[BioC] Normalization with few spots
Teresa CAsals
teresacasals at yahoo.es
Sat Oct 23 23:01:44 CEST 2004
Hello
I have received some cDNA arrays to analyze with very
few genes on them.
There are only 32 different genes, each of which has
been spotted on each array 8 times. There are also
some (not many more controls and spikein spots).
It is a reference design with unbalanced dye-swap
based on biological replicates intended to compare
three mutant types to a wild type. I didn't suggest
it, just received the data after the experiment was
performed (so I may be able to say what it died of :-)
The design is as follows
Array Cy3 Cy5
1 Mut-1 Wild
2 Mut-1 Wild
3 Wild Mut-1
4 Mut-2 Wild
5 Mut-2 Wild
6 Wild Mut-2
7 Mut-3 Wild
8 Mut-3 Wild
9 Wild Mut-3
My questions are:
1-How should I normalize the data? I ususally use
marrayNorm with print-tip lowess, but I think this may
not be adequate having so few spots.
Another question refers to dye-swap normalization. I
have read in some bioconductor courses slides that a
self normalization may be adequate for dye-swap
experiments.
In this case a normalized estimate of the log ratio is
obtained M values (1/2 (M-M')).
My questions are
2- Doesn't it imply some information loss? I mean is
it truth that for for every two arrays I only get an
estimate? I may be missing something but I don't know
what...
3-How should I manage the assimetry in dye swap? It
seems unreasonable having first to average slides 1
and 2 and the combine it with three...
Any help or reference will be great
Thanks
Teresa Casals
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