Efficient discovery of conserved patterns using a pattern graph.

I Jonassen
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引用次数: 172

Abstract

Motivation: We have previously reported an algorithm for discovering patterns conserved in sets of related unaligned protein sequences. The algorithm was implemented in a program called Pratt. Pratt allows the user to define a class of patterns (e.g. the degree of ambiguity allowed and the length and number of gaps), and is then guaranteed to find the conserved patterns in this class scoring highest according to a defined fitness measure. In many cases, this version of Pratt was very efficient, but in other cases it was too time consuming to be applied. Hence, a more efficient algorithm was needed.

Results: In this paper, we describe a new and improved searching strategy that has two main advantages over the old strategy. First, it allows for easier integration with programs for multiple sequence alignment and data base search. Secondly, it makes it possible to use branch-and-bound search, and heuristics, to speed up the search. The new search strategy has been implemented in a new version of the Pratt program.

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使用模式图有效地发现保守模式。
动机:我们之前已经报道了一种算法,用于发现相关未对齐蛋白质序列中保守的模式。这个算法是在一个叫做Pratt的程序中实现的。Pratt允许用户定义一类模式(例如允许的模糊程度和间隔的长度和数量),然后保证根据定义的适应度度量在该类中找到得分最高的保守模式。在许多情况下,这个版本的普拉特是非常有效的,但在其他情况下,它太耗时而无法应用。因此,需要一种更有效的算法。结果:在本文中,我们描述了一种新的和改进的搜索策略,与旧策略相比,它有两个主要优点。首先,它允许更容易地集成多个序列比对和数据库搜索程序。其次,它可以使用分支定界搜索和启发式算法来加快搜索速度。新的搜索策略已在新版本的普拉特程序中实现。
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A genetic algorithm for multiple molecular sequence alignment. Displaying the information contents of structural RNA alignments: the structure logos. Q-RT-PCR: data analysis software for measurement of gene expression by competitive RT-PCR. SS3D-P2: a three dimensional substructure search program for protein motifs based on secondary structure elements. XDOM, a graphical tool to analyse domain arrangements in any set of protein sequences.
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