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Identification of protein binding surfaces using surface triplet propensities

机译:使用表面三重态倾向鉴定蛋白质结合表面

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Motivation: The ability to reliably predict protein-protein and protein-ligand interactions is important for identifying druggable binding sites and for understanding how proteins communicate. Most currently available algorithms identify cavities on the protein surface as potential ligand recognition sites. The method described here does not explicitly look for cavities but uses small surface patches consisting of triplets of adjacent surface atomic groups that can be touched simultaneously by a probe sphere representing a solvent molecule. A total of 455 different types of triplets can be identified. A training set of 309 protein-ligand protein X-ray structures has been used to generate interface propensities for the triplets, which can be used to predict their involvement in ligand-binding interactions.Results: The success rate for locating protein-ligand binding sites on protein surfaces using this new surface triplet propensities (STP) algorithm is 88% which compares well with currently available grid-based and energy-based approaches. Q-SiteFinder's dataset (Laurie and Jackson, 2005. Bioinformatics, 21, 1908-1916) was used to show the favorable performance of STP. An analysis of the different triplet types showed that higher ligand binding propensity is related to more polarizable surfaces. The interaction statistics between triplet atoms on the protein surface and ligand atoms have been used to estimate statistical free energies of interaction. The delta G(stat) for halogen atoms interacting with hydrophobic triplets is -0.6 kcal/mol and an estimate of the maximal delta G(stat) for a ligand atom interacting with a triplet in a binding pocket is -1.45 kcal/mol.
机译:动机:可靠地预测蛋白质-蛋白质和蛋白质-配体相互作用的能力对于识别可药物化的结合位点和理解蛋白质如何进行通讯很重要。当前最常用的算法将蛋白质表面的空洞识别为潜在的配体识别位点。此处描述的方法未明确寻找空穴,而是使用了由相邻表面原子基团的三胞胎组成的小表面补丁,该表面补丁可由代表溶剂分子的探针球同时接触。总共可以识别455种不同类型的三胞胎。已使用一组309个蛋白质-配体蛋白质X射线结构训练集来生成三联体的界面倾向性,可用于预测三联体参与配体-结合相互作用的结果。结果:定位蛋白质-配体结合位点的成功率使用这种新的表面三重态倾向(STP)算法在蛋白质表面上的吸附率为88%,与当前可用的基于网格和基于能量的方法相比非常好。 Q-SiteFinder的数据集(Laurie和Jackson,2005年。Bioinformatics,21,1908-1916年)被用来显示STP的良好性能。对不同三重态类型的分析表明,较高的配体结合倾向与更多的可极化表面有关。蛋白质表面上的三重态原子与配体原子之间的相互作用统计已用于估算相互作用的统计自由能。与疏水性三重态相互作用的卤素原子的ΔG(stat)为-0.6 kcal / mol,与结合口袋中的三重态相互作用的配体原子的最大ΔG(stat)的估计值为-1.45 kcal / mol。

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