论文标题

适应不朽时间的统计方法:选择性审查和比较

Statistical Methods for Accommodating Immortal Time: A Selective Review and Comparison

论文作者

Wang, Jiping, Peduzzi, Peter, Wininger, Michael, Ma, Shuangge

论文摘要

不朽的时间(IMT)挑战流行病学研究和生存结果的临床试验,这是一个随访期,在此期间,由于观察到以后的治疗开始,因此无法进行生存结果。人们已经认识到,未能适当适应IMT会导致估计和误导性推理。因此,已经开发了一系列统计方法,从最简单的方法包括或将IMT排除到各种权重和最新的顺序方法。我们的文献综述表明,现有的发展通常是“分散的”,并且缺乏全面的审查和直接比较。为了填补这一知识差距并更好地介绍了这个重要主题,特别是向生物医学研究人员介绍,我们提供了这项评论,以全面描述可用的方法,讨论其优势和缺点,同样重要,同样重要,直接通过模拟和对斯坦福心脏心脏移植数据的分析进行比较。关键观察结果是,随时间变化的治疗模型和顺序试验方法倾向于提供公正的估计,而其他方法可能会导致实质性偏见。我们还提供了有关与因果推断的互连的深入讨论。

Epidemiologic studies and clinical trials with a survival outcome are often challenged by immortal time (IMT), a period of follow-up during which the survival outcome cannot occur because of the observed later treatment initiation. It has been well recognized that failing to properly accommodate IMT leads to biased estimation and misleading inference. Accordingly, a series of statistical methods have been developed, from the simplest by including or excluding IMT to various weightings and the more recent sequential methods. Our literature review suggests that the existing developments are often "scattered", and there is a lack of comprehensive review and direct comparison. To fill this knowledge gap and better introduce this important topic especially to biomedical researchers, we provide this review to comprehensively describe the available methods, discuss their advantages and disadvantages, and equally important, directly compare their performance via simulation and the analysis of the Stanford heart transplant data. The key observation is that the time-varying treatment modeling and sequential trial methods tend to provide unbiased estimation, while the other methods may result in substantial bias. We also provide an in-depth discussion on the interconnections with causal inference.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源