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Replication data for: Coupling of Hidden Markov Models for the Discovery of Cis-Regulatory Modules in Multiple Species
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Qing Zhou; Wing Hung Wong, 2007, "Replication data for: Coupling of Hidden Markov Models for the Discovery of Cis-Regulatory Modules in Multiple Species", hdl:1902.1/10647 Institute for Mathematical Statistics [Distributor]
Study Global Idhdl:1902.1/10647
AuthorsQing Zhou (UCLA); Wing Hung Wong (Stanford University)
Production Date2007
DistributorInstitute for Mathematical Statistics Logo
Distribution Date2007
Deposit DateOctober 01, 2007
Replication ForQing Zhou, and Wing Hung Wong. 2007. "Coupling of Hidden Markov Models for the Discovery of Cis-Regulatory Modules in Multiple Species." Ann. Appl. Statist. Volume 1, Number 1 (2007), 36-65. article available here
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Abstract

Cis-regulatory modules (CRMs) composed of multiple transcription factor binding sites (TFBSs) control gene expression in eukaryotic genomes. Comparative genomic studies have shown that these regulatory elements are more conserved across species due to evolutionary constraints. We propose a statistical method to combine module structure and cross-species orthology in de novo motif discovery. We use a hidden Markov model (HMM) to capture the module structure in each species and couple these HMMs through multiple-species alignment. Evolutionary models are incorporated to consider correlated structures among aligned sequence positions across different species. Based on our model, we develop a Markov chain Monte Carlo approach, MultiModule, to discover CRMs and their component motifs simultaneously in groups of orthologous sequences from multiple species. Our method is tested on both simulated and biological data sets in mammals and Drosophila, where significant improvement over other motif and module discovery methods is observed.

KeywordsCis-regulatory module; motif discovery; comparative genomics; coupled hidden Markov model; Markov chain Monte Carlo; dynamic programming
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