可归因风险
分数(化学)
加权
事件(粒子物理)
公制(单位)
混淆
逆概率加权
统计
计量经济学
人口
计算机科学
集合(抽象数据类型)
数据挖掘
医学
数学
环境卫生
工程类
化学
物理
运营管理
有机化学
倾向得分匹配
量子力学
放射科
程序设计语言
作者
Maja von Cube,Martin Schumacher,Jean François Timsit,Johan Decruyenaere,Johan Stéen
摘要
Even though the population-attributable fraction (PAF) is a well-established metric, it is often incorrectly estimated or interpreted not only in clinical application, but also in statistical research articles. The risk of bias is especially high in more complex time-to-event data settings.We explain how the PAF can be defined, identified and estimated in time-to-event settings with competing risks and time-dependent exposures. By using multi-state methodology and inverse probability weighting, we demonstrate how to reduce or completely avoid severe types of biases including competing risks bias, immortal time bias and confounding due to both baseline and time-varying patient characteristics.The method is exemplarily applied to a real data set. Moreover, we estimate the number of deaths that were attributable to ventilator-associated pneumonia in France in the year 2016. The example demonstrates how, under certain simplifying assumptions, PAF estimates can be extrapolated to a target population of interest.Defining and estimating the PAF in advanced time-to-event settings within a framework that unifies causal and multi-state modelling enables to tackle common sources of bias and allows straightforward implementation with standard software packages.
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