分子描述符
人工神经网络
均方误差
生物系统
反应速率常数
试验装置
均方预测误差
训练集
计算机科学
字错误率
化学
模式识别(心理学)
人工智能
数量结构-活动关系
数学
机器学习
统计
动力学
物理
生物
量子力学
作者
Shifa Zhong,Jiajie Hu,Xudong Fan,Xiong Yu,Huichun Zhang
标识
DOI:10.1016/j.jhazmat.2019.121141
摘要
This work combined a Deep Neural Network (DNN) with molecular fingerprints (MF) to develop models to predict the OH radical rate constants of 593 organic contaminants. Molecular descriptors, most often used in establishing quantitative structural-activity relationships (QSARs), were not used here because of their complicated generation processes that rely on advanced physicochemical and computational knowledge. Instead, we only fed the most basic information of the contaminant structures, i.e., MF encoding the types of atoms and how they are connected, to DNN and DNN then developed predictive models automatically. Here, a dataset containing 457 contaminants and their OH rate constants was first used to develop predictive models by DNN-MF. The hence developed models showed comparable accuracy to the traditional QSARs. The root mean square error (RMSE) values of the test sets were 0.358-0.384. The length of 2048 bits for the MF and 3 hidden layers (each with 1024 neurons) were found to be the optimal parameters for DNN. The model containing additional 89 micorpollutants in the training set was then successfully applied to predict the OH rate constants of 17 organophosphorus flame retardants and 29 additional micropollutants, with comparable accuracy to the reported molecular descriptors-based QSARs.
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