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A novel RBF neural network training methodology to predict toxicity to Vibrio fischeri

机译:一种新颖的RBF神经网络训练方法来预测对费氏弧菌的毒性

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摘要

This work introduces a neural network methodology for developing QSTR predictors of toxicity to Vibrio fischeri. The method adopts the Radial Basis Function (RBF) architecture and the fuzzy means training strategy, which is fast and repetitive, in contrast to most traditional training techniques. The data set that was utilized consisted of 39 organic compounds and their corresponding toxicity values to Vibrio fischeri, while lipophilicity, equalized electronegativity and one topological index were used to provide input information to the models. The performance and predictive ability of the RBF model were illustrated through external validation and various statistical tests. The proposed methodology can be used to successfully model toxicity to Vibrio fischeri for a heterogeneous set of compounds.
机译:这项工作介绍了用于开发对费氏弧菌毒性的QSTR预测因子的神经网络方法。与大多数传统训练技术相比,该方法采用了径向基函数(RBF)体系结构和快速且重复的模糊均值训练策略。使用的数据集由39种有机化合物及其对费氏弧菌的相应毒性值组成,而亲脂性,均等电负性和一种拓扑指数用于为模型提供输入信息。通过外部验证和各​​种统计测试说明了RBF模型的性能和预测能力。所提出的方法可以用于成功地模拟异种化合物对费氏弧菌的毒性。

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