Independent and combined associations of multiple-heavy-metal exposure with lung function: a population-based study in US children

Previous research has found relationships between some single metals and lung function parameters. However, the role of simultaneous multi-metal exposure is poorly understood. The crucial period throughout childhood, when people are most susceptible to environmental dangers, has also been largely ig...

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Veröffentlicht in:Environmental geochemistry and health 2023-07, Vol.45 (7), p.5213-5230
Hauptverfasser: Chen, Yiting, Zhao, Anda, Li, Rong, Kang, Wenhui, Wu, Jinhong, Yin, Yong, Tong, Shilu, Li, Shenghui, Chen, Jianyu
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Sprache:eng
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Zusammenfassung:Previous research has found relationships between some single metals and lung function parameters. However, the role of simultaneous multi-metal exposure is poorly understood. The crucial period throughout childhood, when people are most susceptible to environmental dangers, has also been largely ignored. The study aimed to evaluate the joint and individual associations of 12 selected urinary metals with pediatric lung function measures using multi-pollutant approaches. A total of 1227 children aged 6–17 years from the National Health and Nutrition Examination Survey database of the 2007–2012 cycles were used. The metal exposure indicators were 12 urine metals adjusted for urine creatinine, including arsenic (As), barium (Ba), cadmium (Cd), cesium (Cs), cobalt (Co), mercury (Hg), molybdenum (Mo), lead (Pb), antimony (Sb), thallium (Tl), tungsten (Tu), and uranium (Ur). The outcomes of interest were lung function indices, including the 1st second of a forceful exhalation (FEV 1 ), forced vital capacity (FVC), forced expiratory flow between 25 and 7% of vital capacity (FEF 25–75% ), and peak expiratory flow (PEF). Multivariate linear regression, quantile g-computation (QG-C), and Bayesian kernel machine regression models (BKMR) were adopted. A significantly negative overall effect of metal mixtures on FEV 1 (β = − 161.70, 95% CI − 218.12, − 105.27; p  
ISSN:0269-4042
1573-2983
DOI:10.1007/s10653-023-01565-0