Dear Dr. Irizarry
At the CHI meeting in Baltimore I enjoyed your interesting talk about
gcrma,
which currently seems to be the best algorithm for
condesation/normalization
of CEL files, as the affycomp results suggest. For this reason my
colleagues
and I were eager to test gcrma with our own datasets containing
between 20
and 130 HGU133 chips.
My colleague tested rma and gcrma with the following setting:
HP xw8000 Dual Xeon 2.8 GHz with 2 GB RAM
RedHat 8.0 with kernel 2.4.18-SMP
R-1.8.1 and Bioconductor 1.3 compiled by us for above settings
Using this setup, rma can process the data really fast:
21 HGU133A data: about 1 minute
40 HGU133A data: about 1.5 minutes
130 HGU133A data: about 2.5 minutes
For gcrma we got the following results:
21 HGU133A data: about 45 minutes using 500 MB RAM
40 HGU133A data: about 90 minutes using 900 MB RAM
130 HGU133A data: the usual error: cannot allocate vector of size
blabla
Since we will soon switch to the new Affymetrix HG-U133_Plus_2
GeneChips, things will getting worse.
My questions are the following:
Do you intend to optimize the behavior of gcrma, e.g. by rewriting it
in C?
In the meantime, which setup would be sufficient for gcrma to handle
130 HGU133A data? Do you think that a 64bit processor machine would
be helpful? Could the Dual G5 Mac be an option?
Thank you in advance for your help.
P.S. Please reply also to me since I am not subscribed to the mailing
list.
Best regards
Christian Stratowa
==============================================
Christian Stratowa, PhD
Boehringer Ingelheim Austria
Dept NCE Lead Discovery - Bioinformatics
Dr. Boehringergasse 5-11
A-1121 Vienna, Austria
Tel.: ++43-1-80105-2470
Fax: ++43-1-80105-2366
email: christian.stratowa@vie.boehringer-ingelheim.com
we have recently developed an approach to get around the slow
numerical
integration. by mid december it should be ready to use by others.
-r
On Wed, 26 Nov 2003 Christian.Stratowa@vie.boehringer-ingelheim.com
wrote:
> Dear Dr. Irizarry
>
> At the CHI meeting in Baltimore I enjoyed your interesting talk
about gcrma,
>
> which currently seems to be the best algorithm for
condesation/normalization
>
> of CEL files, as the affycomp results suggest. For this reason my
colleagues
>
> and I were eager to test gcrma with our own datasets containing
between 20
> and 130 HGU133 chips.
>
> My colleague tested rma and gcrma with the following setting:
> HP xw8000 Dual Xeon 2.8 GHz with 2 GB RAM
> RedHat 8.0 with kernel 2.4.18-SMP
> R-1.8.1 and Bioconductor 1.3 compiled by us for above settings
>
> Using this setup, rma can process the data really fast:
> 21 HGU133A data: about 1 minute
> 40 HGU133A data: about 1.5 minutes
> 130 HGU133A data: about 2.5 minutes
>
> For gcrma we got the following results:
> 21 HGU133A data: about 45 minutes using 500 MB RAM
> 40 HGU133A data: about 90 minutes using 900 MB RAM
> 130 HGU133A data: the usual error: cannot allocate vector of size
blabla
>
> Since we will soon switch to the new Affymetrix HG-U133_Plus_2
> GeneChips, things will getting worse.
>
> My questions are the following:
> Do you intend to optimize the behavior of gcrma, e.g. by rewriting
it in C?
> In the meantime, which setup would be sufficient for gcrma to handle
> 130 HGU133A data? Do you think that a 64bit processor machine would
> be helpful? Could the Dual G5 Mac be an option?
>
> Thank you in advance for your help.
> P.S. Please reply also to me since I am not subscribed to the
mailing list.
>
> Best regards
> Christian Stratowa
>
> ==============================================
> Christian Stratowa, PhD
> Boehringer Ingelheim Austria
> Dept NCE Lead Discovery - Bioinformatics
> Dr. Boehringergasse 5-11
> A-1121 Vienna, Austria
> Tel.: ++43-1-80105-2470
> Fax: ++43-1-80105-2366
> email: christian.stratowa@vie.boehringer-ingelheim.com
>
>
>