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Protein structure similarity from principle component correlation analysis

机译:从主成分相关分析得出的蛋白质结构相似性

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摘要

BackgroundOwing to rapid expansion of protein structure databases in recent years, methods of structure comparison are becoming increasingly effective and important in revealing novel information on functional properties of proteins and their roles in the grand scheme of evolutionary biology. Currently, the structural similarity between two proteins is measured by the root-mean-square-deviation (RMSD) in their best-superimposed atomic coordinates. RMSD is the golden rule of measuring structural similarity when the structures are nearly identical; it, however, fails to detect the higher order topological similarities in proteins evolved into different shapes. We propose new algorithms for extracting geometrical invariants of proteins that can be effectively used to identify homologous protein structures or topologies in order to quantify both close and remote structural similarities.
机译:背景技术由于近年来蛋白质结构数据库的迅速扩展,结构比较方法在揭示有关蛋白质功能特性及其在进化生物学大计划中的作用的新信息方面正变得越来越有效和重要。当前,两种蛋白质之间的结构相似性是通过其最佳重叠原子坐标中的均方根偏差(RMSD)来衡量的。当结构几乎相同时,RMSD是测量结构相似性的黄金法则。但是,它无法检测进化成不同形状的蛋白质的高阶拓扑相似性。我们提出了用于提取蛋白质几何不变性的新算法,这些算法可以有效地用于识别同源蛋白质结构或拓扑结构,以便量化近距离和远距离结构相似性。

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