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首页> 外文期刊>Medical care research and review: MCRR >Race and ethnicity data quality and imputation using U.S. census data in an integrated health system: The kaiser permanente Southern California experience
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Race and ethnicity data quality and imputation using U.S. census data in an integrated health system: The kaiser permanente Southern California experience

机译:在综合医疗系统中使用美国人口普查数据计算种族和种族数据的质量和归因:南加州凯撒永久居民的经验

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摘要

Research on racial and ethnic disparities using health system databases can shed light on the usual health care and outcomes of large numbers of individuals so that health inequities can be better understood and addressed. Such research often suffers from limitations in race/ethnicity data quality. We examined the quality of race/ethnicity data in a large, diverse, integrated health system that repeatedly collects these data on utilization of services. We tested the accuracy of Bayesian Improved Surname Geocoding for imputation of race/ethnicity data. Administrative race/ethnicity data were accurate as judged by comparison with self-report in adults. The Bayesian Improved Surname Geocoding method produced imputation results far better than chance assignment for the four most common race/ethnicity groups in the health system: Whites, Hispanics, Blacks, and Asians. These results support renewed efforts to conduct studies of racial and ethnic disparities in large health systems.
机译:使用卫生系统数据库对种族和族裔差异进行的研究可以阐明通常的卫生保健和大量个人的健康状况,从而可以更好地理解和解决健康不平等问题。这样的研究经常受到种族/种族数据质量的限制。我们在一个大型,多样化,集成的卫生系统中检查了种族/民族数据的质量,该系统反复收集有关服务利用的数据。我们测试了用于估算种族/种族数据的贝叶斯改进姓氏地理编码的准确性。通过比较成年人的自我报告判断,行政种族/族裔数据是准确的。贝叶斯改进姓氏地理编码方法产生的插补结果远胜于卫生系统中四个最常见的种族/族裔群体:白人,西班牙裔,黑人和亚洲人的机会分配。这些结果支持重新努力进行大型卫生系统中种族和种族差异的研究。

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