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基于机器学习的三聚氰胺-Cu 纳米酶和胆碱酯酶集成阵列用于多类别农药的智能识别。

Machine learning-assisted melamine-Cu nanozyme and cholinesterase integrated array for multi-category pesticide intelligent recognition.

机构信息

College of Food Science and Engineering, Jilin University, Changchun 130025, PR China.

Key Laboratory of Groundwater Resources and Environment (Jilin University), Ministry of Education, College of New Energy and Environment, Jilin University, Changchun 130021, PR China; Jilin Provincial Key Laboratory of Water Resources and Water Environment, College of New Energy and Environment, Jilin University, Changchun 130021, PR China.

出版信息

Biosens Bioelectron. 2024 Dec 15;266:116747. doi: 10.1016/j.bios.2024.116747. Epub 2024 Sep 4.

Abstract

Expanding target pesticide species and intelligent pesticide recognition were formidable challenges for existing cholinesterase inhibition methods. To improve this status, multi-active Mel-Cu nanozyme with mimetic Cu-N sites was prepared for the first time. It exhibited excellent laccase-like and peroxidase-like activities, and can respond to some pesticides beyond the detected range of enzyme inhibition methods, such as glyphosate, carbendazim, fumonisulfuron, etc., through coordination and hydrogen bonding. Inspired by the signal complementarity of Mel-Cu and cholinesterase, an integrated sensor array based on the Mel-Cu laccase-like activity, Mel-Cu peroxidase-like activity, acetylcholinesterase, and butyrylcholinesterase was creatively constructed. And it could successfully discriminate 12 pesticides at 0.5-50 μg/mL, which was significantly superior to traditional enzyme inhibition methods. Moreover, on the basis of above array, a unified stepwise prediction model was built using classification and regression algorithms in machine learning, which enabled concentration-independent qualitative identification as well as precise quantitative determination of multiple pesticide targets, simultaneously. The sensing accuracy was verified by blind sample analysis, in which the species was correctly identified and the concentration was predicted within 10% error, suggesting great intelligent recognition ability. Further, the proposed method also demonstrated significant immunity to interference and practical application feasibility, providing powerful means for pesticide residue analysis.

摘要

现有的乙酰胆碱酯酶抑制法在扩大目标农药种类和实现智能农药识别方面存在巨大挑战。为改善这一现状,首次制备了具有模拟 Cu-N 位的多活性 Mel-Cu 纳米酶。它表现出优异的漆酶样和过氧化物酶样活性,并且可以通过配位和氢键响应一些超出酶抑制法检测范围的农药,如草甘膦、多菌灵、呋虫胺等。受 Mel-Cu 和乙酰胆碱酯酶信号互补性的启发,创造性地构建了基于 Mel-Cu 漆酶样活性、Mel-Cu 过氧化物酶样活性、乙酰胆碱酯酶和丁酰胆碱酯酶的集成传感器阵列。它可以成功区分 0.5-50μg/mL 范围内的 12 种农药,明显优于传统的酶抑制法。此外,在上述阵列的基础上,使用机器学习中的分类和回归算法构建了一个统一的分步预测模型,该模型能够实现独立于浓度的定性识别以及多种农药目标的精确定量测定。通过盲样分析验证了传感准确性,其中正确识别了物种且预测浓度的误差在 10%以内,表明其具有很强的智能识别能力。此外,该方法还表现出对干扰的显著抗干扰能力和实际应用可行性,为农药残留分析提供了有力手段。

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