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Joint modeling of recurrent event processes and intermittently observed time-varying binary covariate processes

机译:重复事件过程和间歇观察的时变二进制协变量过程的联合建模

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When conducting recurrent event data analysis, it is common to assume that the covariate processes are observed throughout the follow-up period. In most applications, however, the values of time-varying covariates are only observed periodically rather than continuously. A popular ad-hoc approach is to carry forward the last observed covariate value until it is measured again. This simple approach, however, usually leads to biased estimation. To tackle this problem, we propose to model the covariate effect on the risk of the recurrent events through jointly modeling the recurrent event process and the longitudinal measures. Despite its popularity, estimation of the joint model with binary longitudinal measurements remains a challenge, because the standard linear mixed effects model approach is not appropriate for binary measures. In this paper, we postulate a Markov model for the binary covariate process and a random-effect proportional intensity model for the recurrent event process. We use a Markov chain Monte Carlo algorithm to estimate all the unknown parameters. The performance of the proposed estimator is evaluated via simulations. The methodology is applied to an observational study designed to evaluate the effect of Group A streptococcus on pharyngitis among school children in India.
机译:进行重复事件数据分析时,通常会假设在整个随访期间都观察到协变量过程。但是,在大多数应用中,时变协变量的值只能定期观察而不是连续观察。一种流行的临时方法是结转最后观察到的协变量值,直到再次测量它为止。但是,这种简单的方法通常会导致估计偏差。为了解决这个问题,我们建议通过联合建模重复事件过程和纵向度量来对重复事件风险的协变量效应进行建模。尽管它很受欢迎,但是使用标准的线性混合效应模型方法不适用于二元测量,使用二元纵向测量来估计联合模型仍然是一个挑战。在本文中,我们为二进制协变量过程假设了一个马尔可夫模型,为循环事件过程假设了一个随机效应的比例强度模型。我们使用马尔可夫链蒙特卡罗算法来估计所有未知参数。拟议的估计器的性能是通过仿真评估的。该方法被应用于一项观察性研究,旨在评估印度小学生中A组链球菌对咽炎的影响。

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