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利用距离协方差对观察性研究中的协变量进行综合评估的方法。

An omnibus approach to assess covariate balance in observational studies using the distance covariance.

机构信息

Department of Preventive Medicine, Northwestern University, Chicago, IL, USA.

Feinberg School of Medicine, Northwestern University, Chicago, IL, USA.

出版信息

Stat Methods Med Res. 2020 Jul;29(7):1846-1866. doi: 10.1177/0962280219878215. Epub 2019 Sep 27.

Abstract

Adequate baseline covariate balance among groups is critical in observational studies designed to estimate causal effects. Propensity score-based methods are popular ways to achieve covariate balance among groups. Existing methods are not easily generalizable to situations in which covariates of mixed type are collected nor do they provide a convenient way to compare the overall covariate vector distributions. Instead, covariate balance is assessed at the individual covariate level, thus the potential for increased overall type I error. We propose the use of the distance covariance, developed by Székely and colleagues, as an omnibus test of independence between covariate vectors and study group. We illustrate the advantages of this methodology in simulated data and in a cardiac surgery study designed to assess the impact of preoperative statin therapy on outcomes.

摘要

在旨在估计因果效应的观察性研究中,组间充分的基线协变量平衡至关重要。倾向评分匹配方法是实现组间协变量平衡的常用方法。现有的方法不容易推广到混合类型协变量被收集的情况,也没有提供一种方便的方法来比较整体协变量向量分布。相反,协变量平衡是在个体协变量水平上进行评估的,因此存在增加总体Ⅰ型错误的可能性。我们建议使用 Székely 及其同事开发的距离协方差作为协变量向量和研究组之间独立性的综合检验。我们在模拟数据和心脏手术研究中说明了这种方法的优点,该研究旨在评估术前他汀类药物治疗对结果的影响。

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