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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Virtual screening with AutoDock Vina and the common pharmacophore engine of a low diversity library of fragments and hits against the three allosteric sites of HIV integrase: participation in the SAMPL4 protein-ligand binding challenge
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Virtual screening with AutoDock Vina and the common pharmacophore engine of a low diversity library of fragments and hits against the three allosteric sites of HIV integrase: participation in the SAMPL4 protein-ligand binding challenge

机译:使用AutoDock Vina和低多样性文库的通用药效团引擎进行虚拟筛选,并针对HIV整合酶的三个变构位点进行命中:参与SAMPL4蛋白-配体结合挑战

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摘要

To rigorously assess the tools and protocols that can be used to understand and predict macromolecular recognition, and to gain more structural insight into three newly discovered allosteric binding sites on a critical drug target involved in the treatment of HIV infections, the Olson and Levy labs collaborated on the SAMPL4 challenge. This computational blind challenge involved predicting protein-ligand binding against the three allosteric sites of HIV integrase (IN), a viral enzyme for which two drugs (that target the active site) have been approved by the FDA. Positive control cross-docking experiments were utilized to select 13 receptor models out of an initial ensemble of 41 different crystal structures of HIV IN. These 13 models of the targets were selected using our new "Rank Difference Ratio'' metric. The first stage of SAMPL4 involved using virtual screens to identify 62 active, allosteric IN inhibitors out of a set of 321 compounds. The second stage involved predicting the binding site(s) and crystallographic binding mode(s) for 57 of these inhibitors. Our team submitted four entries for the first stage that utilized: (1) AutoDock Vina (AD Vina) plus visual inspection; (2) a new common pharmacophore engine; (3) BEDAMreplica exchange free energy simulations, and a Consensus approach that combined the predictions of all three strategies. Even with the SAMPL4's very challenging compound library that displayed a significantly lower amount of structural diversity than most libraries that are conventionally employed in prospective virtual screens, these approaches produced hit rates of 24, 25, 34, and 27 %, respectively, on a set with 19 % declared binders. Our only entry for the second stage challenge was based on the results of AD Vina plus visual inspection, and it ranked third place overall according to several different metrics provided by the SAMPL4 organizers. The successful results displayed by these approaches highlight the utility of the computational structure-based drug discovery tools and strategies that are being developed to advance the goals of the newly created, multi-institution, NIH-funded center called the "HIV Interaction and Viral Evolution Center''.
机译:为了严格评估可用于理解和预测大分子识别的工具和协议,并获得对涉及艾滋病毒感染治疗的关键药物靶标上三个新发现的变构结合位点的更多结构洞察力,Olson和Levy实验室进行了合作在SAMPL4挑战赛上。这项计算盲目的挑战涉及预测针对HIV整合酶(IN)的三个变构位点的蛋白质-配体结合,这是一种病毒酶,已被FDA批准了两种针对靶点的药物。阳性对照交叉对接实验用于从HIV IN的41种不同晶体结构的初始集合中选择13种受体模型。使用我们的新“等级差异比”度量标准选择了这13种目标模型。SAMPL4的第一阶段涉及使用虚拟屏幕从321种化合物中识别出62种活性的变构IN抑制剂。这些抑制剂中有57种的结合位点和晶体学结合模式。我们的团队在第一阶段提交了四个条目,其中包括:(1)AutoDock Vina(AD Vina)加上目视检查;(2)新的常用药效基团引擎;(3)BEDAMreplica交换自由能模拟,以及结合了所有三种策略的预测的共识方法,即使SAMPL4的化合物库极富挑战性,其结构多样性也大大低于前瞻性研究中通常使用的大多数库在虚拟屏幕上,这些方法在声明的活页夹为19%的场景中分别产生了24%,25%,34%和27%的命中率。 llenge基于AD Vina加上视觉检查的结果,根据SAMPL4组织者提供的几种不同指标,它总体排名第三。这些方法所显示的成功结果凸显了基于计算结构的药物发现工具和策略的实用性,这些工具和策略正在开发中,以推进新建立的,由多机构,由美国国立卫生研究院资助的中心的目标,即“ HIV相互作用和病毒进化”中央''。

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