[BioC] Agilent single color array
Kasper Daniel Hansen
khansen at stat.Berkeley.EDU
Mon Jun 30 19:54:28 CEST 2008
Hi
I have gotten my hands on data from the single color Agilent platform
using a custom array design and I would like to hear what people are
usually doing when it comes to preprocessing.
I have previously analyzed some two color arrays from Agilent and
found that the data I had was pretty standard when it comes to
normalization. Even though I preferred doing my own preprocessing the
Agilent supplied gProcessedSignal and rProcessedSignal columns were
decent (this was from a much earlier version of their software -
Feature Extractor).
But for the one color arrays I find that gProcessedSignal performs
horrible - flat out horrible, the raw data looks much better.
Furthermore, when I normalize between I arrays I see relatively little
effect of normalization, sometimes the normalization even increases
the spread on MA plots where I would not expect it to do anything. Of
course this may be related to the hybridizations done or the array
design I have in hand, but I still find it somewhat surprising.
I have tried vsn2 from vsn, quantile normalization and quantile
normalization following normexp (offset 25 and 50) background
correction from Limma. All 3 (4 if you count the 2 offsets)
combinations have also been done with and without subtracting the
local background estimate from Feature Extractor (the gBGMeanSignal
column).
Anyway, I am curious as to what other people's experience using this
platform are.
Kasper
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