RNA-seq analysis is easy as 1-2-3 with limma, Glimma and edgeR

Charity W. Law(The University of Melbourne), Monther Alhamdoosh(CSL (United Kingdom)), Shian Su(Walter and Eliza Hall Institute of Medical Research), Xueyi Dong(Walter and Eliza Hall Institute of Medical Research), Luyi Tian(The University of Melbourne), Gordon K. Smyth(The University of Melbourne), Matthew E. Ritchie(The University of Melbourne)
F1000Research
December 28, 2018
Cited by 653Open Access
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Abstract

<ns3:p>The ability to easily and efficiently analyse RNA-sequencing data is a key strength of the Bioconductor project. Starting with counts summarised at the gene-level, a typical analysis involves pre-processing, exploratory data analysis, differential expression testing and pathway analysis with the results obtained informing future experiments and validation studies. In this workflow article, we analyse RNA-sequencing data from the mouse mammary gland, demonstrating use of the popular <ns3:bold>edgeR</ns3:bold> package to import, organise, filter and normalise the data, followed by the <ns3:bold>limma</ns3:bold> package with its <ns3:italic>voom</ns3:italic> method, linear modelling and empirical Bayes moderation to assess differential expression and perform gene set testing. This pipeline is further enhanced by the <ns3:bold>Glimma</ns3:bold> package which enables interactive exploration of the results so that individual samples and genes can be examined by the user. The complete analysis offered by these three packages highlights the ease with which researchers can turn the raw counts from an RNA-sequencing experiment into biological insights using Bioconductor.</ns3:p>


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