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首页> 外文期刊>Journal of chemical information and modeling >Multi-Step Protocol for Automatic Evaluation of Docking Results Based on Machine Learning Methods-A Case Study of Serotonin Receptors 5-HT6 and 5-HT7
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Multi-Step Protocol for Automatic Evaluation of Docking Results Based on Machine Learning Methods-A Case Study of Serotonin Receptors 5-HT6 and 5-HT7

机译:基于机器学习方法的自动评估对接结果的多步骤协议-以5-羟色胺受体5-HT6和5-HT7为例

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摘要

Molecular docking, despite its undeniable usefulness in computer-aided drug design protocols and the increasing sophistication of tools used in the prediction of ligand-protein interaction energies, is still connected with a problem of effective results analysis. In this study, a novel protocol for the automatic evaluation of numerous docking results is presented, being a combination of Structural Interaction Fingerprints and Spectrophores descriptors, machine-learning techniques, and multi-step results analysis. Such an approach takes into consideration the performance of a particular learning algorithm (five machine learning methods were applied), the performance of the docking algorithm itself, the variety of conformations returned from the docking experiment, and the receptor structure (homology models were constructed on five different templates). Evaluation using compounds active toward 5-HT6 and 5-HT7 receptors, as well as additional analysis carried out for beta-2 adrenergic receptor ligands, proved that the methodology is a viable tool for supporting virtual screening protocols, enabling proper discrimination between active and inactive compounds.
机译:尽管分子对接技术在计算机辅助药物设计方案中具有不可否认的作用,并且用于预测配体-蛋白质相互作用能的工具越来越复杂,但仍然存在有效的结果分析问题。在这项研究中,提出了一种新颖的协议,用于自动评估众多对接结果,它是结构相互作用指纹和光谱描述符,机器学习技术以及多步结果分析的组合。这种方法考虑了特定学习算法的性能(应用了五种机器学习方法),对接算法本身的性能,对接实验返回的构象的多样性以及受体结构(根据五个不同的模板)。使用对5-HT6和5-HT7受体具有活性的化合物进行评估,以及对β-2肾上腺素受体配体进行的其他分析证明,该方法学是支持虚拟筛选方案的可行工具,可在活动和不活动之间进行适当区分化合物。

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