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Improving Docking Performance Using Negative Image-Based Rescoring

机译:使用基于负图像的记录提高对接性能

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Despite the large computational costs of molecular docking, the default scoring functions are often unable to recognize the active hits from the inactive molecules in large-scale virtual screening experiments. Thus, even though a correct binding pose might be sampled during the docking, the active compound or its biologically relevant pose is not necessarily given high enough score to arouse the attention. Various rescoring and post-processing approaches have emerged for improving the docking performance. Here, it is shown that the very early enrichment (number of actives scored higher than 1% of the highest ranked decoys) can be improved on average 2.5-fold or even 8.7-fold by comparing the docking-based ligand conformers directly against the target protein's cavity shape and electrostatics. The similarity comparison of the conformers is performed without geometry optimization against the negative image of the target protein's ligand-binding cavity using the negative image-based (NIB) screening protocol. The viability of the NIB rescoring or the R-NiB, pioneered in this study, was tested with 11 target proteins using benchmark libraries. By focusing on the shape/electrostatics complementarity of the ligand-receptor association, the R-NiB is able to improve the early enrichment of docking essentially without adding to the computing cost. By implementing consensus scoring, in which the R-NiB and the original docking scoring are weighted for optimal outcome, the early enrichment is improved to a level that facilitates effective drug discovery. Moreover, the use of equal weight from the original docking scoring and the R-NiB scoring improves the yield in most cases.
机译:尽管分子对接的计算成本很高,但默认的评分功能通常无法在大规模虚拟筛选实验中从非活性分子中识别活性命中。因此,即使在对接期间可以采样正确的结合姿势,活性化合物或其生物学相关姿势也不一定给予足够高的分数以引起关注。为了提高对接性能,出现了各种记录和后处理方法。在此表明,通过将直接对接的配体构象体与靶点进行比较,可以非常平均地提高2.5倍甚至8.7倍的早期富集(得分高于最高排名诱饵的1%)。蛋白质的空腔形状和静电。使用基于负图像的(NIB)筛选方案,无需对目标蛋白的配体结合腔的负图像进行几何优化,即可进行构象异构体的相似性比较。在本研究中首创的NIB评分或R-NiB的生存力已使用基准文库与11种靶蛋白进行了测试。通过关注配体-受体缔合的形状/静电互补性,R-NiB基本上可以改善对接的早期富集,而无需增加计算成本。通过实施共识评分,其中R-NiB和原始对接评分经过加权以获得最佳结果,早期富集程度提高到有助于有效药物发现的水平。此外,在大多数情况下,使用原始对接得分和R-NiB得分相等的权重可以提高产量。

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