A scaling normalization method for differential expression analysis of RNA-seq data

Mark D. Robinson(Garvan Institute of Medical Research), Alicia Oshlack(Walter and Eliza Hall Institute of Medical Research)
Genome biology
March 2, 2010
Cited by 8,517Open Access
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Abstract

The fine detail provided by sequencing-based transcriptome surveys suggests that RNA-seq is likely to become the platform of choice for interrogating steady state RNA. In order to discover biologically important changes in expression, we show that normalization continues to be an essential step in the analysis. We outline a simple and effective method for performing normalization and show dramatically improved results for inferring differential expression in simulated and publicly available data sets.


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