cWINNOWER algorithm for finding fuzzy DNA motifs.

Shoudan Liang
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Abstract

The cWINNOWER algorithm detects fuzzy motifs in DNA sequences rich in protein-binding signals. A signal is defined as any short nucleotide pattern having up to d mutations differing from a motif of length l. The algorithm finds such motifs if multiple mutated copies of the motif (i.e., the signals) are present in the DNA sequence in sufficient abundance. The cWINNOWER algorithm substantially improves the sensitivity of the winnower method of Pevzner and Sze by imposing a consensus constraint, enabling it to detect much weaker signals. We studied the minimum number of detectable motifs qc as a function of sequence length N for random sequences. We found that q(c) increases linearly with N for a fast version of the algorithm based on counting three-member sub-cliques. Imposing consensus constraints reduces q(c) by a factor of three in this case, which makes the algorithm dramatically more sensitive. Our most sensitive algorithm, which counts four-member sub-cliques, needs a minimum of only 13 signals to detect motifs in a sequence of length N = 12,000 for (l,d) = (15,4).

cWINNOWER算法寻找模糊DNA基序。
cWINNOWER算法检测富含蛋白质结合信号的DNA序列中的模糊基序。信号被定义为与长度为1的基序有多达d个突变的任何短核苷酸模式。如果该基序的多个突变拷贝(即信号)在DNA序列中以足够的丰度存在,则算法会发现这样的基序。cWINNOWER算法通过施加共识约束,大大提高了Pevzner和Sze的winnower方法的灵敏度,使其能够检测到更弱的信号。研究了随机序列中可检测基序的最小数目qc与序列长度N的关系。我们发现,对于基于计数三成员子团的快速算法,q(c)随N线性增加。在这种情况下,施加共识约束将q(c)减少了三倍,这使得算法显着提高了灵敏度。我们最灵敏的算法是计数四成员子团,它至少需要13个信号来检测长度为N = 12,000的序列(l,d) =(15,4)中的motif。
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