Oregon Health & Science University-Portland State University School of Public Health, Portland, Oregon, USA.
OCHIN Inc., Portland, Oregon, USA.
Health Serv Res. 2022 Dec;57(6):1370-1378. doi: 10.1111/1475-6773.14025. Epub 2022 Jul 25.
To assess the feasibility and implications of imputing race and ethnicity for quality and utilization measurement in Medicaid.
2017 Oregon Medicaid claims from the Oregon Health Authority and electronic health records (EHR) from OCHIN, a clinical data research network, were used.
We cross-sectionally assessed Hispanic-White, Black-White, and Asian-White disparities in 22 quality and utilization measures, comparing self-reported race and ethnicity to imputed values from the Bayesian Improved Surname Geocoding (BISG) algorithm.
Race and ethnicity were obtained from self-reported data and imputed using BISG.
42.5%/4.9% of claims/EHR were missing self-reported data; BISG estimates were available for >99% of each and had good concordance (0.87-0.95) with Asian, Black, Hispanic, and White self-report. All estimated racial and ethnic disparities were statistically similar in self-reported and imputed EHR-based measures. However, within claims, BISG estimates and incomplete self-reported data yielded substantially different disparities in almost half of the measures, with BISG-based Black-White disparities generally larger than self-reported race and ethnicity data.
BISG imputation methods are feasible for Medicaid claims data and reduced missingness to <1%. Disparities may be larger than what is estimated using self-reported data with high rates of missingness.
评估在医疗补助计划中对种族和族裔进行推断以进行质量和利用度量的可行性和影响。
使用 2017 年俄勒冈州卫生署的俄勒冈医疗补助计划索赔数据和 OCHIN 的电子健康记录(EHR),OCHIN 是一个临床数据研究网络。
我们横向评估了 22 项质量和利用指标中西班牙裔-白人、黑人和白人以及亚裔-白人之间的差异,将自我报告的种族和族裔与贝叶斯改进姓氏地理编码(BISG)算法的推断值进行比较。
种族和族裔从自我报告的数据中获得,并使用 BISG 进行推断。
42.5%/4.9%的索赔/EHR 缺少自我报告的数据;BISG 估计值可用于每个数据的>99%,并且与亚洲人、黑人、西班牙裔和白人的自我报告具有很好的一致性(0.87-0.95)。在自我报告和推断的基于 EHR 的测量中,所有估计的种族和族裔差异在统计学上都是相似的。然而,在索赔中,BISG 估计值和不完整的自我报告数据在近一半的测量中产生了截然不同的差异,BISG 基于的黑人和白人之间的差异通常大于自我报告的种族和族裔数据。
BISG 推断方法适用于医疗补助计划索赔数据,并将缺失率降低到<1%。在缺失率较高的情况下,差异可能比使用自我报告数据估计的更大。