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A knowledge-based scoring function based on residue triplets for protein structure prediction

机译:基于残基三元组的基于知识的评分功能用于蛋白质结构预测

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摘要

One of the general paradigms for ab initio protein structure prediction involves sampling the conformational space such that a large set of decoy (candidate) structures are generated and then selecting native-like conformations from those decoys using various scoring functions. In this study, based on a physical/geometric approach first suggested by Banavar and colleagues, we formulate a knowledge-based scoring function, which uses the radii of curvature formed among triplets of residues in a protein conformation. By analyzing its performance on various decoy sets, we determine a good set of parameters—the distance cutoff and the number of distance bins—to use for configuring such a function. Furthermore, we investigate the effect of using various approaches for compiling the prior distribution on the performance of the knowledge-based function. Possible extensions to the current form of the residue triplet scoring function are discussed.
机译:从头算蛋白质结构预测的一般范例之一是对构象空间进行采样,以便生成大量诱饵(候选)结构,然后使用各种评分功能从这些诱饵中选择类似天然的构象。在这项研究中,基于Banavar及其同事首先提出的物理/几何方法,我们制定了一个基于知识的评分函数,该函数使用蛋白质构象中三元组残基之间形成的曲率半径。通过分析其在各种诱饵装置上的性能,我们确定了一组很好的参数-距离截止值和距离箱的数量-用于配置此功能。此外,我们调查了使用各种方法来编译先验分布对基于知识的功能的性能的影响。讨论了可能的扩展形式对残基三重评分功能的当前形式。

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