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Per-residue energy decomposition pharmacophore model to enhance virtual screening in drug discovery: a study for identification of reverse transcriptase inhibitors as potential anti-HIV agents

机译:每个残基能量分解药效团模型可增强药物发现中的虚拟筛选:鉴定逆转录酶抑制剂作为潜在抗HIV药物的研究

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A novel virtual screening approach is implemented herein, which is a further improvement of our previously published “target-bound pharmacophore modeling approach”. The generated pharmacophore library is based only on highly contributing amino acid residues, instead of arbitrary pharmacophores, which are most commonly used in the conventional approaches in literature. Highly contributing amino acid residues were distinguished based on free binding energy contributions obtained from calculation from molecular dynamic (MD) simulations. To the best of our knowledge; this is the first attempt in the literature using such an approach; previous approaches have relied on the docking score to generate energy-based pharmacophore models. However, docking scores are reportedly unreliable. Thus, we present a model for a per-residue energy decomposition, constructed from MD simulation ensembles generating a more trustworthy pharmacophore model, which can be applied in drug discovery workflow. This work is aimed at introducing a more rational approach to the field of drug design, rather than comparing the validity of this approach against those previously reported. We recommend additional computational and experimental work to further validate this approach. This approach was used to screen for potential reverse transcriptase inhibitors using the pharmacophoric features of compound GSK952. The complex was subjected to docking, thereafter, MD simulation confirmed the stability of the system. Experimentally determined inhibitors with known HIV-reverse transcriptase inhibitory activity were used to validate the protocol. Two potential hits (ZINC46849657 and ZINC54359621) showed a significant potential with regard to free binding energy. Reported results obtained from this work confirm that this new approach is favorable in the future of the drug design industry.
机译:本文实现了一种新颖的虚拟筛选方法,这是对我们先前发布的“目标结合药效团建模方法”的进一步改进。生成的药效团文库仅基于高度贡献的氨基酸残基,而不是任意的药效团,后者是文献中常规方法中最常用的。基于从分子动力学(MD)模拟计算获得的自由结合能贡献,区分了高贡献氨基酸残基。据我们所知;这是文献中使用这种方法的首次尝试;先前的方法依靠对接分数来生成基于能量的药效团模型。但是,据报道对接分数不可靠。因此,我们提出了一种基于残基能量分解的模型,该模型由MD模拟集成构建而成,可生成更值得信赖的药效团模型,可将其应用于药物发现工作流程中。这项工作旨在将更合理的方法引入药物设计领域,而不是将该方法的有效性与先前报道的方法进行比较。我们建议您进行其他计算和实验工作,以进一步验证该方法。该方法用于通过化合物GSK952的药效学特征筛选潜在的逆转录酶抑制剂。该复合物进行对接,此后,MD模拟证实了系统的稳定性。实验确定的具有已知HIV逆转录酶抑制活性的抑制剂可用于验证方案。两个潜在的命中点(ZINC46849657和ZINC54359621)在自由结合能方面显示出巨大的潜力。从这项工作中获得的报告结果证实,这种新方法在药物设计行业的未来是有利的。

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