Lihao Su, Zhongyu Wang, Zijun Xiao, Deming Xia, Ya Wang and Jingwen Chen*,
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引用次数: 0
摘要
水体有机污染物对微塑料的吸附影响着污染物和微塑料的暴露和风险。实验测定表征微塑料对污染物吸附能力的水吸附平衡常数(Kaq)既费力又低效,因为Kaq值取决于各种条件组合,如pH值、离子强度和颗粒大小。在此,通过比较在纯水和海水中不同粒径(10-250 μm)的聚乙烯(PE)微塑料上吸附的 14 种化合物的 MD 计算 Kaq 值与经验值,建立了分子动力学(MD)方法。根据由实验值和 MD 计算的 Kaq 值组成的数据集,构建了机器学习模型。梯度提升决策树(GBDT)模型只需要污染物和所需条件(颗粒大小和离子强度)的易于获得的 Mordred 描述符就能得出准确的结果,外部确定系数为 0.99。GBDT 模型与之前的模型相比有了很大改进,因为它纳入了多种因素,包括从纯水到海水的离子强度、不同 pH 值下的解离物种以及直径从纳米到微米不等的 PE 粒子尺寸。这项研究为在不同环境条件下高通量估算微塑料和污染物的 K 值铺平了新的道路。
Rapidly Predicting Aqueous Adsorption Constants of Organic Pollutants onto Polyethylene Microplastics by Combining Molecular Dynamics Simulations and Machine Learning
Adsorption of aqueous organic pollutants onto microplastics influences the exposure and risks of both the pollutants and microplastics. Experimental determination of the aqueous adsorption equilibrium constants (Kaq) that characterize the adsorption capacity of microplastics to pollutants is laborious and inefficient since the Kaq values rely on various combinations of conditions, such as pH, ionic strength, and particle sizes. Herein, molecular dynamics (MD) methods were established by comparing the MD-calculated Kaq values with the empirical values of 14 compounds adsorbed onto polyethylene (PE) microplastics having different particle sizes (10–250 μm) in pure water and seawater. Based on the data sets consisting of experimental and MD-calculated Kaq values, machine learning models were constructed. A gradient boosting decision tree (GBDT) model requires only easily obtainable Mordred descriptors for pollutants and desired conditions (particle sizes and ionic strength) to yield accurate results, with an external determination coefficient of 0.99. The GBDT model exhibits a great improvement over the previous one, as it incorporates multiple factors including ionic strength from pure water to seawater, dissociation species at different pH, and PE particle sizes with diameters ranging from nanometers to micrometers. This study paves a new way for high-throughput estimating K values for microplastics and pollutants at different environmental conditions.