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Jason Skelton
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510
@jason-skelton-135
Last seen 10.2 years ago
Hi
I have a question about data analysis after normalisation
I have normalised in limma and applied the generalized least squares
linear models to my data with very nice results!
My experiment is a Three sample experiment
(Three different treatments)compared to a commmon reference.
The Three samples have six slides per experiment, 3 in one dye
orientation and 3 dye swapped to give 18 slides in total.
I have approx 3500 genes in duplicate on my array at present.
Currently I have normalised all three sets of data seperately but
would
like to be able to compare the three data sets.
I was thinking of using the mva functions like dist/hclust etc.
My questions:
Is this the best way of comparing this data or are there other/better
methods that could be used that anyone has had experience with.
e.g. similar to the two-sample experiment example in limma user guide
where results from the linear model and ebayes are displayed with a
heatmap ?
(sorry I'm presuming that this is the kind of thing I should be doing
?)
Also I'm presuming the data I want to use for these methods are the
normalised $M values ? OR do I want to use the results from
gls.series/lm.series and ebayes for a 3 sample comparison ?
please could someone give me an example of the best method they
recommend with some commands that I could try using...
Thanks very much to anyone who can help
Jason
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Jason Skelton
Pathogen Microarrays
Wellcome Trust Sanger Institute
Hinxton
Cambridge
CB10 1SA
Tel +44(0)1223 834244 Ext 7123
Fax +44(0)1223 494919