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Time-varying effect modeling with longitudinal data truncated by death: conditional models, interpretations, and inference

机译:带有被死亡截断的纵向数据的时变效应建模:条件模型,解释和推断

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摘要

Recent studies found that infection-related hospitalization was associated with increased risk of cardiovascular (CV) events, such as myocardial infarction and stroke in the dialysis population. In this work, we develop time-varying effects modeling tools in order to examine the CV outcome risk trajectories during the time periods before and after an initial infection-related hospitalization. For this, we propose partly conditional and fully conditional partially linear generalized varying coefficient models (PL-GVCMs) for modeling time-varying effects in longitudinal data with substantial follow-up truncation by death. Unconditional models that implicitly target an immortal population is not a relevant target of inference in applications involving a population with high mortality, like the dialysis population. A partly conditional model characterizes the outcome trajectory for the dynamic cohort of survivors, where each point in the longitudinal trajectory represents a snapshot of the population relationships among subjects who are alive at that time point. In contrast, a fully conditional approach models the time-varying effects of the population stratified by the actual time of death, where the mean response characterizes individual trends in each cohort stratum. We compare and contrast partly and fully conditional PL-GVCMs in our aforementioned application using hospitalization data from the United States Renal Data System. For inference, we develop generalized likelihood ratio tests. Simulation studies examine the efficacy of estimation and inference procedures. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:最近的研究发现,与感染相关的住院治疗与透析人群中心血管(CV)事件(例如心肌梗塞和中风)的风险增加相关。在这项工作中,我们开发了随时间变化的效果建模工具,以便在与感染相关的初始住院之前和之后的时间内检查CV结果风险轨迹。为此,我们提出了部分条件和完全条件的部分线性广义可变系数模型(PL-GVCM),用于对纵向数据中的时变效应进行建模,并对死亡进行大量后续截断。在涉及高死亡率人群(如透析人群)的应用中,隐式针对永生人群的无条件模型不是推理的相关目标。部分条件模型描述了动态幸存者的结果轨迹,其中纵向轨迹中的每个点都代表该时间点活着的受试者之间的人口关系快照。相比之下,完全有条件的方法可以对按实际死亡时间分层的人口随时间变化的影响进行建模,其中平均响应表示每个队列阶层中的个体趋势。我们使用来自美国肾脏数据系统的住院数据,比较和对比了上述应用中的部分和全条件PL-GVCM。为了进行推断,我们开发了广义似然比检验。仿真研究检查了估计和推理过程的有效性。版权所有(c)2015 John Wiley&Sons,Ltd.

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