Topic: Analysis of RNA-seq Data
This page gives an overview of LIMMA functions to analyze RNA-seq data.
voom
Transform RNA-seq or ChIP-seq counts to log counts per million (log-cpm) with associated precision weights. After this tranformation, RNA-seq or ChIP-seq data can be analyzed using the same functions as would be used for microarray data.
voomWithQualityWeights
Combines the functionality of voom
and arrayWeights
.
diffSplice
Test for differential exon usage between experimental conditions.
topSplice
Show a data.frame of top results from diffSplice
.
plotSplice
Plot results from diffSplice
.
plotExons
Plot logFC for individual exons for a given gene.
Law, CW, Chen, Y, Shi, W, Smyth, GK (2014). Voom: precision weights unlock linear model analysis tools for RNA-seq read counts. Genome Biology 15, R29. http://genomebiology.com/2014/15/2/R29
Ritchie, ME, Phipson, B, Wu, D, Hu, Y, Law, CW, Shi, W, and Smyth, GK (2015). limma powers differential expression analyses for RNA-sequencing and microarray studies. Nucleic Acids Research 43, e47. http://nar.oxfordjournals.org/content/43/7/e47
See also the edgeR package for normalization and data summaries of RNA-seq data, as well as for alternative differential expression methods based on the negative binomial distribution.
voom
accepts DGEList objects and normalization factors from edgeR.
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