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Adjusting for unmeasured spatial confounding with distance adjusted propensity score matching

机译:通过距离调整的倾向得分匹配来调整未测量的空间混杂

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摘要

Propensity score matching is a common tool for adjusting for observed confounding in observational studies, but is known to have limitations in the presence of unmeasured confounding. In many settings, researchers are confronted with spatially-indexed data where the relative locations of the observational units may serve as a useful proxy for unmeasured confounding that varies according to a spatial pattern. We develop a new method, termed distance adjusted propensity score matching (DAPSm) that incorporates information on units’ spatial proximity into a propensity score matching procedure. We show that DAPSm can adjust for both observed and some forms of unobserved confounding and evaluate its performance relative to several other reasonable alternatives for incorporating spatial information into propensity score adjustment. The method is motivated by and applied to a comparative effectiveness investigation of power plant emission reduction technologies designed to reduce population exposure to ambient ozone pollution. Ultimately, DAPSm provides a framework for augmenting a “standard” propensity score analysis with information on spatial proximity and provides a transparent and principled way to assess the relative trade-offs of prioritizing observed confounding adjustment versus spatial proximity adjustment.
机译:倾向得分匹配是用于调整观察研究中观察到的混淆的常用工具,但已知在存在无法测量的混淆时存在局限性。在许多情况下,研究人员都面临着空间索引的数据,在这些数据中,观测单位的相对位置可能充当有用的代理,以替代随空间模式而变化的未测混杂。我们开发了一种称为距离调整的倾向得分匹配(DAPSm)的新方法,该方法将单位空间接近度的信息合并到倾向得分匹配过程中。我们表明,DAPSm可以针对观察到的和某些形式的未观察到的混淆进行调整,并相对于将空间信息纳入倾向得分调整中的其他几种合理的替代方法来评估其性能。该方法的灵感来自于旨在减少居民暴露于环境臭氧污染的电厂减排技术的比较有效性研究。最终,DAPSm提供了一个用于通过空间接近度信息增强“标准”倾向得分分析的框架,并提供了一种透明且原则上的方法来评估优先考虑观察到的混杂调整与空间接近度调整之间的相对权衡。

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