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Prediction of toxicity and data exploratory analysis of estrogen-active endocrine disruptors using counter-propagation artificial neural networks

机译:使用反向传播人工神经网络预测雌激素活性内分泌干扰物的毒性并进行数据探索性分析

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In this work, a novel algorithm for optimization of counter-propagation artificial neural networks has been used for development of quantitative structure-activity relationships model for prediction of the estrogenic activity of endocrine-disrupting chemicals. The search for the best model was performed using genetic algorithms. Genetic algorithms were used not only for selection of the most suitable descriptors for modeling, but also for automatic adjustment of their relative importance. Using our recently developed algorithm for automatic adjustment of the relative importance of the input variables, we have developed simple models with very good generalization performances using only few interpretable descriptors. One of the developed models is in details discussed in this article. The simplicity of the chosen descriptors and their relative importance for this model helped us in performing a detailed data exploratory analysis which gave us an insight in the structural features required for the activity of the estrogenic endocrine-disrupting chemicals.
机译:在这项工作中,用于对向传播人工神经网络优化的新算法已用于开发定量结构-活性关系模型,以预测干扰内分泌化学物质的雌激素活性。使用遗传算法进行最佳模型的搜索。遗传算法不仅用于选择最合适的建模描述符,还用于自动调整其相对重要性。使用我们最近开发的用于自动调整输入变量的相对重要性的算法,我们仅使用了很少的可解释描述符就开发了具有良好泛化性能的简单模型。本文将详细讨论其中一种开发的模型。所选描述符的简单性及其在该模型中的相对重要性帮助我们进行了详细的数据探索性分析,从而使我们对破坏雌激素的内分泌化学物质的活性所需的结构特征有了深刻的了解。

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