Warren Joshua L, Luben Thomas J, Chang Howard H
Yale University, New Haven, USA.
US Environmental Protection Agency, Research Triangle Park, USA.
J R Stat Soc Ser C Appl Stat. 2020 Jun;69(3):681-696. doi: 10.1111/rssc.12407. Epub 2020 Mar 30.
Distributed lag models have been used to identify critical pregnancy periods of exposure (i.e. critical exposure windows) to air pollution in studies of pregnancy outcomes. However, much of the previous work in this area has ignored the possibility of spatial variability in the lagged health effect parameters that may result from exposure characteristics and/or residual confounding. We develop a spatially varying Gaussian process model for critical windows called 'SpGPCW' and use it to investigate geographic variability in the association between term low birth weight and average weekly concentrations of ozone and PM during pregnancy by using birth records from North Carolina. SpGPCW is designed to accommodate areal level spatial correlation between lagged health effect parameters and temporal smoothness in risk estimation across pregnancy. Through simulation and a real data application, we show that the consequences of ignoring spatial variability in the lagged health effect parameters include less reliable inference for the parameters and diminished ability to identify true critical window sets, and we investigate the use of existing Bayesian model comparison techniques as tools for determining the presence of spatial variability. We find that exposure to PM is associated with elevated term low birth weight risk in selected weeks and counties and that ignoring spatial variability results in null associations during these periods. An R package (SpGPCW) has been developed to implement the new method.
在妊娠结局研究中,分布滞后模型已被用于确定暴露于空气污染的关键孕期(即关键暴露窗口)。然而,该领域以前的许多工作都忽略了滞后健康效应参数存在空间变异性的可能性,这种变异性可能由暴露特征和/或残余混杂因素导致。我们开发了一种针对关键窗口的空间可变高斯过程模型,称为“SpGPCW”,并利用北卡罗来纳州的出生记录,用它来研究足月低出生体重与孕期臭氧和颗粒物平均每周浓度之间关联的地理变异性。SpGPCW旨在适应滞后健康效应参数之间的区域水平空间相关性以及孕期风险估计中的时间平滑性。通过模拟和实际数据应用,我们表明忽略滞后健康效应参数的空间变异性会导致参数推断的可靠性降低,以及识别真正关键窗口集的能力减弱,并且我们研究了使用现有的贝叶斯模型比较技术作为确定空间变异性存在的工具。我们发现,在选定的周数和郡县中,暴露于颗粒物与足月低出生体重风险升高有关,而忽略空间变异性会导致这些时期出现零关联。我们已经开发了一个R包(SpGPCW)来实现这种新方法。