Limma analysis
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Pete ▴ 70
@pete-486
Last seen 10.2 years ago
Hi all, I have been using limma now for a couple of weeks, and I think I have pretty much got the hang of most of it. However, now I want to analyse a slightly more complex experiment, can anyone give me some guidance as how to deal with this. Firstly the experimental design is as follows, there are four samples wildtype tissue A, wildtype tissue B, mutant tissue A and mutant tissue B. Each sample has been compared to eachother in triplicate (inlcuding a dye swap, and one independant sample). To complicate things further an additional set of WT A v WT B was also done in triplicate using a different method. The slides are 7.5k oligos spotted in duplicate ( the duplicates are in the same block 10 rows below the first copy), although there are control genes which appear more than twice on the arrays. My files are imagene output files where the cy5 and cy3 are contained in separate files. Also the imagene output contains spots which are flagged and would need to be removed from the analysis (meaning that a particular gene could have none one or two measurements for it). What do you think the best strategy to deal with this design is? Cheers Pete
limma limma • 1.1k views
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@gordon-smyth
Last seen 46 minutes ago
WEHI, Melbourne, Australia
At 10:04 AM 28/10/2003, Pete wrote: >Hi all, >I have been using limma now for a couple of weeks, and I think I have pretty >much got the hang of most of it. However, now I want to analyse a slightly >more complex experiment, can anyone give me some guidance as how to deal >with this. > Firstly the experimental design is as follows, there are four samples >wildtype tissue A, wildtype tissue B, mutant tissue A and mutant tissue B. >Each sample has been compared to eachother in triplicate (inlcuding a dye >swap, and one independant sample). To complicate things further an >additional set of WT A v WT B was also done in triplicate using a different >method. > The slides are 7.5k oligos spotted in duplicate ( the duplicates are in >the same block 10 rows below the first copy), although there are control >genes which appear more than twice on the arrays. My files are imagene >output files where the cy5 and cy3 are contained in separate files. Also >the imagene output contains spots which are flagged and would need to be >removed from the analysis (meaning that a particular gene could have none >one or two measurements for it). > >What do you think the best strategy to deal with this design is? Well, everything in your experiment is straight down the line as far as limma is concerned. You haven't really said what is is about this experiment which you're not sure how to deal with. Is the problem the design matrix or something else? Gordon >Cheers > >Pete
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Pete ▴ 70
@pete-486
Last seen 10.2 years ago
Sorry I didn't explain that particularly well, firstly how do I create a design matrix for this experiment? Also as far as I can see the read.imagene function doesn't read in the flag information for each file, in imagene each spot can have a flag value from 0-8? and in this case we want to ignore completely anything which is non zero. Presumably this could be specified in the wt.fun argument, but i'm unsure precisely how to do this? I have tried to modify the wtflags function but without success. Cheers Pete ----- Original Message ----- From: "Gordon Smyth" <smyth@wehi.edu.au> To: "Pete" <p.underhill@har.mrc.ac.uk> Cc: <bioconductor@stat.math.ethz.ch> Sent: Tuesday, October 28, 2003 2:50 AM Subject: Re: [BioC] Limma analysis > At 10:04 AM 28/10/2003, Pete wrote: > >Hi all, > >I have been using limma now for a couple of weeks, and I think I have pretty > >much got the hang of most of it. However, now I want to analyse a slightly > >more complex experiment, can anyone give me some guidance as how to deal > >with this. > > Firstly the experimental design is as follows, there are four samples > >wildtype tissue A, wildtype tissue B, mutant tissue A and mutant tissue B. > >Each sample has been compared to eachother in triplicate (inlcuding a dye > >swap, and one independant sample). To complicate things further an > >additional set of WT A v WT B was also done in triplicate using a different > >method. > > The slides are 7.5k oligos spotted in duplicate ( the duplicates are in > >the same block 10 rows below the first copy), although there are control > >genes which appear more than twice on the arrays. My files are imagene > >output files where the cy5 and cy3 are contained in separate files. Also > >the imagene output contains spots which are flagged and would need to be > >removed from the analysis (meaning that a particular gene could have none > >one or two measurements for it). > > > >What do you think the best strategy to deal with this design is? > > Well, everything in your experiment is straight down the line as far as > limma is concerned. You haven't really said what is is about this > experiment which you're not sure how to deal with. Is the problem the > design matrix or something else? > > Gordon > > >Cheers > > > >Pete > > _______________________________________________ > Bioconductor mailing list > Bioconductor@stat.math.ethz.ch > https://www.stat.math.ethz.ch/mailman/listinfo/bioconductor >
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At 02:25 PM 30/10/2003, Pete wrote: >Sorry I didn't explain that particularly well, firstly how do I create a >design matrix for this experiment? I simply haven't been clever enough to figure out a way to automate the process of creating the design matrix for direct designs with two- colour arrays. Send me offline (1) your targets file (see the limma 1.3.0 manual for the meaning of a targets file) and (2) what comparisons you want to make between your samples or questions you want to answer, and I will try to get someone to suggest a design matrix. >Also as far as I can see the read.imagene function doesn't read in the flag >information for each file, in imagene each spot can have a flag value from >0-8? and in this case we want to ignore completely anything which is non >zero. Presumably this could be specified in the wt.fun argument, but i'm >unsure precisely how to do this? I have tried to modify the wtflags function >but without success. mywtfun <- function(x) { as.numeric(x[,"Flag"] == 0) } RG <- read.maimages(files, source="imagene", wt.fun=mywtfun) Please note: I do not personally recommend ignoring flagged points in this way. I would personally down-weight them somewhat but would not ignore them completely. I don't think that spots split cleanly in this way into good and bad spots and I don't have anything like this sort of faith in Imagene's (or any other program's) ability to pick one from the other. Regards Gordon >Cheers >Pete > > >----- Original Message ----- >From: "Gordon Smyth" <smyth@wehi.edu.au> >To: "Pete" <p.underhill@har.mrc.ac.uk> >Cc: <bioconductor@stat.math.ethz.ch> >Sent: Tuesday, October 28, 2003 2:50 AM >Subject: Re: [BioC] Limma analysis > > > > At 10:04 AM 28/10/2003, Pete wrote: > > >Hi all, > > >I have been using limma now for a couple of weeks, and I think I have >pretty > > >much got the hang of most of it. However, now I want to analyse a >slightly > > >more complex experiment, can anyone give me some guidance as how to deal > > >with this. > > > Firstly the experimental design is as follows, there are four >samples > > >wildtype tissue A, wildtype tissue B, mutant tissue A and mutant tissue >B. > > >Each sample has been compared to eachother in triplicate (inlcuding a dye > > >swap, and one independant sample). To complicate things further an > > >additional set of WT A v WT B was also done in triplicate using a >different > > >method. > > > The slides are 7.5k oligos spotted in duplicate ( the duplicates are >in > > >the same block 10 rows below the first copy), although there are control > > >genes which appear more than twice on the arrays. My files are imagene > > >output files where the cy5 and cy3 are contained in separate files. Also > > >the imagene output contains spots which are flagged and would need to be > > >removed from the analysis (meaning that a particular gene could have none > > >one or two measurements for it). > > > > > >What do you think the best strategy to deal with this design is? > > > > Well, everything in your experiment is straight down the line as far as > > limma is concerned. You haven't really said what is is about this > > experiment which you're not sure how to deal with. Is the problem the > > design matrix or something else? > > > > Gordon > > > > >Cheers > > > > > >Pete
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