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Article ? AI-assigned paper type based on the abstract. Classification may not be perfect — flag errors using the feedback button. Tier 2 ? Original research — experimental, observational, or case-control study. Direct primary evidence. Detection Methods Environmental Sources Sign in to save

Integrating automated machine learning and metabolic reprogramming for the identification of microplastic in soil: A case study on soybean

Journal of Hazardous Materials 2024 12 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 60 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Yuting Zhang, Zhimin Liu, Yuting Zhang, Zhimin Liu, Zhimin Liu, Yuting Zhang, Yuting Zhang, Yuting Zhang, Weijun Wang, Xiaolu Liu, Yuting Zhang, Weijun Wang, Yuting Zhang, Yibo Geng, Yibo Geng, Zhimin Liu, Yuting Zhang, Xiaolu Liu, Xiaolu Liu, Xiaolu Liu, Yuting Zhang, Yuting Zhang, Yuting Zhang, Zhimin Liu, Xuan Gao, Xuan Gao, Junfeng Xu Junfeng Xu Xiaolu Liu, Xiaolu Liu, Xiaolu Liu, Xiaolu Liu, Yuting Zhang, Junfeng Xu

Summary

Scientists used automated machine learning to detect microplastic contamination in soybean plants by analyzing changes in the plants' metabolism and antioxidant systems. The technology could identify microplastic-contaminated crops with high accuracy, even when pesticides were also present. This rapid detection method could help monitor food crop safety and identify fields where microplastic pollution threatens the food supply.

Polymers

The accumulation of polyethylene microplastic (PE-MPs) in soil can significantly impact plant quality and yield, as well as affect human health and food chain cycles. Therefore, developing rapid and effective detection methods is crucial. In this study, traditional machine learning (ML) and H2O automated machine learning (H2O AutoML) were utilized to offer a powerful framework for detecting PE-MPs (0.1 %, 1 %, and 2 % by dry soil weight) and the co-contamination of PE-MPs and fomesafen (a common herbicide) in soil. The development of the framework was based on the results of the metabolic reprogramming of soybean plants. Our study stated that traditional ML exhibits lower accuracy due to the challenges associated with optimizing complex parameters. H2O AutoML can accurately distinguish between clean soil and contaminated soil. Notably, H2O AutoML can detect PE-MPs as low as 0.1 % (with 100 % accuracy) and co-contamination of PE-MPs and fomesafen (with 90 % accuracy) in soil. The VIP and SHAP analyses of the H2O AutoML showed that PE-MPs and the co-contamination of PE-MPs and fomesafen significantly interfered with the antioxidant system and energy regulation of soybean. We hope this study can provide a reliable scientific basis for sustainable development of the environment.

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