脂肪酸
内科学
生理学
环境卫生
医学
环境化学
产科
化学
生物化学
作者
Lin Tao,Weitian Tang,Zhicai Xia,Bing Wu,Heng Liu,Juanjuan Fu,Qiufang Lu,Liyan Guo,Chang Gao,Qiang Zhou,Yijun Fan,De‐Xiang Xu,Yichao Huang
标识
DOI:10.1016/j.envint.2024.108837
摘要
Human exposure to per- and polyfluoroalkyl substances (PFASs) has received considerable attention, particularly in pregnant women because of their dramatic changes in physiological status and dietary patterns. Predicting internal PFAS exposure in pregnant women, based on external and relevant parameters, has not been investigated. Here, machine learning (ML) models were developed to predict the serum concentrations of PFOA and PFOS in a large population of 588 pregnant participants. Dietary exposure characteristics, demographic parameters, and in particular, serum fatty acid (FA) data were used for the model development. The fitting results showed that the inclusion of FAs as covariates significantly improved the performance of the ML models, with the random forest (RF) model having the best predictive performance for PFOA (R
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