Hi,
I am using limma to analyse an experiment where I am comparing the
response in stimulated verses un-stimulated cells in individuals with
and without disease.
When I ask how individuals with or without disease respond
differently to the stimulus there are no significant genes when the p
values are adjusted.
I know that there are differences which have been confirmed by
qRT-PCR ( and can be demonstarted by analysing data using fold change
only) and these genes have the highest ranked p values in the limma
analysis (although not significant when adjusted).
I have tried to filter the data set (to the 3000 most variable genes)
so there are less comparisons being made and the differences are
still not significant.
I am using hgu133plus2 chips with 3 replicates.
regards
Anthony
--
______________________________________________
Anthony Bosco - PhD Student
Institute for Child Health Research
(Company Limited by Guarantee ACN 009 278 755)
Subiaco, Western Australia, 6008
Ph 61 8 9489 , Fax 61 8 9489 7700
email anthonyb@ichr.uwa.edu.au
Although some genes have significant differences, it is not
necesssarily
for limma to identify them out. In other words, genes that are not
identified by limma may be significant. It all depends on the power of
your test, which may in turn decided by your sample size, your error
varaince (noise scale) and the test you choose. Sometimes, some
significant differences might be small for your data to identify them
out.
Since you have done the experiment, you can't change sample size and
error
variance, maybe you can try other method or low down the overall
sifnificance you controlled.
Hopefully this helps.
Bests;
Fangxin
> Hi,
>
> I am using limma to analyse an experiment where I am comparing the
> response in stimulated verses un-stimulated cells in individuals
with
> and without disease.
>
> When I ask how individuals with or without disease respond
> differently to the stimulus there are no significant genes when the
p
> values are adjusted.
>
> I know that there are differences which have been confirmed by
> qRT-PCR ( and can be demonstarted by analysing data using fold
change
> only) and these genes have the highest ranked p values in the limma
> analysis (although not significant when adjusted).
>
> I have tried to filter the data set (to the 3000 most variable
genes)
> so there are less comparisons being made and the differences are
> still not significant.
>
> I am using hgu133plus2 chips with 3 replicates.
>
>
> regards
>
>
> Anthony
> --
> ______________________________________________
>
> Anthony Bosco - PhD Student
>
> Institute for Child Health Research
> (Company Limited by Guarantee ACN 009 278 755)
> Subiaco, Western Australia, 6008
>
> Ph 61 8 9489 , Fax 61 8 9489 7700
> email anthonyb@ichr.uwa.edu.au
>
> _______________________________________________
> Bioconductor mailing list
> Bioconductor@stat.math.ethz.ch
> https://stat.ethz.ch/mailman/listinfo/bioconductor
>
>
--
Fangxin Hong, Ph.D.
Plant Biology Laboratory
The Salk Institute
10010 N. Torrey Pines Rd.
La Jolla, CA 92037
E-mail: fhong@salk.edu
>Date: Fri, 5 Nov 2004 03:31:08 +0100
>From: Anthony Bosco <anthonyb@ichr.uwa.edu.au>
>Subject: [BioC] limma power question
>To: bioconductor@stat.math.ethz.ch
>Message-ID: <f05111a06bdb094e4101c@[10.0.5.134]>
>Content-Type: text/plain; charset="us-ascii" ; format="flowed"
>
>Hi,
>
>I am using limma to analyse an experiment where I am comparing the
>response in stimulated verses un-stimulated cells in individuals with
>and without disease.
>
>When I ask how individuals with or without disease respond
>differently to the stimulus there are no significant genes when the p
>values are adjusted.
>
>I know that there are differences which have been confirmed by
>qRT-PCR ( and can be demonstarted by analysing data using fold change
>only) and these genes have the highest ranked p values in the limma
>analysis (although not significant when adjusted).
>
>I have tried to filter the data set (to the 3000 most variable genes)
>so there are less comparisons being made and the differences are
>still not significant.
>
>I am using hgu133plus2 chips with 3 replicates.
What is your question?
As far as I know, the limma method has as good or better power than
competing methods for this problem, but no guarantee is offered that
significant results will always be provided.
If you already have a small group of genes that you have an apriori
interest in, you can test for these genes only without adjusting the
p-values.
Gordon
>regards
>
>
>Anthony
>--
>______________________________________________
>
>Anthony Bosco - PhD Student
>
>Institute for Child Health Research
>(Company Limited by Guarantee ACN 009 278 755)
>Subiaco, Western Australia, 6008
>
>Ph 61 8 9489 , Fax 61 8 9489 7700
>email anthonyb@ichr.uwa.edu.au