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首页> 外文期刊>Journal of chemical information and modeling >CompScore: Boosting Structure-Based Virtual Screening Performance by Incorporating Docking Scoring Function Components into Consensus Scoring
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CompScore: Boosting Structure-Based Virtual Screening Performance by Incorporating Docking Scoring Function Components into Consensus Scoring

机译:Compscore:通过将对接评分功能组件结合到共识评分,提高基于结构的虚拟筛选性能

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Consensus scoring has become a commonly used strategy within structure-based virtual screening (VS) workflows with improved performance compared to those based in a single scoring function. However, no research has been devoted to analyze the worth of docking scoring functions components in consensus scoring. We implemented and tested a method that incorporates docking scoring functions components into the setting of high performance VS workflows. This method uses genetic algorithms for finding the combination of scoring components that maximizes the VS enrichment for any target. Our methodology was validated using a data set including ligands and decoys for 102 targets that have been widely used in VS validation studies. Results show that our approach outperforms other methods for all targets. It also boosts the initial enrichment performance of the traditional use of whole scoring functions in consensus scoring by an average of 45%. Our methodology showed to be outstandingly predictive when challenged to restore external (previously unseen) data. Remarkably, CompScore was able not only to retain its performance after redocking with a different software, but also proved that the enrichment obtained was not artificial.
机译:与基于结构的虚拟筛选(VS)工作流程中的共识评分已成为一种常用的策略,其与基于单个评分功能的函数相比具有改进的性能。然而,没有研究过致力于分析共识评分中对接函数组成部分的价值。我们实现并测试了一种方法,该方法将评分函数组件结合到高性能VS工作流的设置中。该方法使用遗传算法来查找评分组件的组合,以最大化任何目标的VS富集。我们的方法是使用数据集进行验证,该数据集包括已被广泛用于VS验证研究的102个目标的配体和诱饵。结果表明,我们的方法优于所有目标的其他方法。它还提高了传统使用整体评分职能的初始富集性能,共识得分平均为45%。我们的方法显示,当挑战恢复外部(以前看不见)数据时,突出预测性。值得注意的是,CompScore不仅可以在用不同的软件重新汇款后能够保持其性能,但还证明所获得的富集不是人为的。

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