Differential expression analysis of multifactor RNA-Seq experiments with respect to biological variation
University of Melbourne · Walter and Eliza Hall Institute of Medical Research
Abstract
A flexible statistical framework is developed for the analysis of read counts from RNA-Seq gene expression studies. It provides the ability to analyse complex experiments involving multiple treatment conditions and blocking variables while still taking full account of biological variation. Biological variation between RNA samples is estimated separately from the technical variation associated with sequencing technologies. Novel empirical Bayes methods allow each gene to have its own specific variability, even when there are relatively few biological replicates from which to estimate such variability. The pipeline is implemented in the edgeR package of the Bioconductor project. A case study analysis of…
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Authors
3Topics & keywords
- Bayes' theorem
- Biology
- Bioconductor
- Estimator
- Computational biology
- Linear model
- Statistics
- Genetics