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Optimization of Compound Ranking for Structure-Based Virtual Ligand Screening Using an Established FRED-Surflex Consensus Approach

机译:使用建立的FRED-Surflex共识方法优化基于结构的虚拟配体筛选的化合物排序

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摘要

The use of multiple target conformers has been applied successfully in virtual screening campaigns; however, a study on how to best combine scores for multiple targets in a hierarchic method that combines rigid and flexible docking is not available. In this study, we used a data set of 59 479 compounds to screen multiple conformers of four distinct protein targets to obtain an adapted and optimized combination of an established hierarchic method that employs the programs FRED and Surflex. Our study was extended and verified by application of our protocol to ten different data sets from the directory of useful decoys (DUD). We quantitated overall method performance in ensemble docking and compared several consensus scoring methods to improve the enrichment during virtual ligand screening. We conclude that one of the methods used, which employs a consensus weighted scoring of multiple target conformers, performs consistently better than methods that do not include such consensus scoring. For optimal overall performance in ensemble docking, it is advisable to first calculate a consensus of FRED results and use this consensus as a sub-data set for Surflex screening. Furthermore, we identified an optimal method for each of the chosen targets and propose how to optimize the enrichment for any target.
机译:在虚拟筛选活动中已成功应用了多个目标构象体的使用;但是,尚无关于如何在结合刚性对接和灵活对接的分层方法中最佳地组合多个目标得分的研究。在这项研究中,我们使用了59 479种化合物的数据集来筛选四个不同蛋白质靶标的多个构象异构体,以获得采用程序FRED和Surflex的已建立层次方法的适应和优化组合。通过将我们的协议应用到有用诱饵(DUD)目录中的十个不同数据集,我们的研究得到了扩展和验证。我们对整体对接中的整体方法性能进行了定量,并比较了几种共识评分方法,以提高虚拟配体筛选过程中的富集度。我们得出的结论是,所采用的一种方法采用了多个目标构象异构体的共识加权评分,其性能始终优于不包含此类共识评分的方法。为了在整体对接中获得最佳总体性能,建议首先计算FRED结果的共识,然后将此共识用作Surflex筛选的子数据集。此外,我们确定了每个选定目标的最佳方法,并提出了如何优化任何目标的富集方法。

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