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More Accurate Racial and Ethnic Codes for Medicare Administrative Data

Analyses of health care disparities in Medicare using administrative race and ethnicity data have typically been limited to Black and White beneficiaries. This is in part due to the small size of the other categories, inaccuracies in the race and ethnicity codes, and caveats that more extensive anal...

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Autores principales: Eicheldinger, Celia, Bonito, Arthur
Formato: Online Artículo Texto
Lenguaje:English
Publicado: CENTERS for MEDICARE & MEDICAID SERVICES 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4195038/
https://www.ncbi.nlm.nih.gov/pubmed/18567241
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author Eicheldinger, Celia
Bonito, Arthur
author_facet Eicheldinger, Celia
Bonito, Arthur
author_sort Eicheldinger, Celia
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description Analyses of health care disparities in Medicare using administrative race and ethnicity data have typically been limited to Black and White beneficiaries. This is in part due to the small size of the other categories, inaccuracies in the race and ethnicity codes, and caveats that more extensive analyses would produce biased results. While previous Medicare efforts certainly improved the accuracy of race and ethnicity coding, we have developed an imputation algorithm that dramatically improves the accuracy of coding for Hispanic and Asian or Pacific Islander beneficiaries. When compared with self-reported race and ethnicity, sensitivity increased from 29.5 to 76.6 percent for Hispanic and from 54.7 to 79.2 percent for Asian and Pacific Islander beneficiaries, with no loss of specificity, and Kappa coefficients reaching 0.80. As a result, 2,245,792 beneficiaries were recoded to Hispanic and 336,363 to Asian or Pacific Islander.
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spelling pubmed-41950382014-11-04 More Accurate Racial and Ethnic Codes for Medicare Administrative Data Eicheldinger, Celia Bonito, Arthur Health Care Financ Rev General Topics Analyses of health care disparities in Medicare using administrative race and ethnicity data have typically been limited to Black and White beneficiaries. This is in part due to the small size of the other categories, inaccuracies in the race and ethnicity codes, and caveats that more extensive analyses would produce biased results. While previous Medicare efforts certainly improved the accuracy of race and ethnicity coding, we have developed an imputation algorithm that dramatically improves the accuracy of coding for Hispanic and Asian or Pacific Islander beneficiaries. When compared with self-reported race and ethnicity, sensitivity increased from 29.5 to 76.6 percent for Hispanic and from 54.7 to 79.2 percent for Asian and Pacific Islander beneficiaries, with no loss of specificity, and Kappa coefficients reaching 0.80. As a result, 2,245,792 beneficiaries were recoded to Hispanic and 336,363 to Asian or Pacific Islander. CENTERS for MEDICARE & MEDICAID SERVICES 2008 /pmc/articles/PMC4195038/ /pubmed/18567241 Text en
spellingShingle General Topics
Eicheldinger, Celia
Bonito, Arthur
More Accurate Racial and Ethnic Codes for Medicare Administrative Data
title More Accurate Racial and Ethnic Codes for Medicare Administrative Data
title_full More Accurate Racial and Ethnic Codes for Medicare Administrative Data
title_fullStr More Accurate Racial and Ethnic Codes for Medicare Administrative Data
title_full_unstemmed More Accurate Racial and Ethnic Codes for Medicare Administrative Data
title_short More Accurate Racial and Ethnic Codes for Medicare Administrative Data
title_sort more accurate racial and ethnic codes for medicare administrative data
topic General Topics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4195038/
https://www.ncbi.nlm.nih.gov/pubmed/18567241
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