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Luckey, John
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@luckey-john-202
Last seen 10.2 years ago
Hello all,
I am looking to identify common expression profiles (signatures)
across many different pairwise comparisons. Essentially, I have lots
of diverse affymetric data sets from different tissues, but for each
tissue type I have one sample that expresses my phenotype of interest,
and one or more others that do not. I am interested in identifying
which mRNA transcripts are up or down regulated selectively for that
phenotype (obviously, this is a broadly defined phenotype, since it is
observed in several different tissue types. While there will be many
genes that are tissue specific, I am hopeing that the similar tissues
that don't express the phenotype will control for this).
So far, I have simply used the affy package from bioconductor to
summarize and pre-process the data, then identified those genes whose
fold change within a tissue type comparison reaches a given threshold
for my phenotype of interest, and then asked which genes is this true
across all tissue types (many samples have only 2 or 3 replicates- so
my read of literature is p values not very useful here).
Seems to me there must be a more statistically valid approach or one
which somehow weighs degrees of correlation across all comparisons and
doesn't necesssarily exclude a gene which might be strongly correlated
in all but one comparison (where it might be just below a given
threshold for example).
Any advice or directions to relevant papers/ approaches would be
greatly apreciated.
John
C John Luckey, MD PhD
Resident - Clinical Pathology - Brigham and Women?s Hospital
Post Doctoral Fellow ? Diane Mathis/Christophe Benoist Lab - Joslin
Diabetes Center
One Joslin Place, Rm. 474
Boston, MA 02215
phone: (617) 264-2783
fax: (617) 264-2744
e-mail: john.luckey@joslin.harvard.edu