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Protein-protein docking with simultaneous optimization of rigid-body displacement and side-chain conformations

机译:蛋白质-蛋白质对接,同时优化了刚体置换和侧链构象

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Protein-protein docking algorithms provide a means to elucidate structural details for presently unknown complexes. Here, we present and evaluate a new method to predict protein-protein complexes from the coordinates of the unbound monomer components. The method employs a low-resolution, rigid-body, Monte Carlo search followed by simultaneous optimization of backbone displacement and side-chain conformations using Monte Carlo minimization. Up to 10(5) independent simulations are carried out, and the resulting "decoys" are ranked using an energy function dominated by van der Waals interactions, an implicit solvation model, and an orientation-dependent hydrogen bonding potential. Top-ranking decoys are clustered to select the final predictions. Small-perturbation studies reveal the formation of binding funnels in 42 of 54 cases using coordinates derived from the bound complexes and in 32 of 54 cases using independently determined coordinates of one or both monomers. Experimental binding affinities correlate with the calculated score function and explain the predictive success or failure of many targets. Global searches using one or both unbound components predict at least 25% of the native residue-residue contacts in 28 of the 32 cases where binding funnels exist. The results suggest that the method may soon be useful for generating models of biologically important complexes from the structures of the isolated components, but they also highlight the challenges that must be met to achieve consistent and accurate prediction of protein-protein interactions. (C) 2003 Elsevier Ltd. All rights reserved. [References: 60]
机译:蛋白质-蛋白质对接算法提供了阐明目前未知复合物的结构细节的方法。在这里,我们提出并评估一种从未结合单体组分的坐标预测蛋白质-蛋白质复合物的新方法。该方法采用低分辨率,刚体,蒙特卡洛搜索,然后使用蒙特卡洛最小化同时优化主链位移和侧链构象。最多进行10(5)个独立仿真,并使用由范德华相互作用,隐式溶剂化模型和取向相关的氢键势主导的能量函数对所得的“诱饵”进行排名。排名靠前的诱饵被聚类以选择最终预测。小扰动研究表明,在54个案例中有42个使用结合的复合物得到的坐标形成了结合漏斗,而在54个案例中有32个使用一种或两种单体的独立确定的坐标发现了结合漏斗的形成。实验的结合亲和力与计算的得分函数相关,并解释了许多目标的预测成功或失败。在存在结合漏斗的32种情况中,有28种情况下,使用一种或两种未结合成分进行的全局搜索可预测至少25%的天然残基-残基接触。结果表明,该方法可能很快可用于从分离出的组分的结构生成生物学上重要的复合物的模型,但它们也突显了实现一致,准确的蛋白质-蛋白质相互作用预测所必须面对的挑战。 (C)2003 Elsevier Ltd.保留所有权利。 [参考:60]

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