Entering edit mode
Hello,
this sounds like a rather trivial question but somehow the an answer
eludes
me. I am analysing gene expression data with limma in a two-factor
model
with interactions. No problems there.
What I would like to do is to first cluster the genes (using my own
clustering procedure that I'm working on), and then search for
clusters
that are differentially expressed (e.g. factor A is significant in
cluster
X, or interaction is significant in cluster Y etc.).
I have concocted my own bootstrapping procedure, but would prefer to
use an
established tool if possible.
I remember that there was a tool or package for randomisation-based GO
analysis in R which allowed to specify arbitrary linear models for
comparisons, but can't seem to be able to find it right now.
On the other hand, I could treat the assignments to clusters like
assignments to GO categories and just test the significant genes for
enrichment.
Which approach and which package would you recommend?
j.
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-------- January Weiner --------------------------------------
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