在评估治疗效果时调整混杂因素的倾向评分方法:偏倚和精度

Zhiqiang Wang
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引用次数: 53

摘要

越来越多的人对使用倾向评分(PS)方法进行混淆控制感兴趣,通常有三种方法来估计药物流行病学研究中调整后的治疗效果:1)PS分层,2)PS匹配和3)使用PS作为协变量。为了评估不同方法的偏倚和精度,我们在三种情况下进行了模拟:1)处理没有效果,但粗略估计显示出保护作用;2)处理是保护性的,粗略估计更为极端;3)治疗增加了风险,但粗略估计具有保护作用。在所有方法中调整混杂因素使效果估计值向真实值靠拢。使用PS分层的校正优势比和使用PS作为协变量的方法由于残留混淆或过度调整而存在偏倚。与其他方法相比,PS匹配产生的偏平均估计较少,但效果估计的精度较低。--------------------------------------------------------------------------------
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Propensity score methods to adjust for confounding in assessing treatment effects: bias and precision
There is an increasing interest in the use of propensity score (PS) methods for confounding control, with generally three ways of estimating adjusted treatment effects in pharmacoepidemiological studies: 1) stratification on PS, 2) matching on PS and 3) using PS as a covariate. To assess bias and precision of different methods, we conducted simulations in three scenarios: 1) treatment had no effect but the crude estimate showed a protective effect; 2) treatment was protective and the crude estimate was more extreme; and 3) treatment increased the risk but the crude estimate showed protective. Adjusting for confounders in all methods shifted the effect estimates toward the true values. Adjusted odds ratios using the PS stratification and the method using PS as a covariate were biased due to either residual confounding or over-adjustment. Matching on PS produced less biased average estimates than other methods but the precision of effect estimates was lower. --------------------------------------------------------------------------------
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