多元统计
估计员
依赖关系(UML)
事件(粒子物理)
计算机科学
多元分析
比例危险模型
冲程(发动机)
事件数据
统计
人工智能
机器学习
数学
协变量
机械工程
物理
量子力学
工程类
作者
Wen Li,Mohammad H. Rahbar,Sean I. Savitz,Jing Zhang,Sori Kim Lundin,Amirali Tahanan,Jing Ning
标识
DOI:10.1177/09622802231226330
摘要
In multivariate recurrent event data, each patient may repeatedly experience more than one type of event. Analysis of such data gets further complicated by the time-varying dependence structure among different types of recurrent events. The available literature regarding the joint modeling of multivariate recurrent events assumes a constant dependency over time, which is strict and often violated in practice. To close the knowledge gap, we propose a class of flexible shared random effects models for multivariate recurrent event data that allow for time-varying dependence to adequately capture complex correlation structures among different types of recurrent events. We developed an expectation–maximization algorithm for stable and efficient model fitting. Extensive simulation studies demonstrated that the estimators of the proposed approach have satisfactory finite sample performance. We applied the proposed model and the estimating method to data from a cohort of stroke patients identified in the University of Texas Houston Stroke Registry and evaluated the effects of risk factors and the dependence structure of different types of post-stroke readmission events.
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