Literature DB >> 12169541

Discovering statistically significant biclusters in gene expression data.

Amos Tanay1, Roded Sharan, Ron Shamir.   

Abstract

In gene expression data, a bicluster is a subset of the genes exhibiting consistent patterns over a subset of the conditions. We propose a new method to detect significant biclusters in large expression datasets. Our approach is graph theoretic coupled with statistical modelling of the data. Under plausible assumptions, our algorithm is polynomial and is guaranteed to find the most significant biclusters. We tested our method on a collection of yeast expression profiles and on a human cancer dataset. Cross validation results show high specificity in assigning function to genes based on their biclusters, and we are able to annotate in this way 196 uncharacterized yeast genes. We also demonstrate how the biclusters lead to detecting new concrete biological associations. In cancer data we are able to detect and relate finer tissue types than was previously possible. We also show that the method outperforms the biclustering algorithm of Cheng and Church (2000).

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Year:  2002        PMID: 12169541     DOI: 10.1093/bioinformatics/18.suppl_1.s136

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  148 in total

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3.  Revealing modularity and organization in the yeast molecular network by integrated analysis of highly heterogeneous genomewide data.

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9.  Enrichment constrained time-dependent clustering analysis for finding meaningful temporal transcription modules.

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Journal:  Bioinformatics       Date:  2009-04-07       Impact factor: 6.937

10.  Chromatin signature reveals over a thousand highly conserved large non-coding RNAs in mammals.

Authors:  Mitchell Guttman; Ido Amit; Manuel Garber; Courtney French; Michael F Lin; David Feldser; Maite Huarte; Or Zuk; Bryce W Carey; John P Cassady; Moran N Cabili; Rudolf Jaenisch; Tarjei S Mikkelsen; Tyler Jacks; Nir Hacohen; Bradley E Bernstein; Manolis Kellis; Aviv Regev; John L Rinn; Eric S Lander
Journal:  Nature       Date:  2009-02-01       Impact factor: 49.962

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