roastgsa

Microarray
R
GPL-3

This package implements a variety of functions useful for gene set analysis using rotations to approximate the null distribution. It contributes with the implementation of seven test statistic scores that can be used with different goals and interpretations. Several functions are available to complement the statistical results with graphical representations.

Source attribution

  • Bioconductorroastgsa

Related resources

Data analysis, linear models and differential expression for omics data.

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A Graphical User Interface (GUI) for analysis of Affymetrix microarray gene expression data using the affy and limma packages.

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