EMA: Easy Microarray data Analysis

We propose both a clear analysis strategy and a selection of tools to investigate microarray gene expression data. The most usual and relevant existing R functions were discussed, validated and gathered in an easy-to-use R package (EMA) devoted to gene expression microarray analysis. These functions were improved for ease of use, enhanced visualisation and better interpretation of results.

Version: 1.4.0
Depends: R (≥ 2.10), cluster, heatmap.plus, FactoMineR, GOstats, survival, multtest, gcrma, GSA, siggenes, MASS, biomaRt, xtable, AnnotationDbi
Suggests: hgu133plus2.db, lumi, vsn
Published: 2013-04-29
Author: Nicolas Servant, Eleonore Gravier, Pierre Gestraud, Cecile Laurent, Caroline Paccard, Anne Biton, Jonas Mandel, Bernard Asselain, Emmanuel Barillot, Philippe Hupe
Maintainer: Pierre Gestraud <pierre.gestraud at curie.fr>
License: GPL-3
NeedsCompilation: no
CRAN checks: EMA results

Downloads:

Package source: EMA_1.4.0.tar.gz
MacOS X binary: EMA_1.4.0.tgz
Windows binary: EMA_1.4.0.zip
Reference manual: EMA.pdf
Vignettes: Analysis workflow for gene expression microarrays analysis
News/ChangeLog:NEWS
Old sources: EMA archive