置信区间
可归因风险
分数(化学)
蒙特卡罗方法
计算机科学
统计
样本量测定
计量经济学
R包
医学
数学
作者
John Ferguson,Alberto Alvarez-Iglesias,John Newell,John Hinde,Martin O'Donnell
标识
DOI:10.1177/0962280216655374
摘要
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.
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