Children's health studies support an association between maternal environmental exposures and children's birth and health outcomes. A common goal in such studies is to identify critical windows of susceptibility -- periods during gestation with increased association between maternal exposures and a future outcome. The associations and timings of critical windows are likely heterogeneous across different levels of individual, family, and neighborhood characteristics. However, the few studies that have considered effect modification were limited to a few pre-specified subgroups. We propose a statistical learning method to estimate critical windows at the individual level and identify important characteristics that induce heterogeneity. The proposed approach uses distributed lag models (DLMs) modified by Bayesian additive regression trees to account for effect heterogeneity based on a potentially high-dimensional set of modifying factors. We show in a simulation study that our model can identify both critical windows and modifiers responsible for DLM heterogeneity. We estimate the relationship between weekly exposures to fine particulate matter during gestation and birth weight in an administrative Colorado birth cohort. We identify maternal body mass index (BMI), age, Hispanic designation, and education as modifiers of the distributed lag effects and find non-Hispanics with increased BMI to be a susceptible population.
翻译:儿童健康研究支持了孕产妇环境接触与儿童出生和健康结果之间的关联。这些研究的一个共同目标是确定易受感染的关键窗口 -- -- 妊娠期期间,产妇接触与未来结果之间的关联增加。关键窗口的关联和时机可能因个人、家庭和邻区的不同特点而各不相同。然而,考虑改变效果的少数研究仅限于几个预先指定的分组。我们建议采用统计学习方法来估计个人层面的关键窗口,并查明导致异质性的重要特征。拟议方法使用经巴耶西亚添加性回归树修改的分布式滞后模型,以说明基于潜在高维度的变异因素的影响异性。我们在模拟研究中显示,我们的模式可以确定关键窗口和对DLM异质负责的改变。我们估计了妊娠期间每周接触微粒子和在科罗拉多州行政部门出生组中出生体重之间的关系。我们确定了孕产妇身体群指数(BMI)、年龄、西班牙语名称和教育等分布式滞后模型,作为分布式变异性因素的改变因素。我们通过模拟研究发现,我们的模型既可以确定关键窗口,又可以确定应对DLM-M异性。