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On the analysis of protein-protein interactions via knowledge-based potentials for the prediction of protein-protein docking.

机译:基于知识潜力的蛋白质-蛋白质相互作用分析,用于预测蛋白质-蛋白质对接。

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Development of effective methods to screen binary interactions obtained by rigid-body protein-protein docking is key for structure prediction of complexes and for elucidating physicochemical principles of protein-protein binding. We have derived empirical knowledge-based potential functions for selecting rigid-body docking poses. These potentials include the energetic component that provides the residues with a particular secondary structure and surface accessibility. These scoring functions have been tested on a state-of-art benchmark dataset and on a decoy dataset of permanent interactions. Our results were compared with a residue-pair potential scoring function (RPScore) and an atomic-detailed scoring function (Zrank). We have combined knowledge-based potentials to score protein-protein poses of decoys of complexes classified either as transient or as permanent protein-protein interactions. Being defined from residue-pair statistical potentials and not requiring of an atomic level description, our method surpassed Zrank for scoring rigid-docking decoys where the unbound partners of an interaction have to endure conformational changes upon binding. However, when only moderate conformational changes are required (in rigid docking) or when the right conformational changes are ensured (in flexible docking), Zrank is the most successful scoring function. Finally, our study suggests that the physicochemical properties necessary for the binding are allocated on the proteins previous to its binding and with independence of the partner. This information is encoded at the residue level and could be easily incorporated in the initial grid scoring for Fast Fourier Transform rigid-body docking methods.
机译:开发有效的方法来筛选通过刚体蛋白-蛋白对接获得的二元相互作用是预测复合物结构和阐明蛋白-蛋白结合的理化原理的关键。我们已经得出了基于经验知识的潜在功能,用于选择刚体对接姿势。这些潜力包括能为残基提供特定二级结构和表面可及性的高能成分。这些评分功能已在最新的基准数据集和永久互动的诱饵数据集上进行了测试。我们的结果与残基对潜在评分功能(RPScore)和原子详细评分功能(Zrank)进行了比较。我们结合了基于知识的潜力来对复合物诱饵的蛋白质/蛋白质姿势进行评分,该复合物被分类为瞬时或永久蛋白质-蛋白质相互作用。根据残基对的统计潜力进行定义,并且不需要原子级描述,我们的方法超过了Zrank来对刚性对接诱饵进行评分,在这种情况下,相互作用的未结合配偶体必须在结合时承受构象变化。但是,当仅需要适度的构象变化(在刚性对接中)或确保正确的构象变化(在柔性对接中)时,Zrank是最成功的评分功能。最后,我们的研究表明,结合所必需的物理化学性质是在结合之前并在伴侣独立的情况下分配给蛋白质的。此信息在残基级别进行编码,可以轻松地合并到快速傅里叶变换刚体对接方法的初始网格评分中。

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