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Evaluation of 11 Scoring Functions Performance on Matrix Metalloproteinases

机译:基质金属蛋白酶11评分功能性能的评估

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Matrix metalloproteinases (MMPs) have distinctive roles in various physiological and pathological processes such as inflammatory diseases and cancer. This study explored the performance of eleven scoring functions (D-Score, G-Score, ChemScore, F-Score, PMF-Score, PoseScore, RankScore, DSX, and X-Score and scoring functions of AutoDock4.1 and AutoDockVina). Their performance was judged by calculation of their correlations to experimental binding affinities of 3D ligand-enzyme complexes of MMP family. Furthermore, they were evaluated for their ability in reranking virtual screening study results performed on a member of MMP family (MMP-12). Enrichment factor at different levels and receiver operating characteristics (ROC) curves were used to assess their performance. Finally, we have developed a PCA model from the best functions. Of the scoring functions evaluated, F-Score, DSX, and ChemScore were the best overall performers in prediction of MMPs-inhibitors binding affinities while ChemScore, Autodock, and DSX had the best discriminative power in virtual screening against the MMP-12 target. Consensus scorings did not show statistically significant superiority over the other scorings methods in correlation study while PCA model which consists of ChemScore, Autodock, and DSX improved overall enrichment. Outcome of this study could be useful for the setting up of a suitable scoring protocol, resulting in enrichment of MMPs inhibitors.
机译:基质金属蛋白酶(MMP)在各种生理和病理过程(例如炎性疾病和癌症)中具有独特的作用。这项研究探索了11种评分功能的性能(D评分,G评分,ChemScore,F评分,PMF评分,PoseScore,RankScore,DSX和X评分以及AutoDock4.1和AutoDockVina的评分功能)。通过计算它们与MMP家族3D配体-酶复合物的实验结合亲和力的相关性来判断其性能。此外,还对他们对MMP家族(MMP-12)成员进行的虚拟筛选研究结果进行排名的能力进行了评估。使用不同水平的富集因子和接收器工作特性(ROC)曲线来评估其性能。最后,我们根据最佳功能开发了PCA模型。在评估的评分功能中,F-Score,DSX和ChemScore在预测MMPs-抑制剂结合亲和力方面表现最佳,而ChemScore,Autodock和DSX在针对MMP-12目标的虚拟筛选中具有最佳的判别能力。在相关性研究中,共识性评分没有比其他评分方法具有统计学上的显着优势,而由ChemScore,Autodock和DSX组成的PCA模型改善了总体富集。这项研究的结果可能有助于建立合适的评分方案,从而丰富MMPs抑制剂。

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