Nonparametric bounds for the survivor function under general dependent truncation.

Pub Date : 2023-03-01 Epub Date: 2022-03-07 DOI:10.1111/sjos.12582
Jing Qian, Rebecca A Betensky
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Abstract

Truncation occurs in cohort studies with complex sampling schemes. When truncation is ignored or incorrectly assumed to be independent of the event time in the observable region, bias can result. We derive completely nonparametric bounds for the survivor function under truncation and censoring; these extend prior nonparametric bounds derived in the absence of truncation. We also define a hazard ratio function that links the unobservable region in which event time is less than truncation time, to the observable region in which event time is greater than truncation time, under dependent truncation. When this function can be bounded, and the probability of truncation is known approximately, it yields narrower bounds than the purely nonparametric bounds. Importantly, our approach targets the true marginal survivor function over its entire support, and is not restricted to the observable region, unlike alternative estimators. We evaluate the methods in simulations and in clinical applications.

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一般依赖截断条件下存活函数的非参数边界。
在具有复杂抽样方案的队列研究中会出现截断现象。如果忽略截断或错误地假定截断与可观测区域的事件时间无关,就会产生偏差。我们推导出了截断和普查条件下幸存者函数的完全非参数界限;这些界限扩展了之前在无截断条件下推导出的非参数界限。我们还定义了一个危险比函数,它将事件发生时间小于截断时间的不可观测区域与事件发生时间大于截断时间的可观测区域联系起来,并依赖于截断。当这个函数可以被限定,并且截断的概率近似可知时,它就会产生比纯非参数约束更窄的约束。重要的是,与其他估计方法不同,我们的方法以整个支持范围内的真实边际幸存者函数为目标,而不局限于可观测区域。我们在模拟和临床应用中对这些方法进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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