Journal article
Analysis of the real EADGENE data set: Multivariate approaches and post analysis (Open Access publication)
P Sørensen, A Bonnet, B Buitenhuis, R Closset, S Déjean, C Delmas, M Duval, L Glass, J Hedegaard, H Hornshøj, I Hulsegge, F Jaffrézic, K Jensen, L Jiang, DJ De Koning, KA Lê Cao, H Nie, W Petzl, MH Pool, C Robert-Granié Show all
Genetics Selection Evolution | BMC | Published : 2007
DOI: 10.1051/gse:2007030
Abstract
The aim of this paper was to describe, and when possible compare, the multivariate methods used by the participants in the EADGENE WP1.4 workshop. The first approach was for class discovery and class prediction using evidence from the data at hand. Several teams used hierarchical clustering (HC) or principal component analysis (PCA) to identify groups of differentially expressed genes with a similar expression pattern over time points and infective agent (E. coli or S. aureus). The main result from these analyses was that HC and PCA were able to separate tissue samples taken at 24 h following E. coli infection from the other samples. The second approach identified groups of differentially co..
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Awarded by Biotechnology and Biological Sciences Research Council