Eisenberg Joseph N S, Lewis Bryan L, Porco Travis C, Hubbard Alan H, Colford John M
School of Public Health, University of California, Berkeley, CA 94720-7360, USA.
Epidemiology. 2003 Jul;14(4):442-50. doi: 10.1097/01.ede.0000071411.19255.4c.
An important concept in epidemiology is attributable risk, defined as the difference in risk between an exposed and an unexposed group. For example, in an intervention trial, the attributable risk is the difference in risk between a group that receives an intervention and another that does not. A fundamental assumption in estimating the attributable risk associated with the intervention is that disease outcomes are independent. When estimating population risks associated with treatment regimens designed to affect exposure to infectious pathogens, however, there may be bias due to the fact that infectious pathogens can be transmitted from host to host causing a potential statistical dependency in disease status among participants.
To estimate this bias, we used a mathematical model of community- and household-level disease transmission to explicitly incorporate the dependency among participants. We illustrate the method using a plausible model of infectious diarrheal disease.
Analysis of the model suggests that this bias in attributable risk estimates is a function of transmission from person to person, either directly or indirectly via the environment.
By incorporating these dependencies among individuals in a transmission model, we show how the bias of attributable risk estimates could be quantified to adjust effect estimates reported from intervention trials.
流行病学中的一个重要概念是归因风险,定义为暴露组与非暴露组之间的风险差异。例如,在一项干预试验中,归因风险是接受干预的组与未接受干预的组之间的风险差异。估计与干预相关的归因风险的一个基本假设是疾病结局是独立的。然而,在估计与旨在影响感染性病原体暴露的治疗方案相关的人群风险时,可能会存在偏差,因为感染性病原体可以在宿主之间传播,导致参与者之间疾病状态存在潜在的统计依赖性。
为了估计这种偏差,我们使用了一个社区和家庭层面疾病传播的数学模型,以明确纳入参与者之间的依赖性。我们使用一个合理的感染性腹泻病模型来说明该方法。
对该模型的分析表明,归因风险估计中的这种偏差是人与人之间直接或通过环境间接传播的函数。
通过在传播模型中纳入个体之间的这些依赖性,我们展示了如何量化归因风险估计的偏差,以调整干预试验报告的效应估计。