Here we show two options for using limorhyde2 to analyze
RNA-seq data: limma-voom
and DESeq2.
The two approaches give very similar results.
This vignette assumes you are starting with the output of tximport.
You will need two objects:
txi, a list from tximportmetadata, a data.frame having one row per
sampleThe rows in metadata must correspond to the columns of
the elements of txi.
There are many reasonable strategies to do this, here is one.
This avoids unrealistically low log2 CPM values and thus artificially inflated effect size estimates.
The second and third arguments to
DESeqDataSetFromTxImport() are required, but will not be
used by limorhyde2.
limorhyde2Regardless of which option you choose, the next steps are the same:
getPosteriorFit(), getRhythmStats(), etc.
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