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A graph theoretic approach to protein structure selection

机译:图论的蛋白质结构选择方法

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Objective: Protein structure prediction (PSP) aims to reconstruct the 3D structure of a given protein starting from its primary structure (chain of amino acidic residues). It is a well-known fact that the 3D structure of a protein only depends on its primary structure. PSP is one of the most important and still unsolved problems in computational biology. Protein structure selection (PSS), instead of reconstructing a 3D model for the given chain, aims to select among a given, possibly large, number of 3D structures (called decoys) those that are closer (according to a given notion of distance) to the original (unknown) one. In this paper we address PSS problem using graph theoretic techniques.rnMethods and materials: Existing methods for solving PSS make use of suitably defined energy functions which heavily rely on the primary structure of the protein and on protein chemistry. In this paper we present a new approach to PSS which does not take advantage of the knowledge of the primary structure of the protein but only depends on the graph theoretic properties of the decoys graphs (vertices represent residues and edges represent pairs of residues whose Euclidean distance is less than or equal to a fixed threshold).rnResults: Even if our methods only rely on approximate geometric information, experimental results show that some of the adopted graph properties score similarly to energy-based filtering functions in selecting the best decoys. Conclusion: Our results highlight the principal role of geometric information in PSS, setting a new starting point and filtering method for existing energy function-based techniques.
机译:目的:蛋白质结构预测(PSP)旨在从其一级结构(氨基酸残基链)开始重建给定蛋白质的3D结构。众所周知的事实是蛋白质的3D结构仅取决于其一级结构。 PSP是计算生物学中最重要但仍未解决的问题之一。蛋白质结构选择(PSS)并非为给定的链重建3D模型,而是旨在从给定的(可能是大数目的)3D结构(称为诱饵)中选择更接近(根据给定的距离概念)的3D结构。原始(未知)之一。在本文中,我们使用图论技术解决PSS问题。方法和材料:解决PSS的现有方法利用适当定义的能量函数,这些函数严重依赖于蛋白质的一级结构和蛋白质化学。在本文中,我们提出了一种新的PSS方法,该方法不利用蛋白质一级结构的知识,而仅取决于诱饵图的图论特性(顶点代表残基,边代表成对的欧氏距离的残基)结果:即使我们的方法仅依赖于近似的几何信息,实验结果也表明,在选择最佳诱饵时,某些采用的图属性的得分与基于能量的滤波函数相似。结论:我们的结果突出了几何信息在PSS中的主要作用,为现有的基于能量函数的技术设定了新的起点和过滤方法。

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