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ReformAlign: improved multiple sequence alignments using a profile-based meta-alignment approach

机译:ReformAlign:使用基于配置文件的元比对方法改进了多个序列比对

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摘要

BackgroundObtaining an accurate sequence alignment is fundamental for consistently analyzing biological data. Although this problem may be efficiently solved when only two sequences are considered, the exact inference of the optimal alignment easily gets computationally intractable for the multiple sequence alignment case. To cope with the high computational expenses, approximate heuristic methods have been proposed that address the problem indirectly by progressively aligning the sequences in pairs according to their relatedness. These methods however are not flexible to change the alignment of an already aligned group of sequences in the view of new data, resulting thus in compromises on the quality of the deriving alignment. In this paper we present ReformAlign, a novel meta-alignment approach that may significantly improve on the quality of the deriving alignments from popular aligners. We call ReformAlign a meta-aligner as it requires an initial alignment, for which a variety of alignment programs can be used. The main idea behind ReformAlign is quite straightforward: at first, an existing alignment is used to construct a standard profile which summarizes the initial alignment and then all sequences are individually re-aligned against the formed profile. From each sequence-profile comparison, the alignment of each sequence against the profile is recorded and the final alignment is indirectly inferred by merging all the individual sub-alignments into a unified set. The employment of ReformAlign may often result in alignments which are significantly more accurate than the starting alignments.
机译:背景技术获得准确的序列比对是一致分析生物学数据的基础。尽管仅考虑两个序列就可以有效地解决此问题,但是对于多序列比对的情况,最佳比对的准确推断很容易在计算上变得棘手。为了应对高计算量,已经提出了近似启发式方法,该方法通过根据序列之间的相关性逐对排列序列来间接地间接解决该问题。然而,这些方法在改变新数据的视野中改变已经比对的序列组的比对时不灵活,因此导致在推导比对的质量上的妥协。在本文中,我们介绍了ReformAlign,这是一种新颖的元比对方法,可以显着改善从流行的比对器中得出比对的质量。我们称它为元对齐器,因为它需要初始对齐,可以使用多种对齐程序。 ReformAlign背后的主要思想非常简单:首先,使用现有的比对来构建标准配置文件,该文件概述了初始比对,然后将所有序列分别针对形成的配置文件进行重新比对。从每个序列-谱图比较中,记录每个序列与谱图的比对,并通过将所有单个子比对合并为一个统一的集合来间接推断最终比对。使用ReformAlign可能经常会导致比开始对齐更准确的对齐。

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