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首页> 外文期刊>Journal of Bioinformatics and Computational Biology >Are distance-dependent statistical potentials considering three interacting bodies superior to two-body statistical potentials for protein structure prediction?
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Are distance-dependent statistical potentials considering three interacting bodies superior to two-body statistical potentials for protein structure prediction?

机译:在蛋白质结构预测中,考虑三个相互作用体的距离相关统计势是否优于两体统计势?

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摘要

Distance-based statistical potentials have long been used to model condensed matter systems, e.g. as scoring functions in differentiating native-like protein structures from decoys. These scoring functions are based on the assumption that the total free energy of the protein can be calculated as the sum of pairwise free energy contributions derived from a statistical analysis of pair-distribution functions. However, this fundamental assumption has been challenged theoretically. In fact the free energy of a system with N particles is only exactly related to the N-body distribution function. Based on this argument coarse-grained multi-body statistical potentials have been developed to capture higher-order interactions. Having a coarse representation of the protein and using geometric contacts instead of pairwise interaction distances renders these models insufficient in modeling details of multi-body effects. In this study, we investigated if extending distance-dependent pairwise atomistic statistical potentials to corresponding interaction functions that are conditional on a third interacting body, defined as quasi-three-body statistical potentials, could model details of three-body interactions. We also tested if this approach could improve the predictive capabilities of statistical scoring functions for protein structure prediction. We analyzed the statistical dependency between two simultaneous pairwise interactions and showed that there is surprisingly little if any dependency of a third interacting site on pairwise atomistic statistical potentials. Also the protein structure prediction performance of these quasi-three-body potentials is comparable with their corresponding two-body counterparts. The scoring functions developed in this study showed better or comparable performances compared to some widely used scoring functions for protein structure prediction.
机译:长期以来,基于距离的统计潜力已被用来对凝聚态系统进行建模,例如在区分诱饵的天然蛋白结构中起得分作用。这些评分函数是基于这样的假设,即蛋白质的总自由能可以计算为从成对分布函数的统计分析得出的成对自由能贡献的总和。但是,这一基本假设在理论上受到了挑战。实际上,具有N个粒子的系统的自由能仅与N体分布函数完全相关。基于此论点,已开发出粗粒多体统计势能来捕获更高阶的相互作用。具有蛋白质的粗略表示并使用几何接触而不是成对的相互作用距离使这些模型不足以对多体效应的细节进行建模。在这项研究中,我们研究了将距离相关的成对原子统计势能扩展到以第三种相互作用体(定义为准三体统计势)为条件的相应相互作用函数是否可以对三体相互作用的细节进行建模。我们还测试了这种方法是否可以提高蛋白质结构预测的统计评分功能的预测能力。我们分析了两个同时进行的成对相互作用之间的统计依赖性,结果表明,第三个相互作用位点对成对原子统计势的依赖性极小(如果有)。这些准三体电位的蛋白质结构预测性能也可与它们相应的两体对应物相媲美。与一些广泛用于蛋白质结构预测的评分功能相比,本研究开发的评分功能显示出更好或可比的性能。

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