Comparison of Alternative Approaches to Using Race-and-Ethnicity Data in Estimating Differences in Health Care and Social Determinants of Health.

IF 3.3 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Steven C Martino, Jacob W Dembosky, Katrin Hambarsoomian, Amelia M Haviland, Robert Weech-Maldonado, Megan K Beckett, Torrey Hill, Marc N Elliott
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引用次数: 0

Abstract

Objective: The objective of this study was to compare 2 approaches for representing self-reported race-and-ethnicity, additive modeling (AM), in which every race or ethnicity a person endorses counts toward measurement of that category, and a commonly used mutually exclusive categorization (MEC) approach. The benchmark was a gold-standard, but often impractical approach that analyzes all combinations of race-and-ethnicity as distinct groups.

Methods: Data came from 313,739 respondents to the 2021 Medicare Consumer Assessment of Healthcare Providers and Systems (CAHPS) surveys who self-reported race-and-ethnicity. We used regression to estimate how accurately AM and MEC approaches predicted racial-and-ethnic differences in 5 CAHPS patient experience measures and 4 patient characteristics that we considered proxies for social determinants of health (SDOH): age, educational attainment, and self-reported general and mental health. We calculated average residual error proportions for AM and MEC estimates relative to all-combination estimates.

Results: In predicting CAHPS scores by race-and-ethnicity, on average 0.9% of the variance across groups in the AM and MEC approaches represented a departure from the gold standard. In predicting proxy SDOH variables, on average 4.7% of the AM variance across groups and 7.1% of the MEC variance across groups represented departures from the gold standard.

Conclusion: Researchers may want to consider AM over MEC when modeling outcomes by race-and-ethnicity given that AM outperforms MEC in predicting racial-and-ethnic differences in proxy SDOH characteristics and is comparably accurate in predicting differences in patient experience. Unlike MEC, AM does not assume that every multiracial person has similar outcomes and that Hispanic persons have similar outcomes irrespective of race.

使用种族和民族数据估计医疗保健和健康社会决定因素差异的不同方法的比较。
目的:本研究的目的是比较两种代表自我报告的种族和民族的方法,一种是加法建模(AM),其中一个人支持的每个种族或民族都可以用于该类别的测量,另一种是常用的互斥分类(MEC)方法。这个基准是一个黄金标准,但往往不切实际的方法,它将所有种族和民族的组合作为不同的群体进行分析。方法:数据来自2021年医疗保健提供者和系统医疗保险消费者评估(CAHPS)调查的313,739名受访者,他们自我报告种族和民族。我们使用回归来估计AM和MEC方法预测5种CAHPS患者体验措施和4种我们认为代表健康社会决定因素(SDOH)的患者特征(年龄、受教育程度和自我报告的一般和心理健康)的种族和民族差异的准确性。我们计算了相对于全组合估计的AM和MEC估计的平均残差比例。结果:在按种族和民族预测CAHPS分数时,在AM和MEC方法中,平均0.9%的组间方差代表偏离金标准。在预测代理SDOH变量时,各组间平均4.7%的AM方差和7.1%的MEC方差代表偏离金标准。结论:考虑到AM在预测代理SDOH特征的种族和民族差异方面优于MEC,并且在预测患者体验差异方面相当准确,研究人员可能希望在按种族和民族建模结果时考虑AM而不是MEC。与MEC不同,AM并不假设每个多种族的人都有相似的结果,也不假设西班牙裔人不分种族都有相似的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Medical Care
Medical Care 医学-公共卫生、环境卫生与职业卫生
CiteScore
5.20
自引率
3.30%
发文量
228
审稿时长
3-8 weeks
期刊介绍: Rated as one of the top ten journals in healthcare administration, Medical Care is devoted to all aspects of the administration and delivery of healthcare. This scholarly journal publishes original, peer-reviewed papers documenting the most current developments in the rapidly changing field of healthcare. This timely journal reports on the findings of original investigations into issues related to the research, planning, organization, financing, provision, and evaluation of health services.
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