Using propensity scores for racial disparities analysis

Fan Li
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引用次数: 1

Abstract

Abstract:Propensity score plays a central role in causal inference, but its use is not limited to causal comparisons. As a covariate balancing tool, propensity score can be used for controlled descriptive comparisons between groups whose memberships are not manipulable. A prominent example is racial disparities in health care. However, conceptual confusion and hesitation persists for using propensity score in racial disparities studies. In this commentary, we argue that propensity score, possibly combined with other methods, is an effective tool for racial disparities analysis. We describe relevant estimands, target population, and assumptions. In particular, we clarify that a controlled descriptive comparison requires weaker assumptions than a causal comparison. We discuss three common propensity score weighting strategies: overlap weighting, inverse probability weighting and average treatment effect for treated weighting. We further describe how to combine weighting with the rank-and-replace adjustment method to produce racial disparity estimates concordant to the Institute of Medicine’s definition. The method is illustrated by a re-analysis of the Medical Expenditure Panel Survey data.
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使用倾向得分进行种族差异分析
摘要倾向得分在因果推理中起着核心作用,但其应用并不局限于因果比较。作为协变量平衡工具,倾向得分可用于成员不可操纵的群体之间的受控描述性比较。一个突出的例子是医疗保健方面的种族差异。然而,在种族差异研究中使用倾向评分存在概念上的混淆和犹豫。在这篇评论中,我们认为倾向评分,可能与其他方法相结合,是种族差异分析的有效工具。我们描述了相关的估计、目标人群和假设。特别是,我们澄清,一个受控的描述性比较需要弱的假设比因果比较。讨论了三种常用的倾向得分加权策略:重叠加权、逆概率加权和处理加权的平均处理效果。我们进一步描述了如何将加权与秩-替换调整方法相结合,以产生符合医学研究所定义的种族差异估计。对医疗支出小组调查数据的重新分析说明了这种方法。
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