RMA normalization
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@adaikalavan-ramasamy-675
Last seen 10.0 years ago
I was under the impression getting a sufficient mRNA from a single sample was difficult enough. Sorry, I do not think I can be of much help as I never encountered this sort of problem, perhaps due to my own inability to distinguish the terms mRNA, sample, tissue. But there are many other people on the list who have better appreciation of biology and hopefully one of them could advise you. Could you give us the link to this message you are talking about. On Fri, 2004-09-10 at 15:26, Hairong Wei wrote: > Dear Adai: > > Thanks for asking. I got this phrase from the messages stored in the > archive yesterday. My understand is that, suppose you have 100 arrays, and > 10 mRNA samples from 10 tissues. Each 10 arrays are hybridized with mRNAs > from the same tissue. When you run RMA algoritm, you run those arrays (10 > each time) that hybridized with mRNA from same tissue together rathan than > running 100 arrays together. After running RMA for each tissue, the scaling > is applied to arrays form different tissues. > > The reason for doing this is that it is not reasonable to assume that the > arrays from different have the same distribution. > > What is you idea to do background.correction and normalization of 100 arrays > across 10 tissues? > > Thank you very much in advance > > Hairong Wei, Ph.D. > Department of Biostatisitics > University of Alabama at Birmingham > Phone: 205-975-7762 > > > > -----Original Message----- > From: Adaikalavan Ramasamy [mailto:ramasamy@cancer.org.uk] > Sent: Thursday, September 09, 2004 5:09 PM > To: Hairong Wei > Cc: 'bioconductor@stat.math.ethz.ch' > Subject: Re: [BioC] RMA normalization > > > What do you mean by "normalization within tissue-of-origin" ? Can you > give us examples of these messages/papers/references discussing this. > > I often work with finding differentially expressed genes between two > phenotypes of the same type of cancer and tissue type. How would this > normalisation work then ? > > Regards, Adai > > > > On Thu, 2004-09-09 at 16:43, Hairong Wei wrote: > > I just started to work on low-level microarray data analysis and do not > have > > experience in using RMA algorithm. I am now in a situation where I have > to > > normalize a a few hundred of arrays across multiple tissues. I have seen > a > > few messages regarding the legitimacy of using quantile-quantile (Q-Q) > > method to normalize many arrays across multiple tissue types in the > > bioconductor archive. It seems that normalization within > tissue-of-origin > > was favored by some folks. Although I feel it is the approach I should > > take, I still hope to be more secure before I do it, just bacuse a lot of > > work will be done on the normalized data. > > > > Can anybody help by pointing out a few references that use Q-Q method > within > > or not within tissue-of-origin? For those who has done Q-Q within the > > tissue-of-origin, could you please give some comments or your feelings > > regarding Q-Q withn tissue-of-origin? > > > > Hairong > > > > . > > > > _______________________________________________ > > Bioconductor mailing list > > Bioconductor@stat.math.ethz.ch > > https://stat.ethz.ch/mailman/listinfo/bioconductor > > >
Microarray Normalization Cancer Microarray Normalization Cancer • 1.2k views
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Fangxin Hong ▴ 810
@fangxin-hong-912
Last seen 10.0 years ago
when you perform normalization within tissue-of-origin, say only 2 replicated arrays for each tissue type, there is still a potential problem that the normalized arrays are not comparable across different tissue types. Like the intensities from arrays of one type tissue is systematically higher tha that from arrays of another type tissue. This sounds like a experimental issue, I am not a biologist. Anyone has idea whether my concern is a problem or not in the real experiment. Thanks Fangxin > I was under the impression getting a sufficient mRNA from a single > sample was difficult enough. > > Sorry, I do not think I can be of much help as I never encountered this > sort of problem, perhaps due to my own inability to distinguish the > terms mRNA, sample, tissue. But there are many other people on the list > who have better appreciation of biology and hopefully one of them could > advise you. > > Could you give us the link to this message you are talking about. > > > > On Fri, 2004-09-10 at 15:26, Hairong Wei wrote: >> Dear Adai: >> >> Thanks for asking. I got this phrase from the messages stored in the >> archive yesterday. My understand is that, suppose you have 100 arrays, >> and >> 10 mRNA samples from 10 tissues. Each 10 arrays are hybridized with >> mRNAs >> from the same tissue. When you run RMA algoritm, you run those arrays >> (10 >> each time) that hybridized with mRNA from same tissue together rathan >> than >> running 100 arrays together. After running RMA for each tissue, the >> scaling >> is applied to arrays form different tissues. >> >> The reason for doing this is that it is not reasonable to assume that >> the >> arrays from different have the same distribution. >> >> What is you idea to do background.correction and normalization of 100 >> arrays >> across 10 tissues? >> >> Thank you very much in advance >> >> Hairong Wei, Ph.D. >> Department of Biostatisitics >> University of Alabama at Birmingham >> Phone: 205-975-7762 >> >> >> >> -----Original Message----- >> From: Adaikalavan Ramasamy [mailto:ramasamy@cancer.org.uk] >> Sent: Thursday, September 09, 2004 5:09 PM >> To: Hairong Wei >> Cc: 'bioconductor@stat.math.ethz.ch' >> Subject: Re: [BioC] RMA normalization >> >> >> What do you mean by "normalization within tissue-of-origin" ? Can you >> give us examples of these messages/papers/references discussing this. >> >> I often work with finding differentially expressed genes between two >> phenotypes of the same type of cancer and tissue type. How would this >> normalisation work then ? >> >> Regards, Adai >> >> >> >> On Thu, 2004-09-09 at 16:43, Hairong Wei wrote: >> > I just started to work on low-level microarray data analysis and do >> not >> have >> > experience in using RMA algorithm. I am now in a situation where I >> have >> to >> > normalize a a few hundred of arrays across multiple tissues. I have >> seen >> a >> > few messages regarding the legitimacy of using quantile-quantile (Q-Q) >> > method to normalize many arrays across multiple tissue types in the >> > bioconductor archive. It seems that normalization within >> tissue-of-origin >> > was favored by some folks. Although I feel it is the approach I >> should >> > take, I still hope to be more secure before I do it, just bacuse a lot >> of >> > work will be done on the normalized data. >> > >> > Can anybody help by pointing out a few references that use Q-Q method >> within >> > or not within tissue-of-origin? For those who has done Q-Q within >> the >> > tissue-of-origin, could you please give some comments or your feelings >> > regarding Q-Q withn tissue-of-origin? >> > >> > Hairong >> > >> > . >> > >> > _______________________________________________ >> > Bioconductor mailing list >> > Bioconductor@stat.math.ethz.ch >> > https://stat.ethz.ch/mailman/listinfo/bioconductor >> > >> > > _______________________________________________ > Bioconductor mailing list > Bioconductor@stat.math.ethz.ch > https://stat.ethz.ch/mailman/listinfo/bioconductor > -- Fangxin Hong, Ph.D. Bioinformatics Specialist Plant Biology Laboratory The Salk Institute 10010 N. Torrey Pines Rd. La Jolla, CA 92037 E-mail: fhong@salk.edu
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