miRecSurv Package: Prentice-Williams-Peterson Models with Multiple Imputation of Unknown Number of Previous Episodes

R J. Pub Date : 2021-01-01 DOI:10.32614/rj-2021-082
D. Moriña, G. Hernández-Herrera, A. Navarro
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引用次数: 1

Abstract

Left censoring can occur with relative frequency when analysing recurrent events in epidemiological studies, especially observational ones. Concretely, the inclusion of individuals that were already at risk before the effective initiation in a cohort study, may cause the unawareness of prior episodes that have already been experienced, and this will easily lead to biased and inefficient estimates. The miRecSurv package is based on the use of models with specific baseline hazard, with multiple imputation of the number of prior episodes when unknown by means of the COMPoisson distribution, a very flexible count distribution that can handle over-, suband equidispersion, with a stratified model depending on whether the individual had or had not previously been at risk, and the use of a frailty term. The usage of the package is illustrated by means of a real data example based on a occupational cohort study and a simulation study.
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miRecSurv包:Prentice-Williams-Peterson模型与先前事件的未知数量的多重Imputation
在分析流行病学研究中的复发事件时,特别是在观察性研究中,左侧审查可以相对频繁地发生。具体地说,在队列研究中纳入在有效开始之前已经处于危险中的个体,可能会导致对已经经历过的先前事件的不了解,这很容易导致有偏见和低效的估计。miRecSurv包是基于使用具有特定基线危险的模型,通过COMPoisson分布对未知的先前发作次数进行多次代入,COMPoisson分布是一种非常灵活的计数分布,可以处理过分散、次分散和等分散,分层模型取决于个体以前是否存在风险,并使用脆弱性术语。通过一个基于职业队列研究和模拟研究的真实数据实例说明了该软件包的使用方法。
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