Multiple Sequence Alignment Containing a Sequence of Regular Expressions

Abdullah N. Arslan
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引用次数: 23

Abstract

A classical algorithm for the pairwise sequence alignment is the Smith Waterman algorithm which uses dynamic programming. The algorithm computes the maximum score of alignments that use insertions, deletions, and substitutions, with no consideration given in composition of the alignments. However, biologists favor applying their knowledge about common structures or functions into the alignment process. For alignment of protein sequences, several methods have been suggested for taking into account the motifs (a restricted regular expression) from the PROSITE database to guide alignments. One method modifies the Smith Waterman dynamic programming solution to reward alignments that contain matching motifs. Another method introduces the regular expression constrained sequence alignment problem in which pairwise alignments are constrained to contain a given regular expression. This latter method constructs a weighted finite automaton from a given regular expression, and presents a dynamic programming solution that simulates copies of this automaton in seeking an alignment with maximum score containing the regular expression. We generalize this approach: 1) We introduce a variation of the problem for multiple sequences, namely the regular expression constrained multiple sequence alignment, and present an algorithm for it; 2) We develop an algorithm for the case of the problem when the alignments sought are required to contain a given sequence of regular expressions.
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包含正则表达式序列的多序列对齐
采用动态规划的Smith Waterman算法是一对序列比对的经典算法。该算法计算使用插入、删除和替换的排列的最大分数,而不考虑排列的组成。然而,生物学家倾向于将他们关于共同结构或功能的知识应用到排列过程中。对于蛋白质序列的比对,已经提出了几种考虑PROSITE数据库中的基序(一种限制性正则表达式)来指导比对的方法。一种方法修改了Smith Waterman动态规划解决方案,以奖励包含匹配主题的对齐。另一种方法引入正则表达式约束序列对齐问题,其中成对对齐被约束为包含给定正则表达式。后一种方法从给定的正则表达式构造一个加权有限自动机,并提出一个动态规划解决方案,模拟该自动机的副本,以寻求包含正则表达式的最大分数的对齐。我们对该方法进行了推广:1)引入了多序列问题的一种变体,即正则表达式约束的多序列比对,并给出了一种算法;2)我们开发了一种算法,用于要求所寻求的对齐包含给定正则表达式序列的情况。
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