Wilson Ander, Chiu Yueh-Hsiu Mathilda, Hsu Hsiao-Hsien Leon, Wright Robert O, Wright Rosalind J, Coull Brent A
Department of Statistics, Colorado State University, Fort Collins, Colorado.
Department of Environmental Medicine and Public Health, Icahn School of Medicine at Mount Sinai, New York, New York.
Am J Epidemiol. 2017 Dec 1;186(11):1281-1289. doi: 10.1093/aje/kwx184.
Evidence supports an association between maternal exposure to air pollution during pregnancy and children's health outcomes. Recent interest has focused on identifying critical windows of vulnerability. An analysis based on a distributed lag model (DLM) can yield estimates of a critical window that are different from those from an analysis that regresses the outcome on each of the 3 trimester-average exposures (TAEs). Using a simulation study, we assessed bias in estimates of critical windows obtained using 3 regression approaches: 1) 3 separate models to estimate the association with each of the 3 TAEs; 2) a single model to jointly estimate the association between the outcome and all 3 TAEs; and 3) a DLM. We used weekly fine-particulate-matter exposure data for 238 births in a birth cohort in and around Boston, Massachusetts, and a simulated outcome and time-varying exposure effect. Estimates using separate models for each TAE were biased and identified incorrect windows. This bias arose from seasonal trends in particulate matter that induced correlation between TAEs. Including all TAEs in a single model reduced bias. DLM produced unbiased estimates and added flexibility to identify windows. Analysis of body mass index z score and fat mass in the same cohort highlighted inconsistent estimates from the 3 methods.
有证据支持孕期母亲暴露于空气污染与儿童健康结局之间存在关联。最近的研究兴趣集中在确定关键的脆弱期。基于分布滞后模型(DLM)的分析得出的关键期估计值,可能与将结局变量对三个孕期平均暴露量(TAE)分别进行回归分析得出的估计值不同。通过一项模拟研究,我们评估了使用三种回归方法得出的关键期估计值中的偏差:1)三个单独的模型,用于估计与三个TAE中每一个的关联;2)一个单一模型,用于联合估计结局变量与所有三个TAE之间的关联;3)一个DLM。我们使用了马萨诸塞州波士顿及其周边地区一个出生队列中238例出生的每周细颗粒物暴露数据,以及一个模拟的结局变量和随时间变化的暴露效应。对每个TAE使用单独模型得出的估计值存在偏差,并识别出了错误的关键期。这种偏差源于颗粒物的季节性趋势,该趋势导致了TAE之间的相关性。在一个单一模型中纳入所有TAE可减少偏差。DLM产生了无偏估计,并增加了识别关键期的灵活性。对同一队列中体重指数z评分和脂肪量的分析突出了这三种方法得出的估计值不一致。