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首页> 外文期刊>American Journal of Epidemiology >Estimating the effects of potential public health interventions on population disease burden: a step-by-step illustration of causal inference methods.
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Estimating the effects of potential public health interventions on population disease burden: a step-by-step illustration of causal inference methods.

机译:估计潜在的公共卫生干预措施对人群疾病负担的影响:因果推断方法的分步说明。

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Causal inference methods allow estimation of the effects of potential public health interventions on the population burden of disease. Motivated by calls for epidemiologic research to be presented in ways that are more informative for intervention, the authors present a didactic discussion of the steps required to estimate the population effect of a potential intervention using an imputation-based causal inference method and discuss the assumptions of and limitations to its use. An analysis of neighborhood smoking norms and individual smoking behavior is used as an illustration. The implementation steps include the following: 1) modeling the adjusted exposure and outcome association, 2) imputing the outcome probability for each individual while manipulating the exposure by "setting" it to different values, 3) averaging these probabilities across the population, and 4) bootstrapping confidence intervals. Imputed probabilities represent counterfactual estimates of the population smoking prevalence if neighborhood smoking norms could be manipulated through intervention. The degree to which temporal ordering, randomization, stability, and experimental treatment assignment assumptions are met in the illustrative example is discussed, along with ways that future studies could be designed to better meet the assumptions. With this approach, the potential effects of an intervention targeting neighborhoods, individuals, or other units can be estimated.
机译:因果推断方法可以估算潜在的公共卫生干预措施对疾病人口负担的影响。由于人们呼吁以更有益于干预的方式介绍流行病学研究,因此,作者对使用基于归因的因果推论方法估算潜在干预措施的总体效果所需的步骤进行了有说服力的讨论,并讨论了对及其使用限制。以邻里吸烟规范和个体吸烟行为的分析为例。实施步骤包括以下步骤:1)对调整后的风险敞口和结果关联进行建模; 2)通过“设置”不同的值来计算风险敞口,同时为每个人估算结果概率; 3)在总体中将这些概率平均化;以及4 )引导置信区间。如果可以通过干预来操纵邻里吸烟规范,则推算的概率表示人口吸烟率的反事实估计。讨论了在示例性示例中满足时间顺序,随机化,稳定性和实验性治疗分配假设的程度,以及可以设计未来研究以更好地满足假设的方式。通过这种方法,可以估计针对社区,个人或其他单位的干预措施的潜在影响。

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