June 2022 Kernel machine and distributed lag models for assessing windows of susceptibility to environmental mixtures in children’s health studies
Ander Wilson, Hsiao-Hsien Leon Hsu, Yueh-Hsiu Mathilda Chiu, Robert O. Wright, Rosalind J. Wright, Brent A. Coull
Author Affiliations +
Ann. Appl. Stat. 16(2): 1090-1110 (June 2022). DOI: 10.1214/21-AOAS1533

Abstract

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 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 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 outcome. 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.

Funding Statement

This work was supported in part by NIH grants R01ES028811, R01ES013744, P30ES000002, P30ES023515, and UH3OD023337 and U.S. EPA grant RD-83587201. Its contents are solely the responsibility of the grantee and do not necessarily represent the official views of the U.S. EPA. Further, U.S. EPA does not endorse the purchase of any commercial products or services mentioned in the publication. The ACCESS cohort has been supported by NIH grants R01ES010932, U01HL072494, and R01HL080674. This work utilized the RMACC Summit supercomputer which is supported by the NSF (awards ACI-1532235 and ACI-1532236), the University of Colorado Boulder and Colorado State University.

Citation

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Ander Wilson. Hsiao-Hsien Leon Hsu. Yueh-Hsiu Mathilda Chiu. Robert O. Wright. Rosalind J. Wright. Brent A. Coull. "Kernel machine and distributed lag models for assessing windows of susceptibility to environmental mixtures in children’s health studies." Ann. Appl. Stat. 16 (2) 1090 - 1110, June 2022. https://doi.org/10.1214/21-AOAS1533

Information

Received: 1 October 2020; Revised: 1 June 2021; Published: June 2022
First available in Project Euclid: 13 June 2022

MathSciNet: MR4438825
zbMATH: 1498.62269
Digital Object Identifier: 10.1214/21-AOAS1533

Keywords: Air pollution , chemical mixtures , children’s health , distributed lag models , kernel machine regression , windows of susceptibility

Rights: Copyright © 2022 Institute of Mathematical Statistics

Vol.16 • No. 2 • June 2022
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