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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >Approximation of protein structure for fast similarity measures
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Approximation of protein structure for fast similarity measures

机译:蛋白质结构近似用于快速相似性检测

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摘要

The structural comparison of two proteins comes up in many applications in structural biology where it is often necessary to find similarities in very large conformation sets. This work describes techniques to achieve significant speedup in the computation of structural similarity between two given conformations, at the expense of introducing a small error in the similarity measure. Furthermore, the proposed computational scheme allows for a tradeoff between speedup and error. This scheme exploits the fact that the Calpha representation of a protein conformation contains redundant information, due to the chain topology and limited compactness of proteins. This redundancy can be reduced by approximating subchains of a protein by their centers of mass, resulting in a smaller number of points to describe a conformation. A Haar wavelet analysis of random chains and proteins is used to justify this approximated representation. Similarity measures computed with this representation are highly correlated to the measures computed with the original Calpha representation. Therefore, they can be used in applications where small similarity errors can be tolerated or as fast filters in applications that require exact measures. Computational tests have been conducted on two applications, nearest neighbor search and automatic structural classification.
机译:两种蛋白质的结构比较在结构生物学的许多应用中都出现了,在这些应用中,经常需要在非常大的构象集中找到相似性。这项工作描述了在两个给定构象之间的结构相似性计算中实现显着加速的技术,但以在相似性度量中引入小的误差为代价。此外,所提出的计算方案允许在加速和误差之间进行折衷。该方案利用了以下事实:由于蛋白质的链拓扑和有限的紧密性,蛋白质构象的Calpha表示包含冗余信息。通过以蛋白质的质心近似蛋白质的亚链,可以减少这种冗余,从而可以减少描述构象的点数。随机链和蛋白质的Haar小波分析用于证明这种近似表示的合理性。用这种表示法计算的相似性度量与用原始Calpha表示法计算的度量高度相关。因此,它们可以用于可以容忍相似性很小的错误的应用中,也可以在需要精确测量的应用中用作快速过滤器。已经在两个应用程序上进行了计算测试,最近邻搜索和自动结构分类。

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