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Joint modeling of survival time and longitudinal data with subject-specific changepoints in the covariates.

机译:生存时间和纵向数据的联合建模以及协变量中特定于受试者的变化点。

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Joint models are frequently used in survival analysis to assess the relationship between time-to-event data and time-dependent covariates, which are measured longitudinally but often with errors. Routinely, a linear mixed-effects model is used to describe the longitudinal data process, while the survival times are assumed to follow the proportional hazards model. However, in some practical situations, individual covariate profiles may contain changepoints. In this article, we assume a two-phase polynomial random effects with subject-specific changepoint model for the longitudinal data process and the proportional hazards model for the survival times. Our main interest is in the estimation of the parameter in the hazards model. We incorporate a smooth transition function into the changepoint model for the longitudinal data and develop the corrected score and conditional score estimators, which do not require any assumption regarding the underlying distribution of the random effects or that of the changepoints. The estimators are shown to be asymptotically equivalent and their finite-sample performance is examined via simulations. The methods are applied to AIDS clinical trial data.
机译:联合模型经常用于生存分析中,以评估事件数据和时间相关协变量之间的关系,这些关系是纵向测量的,但经常有误差。通常,线性混合效应模型用于描述纵向数据过程,而生存时间假定遵循比例风险模型。但是,在某些实际情况下,各个协变量配置文件可能包含更改点。在本文中,我们假设一个两阶段多项式随机效应,其中纵向数据处理使用特定于对象的变化点模型,而生存时间采用比例风险模型。我们的主要兴趣是评估危害模型中的参数。我们将平滑过渡函数合并到纵向数据的变化点模型中,并开发出校正后的得分和条件得分估算器,它们不需要对随机效应或变化点的基础分布进行任何假设。估计量被证明是渐近等效的,并且通过仿真检查了它们的有限样本性能。该方法适用于艾滋病临床试验数据。

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