Bioinformatics for Transcriptome Data Mining
Level1: primary statistical analysis
Includes quality control of private and/or public datasets (downloaded from GEO (NCBI) or ArrayExpress (EBI), and analysis of statistical significance of differential gene expression.
Programs include: Cyber-T, Rosetta Resolver ANOVA, FDR-corrections, SAM, PAM
Level 2: clustering, pathway and literature-mining
Clustering analysis allows visualization of large datasets in a comprehensive manner to unveil underlying order in the datasets, i.e. coregulation of genes that have similar functions or transcription regulation or are relevant for classification of patients or animal groups.
Pathway analysis by various methods unveils order in the data by arranging them into either specific metabolic or signaling pathways from a variety of databases (KEGG, BioCarta, Reactome) or into Gene Ontology networks (www.geneontology.org).
Literature-mining provides quick reference to PubMed by ordering gene-gene or protein-protein interactions in networks of co-publications and relations to specific biological and clinical processes, thereby greatly shortening time spent on tracing literature related to your gene set.
Programs include: GSEA, GenMAPP, Bibliosphere, Ingenuity, DAVID, GOTM, Compendium
Level 3: transcriptional networks analysis
Transcriptome analysis most directly probes for regulation of gene expression. Coupling co-expression data to promoter sequences allows for analysis of causative sets of specific transcription factors and gene expression networks controlled by them. This is greatly facilitated by phylogenetic analysis as
underlying regulatory sequences are conserved among species.
Programs include: VISTA, Genomatix Suite
Workshop
The workshop is open for members of EVGN several times a year. More information and information on how to apply can be found on the member’s intranet site.
This platform is managed by Anton Horrevoets at AMC.
Dowload out leaflet here