Partitioning the population attributable fraction for a sequential chain of effects.

Craig A Mason, Shihfen Tu
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引用次数: 19

Abstract

Background: While the population attributable fraction (PAF) provides potentially valuable information regarding the community-level effect of risk factors, significant limitations exist with current strategies for estimating a PAF in multiple risk factor models. These strategies can result in paradoxical or ambiguous measures of effect, or require unrealistic assumptions regarding variables in the model. A method is proposed in which an overall or total PAF across multiple risk factors is partitioned into components based upon a sequential ordering of effects. This method is applied to several hypothetical data sets in order to demonstrate its application and interpretation in diverse analytic situations.

Results: The proposed method is demonstrated to provide clear and interpretable measures of effect, even when risk factors are related/correlated and/or when risk factors interact. Furthermore, this strategy not only addresses, but also quantifies issues raised by other researchers who have noted the potential impact of population-shifts on population-level effects in multiple risk factor models.

Conclusion: Combined with simple, unadjusted PAF estimates and an aggregate PAF based on all risk factors under consideration, the sequentially partitioned PAF provides valuable additional information regarding the process through which population rates of a disorder may be impacted. In addition, the approach can also be used to statistically control for confounding by other variables, while avoiding the potential pitfalls of attempting to separately differentiate direct and indirect effects.

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划分连续效应链的总体归因分数。
背景:虽然人口归因分数(population attribution fraction, PAF)提供了关于危险因素在社区水平影响的潜在有价值的信息,但目前在多危险因素模型中估计PAF的策略存在显著的局限性。这些策略可能导致矛盾或模糊的效果度量,或者需要对模型中的变量进行不切实际的假设。提出了一种方法,该方法将跨多个风险因素的整体或全部PAF根据影响的顺序划分为组件。将该方法应用于几个假设数据集,以演示其在不同分析情况下的应用和解释。结果:所提出的方法被证明提供了清晰和可解释的效果测量,即使当风险因素相关/相关和/或当风险因素相互作用时。此外,该策略不仅解决了其他研究人员提出的问题,而且还量化了其他研究人员提出的问题,这些研究人员注意到,在多重风险因素模型中,人口转移对人口水平效应的潜在影响。结论:结合简单的、未调整的PAF估计值和基于考虑的所有风险因素的汇总PAF,顺序划分的PAF提供了有关疾病人群发病率可能受到影响的过程的有价值的附加信息。此外,该方法还可用于统计控制其他变量的混淆,同时避免试图分别区分直接和间接影响的潜在陷阱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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