Spectral Biclustering of Microarray Data: Coclustering Genes and Conditions
Yale University · Weizmann Institute of Science
Abstract
Global analyses of RNA expression levels are useful for classifying genes and overall phenotypes. Often these classification problems are linked, and one wants to find "marker genes" that are differentially expressed in particular sets of "conditions." We have developed a method that simultaneously clusters genes and conditions, finding distinctive "checkerboard" patterns in matrices of gene expression data, if they exist. In a cancer context, these checkerboards correspond to genes that are markedly up- or downregulated in patients with particular types of tumors. Our method, spectral biclustering, is based on the observation that checkerboard structures in matrices of expression data can be found in…
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Authors
4Topics & keywords
- Biclustering
- Normalization (sociology)
- Biology
- Singular value decomposition
- Computational biology
- Checkerboard
- Gene
- Context (archaeology)