Entering edit mode
Lizhe Xu
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210
@lizhe-xu-666
Last seen 10.2 years ago
I think I will do the rma cross all chips regardless dis or control,
since I don't have a set of control genes to normalize between two
groups after RMA. With U133 set, we can expect that only few genes
will change between the two groups.
Thanks.
Lizhe
-----Original Message-----
From: James MacDonald [mailto:
Sent: Monday, March 15, 2004 8:11 AM
To: Lizhe Xu; bioconductor@stat.math.ethz.ch
Subject: Re: [BioC] questions about Affy package from new user:
onemore question
AH. GS==GeneSpring.
If you want to join them before importing to GeneSpring, you should do
this after computing expression values. You can do something like:
out <- rbind(exprs(exprSetA), exprs(exprSetB))
write.table(out, "Combined expression data.txt", sep="\t", quote=F,
col.names=NA)
HTH,
Jim
James W. MacDonald
Affymetrix and cDNA Microarray Core
University of Michigan Cancer Center
1500 E. Medical Center Drive
7410 CCGC
Ann Arbor MI 48109
734-647-5623
>>> "Lizhe Xu" <lxu@chnola-research.org> 03/14/04 06:20PM >>>
Now, I tried to load the exported data from Bioconductor to GeneSpring
and found another question. Since I used U133 chip set, I wonder if I
can joint the U133A and B directly and import them to GS or I should
do
probeset level normalization first (if so, which package in
bioconductor
can do it) before joint them. Thanks.
Lxu
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