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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Ranking docking poses by graph matching of protein–ligand interactions: lessons learned from the D3R Grand Challenge 2
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Ranking docking poses by graph matching of protein–ligand interactions: lessons learned from the D3R Grand Challenge 2

机译:通过蛋白质 - 配体相互作用的图表匹配排名对接姿势:从D3R大挑战2中汲取的经验教训

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AbstractA novel docking challenge has been set by the Drug Design Data Resource (D3R) in order to predict the pose and affinity ranking of a set of Farnesoid X receptor (FXR) agonists, prior to the public release of their bound X-ray structures and potencies. In a first phase, 36 agonists were docked to 26 Protein Data Bank (PDB) structures of the FXR receptor, and next rescored using the in-house developed GRIM method. GRIM aligns protein–ligand interaction patterns of docked poses to those of available PDB templates for the target protein, and rescore poses by a graph matching method. In agreement with results obtained during the previous 2015 docking challenge, we clearly show that GRIM rescoring improves the overall quality of top-ranked poses by prioritizing interaction patterns already visited in the PDB. Importantly, this challenge enables us to refine the applicability domain of the method by better defining the conditions of its success. We notably show that rescoring apolar ligands in hydrophobic pockets leads to frequent GRIM failures. In the second phase, 102 FXR agonists were ranked by decreasing affinity according to the Gibbs free energy of the corresponding GRIM-selected poses, computed by the HYDE scoring function. Interestingly, this fast and simple rescoring scheme provided the third most accurate ranking method among 57 contributions. Although the obtained ranking is still unsuitable for hit to lead optimization, the GRIM–HYDE scoring scheme is accurate and fast enough to post-process virtual screening data.]]>
机译:<![cdata [ <标题>抽象 ara>采用药物设计数据资源(D3R)设置了新型对接挑战为了预测公共释放其结合的X射线结构和型效力之前,预测一组法呢X受体(FXR)激动剂的姿势和亲和力排名。在第一阶段,36位激动剂对接到FXR受体的26个蛋白质数据库(PDB)结构,并使用内部开发的Grim方法进行了下一步重新筛选。将对接的对接的蛋白质 - 配体相互作用模式对接至目标蛋白的可用PDB模板的对准,并通过图形匹配方法重新枢密。在达成于2015年期间的挑战期间获得的结果,我们清楚地表明,通过在PDB中已经访问的交互模式优先考虑已经访问的相互作用模式,严峻的备用提高了排名姿势的整体质量。重要的是,这一挑战使我们能够通过更好地定义其成功的条件来改进方法的适用性领域。我们显着表明,疏水性袋中的反生角质配体导致频繁的严峻故障。在第二阶段,通过通过海德评分函数计算的相应的GRIM选择的姿势的GIBBS自由能量来排序102个FXR激动剂。有趣的是,这种快速简单的救援方案在57个贡献中提供了第三种最准确的排名方法。虽然所获得的排名仍然不适合击中铅优化,但Grim-Hyde评分方案准确且足够快,以便处理虚拟筛选数据。 ]]>

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