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一种针对具有测量误差的纵向协变量的相加风险模型的校正伪得分方法。

A corrected pseudo-score approach for additive hazards model with longitudinal covariates measured with error.

作者信息

Song Xiao, Huang Yijian

机构信息

Department of Biostatistics, University of Washington, 357232, Seattle, WA 98195-7232, USA.

出版信息

Lifetime Data Anal. 2006 Mar;12(1):97-110. doi: 10.1007/s10985-005-7222-7.

Abstract

In medical studies, it is often of interest to characterize the relationship between a time-to-event and covariates, not only time-independent but also time-dependent. Time-dependent covariates are generally measured intermittently and with error. Recent interests focus on the proportional hazards framework, with longitudinal data jointly modeled through a mixed effects model. However, approaches under this framework depend on the normality assumption of the error, and might encounter intractable numerical difficulties in practice. This motivates us to consider an alternative framework, that is, the additive hazards model, about which little research has been done when time-dependent covariates are measured with error. We propose a simple corrected pseudo-score approach for the regression parameters with no assumptions on the distribution of the random effects and the error beyond those for the variance structure of the latter. The estimator has an explicit form and is shown to be consistent and asymptotically normal. We illustrate the method via simulations and by application to data from an HIV clinical trial.

摘要

在医学研究中,刻画事件发生时间与协变量之间的关系通常很重要,这些协变量不仅包括与时间无关的,还包括与时间有关的。与时间有关的协变量一般是间歇性测量且存在误差。近期的研究兴趣集中在比例风险框架上,通过混合效应模型对纵向数据进行联合建模。然而,该框架下的方法依赖于误差的正态性假设,在实际中可能会遇到难以处理的数值困难。这促使我们考虑另一种框架,即加法风险模型,当与时间有关的协变量存在测量误差时,关于此模型的研究很少。我们针对回归参数提出了一种简单的修正伪得分方法,对随机效应的分布和误差除了后者的方差结构外不做任何假设。该估计量具有显式形式,并且被证明是一致的且渐近正态的。我们通过模拟以及应用于一项HIV临床试验的数据来说明该方法。

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