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Application of Multi-SOM clustering approach to macrophage gene expression analysis. | LitMetric

Application of Multi-SOM clustering approach to macrophage gene expression analysis.

Infect Genet Evol

Research Unit on Molecular Investigation of Genetic Orphan Diseases, Institut Pasteur de Tunis, 13 Place Pasteur, BP 74, Tunis Belvédère 1002, Tunisia.

Published: May 2009

AI Article Synopsis

  • The increasing availability of reliable gene expression data has led to the creation of computational tools aimed at analyzing and organizing this information efficiently.
  • Clustering techniques are of particular importance for grouping genes with similar expression patterns, based on the idea that these genes may be co-regulated and functionally related.
  • The Multi-SOM algorithm proposed in the text addresses challenges in estimating cluster numbers and interpreting results, successfully identifying biologically significant gene clusters in macrophage data from infections by different pathogens.

Article Abstract

The production of increasingly reliable and accessible gene expression data has stimulated the development of computational tools to interpret such data and to organize them efficiently. The clustering techniques are largely recognized as useful exploratory tools for gene expression data analysis. Genes that show similar expression patterns over a wide range of experimental conditions can be clustered together. This relies on the hypothesis that genes that belong to the same cluster are coregulated and involved in related functions. Nevertheless, clustering algorithms still show limits, particularly for the estimation of the number of clusters and the interpretation of hierarchical dendrogram, which may significantly influence the outputs of the analysis process. We propose here a multi level SOM based clustering algorithm named Multi-SOM. Through the use of clustering validity indices, Multi-SOM overcomes the problem of the estimation of clusters number. To test the validity of the proposed clustering algorithm, we first tested it on supervised training data sets. Results were evaluated by computing the number of misclassified samples. We have then used Multi-SOM for the analysis of macrophage gene expression data generated in vitro from the same individual blood infected with 5 different pathogens. This analysis led to the identification of sets of tightly coregulated genes across different pathogens. Gene Ontology tools were then used to estimate the biological significance of the clustering, which showed that the obtained clusters are coherent and biologically significant.

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Source
http://dx.doi.org/10.1016/j.meegid.2008.09.009DOI Listing

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