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基于机器学习的工程化金属纳米颗粒的植物吸收和迁移预测。

Prediction of Plant Uptake and Translocation of Engineered Metallic Nanoparticles by Machine Learning.

机构信息

Zachry Department of Civil and Environmental Engineering, Texas A&M University, College Station, Texas 77843, United States.

Department of Civil Engineering, National Pingtung University of Science and Technology, Neipu 91201, Pingtung County, Taiwan.

出版信息

Environ Sci Technol. 2021 Jun 1;55(11):7491-7500. doi: 10.1021/acs.est.1c01603. Epub 2021 May 17.

Abstract

Machine learning was applied to predict the plant uptake and transport of engineered nanoparticles (ENPs). A back propagation neural network (BPNN) was used to predict the root concentration factor (RCF) and translocation factor (TF) of ENPs from their essential physicochemical properties (e.g., composition and size) and key external factors (e.g., exposure time and plant species). The relative importance of input variables was determined by sensitivity analysis, and gene-expression programming (GEP) was used to generate predictive equations. The BPNN model satisfactorily predicted the RCF and TF in both hydroponic and soil systems, with an higher than 0.8 for all simulations. Inclusion of the initial ENP concentration as an input variable further improved the accuracy of the BPNN for soil systems. Sensitivity analysis indicated that the composition of ENPs (e.g., metals vs metal oxides) is a major factor affecting RCF and TF values in a hydroponic system. However, the soil organic matter and clay contents are more dominant in a soil system. The GEP model ( = 0.8088 and 0.8959 for RCF and TF values) generated more accurate predictive equations than the conventional regression model ( = 0.5549 and 0.6664 for RCF and TF values) in a hydroponic system, which could guide the sustainable design of ENPs for agricultural applications.

摘要

机器学习被应用于预测工程纳米颗粒(ENPs)的植物吸收和转运。采用反向传播神经网络(BPNN)根据 ENPs 的基本物理化学性质(例如组成和尺寸)和关键外部因素(例如暴露时间和植物种类)来预测其根系浓度系数(RCF)和转运系数(TF)。通过敏感性分析确定输入变量的相对重要性,并使用基因表达编程(GEP)生成预测方程。BPNN 模型在水培和土壤系统中均能满意地预测 RCF 和 TF,所有模拟的相关系数均高于 0.8。将初始 ENP 浓度作为输入变量纳入其中,进一步提高了 BPNN 对土壤系统的预测准确性。敏感性分析表明,ENPs 的组成(例如金属与金属氧化物)是影响水培系统中 RCF 和 TF 值的主要因素。然而,土壤有机质和粘粒含量在土壤系统中更为重要。在水培系统中,GEP 模型(RCF 和 TF 值的 = 0.8088 和 0.8959)生成的预测方程比传统回归模型(RCF 和 TF 值的 = 0.5549 和 0.6664)更为准确,这可为农业应用中可持续设计 ENPs 提供指导。

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