医学
比例危险模型
泊松回归
心力衰竭
队列
生存分析
内科学
事件(粒子物理)
心血管事件
队列研究
回归分析
重症监护医学
心脏病学
统计
疾病
人口
物理
环境卫生
量子力学
数学
作者
Wei Yang,Christopher Jepson,Dawei Xie,Jason Roy,Haochang Shou,Jesse Y. Hsu,Amanda H. Anderson,J. Richard Landis,Jiang He,Harold I. Feldman
摘要
Cardiovascular events, such as hospitalizations because of congestive heart failure, often occur repeatedly in patients with CKD. Many studies focus on analyses of the first occurrence of these events, and discard subsequent information. In this article, we review a number of statistical methods for analyzing ordered recurrent events of the same type, including Poisson regression and three commonly used survival models that are extensions of Cox proportional hazards regression. We illustrate the models by analyzing data from the Chronic Renal Insufficiency Cohort Study to identify risk factors for congestive heart failure hospitalizations in patients with CKD. We show that recurrent event analyses provide additional insights about the data compared with a standard survival analysis of time to the first event.
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