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纵向数据的部分条件生存模型。

Partly conditional survival models for longitudinal data.

作者信息

Zheng Yingye, Heagerty Patrick J

机构信息

Fred Hutchinson Cancer Research Center, 1100 Fairview Avenue N., M2-B230, P.O. Box 19024, Seattle, Washington 98109-1024, USA.

出版信息

Biometrics. 2005 Jun;61(2):379-91. doi: 10.1111/j.1541-0420.2005.00323.x.

DOI:10.1111/j.1541-0420.2005.00323.x
PMID:16011684
Abstract

It is common in longitudinal studies to collect information on the time until a key clinical event, such as death, and to measure markers of patient health at multiple follow-up times. One approach to the joint analysis of survival and repeated measures data adopts a time-varying covariate regression model for the event time hazard. Using this standard approach, the instantaneous risk of death at time t is specified as a possibly semi-parametric function of covariate information that has accrued through time t. In this manuscript, we decouple the time scale for modeling the hazard from the time scale for accrual of available longitudinal covariate information. Specifically, we propose a class of models that condition on the covariate information through time s and then specifies the conditional hazard for times t, where t > s. Our approach parallels the "partly conditional" models proposed by Pepe and Couper (1997, Journal of the American Statistical Association 92, 991-998) for pure repeated measures applications. Estimation is based on the use of estimating equations applied to clusters of data formed through the creation of derived survival times that measure the time from measurement of covariates to the end of follow-up. Patient follow-up may be terminated either by the occurrence of the event or by censoring. The proposed methods allow a flexible characterization of the association between a longitudinal covariate process and a survival time, and facilitate the direct prediction of survival probabilities in the time-varying covariate setting.

摘要

在纵向研究中,收集关于直至关键临床事件(如死亡)发生的时间信息,并在多个随访时间点测量患者健康指标是很常见的。生存数据和重复测量数据联合分析的一种方法是采用针对事件时间风险的时变协变量回归模型。使用这种标准方法,时间t时的瞬时死亡风险被指定为随时间t累积的协变量信息的可能半参数函数。在本论文中,我们将用于建模风险的时间尺度与可用纵向协变量信息累积的时间尺度分离。具体而言,我们提出了一类模型,这类模型基于时间s之前的协变量信息,然后指定时间t(其中t > s)的条件风险。我们的方法类似于Pepe和Couper(1997年,《美国统计协会杂志》92卷,991 - 998页)针对纯重复测量应用提出的“部分条件”模型。估计基于应用于通过创建衍生生存时间形成的数据聚类的估计方程,这些衍生生存时间测量从协变量测量到随访结束的时间。患者随访可能因事件发生或因删失而终止。所提出的方法允许灵活描述纵向协变量过程与生存时间之间的关联,并便于在时变协变量设置中直接预测生存概率。

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