goSTAG

This is the development version of goSTAG; for the stable release version, see goSTAG.

A tool to use GO Subtrees to Tag and Annotate Genes within a set


Bioconductor version: Development (3.20)

Gene lists derived from the results of genomic analyses are rich in biological information. For instance, differentially expressed genes (DEGs) from a microarray or RNA-Seq analysis are related functionally in terms of their response to a treatment or condition. Gene lists can vary in size, up to several thousand genes, depending on the robustness of the perturbations or how widely different the conditions are biologically. Having a way to associate biological relatedness between hundreds and thousands of genes systematically is impractical by manually curating the annotation and function of each gene. Over-representation analysis (ORA) of genes was developed to identify biological themes. Given a Gene Ontology (GO) and an annotation of genes that indicate the categories each one fits into, significance of the over-representation of the genes within the ontological categories is determined by a Fisher's exact test or modeling according to a hypergeometric distribution. Comparing a small number of enriched biological categories for a few samples is manageable using Venn diagrams or other means for assessing overlaps. However, with hundreds of enriched categories and many samples, the comparisons are laborious. Furthermore, if there are enriched categories that are shared between samples, trying to represent a common theme across them is highly subjective. goSTAG uses GO subtrees to tag and annotate genes within a set. goSTAG visualizes the similarities between the over-representation of DEGs by clustering the p-values from the enrichment statistical tests and labels clusters with the GO term that has the most paths to the root within the subtree generated from all the GO terms in the cluster.

Author: Brian D. Bennett and Pierre R. Bushel

Maintainer: Brian D. Bennett <brian.bennett at nih.gov>

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

Installation

To install this package, start R (version "4.4") and enter:


if (!require("BiocManager", quietly = TRUE))
    install.packages("BiocManager")

# The following initializes usage of Bioc devel
BiocManager::install(version='devel')

BiocManager::install("goSTAG")

For older versions of R, please refer to the appropriate Bioconductor release.

Documentation

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

browseVignettes("goSTAG")
The goSTAG User's Guide HTML R Script
Reference Manual PDF
NEWS Text

Details

biocViews Clustering, DifferentialExpression, GO, GeneExpression, GeneSetEnrichment, ImmunoOncology, Microarray, RNASeq, Software, Visualization, mRNAMicroarray
Version 1.29.0
In Bioconductor since BioC 3.5 (R-3.4) (7.5 years)
License GPL-3
Depends R (>= 3.4)
Imports AnnotationDbi, biomaRt, GO.db, graphics, memoise, stats, utils
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Suggests BiocStyle, knitr, rmarkdown, testthat
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Package Archives

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

Source Package goSTAG_1.29.0.tar.gz
Windows Binary goSTAG_1.29.0.zip
macOS Binary (x86_64) goSTAG_1.29.0.tgz
macOS Binary (arm64) goSTAG_1.29.0.tgz
Source Repository git clone https://git.bioconductor.org/packages/goSTAG
Source Repository (Developer Access) git clone git@git.bioconductor.org:packages/goSTAG
Bioc Package Browser https://code.bioconductor.org/browse/goSTAG/
Package Short Url https://bioconductor.org/packages/goSTAG/
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