Exposures to environmental chemicals during gestation can alter health status later in life. Most studies of maternal exposure to chemicals during pregnancy focus on a single chemical exposure observed at high temporal resolution. Recent research has turned to focus on exposure to mixtures of multiple chemicals, generally observed at a single time point. We consider statistical methods for analyzing data on chemical mixtures that are observed at a high temporal resolution. As motivation, we analyze the association between exposure to four ambient air pollutants observed weekly throughout gestation and birth weight in a Boston-area prospective birth cohort. To explore patterns in the data, we first apply methods for analyzing data on (1) a single chemical observed at high temporal resolution, and (2) a mixture measured at a single point in time. We highlight the shortcomings of these approaches for temporally-resolved data on exposure to chemical mixtures. Second, we propose a novel method, a Bayesian kernel machine regression distributed lag model (BKMR-DLM), that simultaneously accounts for nonlinear associations and interactions among time-varying measures of exposure to mixtures. BKMR-DLM uses a functional weight for each exposure that parameterizes the window of susceptibility corresponding to that exposure within a kernel machine framework that captures non-linear and interaction effects of the multivariate exposure on the outcome. In a simulation study, we show that the proposed method can better estimate the exposure-response function and, in high signal settings, can identify critical windows in time during which exposure has an increased association with the outcome. Applying the proposed method to the Boston birth cohort data, we found evidence of a negative association between organic carbon and birth weight and that nitrate modifies the organic carbon, elemental carbon...
翻译:妊娠期间接触环境化学品可能会在妊娠期后期改变健康状况。大多数妊娠期产妇接触化学品的研究大多侧重于在高时间分辨率下观察到的单一化学接触;最近的研究已转向侧重于接触多种化学品混合物,通常在同一时间点上观察到;我们考虑以统计方法分析高时间分辨率观测到的化学混合物数据;作为动机,我们分析每周在妊娠期和在波士顿地区潜在分娩组群中出生体重中观察到的四种环境空气污染的接触之间的关联;为了探索数据模式,我们首先采用方法分析以下数据:(1) 在高时间分辨率下观察到的单一化学接触;和(2) 在一个时间点上测量的混合物混合物接触。我们强调这些方法的缺点,以暂时溶解的化学品混合物接触数据;第二,我们提出一个新的方法,即Bayesian内心内脏回落分布模型(BMR-DLM),同时计算在波士顿地区潜在生育组群中观察到的非线性分娩关联和时间对混合物接触的相互作用。BKMR-DLM在每次接触时都采用功能重量上使用一种功能加权的比重,在每次接触时段内,将精确的临界接触时间比值缩缩缩缩缩缩缩缩缩缩缩缩缩数据,以计算,以计算,以计算结果,以显示我们所测测测测测测测测测测测测测测测测到的数值值后的结果。