In this situation (all technical replicates) you cannot really make
biological conclusions about differences among strains. You can only
make conclusions about differences among organisms in which case the
technical replicates are treated as though independent (but should
come from independent samples from the organisms- i.e. independent
RNA extractions).
In general, even if you want to get the means for each strain, you
need to use the model with intercept for computing the correlations.
--Naomi
At 11:57 AM 9/12/2007, aaron.j.mackey at gsk.com wrote:
>"Naomi Altman" <naomi at="" stat.psu.edu=""> wrote on 09/11/2007 05:23:59
PM:
>
> > Why would you want to use duplicateCorrelation? This is for error
> > correlation. Presumably your replicates are biologically
distinct,
> > and required for the test statistic denominator.
>
>Sorry, I didn't explain myself very well. The replicates are
technical
>replicates - same biological organism, not distinct (there were four
>distinct organisms, from strains A, B, C and D). I guess since I
only
>have one biological replicate per strain, that the distinction
between
>technical and biological replicates might not matter in this case.
>
> > However, to answer your question, this is due to removing the
> > intercept. With no intercept, the correlation is computed without
> > removing the mean and this pretty much makes all the correlation
1.
>
>Thanks. I removed the intercept because I wanted to be able to model
each
>strain independently (with the intercept, I only get strains B, C and
D as
>factors; A is subsumed by the intercept).
>
>-Aaron
>
> > At 04:38 PM 9/11/2007, aaron.j.mackey at gsk.com wrote:
> > >I have an experimental setup in which four strains (A, B, C and
D) are
> > >given a treatment or control mock treatment, and observed (by
Affy)
>over a
> > >post-treatment timecourse (4 timepoints); each
>strain/treatment/timepoint
> > >observation is performed in replicate.
> > >
> > >At the end of the day, I'd like to answer two scientific
questions:
> > >
> > >1) which probesets are consistently (across all four strains)
> > >differentially expressed (treatment vs. control) at timepoints 2,
3 and
>4?
> > >
> > >2) which treatment-responsive probesets are consistently
responsive
>within
> > >(but differentially responsive between) A&B and C&D strain
groupings?
> > >
> > >My target matrix looks like this:
> > >
> > >array strain treatment time
> > >1 A mock 1
> > >2 A mock 1
> > >3 A mock 1
> > >4 A mock 2
> > >5 A mock 2
> > >6 A mock 2
> > >...
> > >13 A treated 1
> > >14 A treated 1
> > >15 A treated 1
> > >16 A treated 2
> > >...
> > >25 B mock 1
> > >26 B mock 1
> > >...
> > >96 D treated 4
> > >
> > >I built my design matrix like so:
> > >
> > >strain <- factor(target$strain); # etc. for treatment, time
> > >design <- model.matrix(~0+strain*treatment*time)
> > >
> > >And my "replicates" array looks like:
> > >
> > >c(1,1,1, 2,2,2, 3,3,3, 4,4,4, 5,5,5, ..., 32,32,32)
> > >
> > >Yet when I run duplicateCorrelation() to handle the replicates, I
get a
> > >consensus correlation of 1, and "Inf" values for each
correlation.
> > >
> > >What have I done wrong?
> > >
> > >(I haven't even gotten to building the contrast matrices to
answer my
> > >questions of actual interest ...)
> > >
> > >Thanks,
> > >
> > >-Aaron
> > >
> > >_______________________________________________
> > >Bioconductor mailing list
> > >Bioconductor at stat.math.ethz.ch
> > >
https://stat.ethz.ch/mailman/listinfo/bioconductor
> > >Search the archives:
> > >
http://news.gmane.org/gmane.science.biology.informatics.conductor
> >
> > Naomi S. Altman 814-865-3791
(voice)
> > Associate Professor
> > Dept. of Statistics 814-863-7114
(fax)
> > Penn State University 814-865-1348
(Statistics)
> > University Park, PA 16802-2111
> >
> >
>
>_______________________________________________
>Bioconductor mailing list
>Bioconductor at stat.math.ethz.ch
>
https://stat.ethz.ch/mailman/listinfo/bioconductor
>Search the archives:
>
http://news.gmane.org/gmane.science.biology.informatics.conductor
Naomi S. Altman 814-865-3791 (voice)
Associate Professor
Dept. of Statistics 814-863-7114 (fax)
Penn State University 814-865-1348
(Statistics)
University Park, PA 16802-2111