BioC normalisations for small array 2 colour data?
2
0
Entering edit mode
Dan Swan ▴ 50
@dan-swan-1869
Last seen 10.2 years ago
Hi, I have some data from a small specialised microarray - 200 genes, 1 spiked control, 1 negative control. This is 2 colour data, with dye swaps. I was wondering what an appropriate normalisation for this scenario is within Bioconductor given that Lowess is unreliable for <1000 genes? Any pointers would be gratefully recieved. thanks, Dan -- Senior Research Associate, Bioinformatics Support Unit, Institute for Cell and Molecular Biosciences, Faculty of Medical Sciences, Framlington Place, University of Newcastle upon Tyne, Newcastle, NE2 4HH Tel: +44 (0)191 222 7253 (Leech offices: Rooms M.2046/M.2046A) Tel: +44 (0)191 246 4833 (Devonshire offices: Rooms G.25/G.26) Website: http://bioinf.ncl.ac.uk/support/
Microarray Microarray • 1.3k views
ADD COMMENT
0
Entering edit mode
@sean-davis-490
Last seen 3 months ago
United States
On Thursday 07 September 2006 08:44, Dan Swan wrote: > Hi, > > I have some data from a small specialised microarray - 200 genes, 1 > spiked control, 1 negative control. This is 2 colour data, with dye > swaps. I was wondering what an appropriate normalisation for this > scenario is within Bioconductor given that Lowess is unreliable for > <1000 genes? There is no "correct" answer here. You will need to look at the data and determine what needs to be done. Scatterplots, density plots/histograms, and M vs. A plots can help. If your genes were chosen because they were all thought to be differentially expressed, then any normalization method for two-color arrays will be inappropriate and you should probably think about single-channel normalization. Sean
ADD COMMENT
0
Entering edit mode
Hi Dan, shameless self-promotion, you could try "vsn" because it only estimates 4 parameters in total in your case, which should be possible with good enough precision from 404 data points. If you do not expect many genes to be differentially expressed, please set the parameter 'lts.quantile' (it controls the degree of robustness or resistance of the estimator) to a higher value than the default, e.g. 0.95. You can use the spike control to see whether the result is plausible. Sean - I agree that normalization methods that are based on assumptions of invariance of 'something' between the different colors or arrays can (but need not) fail if a large part of genes is differentially expressed - but I am not following the argument why 'single-channel' methods would be fundamentally different in this respect. Best wishes Wolfgang Sean Davis wrote: > On Thursday 07 September 2006 08:44, Dan Swan wrote: >> Hi, >> >> I have some data from a small specialised microarray - 200 genes, 1 >> spiked control, 1 negative control. This is 2 colour data, with dye >> swaps. I was wondering what an appropriate normalisation for this >> scenario is within Bioconductor given that Lowess is unreliable for >> <1000 genes? > > There is no "correct" answer here. You will need to look at the data and > determine what needs to be done. Scatterplots, density plots/histograms, and > M vs. A plots can help. > > If your genes were chosen because they were all thought to be differentially > expressed, then any normalization method for two-color arrays will be > inappropriate and you should probably think about single-channel > normalization. > > Sean > > _______________________________________________ > Bioconductor mailing list > Bioconductor at stat.math.ethz.ch > https://stat.ethz.ch/mailman/listinfo/bioconductor > Search the archives: http://news.gmane.org/gmane.science.biology.informatics.conductor
ADD REPLY
0
Entering edit mode
On Friday 08 September 2006 00:29, you wrote: bioconductor at stat.math.ethz.ch > Sean - I agree that normalization methods that are based on assumptions > of invariance of 'something' between the different colors or arrays can > (but need not) fail if a large part of genes is differentially expressed > - but I am not following the argument why 'single-channel' methods would > be fundamentally different in this respect. I made an assumption that there might be a common reference which could be used (I am not saying exactly HOW it could be used, but if present, should be invariant). I totally agree that simple single channel normalization is also problematic in the situation where all genes are expected to be differentially expressed. Sean
ADD REPLY
0
Entering edit mode
Dear Sean, Wolfgang Huber and All Sean Davis wrote: > I totally agree that simple single channel normalization is also problematic > in the situation where all genes are expected to be differentially expressed. > > I have exactly this one: a one color array with 200 genes where all genes are expected to be differentially expressed. I did vsn normalization with default parameters. After this discussion, I am not sure if I did the correct one? What is the suggestion in this situation? Thank you very much -- Marcelo Luiz de Laia Ph.D Candidate S?o Paulo State University (http://www.unesp.br/eng/) School of Agricultural and Veterinary Sciences Department of Technology Via de Acesso Prof.Paulo Donato Castellane s/n 14884-900 Jaboticabal - SP - Brazil Fone: +55-016-3209-2675 Cell: +55-016-97098526
ADD REPLY
0
Entering edit mode
@martinschumachernovartiscom-1610
Last seen 10.2 years ago
An embedded and charset-unspecified text was scrubbed... Name: not available Url: https://stat.ethz.ch/pipermail/bioconductor/attachments/20060908/ 8c4fca06/attachment.pl

Login before adding your answer.

Traffic: 797 users visited in the last hour
Help About
FAQ
Access RSS
API
Stats

Use of this site constitutes acceptance of our User Agreement and Privacy Policy.

Powered by the version 2.3.6