In studies of maternal exposure to air pollution a children's health outcome is regressed on exposures observed during pregnancy. The distributed lag nonlinear model (DLNM) is a statistical method commonly implemented to estimate an exposure-time-response function when it is postulated the exposure effect is nonlinear. Previous implementations of the DLNM estimate an exposure-time-response surface parameterized with a bivariate basis expansion. However, basis functions such as splines assume smoothness across the entire exposure-time-response surface, which may be unrealistic in settings where the exposure is associated with the outcome only in a specific time window. We propose a framework for estimating the DLNM based on Bayesian additive regression trees. Our method operates using a set of regression trees that each assume piecewise constant relationships across the exposure-time space. In a simulation, we show that our model outperforms spline-based models when the exposure-time surface is not smooth, while both methods perform similarly in settings where the true surface is smooth. Importantly, the proposed approach is lower variance and more precisely identifies critical windows during which exposure is associated with a future health outcome. We apply our method to estimate the association between maternal exposure to PM$_{2.5}$ and birth weight in a Colorado USA birth cohort.
翻译:在母亲接触空气污染的研究中,在怀孕期间观察到的接触情况中,儿童的健康结果会下降。分布式滞后非线性模型(DLNM)是一种统计方法,通常用于估算假定接触效应时的暴露时间反应功能。DLNM以前的实施估计了接触时间反应表面参数,以双轨基扩展为基础。但是,样条等基本功能在整个接触时间反应表面中都表现出平稳,这在接触仅与特定时间窗口中的结果有关的情况下可能是不现实的。我们建议了一个框架,用于估算基于贝叶西亚累加回归树的DLNM值。我们的方法使用一套回归树来操作,每棵树都假定在接触时间空间的接触持续关系是非线性。在模拟中,我们显示我们的模型在接触时间表不均匀时优于样条基模型,而这两种方法在真实表面平坦的环境中都表现得不相近。建议的方法是低差异,更准确地确定关键窗口,在接触期间以Bayesar Reclimtial 与未来生育结果之间。我们采用的方法。