Affiliation:
1. Baylor University
2. Dankook University College of Medicine
3. Seokyeong University
4. Dong-A University College of Medicine
Abstract
Abstract
This study aims to develop an environmental risk score (ERS) of multiple pollutants (MP) that cause kidney damage (KD) in Korean residents near abandoned metal mines or smelters and evaluate the association between ERS and KD by a history of occupational chemical exposure (OCE). Exposure to MP consisting of nine metals, four polycyclic aromatic hydrocarbons, and four volatile organic compounds was measured as urinary metabolites. The study participants based on the Forensic Research via Omics Markers (FROM) study (n = 256). Beta-2-microglobulin (β2-MG), N-acetyl-β-D-glucosaminidase (NAG), and estimated glomerular filtration rate (eGFR) were used as biomarkers of KD. Bayesian kernel machine regression (BKMR) was selected as the optimal ERS model with the best performance and stability of the predicted effect size among elastic net, adaptive elastic net, weighted quantile sum regression, BKMR, Bayesian additive regression tree, and super learner model. Variable importance was estimated to evaluate the effects of metabolites on KD. When stratified with the history of OCE after adjusting for several confounding factors, the risks for KD were higher in the OCE group than those in the non-OCE group: Odds ratio (OR; 95% CI) for ERS in non-OCE and OCE groups were 2.97 (2.19, 4.02) and 6.43 (2.85, 14.5) for β2-MG, 1.37 (1.01, 1.86) and 4.16 (1.85, 9.39) for NAG, and 4.57 (3.37, 6.19) and 6.44 (2.85, 14.5) for eGFR, respectively. We found that the ERS stratified the history of OCE was the most suitable for evaluating the association between MP and KD, and the risks were higher in the OCE group than in the non-OCE group.
Publisher
Research Square Platform LLC
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