To install this package, start R and enter:

## try http:// if https:// URLs are not supported
source("https://bioconductor.org/biocLite.R")
biocLite("gCMAP")

In most cases, you don't need to download the package archive at all.

gCMAP

   

This package is for version 3.0 of Bioconductor; for the stable, up-to-date release version, see gCMAP.

Tools for Connectivity Map-like analyses

Bioconductor version: 3.0

The gCMAP package provides a toolkit for comparing differential gene expression profiles through gene set enrichment analysis. Starting from normalized microarray or RNA-seq gene expression values (stored in lists of ExpressionSet and CountDataSet objects) the package performs differential expression analysis using the limma or DESeq packages. Supplying a simple list of gene identifiers, global differential expression profiles or data from complete experiments as input, users can use a unified set of several well-known gene set enrichment analysis methods to retrieve experiments with similar changes in gene expression. To take into account the directionality of gene expression changes, gCMAPQuery introduces the SignedGeneSet class, directly extending GeneSet from the GSEABase package. To increase performance of large queries, multiple gene sets are stored as sparse incidence matrices within CMAPCollection eSets. gCMAP offers implementations of 1. Fisher's exact test (Fisher, J R Stat Soc, 1922) 2. The "connectivity map" method (Lamb et al, Science, 2006) 3. Parametric and non-parametric t-statistic summaries (Jiang & Gentleman, Bioinformatics, 2007) and 4. Wilcoxon / Mann-Whitney rank sum statistics (Wilcoxon, Biometrics Bulletin, 1945) as well as wrappers for the 5. camera (Wu & Smyth, Nucleic Acid Res, 2012) 6. mroast and romer (Wu et al, Bioinformatics, 2010) functions from the limma package and 7. wraps the gsea method from the mgsa package (Bauer et al, NAR, 2010). All methods return CMAPResult objects, an S4 class inheriting from AnnotatedDataFrame, containing enrichment statistics as well as annotation data and providing simple high-level summary plots.

Author: Thomas Sandmann <sandmann.thomas at gene.com>, Richard Bourgon <bourgon.richard at gene.com> and Sarah Kummerfeld <kummerfeld.sarah at gene.com>

Maintainer: Thomas Sandmann <sandmann.thomas at gene.com>

Citation (from within R, enter citation("gCMAP")):

Installation

To install this package, start R and enter:

## try http:// if https:// URLs are not supported
source("https://bioconductor.org/biocLite.R")
biocLite("gCMAP")

Documentation

To view documentation for the version of this package installed in your system, start R and enter:

browseVignettes("gCMAP")

 

PDF R Script Creating reference datasets
PDF R Script gCMAP classes and methods
PDF   Reference Manual
Text   NEWS

Details

biocViews Annotation, Microarray, Pathways, Software
Version 1.10.2
In Bioconductor since BioC 2.11 (R-2.15) (3.5 years)
License Artistic-2.0
Depends GSEABase, limma(>= 3.15.14)
Imports Biobase, BiocGenerics, methods, GSEAlm, Category, Matrix (>= 1.0.9), parallel, annotate, genefilter, AnnotationDbi
LinkingTo
Suggests DESeq, KEGG.db, reactome.db, RUnit, GO.db, mgsa
SystemRequirements
Enhances bigmemory, bigmemoryExtras(>= 1.1.2)
URL
Depends On Me gCMAPWeb
Imports Me
Suggests Me
Build Report  

Package Archives

Follow Installation instructions to use this package in your R session.

Package Source gCMAP_1.10.2.tar.gz
Windows Binary gCMAP_1.10.2.zip
Mac OS X 10.6 (Snow Leopard) gCMAP_1.10.2.tgz
Mac OS X 10.9 (Mavericks) gCMAP_1.10.2.tgz
Subversion source (username/password: readonly)
Git source https://github.com/Bioconductor-mirror/gCMAP/tree/release-3.0
Package Short Url http://bioconductor.org/packages/gCMAP/
Package Downloads Report Download Stats

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