[BioC] GCRMA Fold Change
cap2018 at columbia.edu
cap2018 at columbia.edu
Tue May 2 18:14:33 CEST 2006
I have used GCRMA to process and normalize my chip results. I had
sufficient N to use 2 way ANOVA to analyze my data and I have used
Baysiean statistics to determine significance levels.
I have quite a few probe sets that are considered statistically
significant by my analysis, but have a fold change close to 1,
indicating the level of transcript is not THAT different between 2
groups. Most of the probe sets that fit this description have very
low expression value from the GCRMA analysis, 1-6.
I did not filter my results as expressed/not expressed before I did
the analysis because I have been told it is unnecessary, and I get
many significant results that are definitely are expressed, but I'd
like to apply some kind of filter to my statistical results.
Is there a way to determine which transcripts are unexpressed, a
specific threshold for example? For instance, values 7< are
probing expressed transcripts?
Christine
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