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Computational Modelling of Protein Interactions: Energy Minimization for the Refinement and Scoring of Association Decoys

机译:蛋白质相互作用的计算模型:精简和计分协会诱饵的能量最小化

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The prediction of protein-protein interactions based on independently obtained structural information for each interacting partner remains an important challenge in computational chemistry. Procedures where hypothetical interaction models (or decoys) are generated, then ranked using a biochemically relevant scoring function have been garnering interest as an avenue for addressing such challenges. The program PatchDock has been shown to produce reasonable decoys for modeling the association between pig alpha-amylase and the VH-domains of camelide antibody raised against it. We designed a biochemically relevant method by which PatchDock decoys could be ranked in order to separate near-native structures from false positives. Several thousand steps of energy minimization were used to simulate induced fit within the otherwise rigid decoys and to rank them. We applied a partial free energy function to rank each of the binding modes, improving discrimination between near-native structures and false positives. Sorting decoys according to strain energy increased the proportion of near-native decoys near the bottom of the ranked list. Additionally, we propose a novel method which utilizes regression analysis for the selection of minimization convergence criteria and provides approximation of the partial free energy function as the number of algorithmic steps approaches infinity.
机译:基于独立获得的每个相互作用伙伴的结构信息来预测蛋白质相互作用,仍然是计算化学中的重要挑战。生成假设的相互作用模型(或诱饵),然后使用生物化学相关评分功能进行排序的程序已引起人们的兴趣,作为应对此类挑战的途径。 PatchDock程序已显示出可产生合理的诱饵,以模拟猪α-淀粉酶与针对其的骆驼科动物抗体VH结构域之间的关联。我们设计了一种生物化学相关的方法,通过该方法可以对PatchDock诱饵进行排名,以区分假阳性和近自然结构。几千步的能量最小化被用来模拟原本诱骗的诱饵内的感应拟合并将它们排名。我们应用了部分自由能函数对每个绑定模式进行排序,从而改善了近自然结构与假阳性之间的区别。根据应变能对诱饵进行分类可以使排名接近列表底部的近自然诱饵的比例增加。此外,我们提出了一种新颖的方法,该方法利用回归分析来选择最小化收敛标准,并随着算法步数接近无穷大而提供部分自由能函数的近似值。

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