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Assessing an Ensemble Docking-Based Virtual Screening Strategy for Kinase Targets by Considering Protein Flexibility

机译:通过考虑蛋白质的灵活性评估基于整体对接的激酶目标虚拟筛选策略

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摘要

In this study, to accommodate receptor flexibility, based on multiple receptor conformations, a novel ensemble docking protocol was developed by using the naiv? e Bayesian classification technique, and it was evaluated in terms of the prediction accuracy of docking-based virtual screening (VS) of three important targets in the kinase family: ALK, CDK2, and VEGFR2. First, for each target, the representative crystal structures were selected by structural clustering, and the capability of molecular docking based on each representative structure to discriminate inhibitors from non-inhibitors was examined. Then, for each target, 50 ns molecular dynamics (MD) simulations were carried out to generate an ensemble of the conformations, and multiple representative structures/snapshots were extracted from each MD trajectory by structural clustering. On average, the representative crystal structures outperform the representative structures extracted from MD simulations in terms of the capabilities to separate inhibitors from non-inhibitors. Finally, by using the naiv? e Bayesian classification technique, an integrated VS strategy was developed to combine the prediction results of molecular docking based on different representative conformations chosen from crystal structures and MD trajectories. It was encouraging to observe that the integrated VS strategy yields better performance than the docking-based VS based on any single rigid conformation. This novel protocol may provide an improvement over existing strategies to search for more diverse and promising active compounds for a target of interest.
机译:在这项研究中,为了适应受体的灵活性,基于多种受体构象,使用naiv?开发了一种新型的整体对接方案。贝叶斯分类技术,并且根据激酶家族中三个重要靶点(ALK,CDK2和VEGFR2)的基于对接的虚拟筛选(VS)的预测准确性进行了评估。首先,对于每个靶标,通过结构聚类选择代表性的晶体结构,并检查基于每个代表性结构的分子对接以区分抑制剂与非抑制剂的能力。然后,对于每个目标,进行50 ns分子动力学(MD)模拟以生成构象的整体,并通过结构聚类从每个MD轨迹中提取多个代表性结构/快照。平均而言,就将抑制剂与非抑制剂分离的能力而言,代表性晶体结构优于从MD模拟中提取的代表性结构。最后,通过使用naiv?利用贝叶斯分类技术,开发了一种集成的VS策略,以基于从晶体结构和MD轨迹中选择的不同代表性构象,结合分子对接的预测结果。令人鼓舞的是,集成的VS策略比基于任何单一刚性构象的基于对接的VS具有更好的性能。该新颖的方案可以提供对现有策略的改进,以寻找更多样化和有希望的活性化合物作为目标。

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