Genome Informatics
Online ISSN : 2185-842X
Print ISSN : 0919-9454
ISSN-L : 0919-9454
Hybrid Gibbs-Sampling Algorithm for Challenging Motif Discovery: GibbsDST
Kazuhito Shida
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2006 年 17 巻 2 号 p. 3-13

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The difficulties of computational discovery of transcription factor binding sites (TFBS) are well represented by (l, d) planted motif challenge problems. Large d problems are difficult, particularly for profile-based motif discovery algorithms. Their local search in the profile space is apparently incompatible with subtle motifs and large mutational distances between the motif occurrences.
Herein, an improved profile-based method called GibbsDST is described and tested on (15, 4), (12, 3), and (18, 6) challenging problems. For the first time for a profile-based method, its performance in motif challenge problems is comparable to that of Random Projection. It is noteworthy that GibbsDST outperforms a pattern-based algorithm, WINNOWER, in some cases. Effectiveness of GibbsDST using a biological dataset as an example and its possible extension to more realistic evolution models are also introduced.

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© Japanese Society for Bioinformatics
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