Entering edit mode
Hello,
>From reading the vignette, MLSeq seems to be a set of wrapper
functions that allows the user easy access to normalisation strategies
in edgeR or DEseq and passes the data onto algorithms such as Support
Vector Machine or Random Forest. Are there any results that
demonstrate that normalisation improves classification performance ? I
am also not convinced about the description of using voom weights to
transform the data. The author of voom stated that specialised
clustering and classification algorithms are needed to handle the CPM
and weights separately. Why does MLSeq use standard classification
algorithms and how were the weights and expression values combined ?
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Dario Strbenac
PhD Student
University of Sydney
Camperdown NSW 2050
Australia