Augmenting SSEs with structural properties for rapid protein structure comparison

C. Chionh, Zhiyong Huang, K. Tan, Zhen Yao
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引用次数: 22

Abstract

Comparing protein structures in three dimensions is a computationally expensive process that makes a full scan of a protein against a library of known protein structures impractical. To reduce the cost, we can use an approximation of the three dimensional structure that allows protein comparison to be performed quickly to filter away dissimilar proteins. In this paper we present a new algorithm, called SCALE, for protein structure comparison. In SCALE, a protein is represented as a sequence of secondary structure elements (SSEs) augmented with 3D structural properties such as the distances and angles between the SSEs. As such, the comparison between two proteins is reduced to a sequence alignment problem between their corresponding sequences of SSEs. The 3-D structural properties of the proteins contribute to the similarity score between the two sequences. We have implemented SCALE, and compared its performance against existing schemes. Our performance study shows that SCALE outperforms existing methods in terms of both efficiency and effectiveness (measured in terms of precision and recall).
利用结构特性扩增sse,快速比较蛋白质结构
在三维上比较蛋白质结构是一个计算成本很高的过程,这使得对已知蛋白质结构库的蛋白质进行全面扫描变得不切实际。为了降低成本,我们可以使用近似的三维结构,使蛋白质比较能够快速进行,以过滤掉不同的蛋白质。本文提出了一种新的蛋白质结构比较算法,称为SCALE。在SCALE中,蛋白质被表示为二级结构元素(sse)序列,并增加了sse之间的距离和角度等3D结构属性。因此,两种蛋白质之间的比较被简化为它们对应的sse序列之间的序列比对问题。蛋白质的三维结构特性有助于两个序列之间的相似性得分。我们已经实现了SCALE,并将其性能与现有方案进行了比较。我们的性能研究表明,SCALE在效率和有效性(以精度和召回率衡量)方面优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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