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通过倾向得分方法控制混杂因素可能会导致条件AUC的估计出现偏差:一项模拟研究。

Controlling for confounding via propensity score methods can result in biased estimation of the conditional AUC: A simulation study.

作者信息

Galadima Hadiza I, McClish Donna K

机构信息

School of Community and Environmental Health, College of Health Sciences, Old Dominion University, Norfolk, Virginia.

Department of Biostatistics, Virginia Commonwealth University, Richmond, Virginia.

出版信息

Pharm Stat. 2019 Oct;18(5):568-582. doi: 10.1002/pst.1948. Epub 2019 May 20.

Abstract

In the medical literature, there has been an increased interest in evaluating association between exposure and outcomes using nonrandomized observational studies. However, because assignments to exposure are not random in observational studies, comparisons of outcomes between exposed and nonexposed subjects must account for the effect of confounders. Propensity score methods have been widely used to control for confounding, when estimating exposure effect. Previous studies have shown that conditioning on the propensity score results in biased estimation of conditional odds ratio and hazard ratio. However, research is lacking on the performance of propensity score methods for covariate adjustment when estimating the area under the ROC curve (AUC). In this paper, AUC is proposed as measure of effect when outcomes are continuous. The AUC is interpreted as the probability that a randomly selected nonexposed subject has a better response than a randomly selected exposed subject. A series of simulations has been conducted to examine the performance of propensity score methods when association between exposure and outcomes is quantified by AUC; this includes determining the optimal choice of variables for the propensity score models. Additionally, the propensity score approach is compared with that of the conventional regression approach to adjust for covariates with the AUC. The choice of the best estimator depends on bias, relative bias, and root mean squared error. Finally, an example looking at the relationship of depression/anxiety and pain intensity in people with sickle cell disease is used to illustrate the estimation of the adjusted AUC using the proposed approaches.

摘要

在医学文献中,人们越来越关注使用非随机观察性研究来评估暴露与结局之间的关联。然而,由于在观察性研究中暴露的分配并非随机,所以在比较暴露组和非暴露组受试者的结局时,必须考虑混杂因素的影响。在估计暴露效应时,倾向得分方法已被广泛用于控制混杂。先前的研究表明,以倾向得分为条件会导致条件优势比和风险比的估计出现偏差。然而,在估计ROC曲线下面积(AUC)时,关于倾向得分方法进行协变量调整的性能研究却很缺乏。在本文中,当结局为连续变量时,提出将AUC作为效应的一种度量。AUC被解释为随机选择的非暴露受试者比随机选择的暴露受试者有更好反应的概率。已经进行了一系列模拟,以检验当通过AUC量化暴露与结局之间的关联时倾向得分方法的性能;这包括确定倾向得分模型变量的最佳选择。此外,还将倾向得分方法与传统回归方法进行了比较,以用AUC调整协变量。最佳估计器的选择取决于偏差、相对偏差和均方根误差。最后,通过一个研究镰状细胞病患者抑郁/焦虑与疼痛强度关系的例子,来说明使用所提出的方法估计调整后的AUC。

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