1 HRB Clinical Research Facility, National University of Ireland Galway, Ireland.
2 School of Mathematics, Statistics and Applied Mathematics, National University of Ireland Galway, Ireland.
Stat Methods Med Res. 2018 Apr;27(4):1141-1152. doi: 10.1177/0962280216655374. Epub 2016 Jun 24.
Chronic diseases tend to depend on a large number of risk factors, both environmental and genetic. Average attributable fractions were introduced by Eide and Gefeller as a way of partitioning overall disease burden into contributions from individual risk factors; this may be useful in deciding which risk factors to target in disease interventions. Here, we introduce new estimation methods for average attributable fractions that are appropriate for both case-control designs and prospective studies. Confidence intervals, derived using Monte Carlo simulation, are also described. Finally, we introduce a novel approximation for the sample average attributable fraction that will ensure a computationally tractable approach when the number of risk factors is large. An R package, [Formula: see text], implementing the methods described in this manuscript can be downloaded from the CRAN repository.
慢性病往往取决于大量的环境和遗传风险因素。Eide 和 Gefeller 提出了平均归因分数的概念,用于将整体疾病负担分解为单个风险因素的贡献;这在决定针对疾病干预的哪些风险因素方面可能是有用的。在这里,我们为病例对照设计和前瞻性研究引入了新的平均归因分数估计方法。还描述了使用蒙特卡罗模拟得出的置信区间。最后,我们引入了一种新的样本平均归因分数近似值,当风险因素数量较大时,该近似值将确保一种计算上可行的方法。一个实现本研究中描述的方法的 R 包[Formula: see text]可以从 CRAN 存储库下载。