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首页> 外文期刊>Journal of Molecular Modeling >Application of artificial neural networks for predicting the aqueous acidity of various phenols using QSAR
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Application of artificial neural networks for predicting the aqueous acidity of various phenols using QSAR

机译:人工神经网络在QSAR预测各种苯酚水溶液酸度中的应用

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摘要

Artificial neural networks (ANNs) have been successfully trained to model and predict the acidity constants (pK a) of 128 various phenols with diverse chemical structures using a quantitative structure-activity relationship. An ANN with 6-14-1 architecture was generated using six molecular descriptors that appear in the multi-parameter linear regression (MLR) model. The polarizability term (π I), most positive charge of acidic hydrogen atom (q +), molecular weight (MW), most negative charge of the phenolic oxygen atom (q −), the hydrogen-bond accepting ability (ɛ B) and partial-charge weighted topological electronic (PCWTE) descriptors are inputs and its output is pK a. It was found that a properly selected and trained neural network with 106 phenols could represent the dependence of the acidity constant on molecular descriptors fairly well. For evaluation of the predictive power of the ANN, an optimized network was used to predict the pK as of 22 compounds in the prediction set, which were not used in the optimization procedure. A squared correlation coefficient (R 2) and root mean square error (RMSE) of 0.8950 and 0.5621 for the prediction set by the MLR model should be compared with the values of 0.99996 and 0.0114 by the ANN model. These improvements are due to the fact that the pK a of phenols shows non-linear correlations with the molecular descriptors.
机译:人工神经网络(ANN)已经成功地训练,可以使用定量的结构-活性关系对具有不同化学结构的128种各种酚的酸度常数(pK a )进行建模和预测。使用出现在多参数线性回归(MLR)模型中的六个分子描述符生成具有6-14-1结构的ANN。极化率项(πI ),酸性氢原子的最大正电荷(q + ),分子量(MW),酚性氧原子的最大负电荷(q-)氢键接受能力(ɛB )和部分电荷加权拓扑电子(PCWTE)描述子为输入,输出为pK a 。结果发现,经过适当选择和训练的具有106种酚的神经网络可以很好地表示酸度常数对分子描述符的依赖性。为了评估ANN的预测能力,使用了优化的网络来预测预测集中22种化合物的pKAs,这些化合物在优化过程中并未使用。应将MLR模型设定的预测的平方相关系数(R 2 )和均方根误差(RMSE)分别为0.8950和0.5621,与ANN模型的0.99996和0.0114进行比较。这些改进归因于以下事实:酚的pKA表现出与分子描述符的非线性相关性。

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