基序查找问题的投票算法。

Xiaowen Liu, Bin Ma, Lusheng Wang
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引用次数: 0

摘要

在许多序列中寻找基序是计算生物学中的一个重要问题,特别是在DNA序列中调节基序的鉴定中。设c为基序序列。给定一组序列,每个序列都在未知位置植入一个突变的c, motif寻找问题就是找到这些植入的motif和原始的c。本文研究了由Pevzner和Sze提出的植入motif问题的VM模型。我们给出了一个简单的选择1投票算法和一个更强大的选择k投票算法。当基序长度和输入序列数量足够大时,我们证明了这两种算法能够以高概率找到未知基序一致性。在证明中,我们展示了为什么大量的输入序列对于寻找基序如此重要,这是大多数研究人员所相信的。模拟数据的实验结果也支持了这一说法。投票算法功能强大,但计算量大。为了提高算法的速度,我们提出了一种递进滤波算法,该算法显著提高了运行时间,并且在寻找基序方面具有良好的准确性。实验结果表明,采用渐进式滤波的选择k投票算法在实践中表现良好,优于一些已知的算法。可用性该软件可根据要求提供。
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Voting algorithms for the motif finding problem.
UNLABELLED Finding motifs in many sequences is an important problem in computational biology, especially in identification of regulatory motifs in DNA sequences. Let c be a motif sequence. Given a set of sequences, each is planted with a mutated version of c at an unknown position, the motif finding problem is to find these planted motifs and the original c. In this paper, we study the VM model of the planted motif problem, which is proposed by Pevzner and Sze. We give a simple Selecting One Voting algorithm and a more powerful Selecting k Voting algorithm. When the length of motif and the number of input sequences are large enough, we prove that the two algorithms can find the unknown motif consensus with high probability. In the proof, we show why a large number of input sequences is so important for finding motifs, which is believed by most researchers. Experimental results on simulated data also support the claim. Selecting k Voting algorithm is powerful, but computational intensive. To speed up the algorithm, we propose a progressive filtering algorithm, which improves the running time significantly and has good accuracy in finding motifs. Our experimental results show that Selecting k Voting algorithm with progressive filtering performs very well in practice and it outperforms some best known algorithms. AVAILABILITY The software is available upon request.
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