Using machine learning to investigate the influence of the prenatal chemical exposome on neurodevelopment of young children
- PMID: 40222479
- DOI: 10.1016/j.neuro.2025.04.001
Using machine learning to investigate the influence of the prenatal chemical exposome on neurodevelopment of young children
Abstract
Research investigating the prenatal chemical exposome and child neurodevelopment has typically focused on a limited number of chemical exposures and controlled for sociodemographic factors and maternal mental health. Emerging machine learning approaches may facilitate more comprehensive examinations of the contributions of chemical exposures, sociodemographic factors, and maternal mental health to child neurodevelopment. A machine learning pipeline that utilized feature selection and ranking was applied to investigate which common prenatal chemical exposures and sociodemographic factors best predict neurodevelopmental outcomes in young children. Data from 406 maternal-child pairs enrolled in the APrON study were used. Maternal concentrations of 32 environmental chemical exposures (i.e., phthalates, bisphenols, per- and polyfluoroalkyl substances (PFAS), metals, trace elements) measured during pregnancy and 11 sociodemographic factors, as well as measures of maternal mental health and urinary creatinine were entered into the machine learning pipeline. The pipeline, which consisted of a RReliefF variable selection algorithm and support vector machine regression model, was used to identify and rank the best subset of variables predictive of cognitive, language, and motor development outcomes on the Bayley Scales of Infant Development-Third Edition (Bayley-III) at 2 years of age. Bayley-III cognitive scores were best predicted using 29 variables, resulting in a correlation coefficient of r = 0.27 (R2=0.07). For language outcomes, 45 variables led to the best result (r = 0.30; R2=0.09), whereas for motor outcomes 33 variables led to the best result (r = 0.28, R2=0.09). Environmental chemicals, sociodemographic factors, and maternal mental health were found to be highly ranked predictors of cognitive, language, and motor development in young children. Our findings demonstrate the potential of machine learning approaches to identify and determine the relative importance of different predictors of child neurodevelopmental outcomes. Future developmental neurotoxicology research should consider the prenatal chemical exposome as well as sample characteristics such as sociodemographic factors and maternal mental health as important predictors of child neurodevelopment.
Keywords: APrON; Developmental neurotoxicology; Epidemiology; Infant and child neurotoxicity studies; Neurobehavioural Testing.
Copyright © 2025 The Authors. Published by Elsevier B.V. All rights reserved.
Conflict of interest statement
Declaration of Competing Interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: Deborah Dewey reports financial support was provided by Alberta Children’s Hospital Research Institute. Deborah Dewey reports financial support was provided by Canadian Institutes of Health Research. Jonathan Martin reports financial support was provided by Canadian Institutes of Health Research. Gillian England-Mason reports financial support was provided by Canadian Institutes of Health Research. Deborah Dewey reports financial support was provided by Alberta Innovates Health Solutions. Munawar Hussien Soomro reports financial support was provided by Alberta Children’s Hospital Research Institute. Jonathan Martin reports financial support was provided by National Institutes of Health. Nils Forkert reports financial support was provided by Canada Research Chairs Program. Nils Forkert reports financial support was provided by Alberta Children’s Hospital Research Institute. Kimberly Amador reports financial support was provided by Alberta Children’s Hospital Research Institute. If there are other authors, they declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
MeSH terms
Substances
LinkOut - more resources
Full Text Sources
Medical