Literature DB >> 17048406

Biclustering algorithms for biological data analysis: a survey.

Sara C Madeira1, Arlindo L Oliveira.   

Abstract

A large number of clustering approaches have been proposed for the analysis of gene expression data obtained from microarray experiments. However, the results from the application of standard clustering methods to genes are limited. This limitation is imposed by the existence of a number of experimental conditions where the activity of genes is uncorrelated. A similar limitation exists when clustering of conditions is performed. For this reason, a number of algorithms that perform simultaneous clustering on the row and column dimensions of the data matrix has been proposed. The goal is to find submatrices, that is, subgroups of genes and subgroups of conditions, where the genes exhibit highly correlated activities for every condition. In this paper, we refer to this class of algorithms as biclustering. Biclustering is also referred in the literature as coclustering and direct clustering, among others names, and has also been used in fields such as information retrieval and data mining. In this comprehensive survey, we analyze a large number of existing approaches to biclustering, and classify them in accordance with the type of biclusters they can find, the patterns of biclusters that are discovered, the methods used to perform the search, the approaches used to evaluate the solution, and the target applications.

Mesh:

Year:  2004        PMID: 17048406     DOI: 10.1109/TCBB.2004.2

Source DB:  PubMed          Journal:  IEEE/ACM Trans Comput Biol Bioinform        ISSN: 1545-5963            Impact factor:   3.710


  201 in total

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4.  A comparative analysis of biclustering algorithms for gene expression data.

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8.  Biclustering of adverse drug events in the FDA's spontaneous reporting system.

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9.  An up-down bit pattern approach to coregulated and negative-coregulated gene clustering of microarray data.

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Journal:  J Comput Biol       Date:  2011-01-06       Impact factor: 1.479

10.  Clustering network layers with the strata multilayer stochastic block model.

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Journal:  IEEE Trans Netw Sci Eng       Date:  2016-03-25
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