Entering edit mode
Lavorgna Giovanni
▴
80
@lavorgna-giovanni-4817
Last seen 5.8 years ago
Dear Christian,
I had the chance to use the whole pipeline you designed and it
performed very well. Basically, I got the probe intensities I was
looking using the whole 185 array dataset. However, if you don't
mind, I have a couple of more questions:
1) I would need to check also the probe intensities of a transcript
whose existence is supported only by ESTs. Therefore, it falls in the
"Extended" category. Would it be OK if I change the 'exonlevel'
parameter in this line from:
### 1.step: background - rma
> data.bg.rma <- bgcorrect.rma(data.exon, "HuExonRMABgrd",
filedir=datdir,
+ select="antigenomic", exonlevel="core+affx")
to:
> data.bg.rma <- bgcorrect.rma(data.exon, "HuExonRMABgrd",
filedir=datdir,
+ select="antigenomic", exonlevel="core+extended+affx")
and in this other line from:
### 2step: normalization - quantile
> data.qu.rma <- normalize.quantiles(data.bg.rma, "HuExonRMANorm",
filedir=datdir ,
+ exonlevel="core+affx")
to:
### 2step: normalization - quantile
> data.qu.rma <- normalize.quantiles(data.bg.rma, "HuExonRMANorm",
filedir=datdir ,
+ exonlevel="core+extended+affx")
2) On my 4Gb Linux system, using xps version 1.8.3, I noticed some
problems.
Since ROOT version 5.28, the background correction step steadily
increases memory consumption, until the job is killed by the system
after having completed 142 out of 185 arrays. Memory usage at this
critical point is well over 80%.
Instead, up to ROOT version 5.26, using the same test case, memory
occupancy stays consistently under 20% during the run, with the script
smoothly reaching the end. I suspect that a bug related to memory
leakage might have been introduced in version 5.28. Probably, it has
gone unnoticed until now because not many people are analyzing so many
arrays and people that do so might be using systems with much more RAM
than I.
My test case is rather big and doesn't easily lend itself to a bug
report to ROOT people. However, you mentioned that you already
observed a lot of disk swapping on your 2Gb system, using the 6 arrays
breast and prostate data from the Affymetrix. I don't know exactly
which root version you are using. However, if you are using the
latest version 5.30 or version 5.28 and by installing ROOT version
5.26 memory usage dramatically drops, this would confirm the bug
existence and would be an excellent test-case to provide to people at
CERN.
Please let me know if you would like me to provide more details about
this issue.
Thanks again.
Giovanni
This is the session info (well, before crushing :-) )
> sessionInfo()
R version 2.11.0 (2010-04-22)
x86_64-unknown-linux-gnu
locale:
[1] LC_CTYPE=en_US LC_NUMERIC=C LC_TIME=en_US
[4] LC_COLLATE=C LC_MONETARY=C LC_MESSAGES=en_US
[7] LC_PAPER=en_US LC_NAME=C LC_ADDRESS=C
[10] LC_TELEPHONE=C LC_MEASUREMENT=en_US LC_IDENTIFICATION=C
attached base packages:
[1] stats graphics grDevices utils datasets methods base
loaded via a namespace (and not attached):
[1] tools_2.11.0
____
Da: cstrato [cstrato at aon.at]
Inviato: domenica 21 agosto 2011 19.56
A: Lavorgna Giovanni
Cc: bioconductor at r-project.org
Oggetto: Re: R: [BioC] Probe-level analysis of exon arrays using xps
Dear Giovanni,
I will try to sketch the beginning of your pipeline using a subset of
the Affymetrix exon dataset:
First, let me suggest to use the new annotation files version na32
which
Affymetrix have just released, to create the scheme file:
### import libary and annotation files
> libdir <- "/Volumes/GigaDrive/Affy/libraryfiles"
> anndir <- "/Volumes/GigaDrive/Affy/Annotation"
> scmdir <- "/Volumes/GigaDrive/CRAN/Workspaces/Schemes/na32"
> scheme.exon <- import.exon.scheme("huex10stv2", filedir = scmdir,
+ file.path(libdir, "HuEx-1_0-st-v2_libraryfile",
"HuEx-1_0-st-r2", "HuEx-1_0-st-v2.r2.clf"),
+ file.path(libdir, "HuEx-1_0-st-v2_libraryfile",
"HuEx-1_0-st-r2", "HuEx-1_0-st-v2.r2.pgf"),
+ file.path(anndir, "Version11Jul",
"HuEx-1_0-st-v2.na32.hg19.probeset.csv"),
+ file.path(anndir, "Version11Jul",
"HuEx-1_0-st-v2.na32.hg19.transcript.csv"))
For this example I import the breast and prostate data from the
Affymetrix exon dataset:
### import CEL-files
> celdir <- "/Volumes/GigaDrive/ChipData/Exon/HuMixture"
> datdir <- getwd()
> celfiles <-
c("huex_wta_breast_A.CEL","huex_wta_breast_B.CEL","huex_wta_breast_C.C
EL",
+
"huex_wta_prostate_A.CEL","huex_wta_prostate_B.CEL","huex_wta_prostate
_C.CEL")
> celnames <-
c("BreastA","BreastB","BreastC","ProstateA","ProstateB","ProstateC")
> data.exon <- import.data(scheme.exon, "HuMixtureExon",
filedir=datdir,
+ celdir=celdir, celfiles=celfiles, celnames=celnames)
Now I suggest to start a new R-session for preprocessing:
### first, load ROOT scheme file and ROOT data file
> scmdir <- "/Volumes/GigaDrive/CRAN/Workspaces/Schemes/na32"
> scheme.exon <- root.scheme(file.path(scmdir,"huex10stv2.root"))
> datdir <- getwd()
> data.exon <- root.data(scheme.exon,
file.path(datdir,"HuMixtureExon_cel.root"))
> str(data.exon)
### 1.step: background - rma
> data.bg.rma <- bgcorrect.rma(data.exon, "HuExonRMABgrd",
filedir=datdir,
+ select="antigenomic", exonlevel="core+affx")
### 2step: normalization - quantile
> data.qu.rma <- normalize.quantiles(data.bg.rma, "HuExonRMANorm",
filedir=datdir ,
+ exonlevel="core+affx")
### 3.step: summarization - medpol (not necessary in your case)
#data.mp.rma <- summarize.rma(data.qu.rma, "HuExonRMASum",
filedir=datdir,
# exonlevel="core+affx")
To dump the probes to a text file you simply do:
### export normalized probes intensities
> export(data.qu.rma, treetype="cqu", varlist = "fInten",
+ outfile=paste(datdir, "BreastProstate_cqu.txt", sep="/"))
Now you have table "BreastProstate_cqu.txt" containing the
(X,Y)-coordinates followed by the normalized intensities for each
sample. However, please note that for 6 samples this file has already
a
size of 180 MB, thus for your 185 samples it will probably have a size
of more than 4 GB. Thus it is not quite clear to me how you want to
proceed.
Nevertheless, since you are interested in selected transcripts only,
you
need to get the (X,Y)-coordinates for these transcripts in order to
extract the intensities from the table. Let us assume that you want to
get the (X,Y)-coordinates for the CD44 gene. For this purpose you have
three options:
1, If you are using the development version xps_1.13.6, which will be
available for download from the BioC development site in a few days,
you
can do the following:
### get internal UNIT_ID for CD44
> id <- symbol2unitID(scheme.exon, symbol="CD44",
unittype="transcript", as.list =TRUE)
> id
$`3326635`
[1] "185195"
$`3326730`
[1] "185196"
### attach (x,y)-coordinates for all UNIT_IDs
> data.qu.rma <- attachDataXY(data.qu.rma)
### get (x,y)-coordinates for CD44
> xy <- indexUnits(data.qu.rma, which="core+affx", unitID=unlist(id))
Error in .local(object, ...) : only 1 of 2 UNIT_ID are valid
The reason for this error is that only transcript_cluster_id "3326635"
belongs to level "core" while "3326730" belongs to level "extended".
Thus you need to do:
> xy <- indexUnits(data.qu.rma, which="core+affx", unitID=id[[1]])
> dim(xy)
[1] 103 4
> head(xy)
UNIT_ID X Y XY
3151152 185195 1638 388 994919
3151153 185195 2407 79 204648
3151154 185195 2393 882 2260314
3151155 185195 1728 1223 3132609
3151156 185195 1843 1404 3596084
3151157 185195 1369 2167 5548890
Now you have the (X,Y)-coordinates for the CD44 gene which you can use
to get the normalized intensities from table "BreastProstate_cqu.txt".
2, If you would have enough RAM and the new version xps_1.13.6 then
the
most simple way would be to attach the data. In the following I will
attach only the first two trees, however this causes already a lot of
swapping on my Mac with 2GB RAM:
### attach data for 2 trees
> treenames <- unlist(treeNames(data.qu.rma))
> data.qu.rma <- attachInten(data.qu.rma, treenames=treenames[1:2])
## get the normalized intensities for CD44
> data <- validData(data.qu.rma, which="core+affx", unitID=185195)
> dim(data)
[1] 103 2
> head(data)
BreastA.cqu_MEAN BreastB.cqu_MEAN
994919 29.51080 3.60245
204648 4.94509 58.01030
2260314 25.84620 2.86042
3132609 2.91305 3.93297
3596084 123.34400 147.01000
5548890 434.51000 367.34400
### remove the data
> data.qu.rma <- removeInten(data.qu.rma)
3, With the current version of xps extracting the (X,Y)-coordinates
for
the CD44 gene is more complicated:
First you need to get the transcript_cluster_id for CD44:
> ann <- export(scheme.exon, treetype="ann",
varlist="fTranscriptID:fSymbol",
+ as.dataframe=TRUE, outfile="tmp_ann.txt")
> id <- split(ann[,"GeneSymbol"], ann[,"TranscriptClusterID"]);
> id <- lapply("CD44", function(x) names(which(id == x)));
> id
[[1]]
[1] "3326635" "3326730"
Then you need to get the internal UNIT_ID:
> idx <- export(scheme.exon, treetype="idx",
varlist="fUnitName:fTranscriptID",
+ as.dataframe=TRUE, outfile="tmp_idx.txt")
> unitid <- split(idx[,"UnitName"], idx[,"UNIT_ID"]);
> unitid <- lapply(unlist(id), function(x) names(which(unitid ==
x)));
> unitid
[[1]]
[1] "185195"
[[2]]
[1] "185196"
Finally you need to get the (X,Y)-coordinates for "3326635" only:
> scm <- export(scheme.exon, treetype="scm",
varlist="fUnitID:fX:fY:fMask",
+ as.dataframe=TRUE, outfile="tmp_scm.txt")
> xy <- scm[which(scm[,"UNIT_ID"] == unlist(unitid)[1]),]
> dim(xy)
[1] 365 4
As you see dim(xy) has more rows than above, thus you need to get the
"core" subset only (see ?exonLevel):
> unique(xy[,"Mask"])
[1] 8192 1024 2048 256 512 4096
> xy <- rbind(xy[which(xy[,"Mask"] == 8192),], xy[which(xy[,"Mask"]
==
1024),])
> dim(xy)
[1] 103 4
> head(xy)
UNIT_ID X Y Mask
3151152 185195 1638 388 8192
3151153 185195 2407 79 8192
3151154 185195 2393 882 8192
3151155 185195 1728 1223 8192
3151216 185195 1781 15 8192
3151217 185195 1442 762 8192
Now you have the (X,Y)-coordinates for the CD44 gene as above.
ad a) Remove probes that hybridize to multiple loci in the genome:
I do not know how you want to remove these probes, however you can get
the sequences of all probes from the following table:
> export(scheme.exon, treetype="prb")
Furthermore, when exporting the probeset annotation by:
> export(scheme.exon, treetype="anp")
you will see that the table contains column "CrossHybType" (see the
Affy
README file for exon arrays). Only crosshyb_type = 1 (unique) does
contain unique probesets.
Please let me know if this is the info you were looking for.
Best regards
Christian
On 8/18/11 11:48 PM, Lavorgna Giovanni wrote:
> Dear Cristian,
> many thanks for your prompt answer. In my case, once I have the
probe intensities, I would like to do the following two preliminary
steps:
> a) Remove probes that hybridize to multiple loci in the genome.
> b) Remove probes that show a correlation coefficient below a certain
threshold.
> Then, I would like to calculate the differential expression in
diseased vs. healthy samples for a few transcripts of mine by
averaging the ratio of the probe intensities. I hope that the
increased granularity and the reduced background of this method can
give a better resolution to my analysis. As I said before, similar
probe selection methods have been already described (see for example
Xing Y, Kapur K, Wong WH. PLoS ONE. 2006 20;1:e88) and applied to
genome wide studies.
>
> In my case, after step a), I would like simply to dump the probes to
a text file, select those of my interest and read them into to a
spreadsheet in order to calculate the correlation coefficient and the
fold-change of my transcripts. You already started to sketch the
beginning of pipeline I should use: if I am not asking for too much, I
would be grateful if you could elaborate it a little more to include
also these final two steps.
> Thanks again for your assistance and keep up the good work.
> Giovanni
>
> ________________________________________
> Da: cstrato [cstrato at aon.at]
> Inviato: gioved? 18 agosto 2011 20.28
> A: Lavorgna Giovanni
> Cc: bioconductor at r-project.org
> Oggetto: Re: [BioC] Probe-level analysis of exon arrays using xps
>
> Dear Giovanni,
>
> In principle you could do the background and normalization steps
> separately, e.g.:
> > data.bg.rma<- bgcorrect.rma(data.exon, ...)
> > data.qu.rma<- normalize.quantiles(data.bg.rma, ...)
>
> Now you have the normalized probes, however, you cannot do any
> summarization such as median-polish or mean.
>
> It is not quite clear to me how you want to proceed with the
normalized
> probe intensities?
>
> Best regards
> Christian
> _._._._._._._._._._._._._._._._._._
> C.h.r.i.s.t.i.a.n S.t.r.a.t.o.w.a
> V.i.e.n.n.a A.u.s.t.r.i.a
> e.m.a.i.l: cstrato at aon.at
> _._._._._._._._._._._._._._._._._._
>
>
> On 8/18/11 7:08 PM, Lavorgna Giovanni wrote:
>>
>> As you guys know, there is a growing evidence showing that a probe-
level analysis (as opposed to a probeset-level or a gene-level
analysis) could be useful in analyzing Exon arrays. I am currently
analyzing several human exon chips (185!) on a 4 GB machine and I am
using the xps package. I would like to stick to this software since it
allows to manage several chips with the resources at hand and I was
wondering if anyone has ever tried to perform probe level analysis
using xps. Also, I would be grateful if anyone could point out
alternative resources to perform this job.
>> Thanks in advance.
>> Giovanni
>>
>>
>>
>>
>> -----------------------------------------------------------------
>>
>> Dai il tuo 5XMILLE al San Raffaele. Basta una firma.
>> Se firmi per la ricerca sanitaria del San Raffaele di Milano, firmi
per tutti.
>> C.F. 03 06 42 80 153.
>> INFO: 5xmille at hsr.it - www.5xmille.org
>>
>> _______________________________________________
>> Bioconductor mailing list
>> Bioconductor at r-project.org
>> https://stat.ethz.ch/mailman/listinfo/bioconductor
>> Search the archives:
http://news.gmane.org/gmane.science.biology.informatics.conductor
>>
>
> -----------------------------------------------------------------
>
> Dai il tuo 5XMILLE al San Raffaele. Basta una firma.
> Se firmi per la ricerca sanitaria del San Raffaele di Milano, firmi
per tutti.
> C.F. 03 06 42 80 153.
> INFO: 5xmille at hsr.it - www.5xmille.org
>