Studies of the relationships between environmental exposures and adverse health outcomes often rely on a two-stage statistical modeling approach, where exposure is modeled/predicted in the first stage and used as input to a separately fit health outcome analysis in the second stage. Uncertainty in these predictions is frequently ignored, or accounted for in an overly simplistic manner, when estimating the associations of interest. Working in the Bayesian setting, we propose a flexible kernel density estimation (KDE) approach for fully utilizing posterior output from the first stage modeling/prediction to make accurate inference on the association between exposure and health in the second stage, derive the full conditional distributions needed for efficient model fitting, detail its connections with existing approaches, and compare its performance through simulation. Our KDE approach is shown to generally have improved performance across several settings and model comparison metrics. Using competing approaches, we investigate the association between lagged daily ambient fine particulate matter levels and stillbirth counts in New Jersey (2011-2015), observing an increase in risk with elevated exposure three days prior to delivery. The newly developed methods are available in the R package KDExp.
翻译:环境接触与不良健康结果之间的关系研究往往依赖于一种两阶段统计模型方法,即第一阶段的接触是建模/预测,并用作第二阶段单独适合健康结果分析的投入。这些预测中的不确定性经常被忽略,或者在估计相关关系时以过于简单的方式进行核算。在巴伊西亚环境下,我们提议采用灵活内核密度估计方法,以充分利用第一阶段的后端建模/预测产出,准确推断第二阶段的接触与健康之间的联系,得出高效模型安装所需的全面有条件分布,详细说明其与现有方法的联系,并通过模拟比较其绩效。我们的 KDE方法显示,一般在几种环境中提高了绩效,模型比较指标也普遍得到简化。我们采用相互竞争的方法,调查新泽西地区日落后的环境微粒物质水平与死产量之间的关联(2011-2015年),在交付前三天观察到接触风险增加的风险。新开发的方法见R 包 KDExpl。