Use of geocoding in managed care settings to identify quality disparities - How indirect measures of race/ethnicity and socioeconomic status can be used by the nation's health plans to demonstrate disparities
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作者:
Fremont, AM
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RAND Hlth, Santa Monica, CA USARAND Hlth, Santa Monica, CA USA
Fremont, AM
[1
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Bierman, A
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机构:RAND Hlth, Santa Monica, CA USA
Bierman, A
Wickstrom, SL
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机构:RAND Hlth, Santa Monica, CA USA
Wickstrom, SL
Bird, CE
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机构:RAND Hlth, Santa Monica, CA USA
Bird, CE
Shah, M
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机构:RAND Hlth, Santa Monica, CA USA
Shah, M
Escarce, JJ
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机构:RAND Hlth, Santa Monica, CA USA
Escarce, JJ
Horstman, T
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机构:RAND Hlth, Santa Monica, CA USA
Horstman, T
Rector, T
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机构:RAND Hlth, Santa Monica, CA USA
Rector, T
机构:
[1] RAND Hlth, Santa Monica, CA USA
[2] Univ Toronto, Toronto, ON, Canada
[3] W Los Angeles Vet Affairs Med Ctr, Dept Med, Los Angeles, CA 90073 USA
[4] Univ Calif Los Angeles, Div Gen Internal Med, Westwood, CA USA
Tracking quality-of-care measures is essential for improving care, particularly for vulnerable populations. Although managed care plans routinely track quality measures, few examine whether their performance differs by enrollee race/ethnicity or socioeconomic status (SES), in part because plans do not collect that information. We show that plans can begin examining and targeting potential disparities using indirect measures of enrollee race/ethnicity and SES based on geocoding. Using such measures, we demonstrate disparities within both Medicare+Choice and commercial plans on Health Plan Employer Data and Information Set (HEDIS) measures of diabetes and cardiovascular care, including instances in which race/ethnicity and SES have distinct effects.