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Identification of hot-spot residues in protein-protein interactions by computational docking

机译:通过计算对接识别蛋白质相互作用中的热点残基

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Background The study of protein-protein interactions is becoming increasingly important for biotechnological and therapeutic reasons. We can define two major areas therein: the structural prediction of protein-protein binding mode, and the identification of the relevant residues for the interaction (so called 'hot-spots'). These hot-spot residues have high interest since they are considered one of the possible ways of disrupting a protein-protein interaction. Unfortunately, large-scale experimental measurement of residue contribution to the binding energy, based on alanine-scanning experiments, is costly and thus data is fairly limited. Recent computational approaches for hot-spot prediction have been reported, but they usually require the structure of the complex. Results We have applied here normalized interface propensity ( NIP ) values derived from rigid-body docking with electrostatics and desolvation scoring for the prediction of interaction hot-spots. This parameter identifies hot-spot residues on interacting proteins with predictive rates that are comparable to other existing methods (up to 80% positive predictive value), and the advantage of not requiring any prior structural knowledge of the complex. Conclusion The NIP values derived from rigid-body docking can reliably identify a number of hot-spot residues whose contribution to the interaction arises from electrostatics and desolvation effects. Our method can propose residues to guide experiments in complexes of biological or therapeutic interest, even in cases with no available 3D structure of the complex.
机译:背景技术出于生物技术和治疗的原因,蛋白质-蛋白质相互作用的研究变得越来越重要。我们可以在其中定义两个主要区域:蛋白质-蛋白质结合模式的结构预测,以及用于相互作用的相关残基的识别(所谓的“热点”)。这些热点残基具有很高的兴趣,因为它们被认为是破坏蛋白质相互作用的一种可能方式。不幸的是,基于丙氨酸扫描实验的残基对结合能贡献的大规模实验测量是昂贵的,因此数据相当有限。已经报道了用于热点预测的最新计算方法,但是它们通常需要复合物的结构。结果我们在这里将归一化的界面倾向性(NIP)值应用于刚体对接中的静电作用和去溶剂化评分,以预测相互作用热点。该参数可识别相互作用蛋白质上的热点残基,其预测率可与其他现有方法(高达80%的阳性预测值)相媲美,并且不需要任何复杂的结构知识。结论刚体对接得出的NIP值可以可靠地识别一些热点残基,这些残基对相互作用的贡献来自静电和去溶剂化作用。即使在没有可用的3D结构的情况下,我们的方法也可以提出残基来指导具有生物学或治疗意义的复合物的实验。

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