School of Public Health, Zhengzhou University, Zhengzhou, 450001, China; Key Laboratory of Environmental Medicine Engineering, Ministry of Education, School of Public Health, Southeast University, Nanjing, 210009, China.
Shangqiu Medical College, Shangqiu, Henan Province 476100, China.
Chemosphere. 2016 Aug;156:334-340. doi: 10.1016/j.chemosphere.2016.05.002. Epub 2016 May 13.
This work is devoted to the applications of the multiple linear regression (MLR), multilayer perceptron neural network (MLP NN) and projection pursuit regression (PPR) to quantitative structure-property relationship analysis of bioconcentration factors (BCFs) of pesticides tested on Bluegill (Lepomis macrochirus). Molecular descriptors of a total of 107 pesticides were calculated with the DRAGON Software and selected by inverse enhanced replacement method. Based on the selected DRAGON descriptors, a linear model was built by MLR, nonlinear models were developed using MLP NN and PPR. The robustness of the obtained models was assessed by cross-validation and external validation using test set. Outliers were also examined and deleted to improve predictive power. Comparative results revealed that PPR achieved the most accurate predictions. This study offers useful models and information for BCF prediction, risk assessment, and pesticide formulation.
这项工作致力于将多元线性回归(MLR)、多层感知器神经网络(MLP NN)和投影寻踪回归(PPR)应用于在蓝鳃太阳鱼(Lepomis macrochirus)上测试的农药的生物浓缩因子(BCF)的定量结构-性质关系分析。使用 DRAGON 软件计算了总共 107 种农药的分子描述符,并通过反向增强替换法进行了选择。基于所选的 DRAGON 描述符,通过 MLR 建立了线性模型,通过 MLP NN 和 PPR 开发了非线性模型。通过使用测试集进行交叉验证和外部验证来评估所获得模型的稳健性。还检查和删除了异常值以提高预测能力。比较结果表明,PPR 实现了最准确的预测。这项研究为 BCF 预测、风险评估和农药配方提供了有用的模型和信息。