A framework for analysing longitudinal data involving time-varying covariates

Reza Drikvandi, G. Verbeke, G. Molenberghs
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Abstract

Standard models for longitudinal data ignore the stochastic nature of time-varying covariates and their stochastic evolution over time by treating them as fixed variables. There have been recent methods for modelling time-varying covariates, however those methods cannot be applied to analyse longitudinal data when the longitudinal response and the time-varying covariates for each subject are measured at different time points. Moreover, it is difficult to study the temporal effects of a time-varying covariate on the longitudinal response and the temporal correlation between them. Motivated by data from an AIDS cohort study conducted over 26 years at the University Hospitals Leuven in which the measurements on the CD4 cell count and viral load for patients are not taken at the same time point, we present a framework to address those challenges by using joint multivariate mixed models to jointly model time-varying covariates and a longitudinal response, instead of including time-varying covariates in the response model. This approach also has the advantage that one can study the association between the covariate at any time point and the response at any other time point, without having to explicitly model the conditional distribution of the response given the covariate. We use penalised spline functions of time to capture the evolutions of both the response and time-varying covariates over time.
涉及时变协变量的纵向数据分析框架
纵向数据的标准模型忽略了时变协变量的随机性及其随时间的随机演变,将其视为固定变量。近来出现了一些建立时变协变量模型的方法,但当每个受试者的纵向响应和时变协变量是在不同的时间点测量时,这些方法就不能用于分析纵向数据。此外,很难研究时变协变量对纵向反应的时间影响以及它们之间的时间相关性。在鲁汶大学医院进行的一项艾滋病队列研究中,对患者 CD4 细胞计数和病毒载量的测量并不是在同一时间点进行的。受这项研究数据的启发,我们提出了一个框架来解决这些难题,即使用联合多变量混合模型对时变协变量和纵向反应进行联合建模,而不是在反应模型中包含时变协变量。这种方法的另一个优点是,我们可以研究任何时间点的协变量与任何其他时间点的响应之间的关联,而无需明确模拟协变量给出的响应的条件分布。我们使用时间的惩罚性样条函数来捕捉反应和随时间变化的协变量随时间的变化。
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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