Benichou J
University of Rouen School of Medicine and Rouen University Hospital, Department of Biostatistics, Rouen, France.
Stat Methods Med Res. 2001 Jun;10(3):195-216. doi: 10.1177/096228020101000303.
This paper reviews adjusted methods of estimation of attributable risk (AR), that is methods that allow one to obtain estimates of AR while controlling for other factors. Estimability and basic principles of AR estimation are first considered and the rationale for adjusted AR estimators is discussed. Then, adjusted AR estimators are reviewed focusing on cross-sectional, cohort and case-control studies. Two inconsistent adjusted estimators are briefly commented upon. Next, adjusted estimators based on stratification, namely the weighted-sum and Mantel-Haenszel (MH) approaches, are reviewed and contrasted. It appears that the weighted-sum approach, which allows for full interaction between exposure and adjustment factors, can be affected by small-sample bias. By contrast, the MH approach, which rests on the assumption of no interaction between exposure and adjustment factors may be misleading if interaction between exposure and adjustment factors is present. Model-based adjusted estimators represent a more general and flexible approach that includes both stratification approaches as special cases and offers intermediate options. Bruzzi et al.'s and Greenland and Drescher's estimators are reviewed and contrasted. Finally, special problems of adjusted estimation are considered, namely estimation from case-cohort data, estimation for risk factors with multiple levels, for multiple risk factors, for recurrent events, estimation of the prevented and preventable fractions, and estimation of the generalized impact fraction. Comments on future directions are presented.
本文回顾了归因风险(AR)的调整估计方法,即允许在控制其他因素的同时获得AR估计值的方法。首先考虑AR估计的可估计性和基本原理,并讨论调整后AR估计量的基本原理。然后,重点针对横断面研究、队列研究和病例对照研究回顾调整后的AR估计量。简要评论了两种不一致的调整估计量。接下来,回顾并对比基于分层的调整估计量,即加权和法与Mantel-Haenszel(MH)法。加权和法允许暴露因素与调整因素之间充分交互作用,但可能受小样本偏差影响。相比之下,如果暴露因素与调整因素之间存在交互作用,基于暴露因素与调整因素之间无交互作用假设的MH法可能会产生误导。基于模型的调整估计量是一种更通用、灵活的方法,它将分层方法作为特殊情况包含在内,并提供中间选项。回顾并对比了布鲁齐等人以及格林兰和德雷舍尔的估计量。最后,考虑调整估计中的特殊问题:即从病例队列数据进行估计、对具有多个水平的风险因素进行估计、对多个风险因素进行估计、对复发事件进行估计、预防分数和可预防分数的估计以及广义影响分数的估计。还对未来方向提出了评论。