The discovery of cis-regulatory modules in metazoan genomes is crucial for understanding the connection between genes and organism diversity.; We develop a computational method that uses Hidden Markov Models and an Expectation Maximization algorithm to detect such modules, given the weight matrices of a set of transcription factors known to work together. Two novel features of our probabilistic model are: (i) correlations between binding sites, known to be required for module activity, are exploited, and (ii) phylogenetic comparisons among sequences from multiple species are made to highlight a regulatory module. The novel features are shown to improve detection of modules, in experiments on synthetic as well as biological data
The discovery of cis-regulatory modules (CRMs) is the key to understanding mechanisms of transcripti...
Abstract Over the last two decades a large number of algorithms has been developed for regulatory mo...
"Module networks" are a framework to learn gene regulatory networks from expression data using a pro...
Cis-regulatory modules (CRMs) composed of multiple transcription factor binding sites (TFBS's) contr...
Cis-regulatory modules (CRMs) composed of multiple transcription factor binding sites (TFBS's) contr...
Cis-regulatory modules (CRMs) composed of multiple transcription factor binding sites (TFBSs) contro...
Motivation: Finding the regulatory modules for transcription factors binding is an important step in...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
The discovery of cis-regulatory modules (CRMs) is a challenging problem in computational biology. Li...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
Transcriptional regulation is mediated by the coordinated binding of transcription factors to the up...
Transcriptional regulation is mediated by the coordinated binding of transcription factors to the up...
International audienceBackgroundcis-Regulatory modules (CRMs) of eukaryotic genes often contain mult...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
The discovery of cis-regulatory modules (CRMs) is the key to understanding mechanisms of transcripti...
Abstract Over the last two decades a large number of algorithms has been developed for regulatory mo...
"Module networks" are a framework to learn gene regulatory networks from expression data using a pro...
Cis-regulatory modules (CRMs) composed of multiple transcription factor binding sites (TFBS's) contr...
Cis-regulatory modules (CRMs) composed of multiple transcription factor binding sites (TFBS's) contr...
Cis-regulatory modules (CRMs) composed of multiple transcription factor binding sites (TFBSs) contro...
Motivation: Finding the regulatory modules for transcription factors binding is an important step in...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
The discovery of cis-regulatory modules (CRMs) is a challenging problem in computational biology. Li...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
Transcriptional regulation is mediated by the coordinated binding of transcription factors to the up...
Transcriptional regulation is mediated by the coordinated binding of transcription factors to the up...
International audienceBackgroundcis-Regulatory modules (CRMs) of eukaryotic genes often contain mult...
Transcription regulation is controlled by coordinated binding of one or more transcription factors i...
The discovery of cis-regulatory modules (CRMs) is the key to understanding mechanisms of transcripti...
Abstract Over the last two decades a large number of algorithms has been developed for regulatory mo...
"Module networks" are a framework to learn gene regulatory networks from expression data using a pro...