Department of Internal Medicine and Pediatrics, Ghent University, Ghent, Belgium.
Renal Division, Ghent University Hospital, Ghent, Belgium.
Stat Med. 2024 Feb 28;43(5):912-934. doi: 10.1002/sim.9988. Epub 2023 Dec 20.
The population-attributable fraction (PAF) is commonly interpreted as the proportion of events that can be ascribed to a certain exposure in a certain population. Its estimation is sensitive to common forms of time-dependent bias in the face of a time-dependent exposure. Predominant estimation approaches based on multistate modeling fail to fully eliminate such bias and, as a result, do not permit a causal interpretation, even in the absence of confounding. While recently proposed multistate modeling approaches can successfully eliminate residual time-dependent bias, and moreover succeed to adjust for time-dependent confounding by means of inverse probability of censoring weighting, inadequate application, and misinterpretation prevails in the medical literature. In this paper, we therefore revisit recent work on previously proposed PAF estimands and estimators in settings with time-dependent exposures and competing events and extend this work in several ways. First, we critically revisit the interpretation and applied terminology of these estimands. Second, we further formalize the assumptions under which a causally interpretable PAF estimand can be identified and provide analogous weighting-based representations of the identifying functionals of other proposed estimands. This representation aims to enhance the applied statistician's understanding of different sources of bias that may arise when the aim is to obtain a valid estimate of a causally interpretable PAF. To illustrate and compare these representations, we present a real-life application to observational data from the Ghent University Hospital ICUs to estimate the fraction of ICU deaths attributable to hospital-acquired infections.
人群归因分数(PAF)通常被解释为在特定人群中归因于特定暴露的事件比例。在面对时间依赖性暴露时,其估计对常见的时间依赖性偏倚形式很敏感。基于多状态建模的主要估计方法无法完全消除这种偏差,因此,即使没有混杂,也不允许进行因果解释。虽然最近提出的多状态建模方法可以成功消除残余的时间依赖性偏差,并且可以通过逆概率 censoring 加权来调整时间依赖性混杂,但在医学文献中仍然存在应用不当和误解的情况。因此,在本文中,我们重新审视了以前提出的具有时间依赖性暴露和竞争事件的 PAF 估计量和估计方法的最新研究工作,并在几个方面扩展了这项工作。首先,我们批判性地重新审视了这些估计量的解释和应用术语。其次,我们进一步形式化了可以识别因果可解释的 PAF 估计量的假设,并提供了其他建议的估计量的识别函数的类似加权表示。这种表示旨在增强应用统计学家对当目标是获得因果可解释的 PAF 的有效估计时可能出现的不同偏差源的理解。为了说明和比较这些表示,我们将真实数据应用于根特大学医院 ICU 的观察数据,以估计 ICU 死亡归因于医院获得性感染的比例。