Integrated biclustering of heterogeneous genome-wide datasets for the inference of global regulatory networks |
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Authors: | David J Reiss Nitin S Baliga Richard Bonneau |
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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 |
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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. |
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