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Joint modeling of longitudinal and survival data with missing and left-censored time-varying covariates

机译:纵向和生存数据的联合建模,带有缺失和左删减的时变协变量

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We propose a joint model for longitudinal and survival data with time-varying covariates subject to detection limits and intermittent missingness at random. The model is motivated by data from the Multicenter AIDS Cohort Study (MACS), in which HIV+ subjects have viral load and CD4 cell count measured at repeated visits along with survival data. We model the longitudinal component using a normal linear mixed model, modeling the trajectory of CD4 cell count by regressing on viral load, and other covariates. The viral load data are subject to both left censoring because of detection limits (17%) and intermittent missingness (27%). The survival component of the joint model is a Cox model with time-dependent covariates for death because of AIDS. The longitudinal and survival models are linked using the trajectory function of the linear mixed model. A Bayesian analysis is conducted on the MACS data using the proposed joint model. The proposed method is shown to improve the precision of estimates when compared with alternative methods.
机译:我们提出了一个纵向和生存数据的联合模型,该模型具有随时间变化的协变量,该变量受检测极限和随机间歇性缺失的影响。该模型是由来自多中心艾滋病队列研究(MACS)的数据驱动的,在该研究中,HIV +受试者的病毒载量和CD4细胞计数是在反复访问时测得的,并与生存数据相关。我们使用正常的线性混合模型对纵向分量进行建模,通过对病毒载量和其他协变量进行回归来对CD4细胞计数的轨迹进行建模。由于检测限(17%)和间歇性缺失(27%),病毒载量数据都需要进行左审查。联合模型的生存组成部分是Cox模型,该模型具有因艾滋病导致死亡的时间相关协变量。纵向和生存模型使用线性混合模型的轨迹函数进行链接。使用提出的联合模型对MACS数据进行贝叶斯分析。与替代方法相比,该方法可提高估计的精度。

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