Literature DB >> 18430991

M@IA: a modular open-source application for microarray workflow and integrative datamining.

Antony Le Béchec1, Pierre Zindy, Thomas Sierocinski, Dimitri Petritis, Audrey Bihouée, Nolwenn Le Meur, Jean Léger, Nathalie Théret.   

Abstract

Microarray technology is a widely used approach to gene expression analysis. Many tools for microarray management and data analysis have been developed, and recently new methods have been proposed for deciphering biological pathways by integrating microarray data with other data sources. However, to improve microarray analysis and provide meaningful gene interaction networks, integrated software solutions are still needed. Therefore, we developed M@IA, an environment for DNA microarray data analysis allowing gene network reconstruction. M@IA is a microarray integrated application which includes all of the steps of a microarray study, from MIAME-compliant raw data storage and processing gene expression analysis. Furthermore, M@IA allows automatic gene annotation based on ontology, metabolic/signalling pathways, protein interaction, miRNA and transcriptional factor associations, as well as integrative analysis of gene interaction networks. Statistical and graphical methods facilitate analysis, yielding new hypotheses on gene expression data. To illustrate our approach, we applied M@IA modules to microarray data taken from an experiment on liver tissue. We integrated differentially expressed genes with additional biological information, thus identifying new molecular interaction networks that are associated with fibrogenesis. M@IA is a new application for microarray management and data analysis, offering functional insights into microarray data by the combination of gene expression data and biological knowledge annotation based on interactive graphs. M@IA is an interactive multi-user interface based on a flexible modular architecture and it is freely available for academic users at http://maia.genouest.org.

Mesh:

Year:  2008        PMID: 18430991

Source DB:  PubMed          Journal:  In Silico Biol        ISSN: 1386-6338


  4 in total

1.  MIR@NT@N: a framework integrating transcription factors, microRNAs and their targets to identify sub-network motifs in a meta-regulation network model.

Authors:  Antony Le Béchec; Elodie Portales-Casamar; Guillaume Vetter; Michèle Moes; Pierre-Joachim Zindy; Anne Saumet; David Arenillas; Charles Theillet; Wyeth W Wasserman; Charles-Henri Lecellier; Evelyne Friederich
Journal:  BMC Bioinformatics       Date:  2011-03-04       Impact factor: 3.169

2.  A novel network integrating a miRNA-203/SNAI1 feedback loop which regulates epithelial to mesenchymal transition.

Authors:  Michèle Moes; Antony Le Béchec; Isaac Crespo; Christina Laurini; Aliaksandr Halavatyi; Guillaume Vetter; Antonio Del Sol; Evelyne Friederich
Journal:  PLoS One       Date:  2012-04-13       Impact factor: 3.240

3.  Predicting missing expression values in gene regulatory networks using a discrete logic modeling optimization guided by network stable states.

Authors:  Isaac Crespo; Abhimanyu Krishna; Antony Le Béchec; Antonio del Sol
Journal:  Nucleic Acids Res       Date:  2012-08-31       Impact factor: 16.971

Review 4.  The use of transcriptomics to unveil the role of nutrients in Mammalian liver.

Authors:  Jesús Osada
Journal:  ISRN Nutr       Date:  2013-08-28
  4 in total

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