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using the nnhs versus the lehd nhc to assess whether nursing ...

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using the nnhs versus the lehd nhc to assess whether nursing ...

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    1. Using the NNHS versus the LEHD & NHC to Assess Whether Nursing Home Staff Turnover Affects Resident Outcomes Sally C. Stearns1 Laura P. D’Arcy1 Daria Pelech2 1The University of North Carolina at Chapel Hill 2Duke University UNC Institute on Aging September 22, 2009 Supported by the National Institute on Aging and the Demography and Economics of Aging Research (DEAR) Program at the Carolina Population Center (Grant 5-P30-AG024376) Facilitated by the National Center for Health Statistics and the Triangle Census Research Data Center

    3. Overview Turnover among nursing home staff problematic High annual rates for nursing assistants (68% to 170%) High costs to facilities May compromise quality of care Evidence on effect of turnover on outcomes Mixed or inconclusive results Most studies: Don’t address endogeneity of turnover and outcome Use small/non-representative samples Use aggregated facility data

    4. Research Question (Pilot) What is the effect of facility-level turnover among certified nursing assistant (CNA) staff on resident-level outcomes? Real dearth of information nursing home staff turnover data Pilot study conducted at RDC used 2004 National Nursing Home Survey Merged facility and area data with resident surveys Good methods Facility fixed effects Proposed instrumental variables for endogeneity of turnover But turnover data are single point in time (not annual) per facility Nationally representative survey conducted by National Center for Health Statistics Collects data on residents and facilities (and additional questionnaire on nursing assistants)Nationally representative survey conducted by National Center for Health Statistics Collects data on residents and facilities (and additional questionnaire on nursing assistants)

    5. Conceptual Model (1)

    6. Conceptual Model (2)

    7. Empirical Model: Pilot Turnover=f(Facility characteristics, area IV) Estimated using single year facility-level observations Bad Outcomes=f(Turnover, resident characteristics, other facility characteristics) Single year multiple resident-level observations per facility for cross sectional pilot study

    8. Area Instruments: Pilot & Proposed Study County unemployment Median home value Median income Percent housing units vacant NA hourly mean wage Food/beverage server hourly mean wage HHI total certified beds Resident Characteristics: Age at interview Age squared Another race Black or African American Hispanic Gender Married at time of admission Four or five ADLs Last mo Private health insurance Last mo Self/private pay/out-of-pocket Last mo Medicare (including HMO) Last mo Medicaid (including HMO) Feeding tube Internal catheter Totally dependent/didn't leave bed 7 days decision==Modified independence decision==Moderately impaired decision==Severely impaired mood==Indicators present, easily altered mood==Indicators present, not easily altered Any behavioral symptoms Total number of medications taken Special Alzheimer's unit LOS 31-60 days LOS 61-180 days LOS 181+ days Resident Characteristics: Age at interview Age squared Another race Black or African American Hispanic Gender Married at time of admission Four or five ADLs Last mo Private health insurance Last mo Self/private pay/out-of-pocket Last mo Medicare (including HMO) Last mo Medicaid (including HMO) Feeding tube Internal catheter Totally dependent/didn't leave bed 7 days decision==Modified independence decision==Moderately impaired decision==Severely impaired mood==Indicators present, easily altered mood==Indicators present, not easily altered Any behavioral symptoms Total number of medications taken Special Alzheimer's unit LOS 31-60 days LOS 61-180 days LOS 181+ days

    9. Data: Pilot Study 2004 National Nursing Home Survey Started with1,140 facilities and 13,425 residents Needed to work at Triangle Census Research to access file created by NCHS Can not merge public use versions of facility & resident surveys Exclusions (age<65 or missing data) resulted in a analysis file of 9,279 residents at 981 facilities Range of 1 to 12 residents per facility Response rates of 81% (facilities) and 96% (residents) For turnover: 8576 residents at 905 facilitiesResponse rates of 81% (facilities) and 96% (residents) For turnover: 8576 residents at 905 facilities

    10. Turnover Measures: Pilot Two measures: Turnover among certified nursing assistants (CNAs) in the past three months (annualized) Average over all residents: 52% Proportion of CNAs on staff for less than one year Average over all residents: 37% Other Facility Characteristics: NH admin at facility for 3 years or more NH director of nursing at facility for 2 years or more Current number of nursing home beds Number of beds squared Ratio of residents to beds careplan==most of the time careplan==some of the time careplan==seldom careplan==never CNAs routinely assigned to same grp of residents CNAs belong to labor unions Number of lifts per 10 beds CNAs offered fully paid HI for employee CNAs offered fully paid HI for family CNAs offered partially paid HI for employee CNAs offered partially paid HI for family CNAs offered retirement/pension CNAs offered vacation/holidays CNAs offered paid sick days CNAs offered paid personal days CNAs offered career development For-profit ownership Is facility part of a chain Percent residents with Medicaid as primary payer Other Facility Characteristics: NH admin at facility for 3 years or more NH director of nursing at facility for 2 years or more Current number of nursing home beds Number of beds squared Ratio of residents to beds careplan==most of the time careplan==some of the time careplan==seldom careplan==never CNAs routinely assigned to same grp of residents CNAs belong to labor unions Number of lifts per 10 beds CNAs offered fully paid HI for employee CNAs offered fully paid HI for family CNAs offered partially paid HI for employee CNAs offered partially paid HI for family CNAs offered retirement/pension CNAs offered vacation/holidays CNAs offered paid sick days CNAs offered paid personal days CNAs offered career development For-profit ownership Is facility part of a chain Percent residents with Medicaid as primary payer

    11. Outcome Measures: Pilot Resident-level observations of: Hospital Admission in past 90 days (7%) ED visits in past 90 days (8%) Any pressure ulcer (10%) Fell in past 30 days (16%) Fell in past 31-180 days (28%) Any pain in past 7 days (25%) Any negative health outcome above (55%)

    12. Methods: Pilot Linear probability models Facilitates FE and IV estimation OK if reasonable variance in dependent variables Adjusted for survey weights and clustering Three types of models estimated: Naďve LPM Facility Fixed Effects Facility Fixed Effects – Instrumental Variables

    13. Results: Pilot Study Any Bad Outcome (mean of 0.55) FE are arguably the best estimates: Increase in CNA turnover of 0.1 associated with 0.0025 increase in likelihood of bad outcome Increase in proportion of CNAs at facility less than one year of 0.1 associated with 0.0094 increase in likelihood of bad outcome Naďve OLS estimates very small and usually statistically insignificant. Controlling for unobserved facility characteristics is important, both by an F-test that supported inclusion as well as the fact that the estimated effects increase and are statistically significant. FE-IV effects are quite large and statistically significant, especially for the low retention measure. But statistical tests showed that the instruments were relatively weak (F-test was not more than 4; should be greater than 10). Sig instruments were median income, median housing value, and NA wages Tests of exogeneity were mixed, and tests of overidentification did not support over-identification. In total, FE seem to provide the best estimate. Naďve OLS estimates very small and usually statistically insignificant. Controlling for unobserved facility characteristics is important, both by an F-test that supported inclusion as well as the fact that the estimated effects increase and are statistically significant. FE-IV effects are quite large and statistically significant, especially for the low retention measure. But statistical tests showed that the instruments were relatively weak (F-test was not more than 4; should be greater than 10). Sig instruments were median income, median housing value, and NA wages Tests of exogeneity were mixed, and tests of overidentification did not support over-identification. In total, FE seem to provide the best estimate.

    14. Summary: Pilot FE estimates show modest effect of turnover or low retention on bad outcomes Other observed facility characteristics had comparable effects High occupancy or lack of care plan increased bad outcomes For-profit status or offering fully paid health insurance for the CNA’s family decreased bad outcomes Effects were strongest for “any pain” outcome IV estimates larger, but: Weak instruments Cross-sectional area instruments can not explain within-facility variation in resident outcomes

    15. Policy Implications: Pilot Interventions to reduce CNA turnover are likely beneficial and may reduce cost, but other observed and unobserved facility characteristics may have as great of an effect on resident outcomes Comprehensive programs to ensure quality administration and oversight at facilities may be required to jointly reduce CNA turnover and improve resident outcomes

    16. Limitations: Pilot Study Have not: Allowed for non-linear effects of turnover or low retention Controlled for staffing levels (though is picked up in fixed effects, so estimation is quasi-reduced form) Can not distinguish between turnover once in many positions versus lots of turnover in a few positions Cross-sectional data IV correction may not work due to: Weak instruments Intrinsic problem that cross-sectional IVs can not explain within-facility variation in outcomes

    17. Research Question (Revised) What is the effect of facility (establishment) churning on facility-level resident outcomes? Proposed Study: Merge Quality Workforce Indicator (turnover) data with Nursing Home Compare Longitudinal facility-level panel will: Facilitate IV approach Provide within-facility variation in turnover over time But lots of limitations, so is it worth it? Nationally representative survey conducted by National Center for Health Statistics Collects data on residents and facilities (and additional questionnaire on nursing assistants)Nationally representative survey conducted by National Center for Health Statistics Collects data on residents and facilities (and additional questionnaire on nursing assistants)

    18. Proposed Study Nursing Home Compare (NHC) www.medicare.gov/nhcompare/ Annual facility-level records since 2003 of facility characteristics, inspection results, residents, staff and ratings Would enable annual panel from 2003-2008 for up to 17,000 nursing homes (~15,000 free-standing??) Quarterly Workforce Indicators (QWI) Generated from Longitudinal Employment Household Data (LEHD) Provides measure of turnover for all employees at a firm But only available for approximately 30 states Currently available through 200? (at least 2004)

    19. Empirical Model: Proposed Study Turnover=f(Facility characteristics, area IV) Estimated using panel of annual facility-level observations Bad Outcomes=f(Turnover, resident characteristics, other facility characteristics) Facility-level observations for proposed longitudinal study

    20. Proposed Study Challenges 1. Limitations to turnover measure from QWI Cannot distinguish employees or turnover by position (e.g., nurses vs CNAs vs gardeners) Establishment (facility) level measures available only through a multiple imputation process 2. Merging NHC and imputed turnover Can not get employer identification number (EIN) for NHC facilities Need to merge by name & address

    21. 1a. QWI Turnover Measure QWI uniquely identifies: Firm (SEIN) Establishment (SEINUNIT) Provides firm-level turnover measure = turnover at time t for firm k FA is # of full quarter accessions FS is # of full quarter separations F is average full quarter employment

    22. 1b. QWI Turnover Measure Need to use multiple imputation to get establishment (facility) turnover Process developed by John Abowd at Cornell Generates most likely establishment for each employee based on distance, employee distribution within firm, employee work history, and period of establishment existence Imputation validated in Minnesota (which associates establishments & employees) and appears to work for 99.5% of employers.

    23. 2. Linking NHC Data to QWI Nursing home is equivalent to establishment (SEINUNIT), but EIN not available Name, address, zipcode available; in theory can get Medicare provider number or ***possibly*** even the EIN from Centers for Medicare & Medicaid services Two possible paths for linkage (but both have problems) Via the Business Register Bridge (BRB) *MAYBE* via the Geocoded Address List (GAL)

    24. Proposed Study Worth It? Even if match does not work, arguably valuable to Census & other researchers to know that linkage is not currently feasible If linkage works sufficiently well, then: Valuable to Census/researchers to know matching for other studies feasible Longitudinal panel of annual observations on facility turnover and aggregated resident outcomes would enable strong FE and IV estimation of relationship

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