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首页> 外文期刊>Journal of Molecular Modeling >Prediction of toxicity using a novel RBF neural network training methodology
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Prediction of toxicity using a novel RBF neural network training methodology

机译:使用新型RBF神经网络训练方法预测毒性

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摘要

A neural network methodology based on the radial basis function (RBF) architecture is introduced in order to establish quantitative structure-toxicity relationship models for the prediction of toxicity. The dataset used consists of 221 phenols and their corresponding toxicity values to Tetrahymena pyriformis. Physicochemical parameters and molecular descriptors are used to provide input information to the models. The performance and predictive abilities of the RBF models are compared to standard multiple linear regression (MLR) models. The leave-one-out cross validation procedure and validation through an external test set produce statistically significant R 2 and RMS values for the RBF models, which prove considerably more accurate than the MLR models.
机译:为了建立定量的毒性预测模型,建立了基于径向基函数(RBF)结构的神经网络方法。所使用的数据集由221种酚及其对梨形四膜虫的相应毒性值组成。使用理化参数和分子描述符为模型提供输入信息。将RBF模型的性能和预测能力与标准多元线性回归(MLR)模型进行比较。留一法交叉验证程序和通过外部测试集进行的验证为RBF模型产生了统计上显着的R 2 和RMS值,这被证明比MLR模型更为准确。

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