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A neural networks-based drug discovery approach and its application for designing aldose reductase inhibitors

机译:基于神经网络的药物发现方法及其在醛糖还原酶抑制剂设计中的应用

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摘要

A novel approach that combines neural networks, computer docking and quantum mechanical method is developed to design potent aldose reductase inhibitors (ARIs). Neural networks is employed to determine the quantitative structure–activity relationship (QSAR) among the known ARIs. The physical descriptors of the neural networks, such as electronegativity and molar volume, are evaluated with first-principles quantum mechanical method. Based on the QSAR, new candidates for ARI are predicted, and subsequently screened via computer docking technique. The surviving candidates are further tested via quantum mechanical calculation for their bindings to aldose reductase. We find that the best 49 predicted ARI candidates have better calculated binding energies than those of experimentally known drug candidates.
机译:开发了一种结合神经网络,计算机对接和量子力学方法的新颖方法来设计有效的醛糖还原酶抑制剂(ARIs)。神经网络用于确定已知ARI之间的定量构效关系(QSAR)。用第一性原理量子力学方法评估神经网络的物理描述符,例如电负性和摩尔体积。基于QSAR,可以预测ARI的新候选者,然后通过计算机对接技术进行筛选。尚存的候选物通过量子力学计算进一步测试其与醛糖还原酶的结合。我们发现,与实验已知的候选药物相比,最佳的49种预测ARI候选药物具有更好的计算结合能。

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