TY - JOUR
T1 - KERNEL MACHINE AND DISTRIBUTED LAG MODELS FOR ASSESSING WINDOWS OF SUSCEPTIBILITY TO ENVIRONMENTAL MIXTURES IN CHILDREN’S HEALTH STUDIES
AU - Wilson, Ander
AU - Hsu, Hsiao Hsien Leon
AU - Chiu, Yueh Hsiu Mathilda
AU - Wright, Robert O.
AU - Wright, Rosalind J.
AU - Coull, Brent A.
N1 - Publisher Copyright:
© Institute of Mathematical Statistics, 2022.
PY - 2022
Y1 - 2022
N2 - Exposures to environmental chemicals during gestation can alter health status later in life. Most studies of maternal exposure to chemicals during pregnancy have focused 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 mix-tures. 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 nonlinear 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 out-come. Applying the proposed method to the Boston birth cohort data, we find evidence of a negative association between organic carbon and birth weight and that nitrate modifies the organic carbon, elemental carbon, and sulfate exposure-response functions.
AB - Exposures to environmental chemicals during gestation can alter health status later in life. Most studies of maternal exposure to chemicals during pregnancy have focused 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 mix-tures. 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 nonlinear 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 out-come. Applying the proposed method to the Boston birth cohort data, we find evidence of a negative association between organic carbon and birth weight and that nitrate modifies the organic carbon, elemental carbon, and sulfate exposure-response functions.
KW - Air pollution
KW - chemical mixtures
KW - children’s health
KW - distributed lag models
KW - kernel machine regression
KW - windows of susceptibility
UR - http://www.scopus.com/inward/record.url?scp=85132733307&partnerID=8YFLogxK
U2 - 10.1214/21-AOAS1533
DO - 10.1214/21-AOAS1533
M3 - Article
AN - SCOPUS:85132733307
SN - 1932-6157
VL - 16
SP - 887
EP - 904
JO - Annals of Applied Statistics
JF - Annals of Applied Statistics
IS - 2
ER -