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Selection of Potential Ligands for TRPM8 Using Deep Neural Networks and Intermolecular Docking by the 'AUTODOCK' Software

机译:使用深神经网络的TRPM8潜在配体的选择,并通过“自动汇码”软件分子分子对接

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The article describes a strategy of ligands prediction for TRPM8, where a deep neural network is used to screen out ligands and reduce the list of candidate ligands, the remaining ones are checked via AutoDock software. Subsequent analysis of the minimum binding energy between the receptor site and the putative ligands, as well as possible reactive conformations. The docking control sites were: Y745 (tyrosine 745), a critical site for TRPM8. We also analyzed the intermolecular docking of TRPM8 with its sites of manifestation of the biological effect: R1008 (phenylalanine 1008) and L1009 (alanine 1009). About 10 potential ligands were predicted, which were further verified by the "AUTODOCK" method. Intermolecular docking, carried out using the AUTODOCK program, was carried out in coordinates for each of the sites set in the closest position to the docking point. The program identified the potential for successful interactions for eight out of ten predicted candidates for each of the sites. Two of the predicted ligands do not have the ability to successfully interact with TRPM8, the rest showed a high minimum binding energy and the number of reactive conformations compared to the classical ligand, menthol. In this work, we used the method of in silico selection of ligands using deep neural network, with further verification by the AUTODOCK program. This method will speed up the search for potential medicinal substances in the future.
机译:本文介绍了TRPM8的配体预测的策略,其中用于筛选配体并减少候选配体的列表,通过自动频道软件检查其余的。随后分析受体部位和推定配体之间的最小结合能,以及可能的反应性兼容。对接控制位点是:Y745(酪氨酸745),TRPM8的关键部位。我们还分析了TRPM8的分子分子对接与生物效果的表现位点:R1008(苯丙氨酸1008)和L1009(丙氨酸1009)。预测约10个潜在配体,通过“自动沉积”方法进一步验证。使用Autodock程序执行的分子​​间对接,在每个站点的坐标中进行,每个站点设置在最接近位置到对接点。该计划确定了为每个网站的十个预测候选人中的八个成功互动的潜力。两个预测的配体没有能够成功地与TRPM8相互作用,其余的效果显示出高的最小结合能量和与典型配体,薄荷醇相比的反应性构象的数量。在这项工作中,我们使用深神经网络使用了Silico选择配体的方法,通过Autodock程序进一步验证。该方法将在未来加快寻求潜在的药物物质。

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