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首页> 外文期刊>Journal of clinical monitoring and computing >Randomized and parallel algorithms for distance matrix calculations in multiple sequence alignment.
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Randomized and parallel algorithms for distance matrix calculations in multiple sequence alignment.

机译:多序列比对中距离矩阵计算的随机和并行算法。

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摘要

Multiple sequence alignment (MSA) is a vital problem in biology. Optimal alignment of multiple sequences becomes impractical even for a modest number of sequences since the general version of the problem is NP-hard. Because of the high time complexity of traditional MSA algorithms, even today's fast computers are not able to solve the problem for large number of sequences. In this paper we present a randomized algorithm to calculate distance matrices, which is a major step in many multiple sequence alignment algorithms. The basic idea employed is sampling (along the lines of). We also illustrate how to parallelize this algorithm. In Section we introduce the problem of multiple sequence alignments. In Section we provide a discussion on various methods that have been employed in the literature for Multiple Sequence Alignment. In this section we also introduce our new sampling approach. We extend our randomized algorithm to the case of non-uniform length sequences as well. We show that our algorithms are amenable to parallelism in Section. In Section we back up our claim of speedup and accuracy with empirical data and examples. In Section we provide some concluding remarks.
机译:多序列比对(MSA)是生物学中的重要问题。即使序列数量不多,也无法对多个序列进行最佳比对,因为问题的一般形式是NP-hard。由于传统MSA算法的时间复杂度很高,即使是当今的快速计算机也无法解决大量序列的问题。在本文中,我们提出了一种随机算法来计算距离矩阵,这是许多多序列比对算法中的重要一步。使用的基本思想是采样(沿线进行)。我们还将说明如何并行化此算法。在本节中,我们介绍了多个序列比对的问题。在本节中,我们将讨论文献中用于多序列比对的各种方法。在本节中,我们还将介绍我们的新采样方法。我们还将随机算法扩展到长度不均匀的情况。在本节中,我们证明了我们的算法适合并行性。在本节中,我们用经验数据和示例来支持我们对提速和准确性的主张。在本节中,我们提供一些总结性说明。

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