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不同方法调整混杂因素对生存曲线影响的比较。

A comparison of different methods to adjust survival curves for confounders.

机构信息

Department of Medical Informatics, Biometry and Epidemiology, Ruhr-University of Bochum, Bochum, North-Rhine Westphalia, Germany.

出版信息

Stat Med. 2023 May 10;42(10):1461-1479. doi: 10.1002/sim.9681. Epub 2023 Feb 7.

Abstract

Treatment specific survival curves are an important tool to illustrate the treatment effect in studies with time-to-event outcomes. In non-randomized studies, unadjusted estimates can lead to biased depictions due to confounding. Multiple methods to adjust survival curves for confounders exist. However, it is currently unclear which method is the most appropriate in which situation. Our goal is to compare forms of inverse probability of treatment weighting, the G-Formula, propensity score matching, empirical likelihood estimation and augmented estimators as well as their pseudo-values based counterparts in different scenarios with a focus on their bias and goodness-of-fit. We provide a short review of all methods and illustrate their usage by contrasting the survival of smokers and non-smokers, using data from the German Epidemiological Trial on Ankle-Brachial-Index. Subsequently, we compare the methods using a Monte-Carlo simulation. We consider scenarios in which correctly or incorrectly specified models for describing the treatment assignment and the time-to-event outcome are used with varying sample sizes. The bias and goodness-of-fit is determined by taking the entire survival curve into account. When used properly, all methods showed no systematic bias in medium to large samples. Cox regression based methods, however, showed systematic bias in small samples. The goodness-of-fit varied greatly between different methods and scenarios. Methods utilizing an outcome model were more efficient than other techniques, while augmented estimators using an additional treatment assignment model were unbiased when either model was correct with a goodness-of-fit comparable to other methods. These "doubly-robust" methods have important advantages in every considered scenario.

摘要

治疗特有的生存曲线是展示时间事件结局研究中治疗效果的重要工具。在非随机研究中,由于混杂因素的存在,未经调整的估计可能会导致有偏差的结果。有多种方法可以调整生存曲线以适应混杂因素。然而,目前尚不清楚在何种情况下哪种方法最合适。我们的目标是比较逆概率治疗加权、G 公式、倾向评分匹配、经验似然估计和增强估计以及它们在不同情况下基于伪值的形式,重点关注它们的偏差和拟合优度。我们提供了所有方法的简短回顾,并通过对比德国踝臂指数流行病学试验中吸烟者和非吸烟者的生存情况来说明它们的用法。随后,我们使用蒙特卡罗模拟比较这些方法。我们考虑了使用正确或不正确指定的模型来描述治疗分配和时间事件结局的情况,同时考虑了不同的样本大小。偏差和拟合优度是通过考虑整个生存曲线来确定的。在正确使用的情况下,所有方法在中等至大样本中均无系统偏差。然而,基于 Cox 回归的方法在小样本中表现出系统性偏差。不同方法和场景之间的拟合优度差异很大。使用结局模型的方法比其他技术更有效,而使用额外治疗分配模型的增强估计在两个模型都正确时是无偏的,且拟合优度与其他方法相当。这些“双重稳健”方法在每种考虑的情况下都具有重要优势。

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