What exactly is the difference between between voom
(limma) and calcNormFactor
(edgeR) normalization methods? Though it is not very clear to me, I understand the "voom" normalization is better, but in some articles I see that people use both normalizations simultaneously. i.e calcNormFactor
followed by voom and then do limma based linear modeling for differential gene expression analysis. If voom is better than calcNormFactor
, why are people using both of them together? Can anyone shed some light on this please.
Have you found an answer somewhere, by any chance?
This answer to a similar question in the bioconductor support site might be relevant: https://support.bioconductor.org/p/77664/#77666
And also, make sure to read the next answer (and comments) in that thread about using both TMM and quantile methods: https://support.bioconductor.org/p/77664/#77665