Parish, LA 29340 Lake Charles, LA 0.7833 Calcasieu Parish, LA Cameron Parish, LA 29404 Lake County-Kenosha County, IL-WI 1.0429 Lake County, IL Kenosha County, WI 29460 Lakeland, FL 0.8912 Polk County, FL 29540 Lancaster, PA 0.9694 Lancaster County, PA 29620 Lansing-East Lansing, MI 0.9794 Start Printed Page 27145 Clinton County, MI Eaton County, MI Ingham County, MI 29700 Laredo, TX 0.8068 Webb County, TX 29740 Las Cruces, NM 0.8467 Dona Ana County, NM 29820 Las Vegas-Paradise, NV 1.1437 Clark County, NV 29940 Lawrence, KS 0.8537 Douglas County, KS 30020 Lawton, OK 0.7872 Comanche County, OK 30140 Lebanon, PA 0.8459 Lebanon County, PA 30300 Lewiston, ID-WA 0.9886 Nez Perce County, ID Asotin County, WA 30340 Lewiston-Auburn, ME 0.9331 Androscoggin County, ME 30460 Lexington-Fayette, KY 0.9075 Bourbon County, KY Clark County, KY Fayette County, KY Jessamine County, KY Scott County, KY Woodford County, KY 30620 Lima, OH 0.9225 Allen County, OH 30700 Lincoln, NE 1.0214 Lancaster County, NE Seward County, NE 30780 Little Rock-North Little Rock, AR 0.8747 Faulkner County, AR Grant County, AR Lonoke County, AR Perry County, AR Pulaski County, AR Saline County, AR 30860 Logan, UT-ID 0.9164 Franklin County, ID Cache County, UT 30980 Longview, TX 0.8730 Gregg County, TX Rusk County, TX Upshur County, TX 31020 Longview, WA 0.9579 Cowlitz County, WA 31084 Los Angeles-Long Beach-Glendale, CA 1.1783 Los Angeles County, CA 31140 Louisville-Jefferson County, KY-IN 0.9251 Clark County, IN Floyd County, IN Harrison County, IN Washington County, IN Bullitt County, KY Henry County, KY Jefferson County, KY Meade County, KY Nelson County, KY Oldham County, KY Shelby County, KY Spencer County, KY Trimble County, KY 31180 Lubbock, TX 0.8783 Crosby County, TX Lubbock County, TX 31340 Lynchburg, VA 0.8691 Amherst County, VA Appomattox County, VA Bedford County, VA Start Printed Page 27146 Campbell County, VA Bedford City, VA Lynchburg City, VA 31420 Macon, GA 0.9443 Bibb County, GA Crawford County, GA Jones County, GA Monroe County, GA Twiggs County, GA 31460 Madera, CA 0.8713 Madera County, CA 31540 Madison, WI 1.0659 Columbia County, WI Dane County, WI Iowa County, WI 31700 Manchester-Nashua, NH 1.0354 Hillsborough County, NH Merrimack County, NH 31900 Mansfield, OH 0.9891 Richland County, OH 32420 Mayagüez, PR 0.4020 Hormigueros Municipio, PR Mayagüez Municipio, PR 32580 McAllen-Edinburg-Mission, TX 0.8934 Hidalgo County, TX 32780 Medford, OR 1.0225 Jackson County, OR 32820 Memphis, TN-MS-AR 0.9397 Crittenden County, AR DeSoto County, MS Marshall County, MS Tate County, MS Tunica County, MS Fayette County, TN Shelby County, TN Tipton County, TN 32900 Merced, CA 1.1109 Merced County, CA 33124 Miami-Miami Beach-Kendall, FL 0.9750 Miami-Dade County, FL 33140 Michigan City-La Porte, IN 0.9399 LaPorte County, IN 33260 Midland, TX 0.9514 Midland County, TX 33340 Milwaukee-Waukesha-West Allis, WI 1.0146 Milwaukee County, WI Ozaukee County, WI Washington County, WI Waukesha County, WI 33460 Minneapolis-St. Paul-Bloomington, MN-WI 1.1075 Anoka County, MN Carver County, MN Chisago County, MN Dakota County, MN Hennepin County, MN Isanti County, MN Ramsey County, MN Scott County, MN Sherburne County, MN Washington County, MN Wright County, MN Pierce County, WI St. Croix County, WI 33540 Missoula, MT 0.9473 Missoula County, MT 33660 Mobile, AL 0.7891 Mobile County, AL 33700 Modesto, CA 1.1885 Stanislaus County, CA 33740 Monroe, LA 0.8031 Ouachita Parish, LA Start Printed Page 27147 Union Parish, LA 33780 Monroe, MI 0.9468 Monroe County, MI 33860 Montgomery, AL 0.8618 Autauga County, AL Elmore County, AL Lowndes County, AL Montgomery County, AL 34060 Morgantown, WV 0.8420 Monongalia County, WV Preston County, WV 34100 Morristown, TN 0.7961 Grainger County, TN Hamblen County, TN Jefferson County, TN 34580 Mount Vernon-Anacortes, WA 1.0454 Skagit County, WA 34620 Muncie, IN 0.8930 Delaware County, IN 34740 Muskegon-Norton Shores, MI 0.9664 Muskegon County, MI 34820 Myrtle Beach-Conway-North Myrtle Beach, SC 0.8934 Horry County, SC 34900 Napa, CA 1.2643 Napa County, CA 34940 Naples-Marco Island, FL 1.0139 Collier County, FL 34980 Nashville-Davidson--Murfreesboro, TN 0.9790 Cannon County, TN Cheatham County, TN Davidson County, TN Dickson County, TN Hickman County, TN Macon County, TN Robertson County, TN Rutherford County, TN Smith County, TN Sumner County, TN Trousdale County, TN Williamson County, TN Wilson County, TN 35004 Nassau-Suffolk, NY 1.2719 Nassau County, NY Suffolk County, NY 35084 Newark-Union, NJ-PA 1.1883 Essex County, NJ Hunterdon County, NJ Morris County, NJ Sussex County, NJ Union County, NJ Pike County, PA 35300 New Haven-Milford, CT 1.1887 New Haven County, CT 35380 New Orleans-Metairie-Kenner, LA 0.8995 Jefferson Parish, LA Orleans Parish, LA Plaquemines Parish, LA St. Bernard Parish, LA St. Charles Parish, LA St. John the Baptist Parish, LA St. Tammany Parish, LA 35644 New York-White Plains-Wayne, NY-NJ 1.3188 Bergen County, NJ Hudson County, NJ Passaic County, NJ Bronx County, NY Kings County, NY New York County, NY Putnam County, NY Queens County, NY Richmond County, NY Start Printed Page 27148 Rockland County, NY Westchester County, NY 35660 Niles-Benton Harbor, MI 0.8879 Berrien County, MI 35980 Norwich-New London, CT 1.1345 New London County, CT 36084 Oakland-Fremont-Hayward, CA 1.5346 Alameda County, CA Contra Costa County, CA 36100 Ocala, FL 0.8925 Marion County, FL 36140 Ocean City, NJ 1.1011 Cape May County, NJ 36220 Odessa, TX 0.9884 Ector County, TX 36260 Ogden-Clearfield, UT 0.9029 Davis County, UT Morgan County, UT Weber County, UT 36420 Oklahoma City, OK 0.9031 Canadian County, OK Cleveland County, OK Grady County, OK Lincoln County, OK Logan County, OK McClain County, OK Oklahoma County, OK 36500 Olympia, WA 1.0927 Thurston County, WA 36540 Omaha-Council Bluffs, NE-IA 0.9560 Harrison County, IA Mills County, IA Pottawattamie County, IA Cass County, NE Douglas County, NE Sarpy County, NE Saunders County, NE Washington County, NE 36740 Orlando-Kissimmee, FL 0.9464 Lake County, FL Orange County, FL Osceola County, FL Seminole County, FL 36780 Oshkosh-Neenah, WI 0.9183 Winnebago County, WI 36980 Owensboro, KY 0.8780 Daviess County, KY Hancock County, KY McLean County, KY 37100 Oxnard-Thousand Oaks-Ventura, CA 1.1622 Ventura County, CA 37340 Palm Bay-Melbourne-Titusville, FL 0.9839 Brevard County, FL 37460 Panama City-Lynn Haven, FL 0.8005 Bay County, FL 37620 Parkersburg-Marietta-Vienna, WV-OH 0.8270 Washington County, OH Pleasants County, WV Wirt County, WV Wood County, WV 37700 Pascagoula, MS 0.8156 George County, MS Jackson County, MS 37860 Pensacola-Ferry Pass-Brent, FL 0.8096 Escambia County, FL Santa Rosa County, FL 37900 Peoria, IL 0.8870 Marshall County, IL Peoria County, IL Stark County, IL Tazewell County, IL Start Printed Page 27149 Woodford County, IL 37964 Philadelphia, PA 1.1038 Bucks County, PA Chester County, PA Delaware County, PA Montgomery County, PA Philadelphia County, PA 38060 Phoenix-Mesa-Scottsdale, AZ 1.0127 Maricopa County, AZ Pinal County, AZ 38220 Pine Bluff, AR 0.8680 Cleveland County, AR Jefferson County, AR Lincoln County, AR 38300 Pittsburgh, PA 0.8845 Allegheny County, PA Armstrong County, PA Beaver County, PA Butler County, PA Fayette County, PA Washington County, PA Westmoreland County, PA 38340 Pittsfield, MA 1.0181 Berkshire County, MA 38540 Pocatello, ID 0.9351 Bannock County, ID Power County, ID 38660 Ponce, PR 0.4939 Juana Díaz Municipio, PR Ponce Municipio, PR Villalba Municipio, PR 38860 Portland-South Portland-Biddeford, ME 1.0382 Cumberland County, ME Sagadahoc County, ME York County, ME 38900 Portland-Vancouver-Beaverton, OR-WA 1.1266 Clackamas County, OR Columbia County, OR Multnomah County, OR Washington County, OR Yamhill County, OR Clark County, WA Skamania County, WA 38940 Port St. Lucie-Fort Pierce, FL 1.0123 Martin County, FL St. Lucie County, FL 39100 Poughkeepsie-Newburgh-Middletown, NY 1.0891 Dutchess County, NY Orange County, NY 39140 Prescott, AZ 0.9869 Yavapai County, AZ 39300 Providence-New Bedford-Fall River, RI-MA 1.0966 Bristol County, MA Bristol County, RI Kent County, RI Newport County, RI Providence County, RI Washington County, RI 39340 Provo-Orem, UT 0.9500 Juab County, UT Utah County, UT 39380 Pueblo, CO 0.8623 Pueblo County, CO 39460 Punta Gorda, FL 0.9255 Charlotte County, FL 39540 Racine, WI 0.8997 Racine County, WI 39580 Raleigh-Cary, NC 0.9691 Franklin County, NC Johnston County, NC Wake County, NC Start Printed Page 27150 39660 Rapid City, SD 0.8987 Meade County, SD Pennington County, SD 39740 Reading, PA 0.9686 Berks County, PA 39820 Redding, CA 1.2203 Shasta County, CA 39900 Reno-Sparks, NV 1.0982 Storey County, NV Washoe County, NV 40060 Richmond, VA 0.9328 Amelia County, VA Caroline County, VA Charles City County, VA Chesterfield County, VA Cumberland County, VA Dinwiddie County, VA Goochland County, VA Hanover County, VA Henrico County, VA King and Queen County, VA King William County, VA Louisa County, VA New Kent County, VA Powhatan County, VA Prince George County, VA Sussex County, VA Colonial Heights City, VA Hopewell City, VA Petersburg City, VA Richmond City, VA 40140 Riverside-San Bernardino-Ontario, CA 1.1027 Riverside County, CA San Bernardino County, CA 40220 Roanoke, VA 0.8374 Botetourt County, VA Craig County, VA Franklin County, VA Roanoke County, VA Roanoke City, VA Salem City, VA 40340 Rochester, MN 1.1131 Dodge County, MN Olmsted County, MN Wabasha County, MN 40380 Rochester, NY 0.9121 Livingston County, NY Monroe County, NY Ontario County, NY Orleans County, NY Wayne County, NY 40420 Rockford, IL 0.9984 Boone County, IL Winnebago County, IL 40484 Rockingham County-Strafford County, NH 1.0374 Rockingham County, NH Strafford County, NH 40580 Rocky Mount, NC 0.8915 Edgecombe County, NC Nash County, NC 40660 Rome, GA 0.9414 Floyd County, GA 40900 Sacramento—Arden-Arcade—Roseville, CA 1.2969 El Dorado County, CA Placer County, CA Sacramento County, CA Yolo County, CA 40980 Saginaw-Saginaw Township North, MI 0.9088 Saginaw County, MI 41060 St. Cloud, MN 0.9965 Benton County, MN Start Printed Page 27151 Stearns County, MN 41100 St. George, UT 0.9392 Washington County, UT 41140 St. Joseph, MO-KS 0.9519 Doniphan County, KS Andrew County, MO Buchanan County, MO DeKalb County, MO 41180 St. Louis, MO-IL 0.8954 Bond County, IL Calhoun County, IL Clinton County, IL Jersey County, IL Macoupin County, IL Madison County, IL Monroe County, IL St. Clair County, IL Crawford County, MO Franklin County, MO Jefferson County, MO Lincoln County, MO St. Charles County, MO St. Louis County, MO Warren County, MO Washington County, MO St. Louis City, MO 41420 Salem, OR 1.0442 Marion County, OR Polk County, OR 41500 Salinas, CA 1.4128 Monterey County, CA 41540 Salisbury, MD 0.9064 Somerset County, MD Wicomico County, MD 41620 Salt Lake City, UT 0.9421 Salt Lake County, UT Summit County, UT Tooele County, UT 41660 San Angelo, TX 0.8271 Irion County, TX Tom Green County, TX 41700 San Antonio, TX 0.8980 Atascosa County, TX Bandera County, TX Bexar County, TX Comal County, TX Guadalupe County, TX Kendall County, TX Medina County, TX Wilson County, TX 41740 San Diego-Carlsbad-San Marcos, CA 1.1413 San Diego County, CA 41780 Sandusky, OH 0.9019 Erie County, OH 41884 San Francisco-San Mateo-Redwood City, CA 1.4994 Marin County, CA San Francisco County, CA San Mateo County, CA 41900 San Germán-Cabo Rojo, PR 0.4650 Cabo Rojo Municipio, PR Lajas Municipio, PR Sabana Grande Municipio, PR San Germán Municipio, PR 41940 San Jose-Sunnyvale-Santa Clara, CA 1.5099 San Benito County, CA Santa Clara County, CA 41980 San Juan-Caguas-Guaynabo, PR 0.4621 Aguas Buenas Municipio, PR Aibonito Municipio, PR Arecibo Municipio, PR Barceloneta Municipio, PR Start Printed Page 27152 Barranquitas Municipio, PR Bayamón Municipio, PR Caguas Municipio, PR Camuy Municipio, PR Canóvanas Municipio, PR Carolina Municipio, PR Cataño Municipio, PR Cayey Municipio, PR Ciales Municipio, PR Cidra Municipio, PR Comerío Municipio, PR Corozal Municipio, PR Dorado Municipio, PR Florida Municipio, PR Guaynabo Municipio, PR Gurabo Municipio, PR Hatillo Municipio, PR Humacao Municipio, PR Juncos Municipio, PR Las Piedras Municipio, PR Loíza Municipio, PR Manatí Municipio, PR Maunabo Municipio, PR Morovis Municipio, PR Naguabo Municipio, PR Naranjito Municipio, PR Orocovis Municipio, PR Quebradillas Municipio, PR Río Grande Municipio, PR San Juan Municipio, PR San Lorenzo Municipio, PR Toa Alta Municipio, PR Toa Baja Municipio, PR Trujillo Alto Municipio, PR Vega Alta Municipio, PR Vega Baja Municipio, PR Yabucoa Municipio, PR 42020 San Luis Obispo-Paso Robles, CA 1.1349 San Luis Obispo County, CA 42044 Santa Ana-Anaheim-Irvine, CA 1.1559 Orange County, CA 42060 Santa Barbara-Santa Maria, CA 1.1694 Santa Barbara County, CA 42100 Santa Cruz-Watsonville, CA 1.5166 Santa Cruz County, CA 42140 Santa Fe, NM 1.0920 Santa Fe County, NM 42220 Santa Rosa-Petaluma, CA 1.3493 Sonoma County, CA 42260 Sarasota-Bradenton-Venice, FL 0.9639 Manatee County, FL Sarasota County, FL 42340 Savannah, GA 0.9461 Bryan County, GA Chatham County, GA Effingham County, GA 42540 Scranton-Wilkes-Barre, PA 0.8540 Lackawanna County, PA Luzerne County, PA Wyoming County, PA 42644 Seattle-Bellevue-Everett, WA 1.1577 42680 Sebastian-Vero Beach, FL 0.9434 Indian River County, FL 43100 Sheboygan, WI 0.8911 Sheboygan County, WI 43300 Sherman-Denison, TX 0.9507 Grayson County, TX 43340 Shreveport-Bossier City, LA 0.8760 Bossier Parish, LA Caddo Parish, LA De Soto Parish, LA Start Printed Page 27153 43580 Sioux City, IA-NE-SD 0.9381 Woodbury County, IA Dakota County, NE Dixon County, NE Union County, SD 43620 Sioux Falls, SD 0.9635 Lincoln County, SD McCook County, SD Minnehaha County, SD Turner County, SD 43780 South Bend-Mishawaka, IN-MI 0.9788 St. Joseph County, IN Cass County, MI 43900 Spartanburg, SC 0.9172 Spartanburg County, SC 44060 Spokane, WA 1.0905 Spokane County, WA 44100 Springfield, IL 0.8792 Menard County, IL Sangamon County, IL 44140 Springfield, MA 1.0248 Franklin County, MA Hampden County, MA Hampshire County, MA 44180 Springfield, MO 0.8237 Christian County, MO Dallas County, MO Greene County, MO Polk County, MO Webster County, MO 44220 Springfield, OH 0.8396 Clark County, OH 44300 State College, PA 0.8356 Centre County, PA 44700 Stockton, CA 1.1307 San Joaquin County, CA 44940 Sumter, SC 0.8377 Sumter County, SC 45060 Syracuse, NY 0.9574 Madison County, NY Onondaga County, NY Oswego County, NY 45104 Tacoma, WA 1.0742 Pierce County, WA 45220 Tallahassee, FL 0.8688 Gadsden County, FL Jefferson County, FL Leon County, FL Wakulla County, FL 45300 Tampa-St. Petersburg-Clearwater, FL 0.9233 Hernando County, FL Hillsborough County, FL Pasco County, FL Pinellas County, FL 45460 Terre Haute, IN 0.8304 Clay County, IN Sullivan County, IN Vermillion County, IN Vigo County, IN 45500 Texarkana, TX-Texarkana, AR 0.8283 Miller County, AR Bowie County, TX 45780 Toledo, OH 0.9574 Fulton County, OH Lucas County, OH Ottawa County, OH Wood County, OH 45820 Topeka, KS 0.8920 Jackson County, KS Jefferson County, KS Osage County, KS Start Printed Page 27154 Shawnee County, KS Wabaunsee County, KS 45940 Trenton-Ewing, NJ 1.0834 Mercer County, NJ 46060 Tucson, AZ 0.9007 Pima County, AZ 46140 Tulsa, OK 0.8543 Creek County, OK Okmulgee County, OK Osage County, OK Pawnee County, OK Rogers County, OK Tulsa County, OK Wagoner County, OK 46220 Tuscaloosa, AL 0.8645 Greene County, AL Hale County, AL Tuscaloosa County, AL 46340 Tyler, TX 0.9168 Smith County, TX 46540 Utica-Rome, NY 0.8358 Herkimer County, NY Oneida County, NY 46660 Valdosta, GA 0.8866 Brooks County, GA Echols County, GA Lanier County, GA Lowndes County, GA 46700 Vallejo-Fairfield, CA 1.4936 Solano County, CA 47020 Victoria, TX 0.8160 Calhoun County, TX Goliad County, TX Victoria County, TX 47220 Vineland-Millville-Bridgeton, NJ 0.9827 Cumberland County, NJ 47260 Virginia Beach-Norfolk-Newport News, VA-NC 0.8799 Currituck County, NC Gloucester County, VA Isle of Wight County, VA James City County, VA Mathews County, VA Surry County, VA York County, VA Chesapeake City, VA Hampton City, VA Newport News City, VA Norfolk City, VA Poquoson City, VA Portsmouth City, VA Suffolk City, VA Virginia Beach City, VA Williamsburg City, VA 47300 Visalia-Porterville, CA 1.0123 Tulare County, CA 47380 Waco, TX 0.8518 McLennan County, TX 47580 Warner Robins, GA 0.8645 Houston County, GA 47644 Warren-Troy-Farmington Hills, MI 0.9871 Lapeer County, MI Livingston County, MI Macomb County, MI Oakland County, MI St. Clair County, MI 47894 Washington-Arlington-Alexandria, DC-VA-MD-WV 1.0926 District of Columbia, DC Calvert County, MD Charles County, MD Prince George's County, MD Arlington County, VA Start Printed Page 27155 Clarke County, VA Fairfax County, VA Fauquier County, VA Loudoun County, VA Prince William County, VA Spotsylvania County, VA Stafford County, VA Warren County, VA Alexandria City, VA Fairfax City, VA Falls Church City, VA Fredericksburg City, VA Manassas City, VA Manassas Park City, VA Jefferson County, WV 47940 Waterloo-Cedar Falls, IA 0.8557 Black Hawk County, IA Bremer County, IA Grundy County, IA 48140 Wausau, WI 0.9590 Marathon County, WI 48260 Weirton-Steubenville, WV-OH 0.7819 Jefferson County, OH Brooke County, WV Hancock County, WV 48300 Wenatchee, WA 1.0070 Chelan County, WA Douglas County, WA 48424 West Palm Beach-Boca Raton-Boynton Beach, FL 1.0067 Palm Beach County, FL 48540 Wheeling, WV-OH 0.7161 Belmont County, OH Marshall County, WV Ohio County, WV 48620 Wichita, KS 0.9153 Butler County, KS Harvey County, KS Sedgwick County, KS Sumner County, KS 48660 Wichita Falls, TX 0.8285 Archer County, TX Clay County, TX Wichita County, TX 48700 Williamsport, PA 0.8364 Lycoming County, PA 48864 Wilmington, DE-MD-NJ 1.0471 New Castle County, DE Cecil County, MD Salem County, NJ 48900 Wilmington, NC 0.9582 Brunswick County, NC New Hanover County, NC Pender County, NC 49020 Winchester, VA-WV 1.0214 Frederick County, VA Winchester City, VA Hampshire County, WV 49180 Winston-Salem, NC 0.8944 Davie County, NC Forsyth County, NC Stokes County, NC Yadkin County, NC 49340 Worcester, MA 1.1028 Worcester County, MA 49420 Yakima, WA 1.0155 Yakima County, WA 49500 Yauco, PR 0.4408 Guanica Municipio, PR Guayanilla Municipio, PR Peñuelas Municipio, PR Yauco Municipio, PR Start Printed Page 27156 49620 York-Hanover, PA 0.9347 York County, PA 49660 Youngstown-Warren-Boardman, OH-PA 0.8603 Mahoning County, OH Trumbull County, OH Mercer County, PA 49700 Yuba City, CA 1.0921 Sutter County, CA Yuba County, CA 49740 Yuma, AZ 0.9126 Yuma County, AZ 1 At this time, there are no hospitals located in this urban area on which to base a wage index. Therefore, the urban wage index value is based on the average wage index for all urban areas within the State. End Supplemental InformationTable 2.—Proposed Wage Index Based on CBSA Labor Market Areas for Rural Areas
CBSA code Nonurban Wage Index 01 Alabama 0.7446 02 Alaska 1.1977 03 Arizona 0.8768 04 Arkansas 0.7466 05 California 1.1054 06 Colorado 0.9380 07 Connecticut 1.1730 08 Delaware 0.9579 10 Florida 0.8568 11 Georgia 0.7662 12 Hawaii 1.0551 13 Idaho 0.8037 14 Illinois 0.8271 15 Indiana 0.8624 16 Iowa 0.8509 17 Kansas 0.8035 18 Kentucky 0.7766 19 Louisiana 0.7411 20 Maine 0.8843 21 Maryland 0.9353 22 Massachusetts 1 1.0216 23 Michigan 0.8895 24 Minnesota 0.9132 25 Mississippi 0.7674 26 Missouri 0.7900 27 Montana 0.8762 28 Nebraska 0.8657 29 Nevada 0.9065 30 New Hampshire 1.0817 31 New Jersey 1 32 New Mexico 0.8635 33 New York 0.8154 34 North Carolina 0.8540 35 North Dakota 0.7261 36 Ohio 0.8826 37 Oklahoma 0.7581 38 Oregon 0.9826 39 Pennsylvania 0.8291 40 Puerto Rico 1 0.4047 41 Rhode Island 1 42 South Carolina 0.8638 43 South Dakota 0.8560 44 Tennessee 0.7895 45 Texas 0.8003 46 Utah 0.8118 47 Vermont 0.9830 48 Virginia 0.8013 50 Washington 1.0510 51 West Virginia 0.7717 52 Wisconsin 0.9509 53 Wyoming 0.9257 65 Guam 0.9611 1 All counties within the State are classified as urban, with the exception of Massachusetts and Puerto Rico. Massachusetts and Puerto Rico have areas designated as rural, however, no short-term, acute care hospitals are located in the area(s) for FY 2006. Because more recent data is not available for those areas, we are using last year's wage index value. [FR Doc. 06-4202 Filed 5-1-06; 4:00 pm]
BILLING CODE 4120-01-P
Document Information
- Published:
- 05/09/2006
- Department:
- Centers for Medicare & Medicaid Services
- Entry Type:
- Rule
- Action:
- Final rule.
- Document Number:
- 06-4202
- Pages:
- 27039-27156 (118 pages)
- Docket Numbers:
- CMS-1306-F
- RINs:
- 0938-AN82
- Topics:
- Administrative practice and procedure, Emergency medical services, Health facilities, Health professions, Medicare, Puerto Rico, Reporting and recordkeeping requirements
- PDF File:
- 06-4202.pdf
- CFR: (6)
- 42 CFR 412.27
- 42 CFR 412.402
- 42 CFR 412.424
- 42 CFR 412.426
- 42 CFR 412.428
- More ...