[BioC] GCRMA: feature request

Zhijin Wu zwu at stat.brown.edu
Tue Jan 18 21:50:51 CET 2011


Hi Guido and  Björn
   The Lim paper's suggestion has been taken in 2008.
   Guido's suggestion is certainly useful. I just have not had time to 
test run with the changes. I will contact Guido and Philip in private 
since they may be able to contribute

Best,
Jean


On 1/18/2011 3:39 PM, bjoern usadel wrote:
> Dear Guido,
>
> just one word of caution, even when you apply transposed median polish
> there might be minute amounts of correlation left in small sample sizes
> when you use gcRMA background correction. gcRMA was what actually
> triggered the studies of Lim et
> al.,(http://bioinformatics.oxfordjournals.org/content/23/13/i282.long)
> which we then extended. (Have a look into Additional file 7 for the
> permutations of bg/norm/sum in
> http://www.biomedcentral.com/1471-2105/11/553)
>
> But having the option to choose would definitely be great.
>
> Best Wishes,
> Björn
>
> Hooiveld, Guido wrote:
>> Dear Jean,
>>
>> Please allow me to put forward a feature request for the GCRMA package:
>> as you may have noticed in literature and on the BioC mailing list,
>> there has been discussion on the use of the median polish algorithm
>> (in RMA) for summerizing signals of probes into a single probeset
>> value in relation to correlation artefacts. See e.g.:
>> http://www.biomedcentral.com/1471-2105/11/553
>> and
>> http://thread.gmane.org/gmane.science.biology.informatics.conductor/32255/focus=32259
>>
>>
>> Moreover, in the above-mentioned BioC thread it is advocated to use a
>> robust regression M-estimation procedure, e.g. available in the
>> package 'affyPLM' / 'preprocessCore', instead of applying median
>> polish on the transposed data matrix (aka tRMA), as was suggested by
>> the authors of before-mentioned paper.
>>
>> In the intro of the fRMA paper it is also stated that more
>> statistically rigorous procedures such as M-estimation techniques
>> could be used for summerization, and this is one of the reasons fRMA
>> by default uses AffyPLM's default M-estimator (Huber) for
>> summerization instead of median polish.
>> http://dx.doi.org/10.1093/biostatistics/kxp059
>>
>> Since AFAIK GCRMA is equal to RMA, except of course for the background
>> correction, I wondered whether it would be possible to build in GCRMA
>> the option to give a user the possibility to select a robust
>> M-estimation procedure (e.g. affyPLM's default one) over the (GCRMA's
>> default) median polish algorithm to summerize the probe data into a
>> probeset values. Thus something like:
>> x.norm <- gcrma(affy.data, sum="median.polish") [default] or x.norm <-
>> gcrma(affy.data, sum="affyPLM").
>>
>> I would appreciate your opinion on this.
>>
>> Regards,
>> Guido
>>
>>
>> In addition, i would like to remind you about another issue with GCRMA
>> my collegue Philip brought forward last December, which you may have
>> missed (i copied his email below):
>> -----------------------------------------------------------------------------
>>
>> I noticed the following problem when using gcRMA. the gcRMA-library
>> tries to install probe packages. This is fine, except in cases when a
>> probe-package is already available (and local versions vs repository
>> versions do not necessarily match)! This behaviour is triggered within
>> the function getProbePackage:
>>
>> function (probepackage, lib = .libPaths()[1], verbose = TRUE)
>> {
>> options(show.error.messages = FALSE)
>> attempt <- try(do.call(library, list(probepackage, lib.loc = lib)))
>> options(show.error.messages = TRUE)
>>
>> ...
>> }
>>
>> .libPaths() is in this particular example:
>>> .libPaths()
>> [1] "/local/home/guidoh/R/x86_64-unknown-linux-gnu-library/2.12"
>> [2] "/geninf/prog64/R/R-2.12.0/lib64/R/library"
>>
>> As you can see, .libPaths()[1] point the the local R directory of the
>> user, whereas the R installation directory is in .libPaths()[2].
>> Hence, we have the complication that gcRMA installs (the wrong) probe
>> libraries (from BioC) that are already available to the user! The
>> issue with this is that in some cases we use custom, tailored
>> libraries that are not identical to those in the repositories. Hence,
>> we may run into unexpected problems! As a matter of fact, I prefer to
>> simply disable the ability (in gcRMA) to automatically install probe
>> packages in the first place (just an option that is enabled by
>> default, but can be disabled by the user)!
>>
>> Anyway, there is no reason to limit yourself to the first library. As
>> an example, the following command will work without any problem:
>>> attempt <- try(do.call(library, list("nugohs1a520180hsentrezgcdf",
>>> lib.loc = .libPaths())))
>>> attempt
>> [1] "gcrma" "nugohs1a520180hsentrezgcdf"
>> [3] "affy" "Biobase"
>> [5] "stats" "graphics"
>> [7] "grDevices" "utils"
>> [9] "datasets" "methods"
>> [11] "base"
>>
>> At least your function will really go through all R library
>> directories to search whether or not a library is installed!
>> So I kindly ask for the following modifications:
>> 1. An option in gcRMA to simply disable the automated installation of
>> missing libraries [I need to control what happens! :)]
>> 2. To simply use .libPaths() instead of .libPaths()[1] to really
>> search through all R installation directories.
>>
>> Please let me know whether or not you agree. Doing these 2
>> modifications are not very hard, so I can contribute it to you if you
>> are interested.
>>
>> Regards,
>> Philip
>>
>>
>> [[alternative HTML version deleted]]
>>
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>>
>


-- 
------------------------------------
Zhijin (Jean) Wu
Assistant Professor of Biostatistics
Brown University, Box G-S121
Providence, RI  02912

Tel: 401 863 1230
Fax: 401 863 9182
http://www.stat.brown.edu/zwu



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