U.S. Department of Health and Human Services
Drug Use and Spending for Medicare Beneficiaries During Part A Qualifying Skilled Nursing Facility Stays and Non-Qualifying Long-Term Care Facility Stays
Bruce Stuart, PhD, Linda Simoni-Wastila, RPh, PhD and Thomas Shaffer, MHS
University of Maryland, Baltimore, Peter Lamy Center on Drug Therapy and Aging
February 15, 2007
PDF Version (26 PDF pages)
This report was prepared under contract #HHS-100-03-0025 between the U.S. Department of Health and Human Services (HHS), Office of Disability, Aging and Long-Term Care Policy (DALTCP) and the University of Maryland. For additional information about this subject, you can visit the DALTCP home page at http://aspe.hhs.gov/_/office_specific/daltcp.cfm or contact the office at HHS/ASPE/DALTCP, Room 424E, H.H. Humphrey Building, 200 Independence Avenue, S.W., Washington, D.C. 20201. The e-mail address is: webmaster.DALTCP@HHS.GOV. The Project Officer was Linda Bergofsky.
The opinions expressed herein are solely those of the authors and do not reflect the position or policy of any office of the Assistant Secretary for Planning and Evaluation at the U.S. Department of Health and Human Services or any other government authority.
TABLE OF CONTENTS
- APPENDIX: Regression Results
- LIST OF TABLES
- TABLE 1: Characteristics of Medicare Beneficiaries with SNF Stays by Long-Term Care Facility Residential Status, 2001
- TABLE 2: Characteristics of Residential Situations for Medicare Beneficiaries with SNF Stays with or without Other Long-Term Care Facility Stays, 2001
- TABLE 3: Medication Utilization and Expenditures for Medicare Beneficiaries with SNF and Other Long-Term Care Facility Stays, 2001
- TABLE 4: Predicted Values for Medication Utilization and Expenditures for Medicare Beneficiaries by Residential Situation
INTRODUCTION
Under the terms of the Medicare Prescription Drug, Improvement, and Modernization Act of 2005 (MMA), Medicare beneficiaries in long-term care facility (LTCF) settings are eligible for the same prescription drug benefits as community-dwelling beneficiaries.1 Beneficiaries have always had prescription coverage during Medicare qualifying Part A skilled nursing facility (SNF) stays. The new Part D benefit offers beneficiaries an opportunity for prescription coverage during non-qualifying LTCF stays. The relationship between prescription coverage and drug use by nursing home (NH) residents has been evaluated in two recent articles focusing on legend drugs (Stuart et al., 2006) and over-the-counter (OTC) medications (Simoni-Wastila, 2006a). However, neither article evaluated medication use during Medicare-qualified SNF stays. Two other Office of the Assistant Secretary for Planning and Evaluation Policy Briefs by the authors present data on drug expenditures in NHs and other LTCFs (Simoni-Wastila et al., 2006b, 2007), but the portion of costs incurred during Medicare-qualified SNF stays was not identified. This Policy Brief helps fill an important gap in our understanding of medication patterns in LTCF by comparing use and spending for prescription and OTC drugs during SNF stays and related non-qualifying LTCF episodes.
This Policy Brief has three aims. The first aim is to characterize Medicare-qualified SNF stays in relation to other episodes of long-term institutional care that beneficiaries may experience. The Medicare SNF benefit was originally conceived as an extension of hospitalization for individuals requiring skilled nursing services during a period of recuperation. Except for a brief period between the enactment and repeal of the Medicare Catastrophic Coverage Act of 1988, this benefit design prevails today. Routine LTCF care is not a covered benefit and Medicare has no record keeping process for tracking non-SNF-related LTCF episodes. Our analysis relating to this aim provides context for the next two study aims.
The second aim is to learn more about patterns of medication use and spending during SNF stays. Since the SNF Prospective Payment System (PPS) was introduced in July 1998, SNFs have been paid on a case-mix adjusted per diem basis that bundles nursing, therapy, and non-therapy services together (Liu et al., 1999; ASCP, 1999). Medication costs are defined as non-therapy ancillaries and are buried in the nursing component. Detailed information regarding medication use in SNFs is not available from the PPS cost reports,2 nor are medication statistics routinely collected as part of the Minimum Data Set (MDS).3 In fact, to our knowledge, there are no current published national statistics on medication use during Part A SNF stays.
The third aim of this Policy Brief is to compare drug use and spending during SNF and non-qualified LTCF stays for Medicare beneficiaries who experience both types of episodes. The rationale for this analysis is two-fold. First, LTCFs face very different financial incentives depending on which payor is responsible for drug costs. During SNF stays, the nursing facility is at risk for all medication expenses. For patients remaining in the facility after SNF discharge, drug costs are almost always passed through to other payors.4 Thus, the home bears residual risk for uninsured residents who cannot afford necessary medications, but for the most part, financial risk is transferred to third parties (now primarily Medicare Part D plans). The question for policy-makers is whether risk bearing has any influence over the way that medications are managed during SNF stays.
The second reason for examining transitions between SNF and non-qualified LTCF stays is that beneficiaries are automatically covered for all drug expenses during Medicare-qualified SNF episodes, but may or may not be covered for drug expenses for other stays. The question here is whether lack of drug benefits reduces medication use during non-qualified stays. The advent of the new Part D benefit increases the opportunities for LTCF residents to obtain drug coverage. The analysis relating to this question will provide benchmark data against which policy-makers can compare post-Part D experience when Medicare drug claims become available to the research community.
METHODS
Data source. Data for this study were drawn from the 2001 Medicare Current Beneficiary Survey (MCBS). Information on SNF stays was derived from Medicare Part A claims. Data on other LTCF residential stays were obtained from the MCBS residence time line (Ric 9 in the MCBS files). The residence time line tracks up to 20 residential transitions between community, SNF, and other institutional settings during the year and flags admission and discharge dates for each episode by facility type. MCBS defines institutional facilities as domiciles that meet the following formal criteria: (1) contain three or more beds, (2) are classified by the administrator as providing long-term care, and (3) whose physical structure allows long-term care residents of the facility to be separately identified from those of the institution as a whole (MCBS, 2001). This would appear to be a very expansive definition of LTCFs. However, in practice, only facilities that provide 24 hour skilled nursing services and centralized medication administration are included in the MCBS facility files.5 That still encompasses a wide assortment of institutions ranging from traditional skilled NHs to hospital distinct part SNFs, intermediate care facilities for the mentally retarded, rehabilitation hospitals, long-term psychiatric institutions, and certain assisted living facilities, among others.
The MCBS considers Medicare-qualified SNF stays to be facility stays only if they represent part of an extended non-SNF-qualified facility stay (e.g., a post-hospital SNF episode for a NH resident). This distinction has important practical consequences for analysts because MCBS information capture for institutionalized beneficiaries is markedly different than in the community. In the community setting, all survey information is obtained directly from the sampled person (or designated proxy) using computer assisted personal interviews. If the sample person is a facility resident, all survey information is obtained from facility staff and administrative records made available to MCBS interviewers -- facility residents are not directly interviewed.
Prescription drug data for this Policy Brief were taken from the MCBS Institutional Drug Administration (IDA) files created by the University of Maryland Baltimore under contract with the Centers for Medicare and Medicaid Services (CMS) and Westat. The IDA files are extracted from LTCF medication administration records (MAR) and include month-by-month tabulations of all medications (both legend and OTC drugs) listed on the MAR together with drug strength and dosing information (scheduled as well as on a prn or as needed basis). In addition, the IDA file indicates the number of total administrations recorded for each drug mention each month.
By contrast, drug event-level data collected on the community side of the MCBS are based on self reports and are aggregated at the year level with no service dates. It is therefore impossible to date prescription medication events for MCBS beneficiaries who have no LTCF exposure. Because stand-alone SNF stays are not considered facility stays, we are unable to provide medication utilization and cost statistics for this segment of SNF stays.
Study sample. For aim 1, the study sample comprised all MCBS respondents in 2001 with evidence of any SNF stay irrespective of facility status. Five hundred and eighty-nine individuals met this criterion. For aims 2 and 3, we identified subsets of beneficiaries with and without other LTCF episodes in conjunction with the SNF stay. The sub-sample with no additional LTCF episodes represented 308 respondents. The remaining 281 beneficiaries had evidence of another LTCF stay either directly before or after a SNF episode. There were a total of 6,368 person-month observations in the two groups -- 3,517 in the sub-sample with SNF and no additional LTCF stays and 2,861 in the sub-sample with SNF and other LTCF episodes. Our analysis of medication utilization and spending patterns is restricted to this latter group.
Measures. We measure medication utilization in two ways, as mean counts of unique drugs administered per person-month (PPM) and mean number of administrations PPM. Both measures are computed for prescription-only legend medications, OTC products, and all drugs combined.6 Medication expenditures are also captured PPM but are limited to legend drugs.7 The drug utilization and expenditures statistics are profiled by beneficiary residential status reflecting six mutually exclusive scenarios: (1) SNF-only (all days in the month were part of a SNF-qualified stay), (2) community + SNF (the beneficiary either entered a SNF stay from the community and/or was discharged to the community from a SNF stay), (3) SNF + facility (where facility is defined as any MCBS institutional facility), (4) SNF + facility + community, (5) facility-only, (6) and facility + community. These categories do not reflect order of transition or number of distinct SNF or facility placements per month. The six groups were honed down from a total of 43 unique combinations of ordered transitions (e.g., community-to-SNF and SNF-to-community) and different LTCF placements (e.g., a transfer from one to another LTCF) discovered during preliminary analyses.8
One feature of the residential situation scenarios is that they differ systematically in the number of days per month in which beneficiaries are eligible to receive medications from the SNF and/or facility provider. For example, a facility-only month would include medication-eligible days for the entire month the resident was alive, whereas a community + SNF month includes community and acute care hospital days in addition to LTCF medication-eligible days. In order to provide standardized denominators for LTCF medication use, we created a variable denoted as potential LTCF therapy days, which is operationally defined as the number of days in a given month minus days spent in the community, in an inpatient hospital stay, and for decedents, the number of days from the date of death to the end of the month.9
Additional study variables used to characterize the study population included age, gender, race, marital status, educational attainment, income in relation to the Federal Poverty Level (FPL), geographic residence, and the presence and source of prescription coverage.10 We used ICD-9 codes from Medicare claims to compute a global measure of resident disease burden -- the count of medication-sensitive conditions derived from the Prescription Drug Hierarchal Coexisting Condition (RxHCC) model used by CMS to risk adjust payments to Part D plans.11
Statistical analysis. Descriptive findings for aim 1 are presented in two tables with statistics for all Medicare beneficiaries who have SNF stays and for the two subpopulations who either have other related LTCF stays or not. The first table presents population characteristics at the person level. The second table presents frequencies of possible residential combinations at the PPM level.
Unadjusted results for aims 2 and 3 are summarized in a table showing mean PPM drug utilization and cost statistics by residential situation for the subpopulation with other LTCF stays. All descriptive statistics are weighted to be nationally-representative of the Medicare population with standard errors adjusted for repeated measures and the complex sampling design of the MCBS using the robust command in Stata 7.
We employed regression analysis to determine if there are significant differences in medication utilization and spending levels by residential situation status controlling for possible confounding factors. Seven OLS regressions were estimated with PPM drug measures as the dependent variables (counts of legend drugs, OTCs, and all drugs; administrations for legend drugs, OTC, and all drugs; and expenditures for legend drugs only). The primary explanatory variables are five residential situation status categories with facility-only days as the reference group. Covariates included all the variables shown in Table 1 plus the potential LTCF therapy days variable that standardizes each person-month observation for LTCF medication-eligible days.
TABLE 1. Characteristics of Medicare Beneficiaries with SNF Stays by Long-Term Care Facility Residential Status, 2001 | |||
Characteristics | Total Medicare Beneficiaries with SNF Staysa | Beneficiaries with SNF Stays and no other Long-Term Care Facility Staya,b | Beneficiaries with SNF Stays and some other Long-Term Care Facility Staya,c |
Beneficiaries (in sample) | 589 | 308 | 281 |
Beneficiaries (nationally weighted) | 1,617,606 | 916,481 | 701,124 |
SNF stay characteristics | |||
Mean number of SNF stays | 1.4 | 1.3 | 1.6 |
Mean number of SNF days | 30.1 | 20.6 | 42.6 |
Mean SNF reimbursement ($) | $8,179 | $6,244 | $10,734 |
Age (%) | |||
Under age 65 SSDI | 5.5 | 5.6 | 5.3 |
65 - 74 years | 20.3 | 25.6 | 13.4 |
74 - 85 years | 43.4 | 48.3 | 37.0 |
85+ years | 30.8 | 20.5 | 44.3 |
Gender (%) | |||
Male | 33.6 | 37.5 | 28.5 |
Female | 66.4 | 62.5 | 71.5 |
Race (%) | |||
White | 90.1 | 92.1 | 87.6 |
Non-White | 9.9 | 7.9 | 12.4 |
Marital status (%) | |||
Married | 27.0 | 32.7 | 19.6 |
Widowed | 55.6 | 52.2 | 59.9 |
Never married/divorced/separated | 17.4 | 15.1 | 20.5 |
Education (%) | |||
Less than high school graduate | 45.4 | 39.0 | 53.8 |
High school graduate | 26.5 | 29.2 | 23.0 |
Some post high school education | 28.1 | 31.8 | 23.2 |
Geographic region (%) | |||
East | 25.0 | 24.9 | 25.1 |
Midwest | 27.7 | 29.5 | 25.4 |
South | 30.8 | 28.5 | 33.9 |
West | 16.5 | 17.1 | 15.6 |
Income in relation to poverty line (%) | |||
100% of FPL | 21.1 | 12.4 | 32.4 |
100-200% of FPL | 40.0 | 42.6 | 36.7 |
200-300% of FPL | 18.3 | 21.8 | 13.6 |
> 300% of FPL | 20.6 | 23.2 | 17.3 |
Prescription coverage (%) | |||
Medicaid | 26.6 | 13.4 | 43.8 |
Other | 41.5 | 58.0 | 19.9 |
Coverage unknown | 6.8 | 0.6 | 14.9 |
No coverage | 25.1 | 28.0 | 21.4 |
Mean number RxHCCs (count) | 11.0 | 10.6 | 11.5 |
Died (%) | 23.9 | 14.0 | 36.8 |
SOURCE: MCBS, 2001.
|
We tested the impact of prescription coverage on differences in drug use by residential situation using interaction terms in a second series of regressions.12 The fact that our study subjects all had some exposure to both SNF and non-qualified LTCF stays represents a natural experiment that can be analytically exploited. The hypothesis that bearing risk for medication costs leads to reduced medication use during SNF stays can be tested by comparing regression-adjusted utilization rates among beneficiaries who have drug coverage in months with SNF-only days and facility-only days. If the hypothesis is true, we would find that utilization rates are lower in the months with SNF-only days, all else being equal. Likewise, the hypothesis that beneficiaries with no drug coverage will experience lower utilization rates during non-qualified LTCF months can be tested in a similar fashion. In the first set of tests, we re-estimate the original seven regressions, but include an interaction term of has prescription coverage and SNF-only days with no prescription coverage and facility-only days as reference groups. Significant negative coefficients on the interaction terms would support the hypothesis that risk bearing may reduce medication use and cost. In the second set of tests, we estimate otherwise identical regressions with interaction terms for no prescription coverage and facility-only days with has prescription coverage and SNF-only days as reference categories. Negative coefficient on the interaction terms in these models would support the hypotheses that lack of prescription coverage leads to reduced medication use. All regressions were estimated using the robust command in Stata 7.
RESULTS
In 2001, more than 1.6 million Medicare beneficiaries had one or more qualified SNF stays. Of these individuals, approximately 43% had evidence of another related LTCF stay and 57% did not. The characteristics of the two subgroups differ substantially. Those with other LTCF stays had 23% more SNF episodes on average (1.6 versus 1.3), more than double the total number of annual SNF days (42.6 versus 20.6), and 72% higher Medicare SNF reimbursement ($10,734 versus $6,244).
There are equally large differences in personal characteristics between the two groups. Beneficiaries with SNF plus other LTCF stays are much older on average (44.3% aged 85+ compared to 20.5% for beneficiaries with only SNF episodes), much less likely to be married (19.6% versus 32.7%), and have much lower levels of socioeconomic status. Over half (53.8%) of beneficiaries with SNF and other LTCF stays failed to graduate high school compared to 39% for those with stand-alone SNF stays. Income differences are even more dramatic, with almost a third (32.4%) of beneficiaries with both SNF and LTCF stays falling below the FPL compared to just 12.4% for those with SNF stays alone. Medicaid represented the primary source of prescription coverage for beneficiaries with SNF and LTCF stays (43.8%). A majority (58.0%) of beneficiaries with stand-alone SNF stays obtained prescription coverage from other sources (primarily from employer sponsored health insurance plans). Medicaid (13.4%) was a relatively unimportant source of coverage for these individuals.
There also are differences in disease burden and mortality rates between the two groups of SNF recipients. On average, beneficiaries with only a SNF stay recorded 10.6 medication-sensitive conditions based on the RxHCC risk adjustment model compared to 11.5 conditions for those with other LTCF episodes. Annual mortality was dramatically higher in the SNF plus other LTCF group (36.8%) compared to the SNF-only group (14.0%).
Table 2 provides a breakdown of residential situations for the study sample and subpopulations with and without related LTCF stays. The table records the percent of months beneficiaries spent in various combinations of residential situations involving the community, SNF, and other LTCFs. Situations involving more than one status imply residential transfers.13 We tallied the direction and number of such transfers on a monthly basis, but given the large number of combinations (43 in total) and small cell sizes these are not enumerated in Table 2.
TABLE 2. Characteristics of Residential Situations for Medicare Beneficiaries with SNF Stays with or without Other Long-Term Care Facility Stays, 2001 | |||
Residential Situation | Proportion of Months by Residential Situation | ||
Medicare Beneficiaries with SNF Stays a | Beneficiaries with SNF Stays and no other Long-Term Care Facility Residential Staya,b | Beneficiaries with SNF Stays and some other Long-Term Care Facility Residential Staya,c | |
Community only | 57.4% | 84.7% | 17.3% |
Community + SNF | 9.7 | 13.9 | 3.6 |
Community + SNF + facility | 0.6 | NAd | 1.4 |
SNF-only | 3.6 | 1.4 | 6.8 |
SNF + facility | 6.1 | NA | 15.0 |
Facility-only | 22.1 | NA | 54.4 |
Facility + community | 0.5 | NA | 1.2 |
SOURCE: MCBS, 2001.
|
The percentage distributions shown in Table 2 are computed on the basis of the number of months each beneficiary was a SNF and/or facility resident during the study year. Because of higher death rates in the SNF + LTCF sample, the average number of months of observation (10.1 months) is lower than in the sample with SNF stays only (11.4 months). As expected, the subpopulations have very different distributions of residential status, beginning with the percentage of months spent in the community (17.3% for the population with SNF and other LTCF stays compared to 83.4% for the group without other LTCF stays). The stand-alone SNF sample has zero facility days by definition; those in the facility sample spent an average of 56.6% of months in LTCFs. The distribution of SNF days across the year varies as well. For the stand-alone SNF group, just 1.4% of months were spent wholly in a SNF stay compared to 6.8% in the SNF + LTCF group. For the stand-alone SNF group 15.1% of months included both SNF and community days. Although not shown in the table, the distribution is almost evenly split between community-to-SNF transfers (35%), SNF-to-community transfers (31%), and community-to-SNF-to-community transfers (30%), with 4% having more complex residential situations. Each of these transfers involved an intervening acute hospitalization. Beneficiaries with SNF and other LTCF stays had a higher proportion of months with complex residential situations: 20% of all months involved SNF days in combination with community and/or facility days. Sixty-two percent of all transfers recorded by month were facility-to-SNF, SNF-to-facility, or facility-to-SNF-to-facility (each with an intervening hospitalization). However, up to six transfers were recorded in a single month for several residents in this sample.
TABLE 3. Medication Utilization and Expenditures for Medicare Beneficiaries with SNF and Other Long-Term Care Facility Stays, 2001 | |||
Medication Measures Per Patient Month | Residential Situation | ||
Months with only SNF Daysa | Months with SNF and Facility Daysa | Months with only Facility Daysa | |
Number of months with residential situation | 195 | 433 | 1,610 |
Mean potential LTCF therapy days per monthb | 30.2 days | 24.2 days | 29.3 days |
Percent of months with medication use | 94.4% | 91.5% | 94.3% |
Mean number of unique medications (se) | |||
OTC drugs | 2.9 (0.2) | 2.7 (0.1) | 2.8 (0.5) |
Prescription-only drugs | 6.3 (0.3) | 6.7 (0.2) | 6.3 (0.1) |
Total drugs | 9.2 (0.4) | 9.4 (0.3) | 9.1 (0.1) |
Mean number of drug administrations (se) | |||
OTC drugs | 99.5 (7.1) | 79.4 (4.3) | 109.4 (2.5) |
Prescription-only drugs | 237.3.8 (12.0) | 195.7 (7.2) | 248.8 (4.0) |
Total drugs | 336.8 (15.4) | 275.1 (9.9) | 358.3 (5.4) |
Mean monthly expense for prescription-only drugs (se) | $264 (15.8) | $224 (11.3) | $246 (5.2) |
Mean expense per prescription | $41.90 | $33.43 | $39.05 |
SOURCE: MCBS, 2001.
|
Table 3 presents statistics on medication use and spending for the sub-sample of beneficiaries with SNF and other LTCF stays. The three residential situations represented in this table (SNF-only, SNF + facility, and facility-only) comprise 76% of the observation period for these beneficiaries during 2001. By definition, there is no IDA drug capture during the 17.4% of months beneficiaries spent in the community. The sample sizes in the remaining three residential situations (community + SNF, community + SNF + facility, and facility + community) are too small for stable drug utilization estimates and thus are excluded from the remaining analyses.
Unadjusted utilization rates are similar across the three major residential situations. Medications are administered in a very high proportion of all resident months, ranging from 91.5% in SNF + facility months to 94.4% in SNF-only months. The number of unique drugs administered also is similar, ranging from 9.1 to 9.4 medications PPM, with about 70% representing legend drugs and the remainder OTC products in each of the three residential situations.
There is more variation in numbers of PPM administrations for legend and OTC medications. Mean monthly medication administrations are highest in months with facility-only days (358) for an average of 39.4 medication administrations per drug, and lowest in months with facility + SNF days at 275 per month or 29.2 administrations per drug. Medication administration rates for months with only SNF days are slightly lower than months with only facility days. The higher variation in administration rates compared to numbers of unique medications is consistent with the differences reported in number of potential LTCF therapy days per month. The mean month contains 30.4 days. The value of 30.2 potential therapy days for the sample of SNF-only months thus indicates that few beneficiaries had hospital episodes or died during these months. A similar interpretation applies to the 29.3 potential therapy days for the facility-only months. The much lower value of 24.2 potential therapy days for the SNF + facility months is primarily due to inpatient hospital stays during these episodes. Average monthly expenses for legend drugs vary from $224 to $264 PPM across the three residential situations. The average cost per script (mean expense divided by mean number of unique prescription drugs) is highest in months with SNF-only days ($42) and lowest in months with SNF + facility days ($33).
TABLE 4. Predicted Values for Medication Utilization and Expenditures for Medicare Beneficiaries by Residential Situationa | |||
Regression Model Dependent Variables | Predicted Values for Residential Situationb | ||
Months with only SNF Days | Months with SNF and Facility Days | Months with only Facility Days | |
Mean number of unique medications (se) | |||
OTC drugs | 3.0 (0.0) | 2.7 (0.0) | 2.9 (0.0) |
Prescription-only drugs | 6.2 (0.1) | 6.6 (0.1)* | 6.3 (0.0) |
Total drugs | 9.2 (0.2) | 9.4 (0.1)* | 9.1 (0.1) |
Mean number of drug administrations (se) | |||
OTC drugs | 102.3 (1.8) | 81.6 (1.8)** | 112.2 (0.8) |
Prescription-only drugs | 235.1 (5.2)* | 195.7 (4.1)** | 249.3 (1.8) |
Total drugs | 337.4 (6.3)* | 277.3 (5.6)** | 361.5 (2.4) |
Mean monthly expense for prescription-only drugs (se) | $255.7 (6.8) | $222.6 (4.8) | $245.0 (2.1) |
SOURCE: MCBS, 2001.
|
Principal findings from the initial seven regressions models are summarized in Table 4 (full model results are presented in the Appendix). Comparing the actual utilization and spending values in Table 3 with the predicted values shown in Table 4 indicates that controlling for other factors, including drug coverage and potential LTCF therapy days, has a relatively small impact on measured differences in drug use by residential situation. There are significant differences between months with SNF + facility days and those with only facility days. In the former situation, beneficiaries are prescribed significantly more unique prescription drugs but receive fewer monthly drug administrations and the difference washes out when comparing monthly prescription drug costs. The only other significant findings are slightly lower rates of prescription and total drug administrations in SNF-only months compared to facility-only months. However these differences are not associated with significantly lower drug spending during SNF months.
The coefficients on the prescription coverage variables in these models present a mixed picture. The main effects of prescription coverage are consistently negative in the utilization equations, suggesting that coverage reduces rather than increases drug use. The effects are quite strong in the medication administration equations for both legend and OTC drugs. However, the signs shift to positive in the drug cost equation and are insignificant for Medicaid and other sources of drug benefits. The interactions of drug coverage and residential situation were insignificant in all 14 regression models in which they were tested (results not shown), indicating that neither prescription coverage nor facility risk bearing has a substantive impact on aggregate medication utilization and spending patterns in transitions between SNF episodes and other LTCF stays.
DISCUSSION
The results of this study indicate that different LTCF residential situations involving SNF stays have little bearing on the aggregate level and cost of prescription and OTC medications received by Medicare beneficiaries. Whether this continues to be the case following the implementation of Part D remains to be seen. However, given our finding that beneficiaries with and without prescription coverage had similar medication patterns during non-qualifying LTCF stays, we would not expect the new drug benefit to have a major impact on medication management over the transition between SNF episodes and other LTCF stays. As in our previous work (Stuart, et al., 2006; Simoni-Wastila, et al., 2006), null findings are a testament to the highly structured and regulated procedures relating to prescribing and medication administration in NHs and other high-end LTCFs.
The study has several important limitations. First is the fact that the results can only be generalized to SNF episodes in conjunction with other LTCF stays. The detailed prescription drug and OTC utilization data in the IDA files are only available for residents of LTCFs, and the MCBS does not consider a SNF stay to be a facility stay per se. For this reason we could not profile drug utilization patterns in stand-alone SNF stays. A second limitation is the small sample size. The 2001 MCBS surveyed 1,222 beneficiaries with some LTCF exposure, but only 281 of these individuals met the inclusion criterion of having at least one Medicare-qualified SNF episode. This was a sufficiently large group to permit analyses of aggregate drug utilization and spending patterns at the person-month level, but could not support detailed examination of drug use by disease state and therapeutic class. Third, the data are relatively old, reflecting the time and careful conditioning that the annual IDA files must go through before they are research ready.
These limitations notwithstanding, the study results have important policy relevance. They provide the first nationally-representative statistics comparing medication utilization and cost patterns in SNF episodes and contiguous non-qualifying LTCF stays. As such, they can be used to benchmark post-Part D experience when the Medicare drug claims become available to the research community.
REFERENCES
ASCP (1999). The Medicare Prospective Payment System for Skilled Nursing Facilities: A Resource for Consultant Pharmacists. Alexandria, VA: ASCP.
CMS (2001). Medicare Current Beneficiary Survey, Public Use File Documentation, March 2001, p. 3.2 see: http://www.cms.hhs.gov/apps/mcbs.
CMS (2002). MDS 2.0 for Nursing Homes. http://www.cms.hhs.gov/NursingHomeQualityInits/downloads/MDS20MDSALLForm....
Decker F., Bizette L. (2004). Trend in the Cost of Operating a Nursing Home: Analysis of Medicare Cost Reports for Skilled Nursing Facilities. American Health Care Association. http://www.acha.org/research/trend_operatingcost_nursinghomes_040126.pdf.
Liu K., Gage B., Harvell J., Stevenson D., Brennan N. (1999). Medicares Post-Acute Benefit: Background, Trends, and Issues to be Faced. HHS/ASPE, Office of Disability, Aging, and Long-Term Care Policy. http://aspe.hhs.gov/daltcp/reports/mpacb.htm.
Pope G., Kautter J., Ellis R.P., et al. (2004). Risk Adjustment of Medicare Capitation Payments Using the CMS-HCC Model, Health Care Financing Review 25(2):119-141.
Simoni-Wastila L., Shaffer T., Stuart B. (2006a). Over-the-Counter Medication Use in Nursing Homes: Implications for Practice and Policy, Journal of the American Geriatrics Society 54(10):1543-1549.
Simoni-Wastila L., Shaffer T., Stuart B. (2006b). National Estimates of Prescription Drug Utilization and Expenditures in Long-Term Care Facilities. HHS/ASPE, Office of Disability, Aging, and Long-Term Care Policy. http://aspe.hhs.gov/daltcp/reports/2006/pdnatest.htm.
Simoni-Wastila L., Shaffer T., Stuart B. (2007). A National Comparison of Prescription Drug Expenditures by Medicare Beneficiaries Living in the Community and Long-Term Care Facility Settings. HHS/ASPE, Office of Disability, Aging, and Long-Term Care Policy. http://aspe.hhs.gov/daltcp/reports/2007/pdnatcom.htm.
Stuart B., Simoni-Wastila L., Baysac F., Shaffer T., Shea D. (2006). Coverage and Use of Prescription Drugs in Nursing Homes: Implications for the Medicare Modernization Act, Medical Care, 44(3):243-249.
APPENDIX: REGRESSION RESULTS
Count of Legend drugs = | rxtime + (person month types) + (demographics) + (poverty status) + (rx coverage type) + comorbidity index + dead flag | |||||
Linear regression | Number of obs | = | 2238 | |||
F( 23, 2214) | = | 30.92 | ||||
Prob > F | = | 0.0000 | ||||
R-squared | = | 0.2323 | ||||
Root MSE | = | 3.2286 | ||||
legcnt | Coef. | Robust Std. Err. | t | P>| t | | [95% Conf. Interval] | |
rxtime | 0.065980 | 0.0184064 | 3.58 | 0.000 | 0.029884 | 0.102076 |
cs_pm | (dropped) | |||||
csf_pm | (dropped) | |||||
s_pm | -0.232531 | 0.2643540 | -0.88 | 0.379 | -0.750938 | 0.285876 |
fs_pm | 0.389885 | 0.2053784 | 1.90 | 0.058 | -0.012868 | 0.792640 |
fc_pm | (dropped) | |||||
under65 | 3.125548 | 0.3164648 | 9.88 | 0.000 | 2.504949 | 3.746147 |
age65to74 | 0.277049 | 0.2609252 | 1.06 | 0.288 | -0.234634 | 0.788732 |
age75to84 | 1.113687 | 0.1573012 | 7.08 | 0.000 | 0.805213 | 1.422161 |
male | -1.375288 | 0.1745604 | -7.88 | 0.000 | -1.717607 | -1.032969 |
nonwhite | -0.954732 | 0.2113599 | -4.52 | 0.000 | -1.369217 | -0.540248 |
married | 0.725180 | 0.2223131 | 3.26 | 0.001 | 0.289216 | 1.161145 |
othsingle | -0.609340 | 0.1921517 | -3.17 | 0.002 | -0.986157 | -0.232524 |
hsgrad | -0.554251 | 0.1732266 | -3.20 | 0.001 | -0.893955 | -0.214548 |
posthsedu | -0.202533 | 0.2157984 | -0.94 | 0.348 | -0.625721 | 0.220655 |
east | -1.408958 | 0.1734617 | -8.12 | 0.000 | -1.749123 | -1.068793 |
midwest | 0.035248 | 0.1941738 | 0.18 | 0.856 | -0.345533 | 0.416129 |
west | -0.451394 | 0.2290992 | -1.97 | 0.049 | -0.900665 | -0.002122 |
fpl100to200 | -0.358923 | 0.1697464 | -2.11 | 0.035 | -0.694802 | -0.026044 |
fpl200to300 | -0.119480 | 0.2554424 | -0.47 | 0.640 | -0.620412 | 0.381451 |
fplover300 | -0.072500 | 0.2397121 | -0.30 | 0.762 | -0.542584 | 0.391583 |
rxmedicaid | -0.223022 | 0.1925837 | -1.16 | 0.247 | -0.600686 | 0.154641 |
rxother | -0.339079 | 0.2896529 | -1.17 | 0.242 | -0.907099 | 0.228940 |
rxcvgunk | -0.139411 | 0.1975045 | -0.71 | 0.480 | -0.526724 | 0.247902 |
rxhcc_sumhcc | 0.342650 | 0.1996177 | 17.17 | 0.000 | 0.303504 | 0.381796 |
dead | 0.215980 | 0.1759667 | 1.23 | 0.220 | -0.129096 | 0.561057 |
_cons | 1.257263 | 0.6499459 | 1.93 | 0.053 | -0.017304 | 2.531831 |
Count of OTC drugs = | rxtime + (person month types) + (demographics) + (poverty status) + (rx coverage type) + comorbidity index + dead flag | |||||
Linear regression | Number of obs | = | 2238 | |||
F( 23, 2214) | = | 10.29 | ||||
Prob > F | = | 0.0000 | ||||
R-squared | = | 0.0893 | ||||
Root MSE | = | 2.0293 | ||||
otccnt | Coef. | Robust Std. Err. | t | P>| t | | [95% Conf. Interval] | |
rxtime | 0.053519 | 0.0090234 | 5.93 | 0.000 | 0.035824 | 0.071214 |
cs_pm | (dropped) | |||||
csf_pm | (dropped) | |||||
s_pm | 0.187531 | 0.1636009 | 1.15 | 0.252 | -0.133296 | 0.508358 |
fs_pm | 0.109529 | 0.1207348 | 0.91 | 0.364 | -0.127235 | 0.346294 |
fc_pm | (dropped) | |||||
under65 | 0.065082 | 0.2190380 | 0.30 | 0.766 | -0.364458 | 0.494624 |
age65to74 | 0.044630 | 0.1625979 | 0.27 | 0.784 | -0.274229 | 0.363490 |
age75to84 | 0.051310 | 0.0970652 | 0.53 | 0.597 | -0.139038 | 0.241658 |
male | -0.452891 | 0.1062260 | -4.26 | 0.000 | -0.661204 | -0.244578 |
nonwhite | -0.647321 | 0.1263010 | -5.13 | 0.000 | -0.895002 | -0.399640 |
married | -0.370852 | 0.1178932 | -3.15 | 0.002 | -0.602045 | -0.139659 |
othsingle | 0.223398 | 0.1432293 | 1.56 | 0.119 | -0.057479 | 0.504276 |
hsgrad | -0.435150 | 0.1227182 | -3.55 | 0.000 | -0.675805 | -0.194495 |
posthsedu | 0.171642 | 0.1285074 | 1.34 | 0.182 | -0.080365 | 0.423649 |
east | -0.055259 | 0.1156250 | -0.48 | 0.633 | -0.282003 | 0.171485 |
midwest | 0.388983 | 0.1181557 | 3.29 | 0.001 | 0.157275 | 0.620691 |
west | 0.500425 | 0.1590738 | 3.15 | 0.002 | 0.188475 | 0.812374 |
fpl100to200 | -0.555090 | 0.1155080 | -4.81 | 0.000 | -0.781606 | -0.328575 |
fpl200to300 | -0.769937 | 0.1691021 | -4.55 | 0.000 | -1.101552 | -0.438321 |
fplover300 | -0.800642 | 0.1543356 | -5.19 | 0.000 | -1.103300 | -0.497984 |
rxmedicaid | -0.338128 | 0.1222621 | -2.77 | 0.006 | -0.577888 | -0.098368 |
rxother | 0.035155 | 0.1760380 | 0.20 | 0.842 | -0.310061 | 0.380372 |
rxcvgunk | -0.017524 | 0.1247513 | -0.14 | 0.888 | -0.262166 | 0.227116 |
rxhcc_sumhcc | 0.044753 | 0.0109482 | 4.09 | 0.000 | 0.023283 | 0.066223 |
dead | 0.272450 | 0.1140844 | 2.39 | 0.017 | 0.048726 | 0.496174 |
_cons | 1.279793 | 0.3397908 | 3.77 | 0.000 | 0.613450 | 1.946135 |
Count of All drugs = | rxtime + (person month types) + (demographics) + (poverty status) + (rx coverage type) + comorbidity index + dead flag | |||||
Linear regression | Number of obs | = | 2238 | |||
F( 23, 2214) | = | 28.24 | ||||
Prob > F | = | 0.0000 | ||||
R-squared | = | 0.1993 | ||||
Root MSE | = | 4.3081 | ||||
rxcnt | Coef. | Robust Std. Err. | t | P>| t | | [95% Conf. Interval] | |
rxtime | 0.119461 | 0.0243780 | 4.90 | 0.000 | 0.071655 | 0.167267 |
cs_pm | (dropped) | |||||
csf_pm | (dropped) | |||||
s_pm | -0.044334 | 0.3406298 | -0.13 | 0.896 | -0.712321 | 0.623653 |
fs_pm | 0.499789 | 0.2765334 | 1.81 | 0.071 | -0.042502 | 1.042081 |
fc_pm | (dropped) | |||||
under65 | 3.189511 | 0.4383798 | 7.28 | 0.000 | 2.329832 | 4.049189 |
age65to74 | 0.317042 | 0.3459903 | 0.92 | 0.360 | -0.361457 | 0.995542 |
age75to84 | 1.165148 | 0.2041884 | 5.71 | 0.000 | 0.764727 | 1.565569 |
male | -1.827392 | 0.2322332 | -7.87 | 0.000 | -2.282810 | -1.371975 |
nonwhite | -1.601523 | 0.2762073 | -5.80 | 0.000 | -2.143176 | -1.059871 |
married | 0.355534 | 0.2766719 | 1.29 | 0.199 | -0.187029 | 0.898097 |
othsingle | -0.385039 | 0.2730392 | -1.41 | 0.159 | -0.920479 | 0.150400 |
hsgrad | -0.990708 | 0.2345496 | -4.22 | 0.000 | -1.450669 | -0.530748 |
posthsedu | -0.030948 | 0.2904475 | -0.11 | 0.915 | -0.600523 | 0.538629 |
east | -1.464218 | 0.2336251 | -6.27 | 0.000 | -1.922365 | -1.006070 |
midwest | 0.422658 | 0.2594045 | 1.63 | 0.103 | -0.086042 | 0.931360 |
west | 0.049514 | 0.3112722 | 0.16 | 0.874 | -0.560901 | 0.659930 |
fpl100to200 | -0.913493 | 0.2311470 | -3.95 | 0.000 | -1.366781 | -0.460206 |
fpl200to300 | -0.889144 | 0.3548668 | -2.51 | 0.012 | -1.585051 | -0.193237 |
fplover300 | -0.874991 | 0.3088217 | -2.83 | 0.005 | -1.480602 | -0.269381 |
rxmedicaid | -0.561056 | 0.2620425 | -2.14 | 0.032 | -1.074931 | -0.047181 |
rxother | -0.303013 | 0.3834735 | -0.79 | 0.430 | -1.055018 | 0.448992 |
rxcvgunk | -0.158252 | 0.2609224 | -0.61 | 0.544 | -0.669930 | 0.353425 |
rxhcc_sumhcc | 0.387269 | 0.2526400 | 15.33 | 0.000 | 0.337725 | 0.436812 |
dead | 0.489243 | 0.2428795 | 2.01 | 0.044 | 0.012947 | 0.965538 |
_cons | 2.539551 | 0.8547808 | 2.97 | 0.003 | 0.863295 | 4.215807 |
Count of Legend admins = | rxtime + (person month types) + (demographics) + (poverty status) + (rx coverage type) + comorbidity index + dead flag | |||||
Linear regression | Number of obs | = | 2238 | |||
F( 23, 2214) | = | 41.87 | ||||
Prob > F | = | 0.0000 | ||||
R-squared | = | 0.2399 | ||||
Root MSE | = | 140.09 | ||||
leg_adm | Coef. | Robust Std. Err. | t | P>| t | | [95% Conf. Interval] | |
rxtime | 7.758727 | 0.510643 | 15.19 | 0.000 | 6.757336 | 8.760117 |
cs_pm | (dropped) | |||||
csf_pm | (dropped) | |||||
s_pm | -20.69203 | 11.34285 | -1.82 | 0.068 | -42.93577 | 1.551708 |
fs_pm | -19.92481 | 7.740280 | -2.57 | 0.010 | -35.10377 | -4.745838 |
fc_pm | (dropped) | |||||
under65 | 153.0344 | 15.63908 | 9.79 | 0.000 | 122.3656 | 183.7032 |
age65to74 | 16.08311 | 10.15291 | 1.58 | 0.113 | -3.827122 | 35.99334 |
age75to84 | 40.60255 | 6.743111 | 6.02 | 0.000 | 27.37907 | 53.82604 |
male | -44.80531 | 7.092717 | -6.32 | 0.000 | -58.71438 | -30.89623 |
nonwhite | -15.53399 | 10.73379 | -1.45 | 0.148 | -36.58333 | 5.515354 |
married | 20.04384 | 8.759236 | 2.29 | 0.022 | 2.866664 | 37.22102 |
othsingle | 16.03621 | 9.428441 | 1.70 | 0.089 | -2.453306 | 34.52572 |
hsgrad | -15.63674 | 7.548849 | -2.07 | 0.038 | -30.44030 | -0.833170 |
posthsedu | -28.45326 | 8.939135 | -3.18 | 0.001 | -45.98323 | -10.92330 |
east | -51.84296 | 7.313162 | -7.09 | 0.000 | -66.18434 | -37.50159 |
midwest | 2.922769 | 8.502588 | 0.34 | 0.731 | -13.75111 | 19.59665 |
west | -23.20672 | 10.21168 | -2.27 | 0.023 | -43.23219 | -3.181244 |
fpl100to200 | -15.08978 | 7.335409 | -2.06 | 0.040 | -29.47478 | -0.704781 |
fpl200to300 | -23.39779 | 10.46918 | -2.23 | 0.026 | -43.92824 | -2.867343 |
fplover300 | 13.53342 | 10.11681 | 1.34 | 0.181 | -6.306021 | 33.37285 |
rxmedicaid | -29.33824 | 8.503219 | -3.45 | 0.001 | -46.01336 | -12.66312 |
rxother | -36.01664 | 11.67702 | -3.08 | 0.002 | -58.91570 | -13.11757 |
rxcvgunk | -13.00564 | 8.442675 | -1.54 | 0.124 | -29.56203 | 3.550755 |
rxhcc_sumhcc | 11.85737 | 0.864220 | 13.72 | 0.000 | 10.16261 | 13.55214 |
dead | -5.847132 | 7.604141 | -0.77 | 0.442 | -20.75913 | 9.064862 |
_cons | -82.86463 | 21.91351 | -3.78 | 0.000 | -125.8378 | -39.89145 |
Count of OTC admins = | rxtime + (person month types) + (demographics) + (poverty status) + (rx coverage type) + comorbidity index + dead flag | |||||
Linear regression | Number of obs | = | 2238 | |||
F( 23, 2214) | = | 20.05 | ||||
Prob > F | = | 0.0000 | ||||
R-squared | = | 0.1146 | ||||
Root MSE | = | 95.518 | ||||
otc_adm | Coef. | Robust Std. Err. | t | P>| t | | [95% Conf. Interval] | |
rxtime | 3.814677 | 0.301997 | 12.63 | 0.000 | 3.22245 | 4.406905 |
cs_pm | (dropped) | |||||
csf_pm | (dropped) | |||||
s_pm | -9.194011 | 7.625988 | -1.21 | 0.228 | -24.14885 | 5.760826 |
fs_pm | -12.65477 | 5.332818 | -2.37 | 0.018 | -23.11262 | -2.196926 |
fc_pm | (dropped) | |||||
under65 | 2.866162 | 10.59839 | 0.27 | 0.787 | -17.91766 | 23.64998 |
age65to74 | -11.55972 | 6.472942 | -1.79 | 0.074 | -24.25339 | 1.133950 |
age75to84 | 6.013818 | 4.772845 | 1.26 | 0.208 | -3.345903 | 15.37354 |
male | -5.255518 | 5.109163 | -1.03 | 0.304 | -15.27477 | 4.763734 |
nonwhite | -10.46553 | 7.712902 | -1.36 | 0.175 | -25.59081 | 4.659746 |
married | -9.009822 | 5.577744 | -1.62 | 0.106 | -19.94798 | 1.928336 |
othsingle | 17.97681 | 7.299439 | 2.46 | 0.014 | 3.662349 | 32.29127 |
hsgrad | -19.49912 | 5.381796 | -3.62 | 0.000 | -30.05302 | -8.945230 |
posthsedu | -1.552462 | 6.079748 | -0.26 | 0.798 | -13.47507 | 10.37014 |
east | 0.325777 | 5.471673 | 0.06 | 0.953 | -10.40437 | 11.05593 |
midwest | 8.678072 | 5.195882 | 1.67 | 0.095 | -1.511241 | 18.86738 |
west | 11.43262 | 7.557367 | 1.51 | 0.130 | -3.387650 | 26.25289 |
fpl100to200 | -23.32940 | 5.420624 | -4.30 | 0.000 | -33.95944 | -12.69936 |
fpl200to300 | -30.30353 | 6.905294 | -4.39 | 0.000 | -43.84506 | -16.76200 |
fplover300 | -30.90401 | 5.971405 | -5.18 | 0.000 | -42.61415 | -19.19387 |
rxmedicaid | -21.54953 | 6.152081 | -3.50 | 0.000 | -33.61398 | -9.485076 |
rxother | -5.001603 | 6.970862 | -0.72 | 0.473 | -18.67171 | 8.668508 |
rxcvgunk | -10.51194 | 5.158668 | -2.04 | 0.042 | -20.62827 | -0.395605 |
rxhcc_sumhcc | 3.085665 | 0.470556 | 6.56 | 0.000 | 2.162887 | 4.008444 |
dead | 0.544315 | 4.590898 | 0.12 | 0.906 | -8.458602 | 9.547232 |
_cons | -11.36885 | 12.68622 | -0.90 | 0.370 | -36.24699 | 13.50928 |
Count of All admins = | rxtime + (person month types) + (demographics) + (poverty status) + (rx coverage type) + comorbidity index + dead flag | |||||
Linear regression | Number of obs | = | 2238 | |||
F( 23, 2214) | = | 40.49 | ||||
Prob > F | = | 0.0000 | ||||
R-squared | = | 0.2362 | ||||
Root MSE | = | 191.57 | ||||
timesadm | Coef. | Robust Std. Err. | t | P>| t | | [95% Conf. Interval] | |
rxtime | 11.57340 | 0.703594 | 16.45 | 0.000 | 10.19363 | 12.95318 |
cs_pm | (dropped) | |||||
csf_pm | (dropped) | |||||
s_pm | -29.88604 | 15.41426 | -1.94 | 0.053 | -60.11395 | 0.341870 |
fs_pm | -32.57958 | 10.74025 | -3.03 | 0.002 | -53.64160 | -11.51756 |
fc_pm | (dropped) | |||||
under65 | 155.9006 | 22.66153 | 6.88 | 0.000 | 111.4605 | 200.3407 |
age65to74 | 4.523385 | 13.91135 | 0.33 | 0.745 | -22.75726 | 31.80403 |
age75to84 | 46.61637 | 9.208329 | 5.06 | 0.000 | 28.55851 | 64.67424 |
male | -50.06082 | 10.21456 | -4.90 | 0.000 | -70.09194 | -30.02971 |
nonwhite | -25.99952 | 15.32425 | -1.70 | 0.090 | -56.05093 | 4.051887 |
married | 11.03402 | 11.70664 | 0.94 | 0.346 | -11.92312 | 33.99116 |
othsingle | 34.01302 | 14.16752 | 2.40 | 0.016 | 6.229998 | 61.79604 |
hsgrad | -35.13586 | 9.822592 | -3.58 | 0.000 | -54.39832 | -15.87340 |
posthsedu | -30.00573 | 12.40333 | -2.42 | 0.016 | -54.32911 | -5.682345 |
east | -51.51719 | 10.41600 | -4.95 | 0.000 | -71.94334 | -31.09103 |
midwest | 11.60084 | 11.33853 | 1.02 | 0.306 | -10.63443 | 33.83611 |
west | -11.77410 | 13.84786 | -0.85 | 0.395 | -38.93026 | 15.38206 |
fpl100to200 | -38.41918 | 10.19603 | -3.77 | 0.000 | -58.41397 | -18.42440 |
fpl200to300 | -53.70132 | 13.72214 | -3.91 | 0.000 | -80.61094 | -26.79170 |
fplover300 | -17.37060 | 12.13973 | -1.43 | 0.153 | -41.17704 | 6.435853 |
rxmedicaid | -50.88777 | 11.92304 | -4.27 | 0.000 | -74.26927 | -27.50626 |
rxother | -41.01824 | 15.07524 | -2.72 | 0.007 | -70.58132 | -11.45516 |
rxcvgunk | -23.51758 | 10.93608 | -2.15 | 0.032 | -44.96363 | -2.071525 |
rxhcc_sumhcc | 14.94304 | 1.104524 | 13.53 | 0.000 | 12.77703 | 17.10905 |
dead | -5.302817 | 10.12644 | -0.52 | 0.601 | -25.16113 | 14.55549 |
_cons | -94.23348 | 29.00423 | -3.25 | 0.001 | -151.1118 | -37.35513 |
Legend expenditures = | rxtime + (person month types) + (demographics) + (poverty status) + (rx coverage type) + comorbidity index + dead flag | |||||
Linear regression | Number of obs | = | 2238 | |||
F( 23, 2214) | = | 20.82 | ||||
Prob > F | = | 0.0000 | ||||
R-squared | = | 0.1873 | ||||
Root MSE | = | 187.34 | ||||
postadj_ev-r | Coef. | Robust Std. Err. | t | P>| t | | [95% Conf. Interval] | |
rxtime | 7.184296 | 0.832778 | 8.63 | 0.000 | 5.551188 | 8.817404 |
cs_pm | (dropped) | |||||
csf_pm | (dropped) | |||||
s_pm | 4.048525 | 14.47660 | 0.28 | 0.780 | -24.34062 | 32.43767 |
fs_pm | 5.319778 | 12.00193 | 0.44 | 0.658 | -18.21643 | 28.85599 |
fc_pm | (dropped) | |||||
under65 | 180.0393 | 21.80510 | 8.26 | 0.000 | 137.2787 | 222.7999 |
age65to74 | 85.57105 | 27.46694 | 3.12 | 0.002 | 31.70740 | 139.4347 |
age75to84 | 50.24626 | 7.770403 | 6.47 | 0.000 | 35.00822 | 65.48430 |
male | -40.76956 | 9.052477 | -4.50 | 0.000 | -58.52179 | -23.01732 |
nonwhite | -79.74202 | 14.78811 | -5.39 | 0.000 | -108.7420 | -50.74201 |
married | 15.38922 | 11.04422 | 1.39 | 0.164 | -6.268893 | 37.04733 |
othsingle | -2.898512 | 11.83920 | -0.24 | 0.807 | -26.11561 | 20.31859 |
hsgrad | -12.95768 | 9.885260 | -1.31 | 0.190 | -32.34303 | 6.427670 |
posthsedu | 12.49730 | 11.07340 | 1.13 | 0.259 | -9.218033 | 34.21264 |
east | -41.11765 | 10.81812 | -3.80 | 0.000 | -62.33237 | -19.90292 |
midwest | -3.456650 | 10.48677 | -0.33 | 0.742 | -24.02159 | 17.10829 |
west | -15.30318 | 12.82483 | -1.19 | 0.233 | -40.45313 | 9.846767 |
fpl100to200 | -49.52520 | 10.39388 | -4.76 | 0.000 | -69.90798 | -29.14242 |
fpl200to300 | -34.27239 | 16.68409 | -2.05 | 0.040 | -66.99049 | -1.554301 |
fplover300 | -26.63591 | 14.85566 | -1.79 | 0.073 | -55.76839 | 2.496573 |
rxmedicaid | 21.67045 | 14.79232 | 1.46 | 0.143 | -7.337827 | 50.67873 |
rxother | 20.48931 | 15.99779 | 1.28 | 0.200 | -10.88293 | 51.86156 |
rxcvgunk | 27.20647 | 10.78106 | 2.52 | 0.012 | 6.064430 | 48.34851 |
rxhcc_sumhcc | 15.38383 | 1.263289 | 12.18 | 0.000 | 12.90647 | 17.86118 |
dead | -22.00915 | 10.96041 | -2.01 | 0.045 | -43.50291 | -0.515399 |
_cons | -121.3951 | 34.35393 | -3.53 | 0.000 | -188.7643 | -54.02577 |
LIST OF REPORTS
Prescription Drug Spending by Medicare Beneficiaries in Institutional and Residential Settings, 1998-2001
HTML version: http://aspe.hhs.gov/daltcp/reports/2007/pdspend.htm
PDF version: http://aspe.hhs.gov/daltcp/reports/2007/pdspend.pdf
POLICY BRIEF #1: National Estimates of Prescription Drug Utilization and Expenditures in Long-Term Care Facilities
HTML version: http://aspe.hhs.gov/daltcp/reports/2006/pdnatest.htm
PDF version: http://aspe.hhs.gov/daltcp/reports/2006/pdnatest.pdf
POLICY BRIEF #2: A National Comparison of Prescription Drug Expenditures by Medicare Beneficiaries Living in the Community and Long-Term Care Facility Settings
HTML version: http://aspe.hhs.gov/daltcp/reports/2007/pdnatcom.htm
PDF version: http://aspe.hhs.gov/daltcp/reports/2007/pdnatcom.pdf
POLICY BRIEF #3: Drug Use and Spending for Medicare Beneficiaries During Part A Qualifying Skilled Nursing Facility Stays and Non-Qualifying Long-Term Care Facility Stays
HTML version: http://aspe.hhs.gov/daltcp/reports/2007/druguse.htm
PDF version: http://aspe.hhs.gov/daltcp/reports/2007/druguse.pdf
NOTES
-
NH residents eligible for low income subsidies under the MMA are spared the copays required for beneficiaries in other settings.
-
The SNF cost reports can be used to isolate pharmacy-related expenses. Costs of operating the pharmacy are included as general service costs, while drugs charged to patients are included as ancillary services costs (Decker and Bizette, 2004). In neither case is it possible to isolate individual drugs used exclusively by Medicare patients during Part A stays.
-
Section O of the MDS includes limited data on use of selected psychoactive medications. Section U of the MDS includes spaces for listing up to 21 medications used by residents in the week prior to the MDS review (CMS, 2002). However, Section U is not a mandated field and drug data from this field are only available for six demonstration states in the early and mid-1990s.
-
The exception would be for beneficiaries enrolled in integrated health plans that have their own nursing facilities.
-
Facilities with centralized medication administration systems rarely if ever permit residents to obtain medications through other routes. The fact that the entire study population resides in facilities that have these systems in place means that the drug utilization measures reported in this Policy Brief have a high degree of reliability.
-
By regulation, all medications administered to NH residents must be prescribed whether legend or OTC.
-
The MCBS algorithm used to price drug products specifically excludes OTC products (Simoni-Wastila, et al., 2006b).
-
The most common PPM patterns were single residential placements and those with a single transition. However, we found 57 monthly observations with four or more placements.
-
The MCBS resident timeline does not consider acute care hospital episodes. For beneficiaries entering a SNF stay from the community, the qualifying acute hospital days preceding the SNF admission are considered community days. For MCBS respondents in an LTCF episode, acute care hospital days are not differentiated from other facility days (i.e., according to the timeline, the facility episode in a facility + SNF month ends the day before the SNF episode begins). To avoid artificially inflating facility days for these resident situations, it was necessary to subtract acute care hospital days using information on inpatient admission and discharge dates from Medicare Part A claims.
-
The MCBS Cost and Use files contain detailed plan-level information about prescription coverage for community-dwelling Medicare beneficiaries. However, there are no specific questions about drug coverage for institutionalized beneficiaries. In some cases, we could infer that LTCF residents had drug coverage based on Medicaid enrollment records. All traditional Medicaid programs offer prescription coverage to LTCF residents. In addition, beneficiaries who are Qualified Medicare Beneficiaries (QMB) or Specified Low Income Beneficiaries (SLMB) may have prescription coverage at the states discretion (these are known as QMB-plus and SLMB-plus states). Beneficiaries who enroll in a state pharmaceutical assistance program also have drug coverage. For a select sub-sample of LTCF residents we could track private health insurance and prescription benefits prior to LTCF admission. In such cases, we deemed residents who had prior drug coverage to have it while institutionalized. Finally, we could determine whether LTCF residents had any source of Medicare supplementation. Those with no Medicare supplementation are without prescription coverage by definition. As a result of these investigations, we defined four classes of prescription coverage: Medicaid with prescription benefits, other source of prescription coverage, prescription coverage status unknown (comprising those with a private Medicare supplement whose prescription coverage status could not be determined), and those with no prescription coverage (including QMBs and SLMBs in non-plus states).
-
The RxHCC is derived using the same hierarchical coexisting condition methodology as its parent, the DCG/HCC model (Pope, 2004). The condition clusters are defined to be both clinically meaningful and statistically predictive of drug spending. When increasing severity of disease leads to more intense drug therapy, the model captures only the highest cost category for that disease and overrides lower cost categories. The 2006 version of the model includes 196 condition clusters. We used this version to count medication-sensitive conditions for each beneficiary in the study sample.
-
The reason we estimated two sets of regressions is that each set required different reference categories for resident situation and drug coverage.
-
A SNF-to-LTCF transfer may or may not result in a physical transfer; frequently, the resident remains in the same facility and only the payment status changes.