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Local Alignment of RNA Sequences with Arbitrary Scoring Schemes

机译:RNA序列与任意评分方案的局部比对。

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摘要

Local similarity is an important tool in comparative analysis of biological sequences, and is therefore well studied. In particular, the Smith-Waterman technique and its normalized version are two established metrics for measuring local similarity in strings. In RNA sequences however, where one must consider not only sequential but also structural features of the inspected molecules, the concept of local similarity becomes more complicated. First, even in global similarity, computing global sequence-structure alignments is more difficult than computing standard sequence alignments due to the bi-dimensionality of information. Second, one can view locality in two different ways, in the sequential or structural sense, leading to different problem formulations. In this paper we introduce two sequentially-local similarity metrics for comparing RNA sequences. These metrics combine the global RNA alignment metric of Shasha and Zhang with the Smith-Waterman metric and its normalized version used in strings. We generalize the familiar alignment graph used in string comparison to apply also for RNA sequences, and then utilize this generalization to devise two algorithms for computing local similarity according to our two suggested metrics. Our algorithms run in O(m~2 n lg n) and O(m~2 n lg n + n~2 m) time respectively, where m ≤ n are the lengths of the two given RNAs. Both algorithms can work with any arbitrary scoring scheme.
机译:局部相似性是生物序列比较分析中的重要工具,因此得到了很好的研究。特别地,Smith-Waterman技术及其规范化版本是用于测量字符串中局部相似性的两个已建立度量。但是,在RNA序列中,不仅必须考虑被检分子的顺序,还必须考虑其结构特征,局部相似性的概念变得更加复杂。首先,由于信息的二维性,即使在全局相似性方面,计算全局序列结构比对也比计算标准序列比对更困难。其次,人们可以用两种不同的方式从顺序或结构的角度看待局部性,从而导致不同的问题表述方式。在本文中,我们介绍了两个用于比较RNA序列的顺序局部相似性度量。这些度量将Shasha和Zhang的全局RNA比对度量与Smith-Waterman度量及其在字符串中使用的规范化版本相结合。我们将字符串比较中使用的熟悉的比对图进行概括,以同样适用于RNA序列,然后根据我们建议的两个指标,利用这种概括设计出两种算法来计算局部相似性。我们的算法分别在O(m〜2 n lg n)和O(m〜2 n lg n + n〜2 m)时间中运行,其中m≤n是两个给定RNA的长度。两种算法都可以使用任何任意评分方案。

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