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Propensity score applied to survival data analysis through proportional hazards models: A Monte Carlo study

机译:倾向得分通过比例风险模型应用于生存数据分析:蒙特卡洛研究

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Propensity score methods are increasingly used in medical literature to estimate treatment effect using data from observational studies. Despite many papers on propensity score analysis, few have focused on the analysis of survival data. Even within the framework of the popular proportional hazard model, the choice among marginal, stratified or adjusted models remains unclear. A Monte Carlo simulation study was used to compare the performance of several survival models to estimate both marginal and conditional treatment effects. The impact of accounting or not for pairing when analysing propensity-score-matched survival data was assessed. In addition, the influence of unmeasured confounders was investigated. After matching on the propensity score, both marginal and conditional treatment effects could be reliably estimated. Ignoring the paired structure of the data led to an increased test size due to an overestimated variance of the treatment effect. Among the various survival models considered, stratified models systematically showed poorer performance. Omitting a covariate in the propensity score model led to a biased estimation of treatment effect, but replacement of the unmeasured confounder by a correlated one allowed a marked decrease in this bias. Our study showed that propensity scores applied to survival data can lead to unbiased estimation of both marginal and conditional treatment effect, when marginal and adjusted Cox models are used. In all cases, it is necessary to account for pairing when analysing propensity-score-matched data, using a robust estimator of the variance.
机译:倾向得分方法在医学文献中越来越多地使用来自观察性研究的数据来估计治疗效果。尽管有很多关于倾向得分分析的论文,但是很少有研究集中在生存数据的分析上。即使在流行的比例风险模型的框架内,在边际模型,分层模型或调整模型之间的选择仍然不清楚。蒙特卡罗模拟研究用于比较几种生存模型的性能,以评估边际和条件治疗效果。在分析倾向得分匹配的生存数据时,评估记账与否对配对的影响。此外,还对无法衡量的混杂因素的影响进行了调查。在匹配倾向得分后,可以可靠地估计边缘和条件治疗效果。由于高估了治疗效果的差异,忽略数据的配对结构导致测试量增加。在考虑的各种生存模型中,分层模型系统地显示了较差的性能。在倾向评分模型中省略协变量会导致对治疗效果的偏倚估计,但是用相关的偏头痛替代未测的混杂因素会使该偏倚显着降低。我们的研究表明,当使用边际和调整后的Cox模型时,应用于生存数据的倾向评分可以导致对边际和条件治疗效果的无偏估计。在所有情况下,必须使用可靠的方差估算器在分析倾向得分匹配的数据时考虑配对。

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