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Identification of Protein-Ligand Binding Sites by the Level-Set Variational Implicit-Solvent Approach

机译:通过水平集变分内隐溶剂法鉴定蛋白质配体结合位点

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摘要

Proteinligand binding is a key biological process at the molecular level. The identification and characterization of small-molecule binding sites on therapeutically relevant proteins have tremendous implications for target evaluation and rational drug design. In this work, we used the recently developed level-set variational implicit-solvent model (VISM) with the Coulomb field approximation (CFA) to locate and characterize potential proteinsmall-molecule binding sites. We applied our method to a data set of 515 proteinligand complexes and found that 96.9% of the cocrystallized ligands bind to the VISM-CFA-identified pockets and that 71.8% of the identified pockets are occupied by cocrystallized ligands. For 228 tight-binding proteinligand complexes (i.e, complexes with experimental pK(d) values larger than 6), 99.1% of the cocrystallized ligands are in the VISM-CFA-identified pockets. In addition, it was found that the ligand binding orientations are consistent with the hydrophilic and hydrophobic descriptions provided by VISM. Quantitative characterization of binding pockets with topological and physicochemical parameters was used to assess the ligandability of the pockets. The results illustrate the key interactions between ligands and receptors and can be very informative for rational drug design.
机译:蛋白配体结合是分子水平上的关键生物学过程。治疗相关蛋白上小分子结合位点的鉴定和表征对靶标评估和合理的药物设计具有重大意义。在这项工作中,我们使用了最近开发的具有库仑场近似(CFA)的水平集变异隐式溶剂模型(VISM)来定位和表征潜在的蛋白质小分子结合位点。我们将我们的方法应用于515个蛋白配体复合物的数据集,发现96.9%的共结晶配体与VISM-CFA鉴定的囊袋结合,并且71.8%的鉴定囊被共结晶配体占据。对于228种紧密结合的蛋白质配体复合物(即实验pK(d)值大于6的复合物),共结晶配体的99.1%位于VISM-CFA鉴定的口袋中。另外,发现配体结合方向与VISM提供的亲水和疏水描述一致。具有拓扑和物理化学参数的结合袋的定量表征用于评估袋的配体性。结果说明了配体和受体之间的关键相互作用,对于合理的药物设计可能非常有用。

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