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Identification of potential longitudinal biomarkers under the accelerated failure time model in multivariate survival data

机译:在多变量存活数据中识别加速故障时间模型下的潜在纵向生物标志物

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摘要

In recent years, joint analysis of longitudinal measurements and survival data has received much attention. However, previous work has primarily focused on a single failure type for the event time. In this paper, we consider joint modeling of repeated measurements and multivariate failure time data. The accelerated failure time (AFT) model is also used to deal with multivariate survival data when the proportionality assumption fails to capture the relationship between the survival time and covariates. A proposed method based on the frailty AFT model is used to identify longitudinal biomarkers or surrogates for a multivariate survival. With a carefully chosen definition of complete data, the maximum likelihood estimation is performed via an Expectation-Maximization (EM) algorithm. We use simulations to explore how the number of individuals, the number of time points per individual, and the functional form of the random effects from the longitudianl biomarkers influence the power to detect the association of a longitudinal biomarker and the multivariate survival time. The proposed method is illustrated by using the gastric cancer data.
机译:近年来,对纵向测量和生存数据的联合分析受到了很大的关注。但是,以前的工作主要集中在事件时间的单个故障类型上。在本文中,我们考虑重复测量和多变量故障时间数据的联合建模。加速故障时间(AFT)模型也用于处理多变量存活数据时,当比例假设未能捕获生存时间和协变量之间的关系时。一种基于Freirty AFT模型的提出方法用于识别多变量存活的纵向生物标志物或替代品。对于完整数据的精心选择的定义,通过期望最大化(EM)算法来执行最大似然估计。我们使用模拟来探索个人的数量,每种单独的时间点,以及来自纵向党的生物标志物的随机效应的功能形式影响了检测纵向生物标志物和多变量存活时间的能力。通过使用胃癌数据来说明所提出的方法。

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