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Integrated biclustering of heterogeneous genome-wide datasets for the inference of global regulatory networks
Authors:David J Reiss  Nitin S Baliga  Richard Bonneau
Affiliation:(1) Institute for Systems Biology, 1441 N. 34th St., Seattle, WA 98103-8904, USA;(2) Dept. of Computer Science, New York University Dept. of Biology, New York, USA
Abstract:

Background  

The learning of global genetic regulatory networks from expression data is a severely under-constrained problem that is aided by reducing the dimensionality of the search space by means of clustering genes into putatively co-regulated groups, as opposed to those that are simply co-expressed. Be cause genes may be co-regulated only across a subset of all observed experimental conditions, biclustering (clustering of genes and conditions) is more appropriate than standard clustering. Co-regulated genes are also often functionally (physically, spatially, genetically, and/or evolutionarily) associated, and such a priori known or pre-computed associations can provide support for appropriately grouping genes. One important association is the presence of one or more common cis-regulatory motifs. In organisms where these motifs are not known, their de novo detection, integrated into the clustering algorithm, can help to guide the process towards more biologically parsimonious solutions.
Keywords:
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