多序列比对的进化计算技术

L. Cai, D. Juedes, Evgueni Liakhovitch
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引用次数: 60

摘要

给定一组生物学上相关的蛋白质或DNA序列,基本的多序列比对问题是确定这些序列在生物学上最合理的比对。假设序列集合来自某个共同的祖先,比对可以用来推断序列之间的进化史,即最可能的插入、删除和突变模式,将一个序列转化为另一个序列。一般的多序列比对问题被认为是np困难的,因此找到最佳可能的多序列比对问题是难以解决的。然而,这并不排除开发在多项式时间内产生近最优多序列比对的算法的可能性。我们研究了将近最优全局和局部多序列比对的有效算法与进化计算技术相结合的技术,以寻找更好的近最优序列比对。我们描述了我们的进化计算方法多序列比对,并提出了一组17簇同源蛋白(COGs)的初步模拟结果。我们将所提出的技术给出的匹配度与COG数据库中给出的CLUSTAL W匹配度进行了比较。
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Evolutionary computation techniques for multiple sequence alignment
Given a collection of biologically related protein or DNA sequences, the basic multiple sequence alignment problem is to determine the most biologically plausible alignment of these sequences. Under the assumption that the collection of sequences arose from some common ancestor, an alignment can be used to infer the evolutionary history among the sequences, i.e., the most likely pattern of insertions, deletions and mutations that transformed one sequence into another. The general multiple sequence alignment problem is known to be NP-hard, and hence the problem of finding the best possible multiple sequence alignment is intractable. However, this does not preclude the possibility of developing algorithms that produce near optimal multiple sequence alignments in polynomial time. We examine techniques to combine efficient algorithms for near optimal global and local multiple sequence alignment with evolutionary computation techniques to search for better near optimal sequence alignments. We describe our evolutionary computation approach to multiple sequence alignment and present preliminary simulation results on a set of 17 clusters of orthologous groups of proteins (COGs). We compare the fitness of the alignments given by the proposed techniques with the fitness of CLUSTAL W alignments given in the COG database.
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