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Versatile in silico modelling of microplastics adsorption capacity in aqueous environment based on molecular descriptor and machine learning

The Science of The Total Environment 2022 30 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 50 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Tengyi Zhu, Tengyi Zhu, Cuicui Tao, Cuicui Tao, Cuicui Tao, Cuicui Tao, Tengyi Zhu, Cuicui Tao, Haomiao Cheng, Cuicui Tao, Haibing Cong Haomiao Cheng, Haibing Cong

Summary

Researchers developed machine learning models using molecular descriptors to predict the adsorption capacity of microplastics for organic pollutants in aqueous environments, achieving high accuracy across multiple polymer types and enabling faster environmental risk assessment.

Study Type Environmental

To comprehensively evaluate the hazards of microplastics and their coexisting organic pollutants, the sorption capacity of microplastics is a major issue that is quantified through the microplastic-aqueous sorption coefficient (K). Almost all quantitative structure-property relationship (QSPR) models that describe K apply only to narrow, relatively homogeneous groups of reactants. Herein, non-hybrid QSPR-based models were developed to predict PE-water (K), PE-seawater (K), PVC-water (K) and PP-seawater (K) sorption coefficients at different temperatures, with eight machine learning algorithms. Moreover, novel hybrid intelligent models for predicting K more accurately were innovatively developed by applying GA, PSO and AdaBoost algorithms to optimize MLP and ELM models. The results indicated that all three optimization algorithms could improve the robustness and predictability of the standalone MLP and ELM models. In all models trained with K, K, K and K data sets, GBDT-1 and XGBoost-1 models, MLP-GA-2 and MLP-PSO-2 models, MLR-3 and MLR-4 models performed better in terms of goodness of fit (R: 0.907-0.999), robustness (Q: 0.900-0.937) and predictability (R: 0.889-0.970), respectively. Analyzing the descriptors revealed that temperature, lipophilicity, ionization potential and molecular size were correlated closely with the adsorption capacity of microplastics to organic pollutants. The proposed QSPR models may assist in initial environmental exposure assessments without imposing heavy costs in the early experimental phase.

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