Distributed lag models are useful in environmental epidemiology as they allow the user to investigate critical windows of exposure, defined as the time period during which exposure to a pollutant adversely affects health outcomes. Recent studies have focused on estimating the health effects of a large number of environmental exposures, or an environmental mixture, on health outcomes. In such settings, it is important to understand which environmental exposures affect a particular outcome, while acknowledging the possibility that different exposures have different critical windows. Further, in the studies of environmental mixtures, it is important to identify interactions among exposures, and to account for the fact that this interaction may occur between two exposures having different critical windows. Exposure to one exposure early in time could cause an individual to be more or less susceptible to another exposure later in time. We propose a Bayesian model to estimate the temporal effects of a large number of exposures on an outcome. We use spike-and-slab priors and semiparametric distributed lag curves to identify important exposures and exposure interactions, and discuss extensions with improved power to detect harmful exposures. We then apply these methods to estimate the effects of exposure to multiple air pollutants during pregnancy on birthweight from vital records in Colorado.
翻译:在环境流行病学中,分布式滞后模型是有用的,因为这些模型使用户能够调查关键接触窗口,即接触污染物对健康结果产生不利影响的时间段。最近的研究侧重于估计大量环境接触或环境混合物对健康结果的健康影响。在这种环境中,必须了解哪些环境接触影响特定结果,同时承认不同接触具有不同关键窗口的可能性。此外,在环境混合物的研究中,必须查明接触接触之间的相互作用,并解释这种相互作用可能发生在两个不同关键窗口的接触之间这一事实。早期接触一次接触可能使个人在稍后时间或多或少地易受另一接触的影响。我们建议采用拜斯模型来估计大量接触对结果的时间影响。我们使用前期悬浮和半光度分布式滞后曲线来确定重要的接触和接触相互作用,并讨论扩大检测有害接触的能力。然后,我们采用这些方法来估计妊娠期间多种空气污染对分娩的影响,从科罗拉多州的重要记录中得出。