[JOB] Bioinformatics positions at NCI
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@sean-davis-490
Last seen 3 months ago
United States
We have job opportunities in bioinformatics at the National Cancer Institute in the National Institutes of Health, located in Bethesda, MD. Our lab, headed by Dr. Paul Meltzer, utilizes microarrays to study many aspects of the cancer genome. Currently, we have access to and utilize many different array platforms (including Nimblegen, Affy, Illumina, Agilent, Combimatrix) for gene expression, array CGH, chIP-chip, SNP, and several other novel applications. We are looking to fill postdoctoral or staff scientist level position to assist with data analysis, tool development (including Bioconductor packages, where applicable), analytical methods, and data visualization and presentation. If you are interested, or know of a trainee who is looking for a position, please feel free to contact me by email or to forward a CV. Thanks, Sean Davis -- Sean Davis, M.D., Ph.D. Research Fellow Genetics Branch National Cancer Institute National Institutes of Health Phone: 301-435-2652 email: sdavis2 at mail.nih.gov --
SNP Cancer CGH affy SNP Cancer CGH affy • 1.4k views
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@e-motakis-mathematics-558
Last seen 10.2 years ago
Dear all, I am working on two colours microarray experiments and, from a set of 42000 genes, I would like to identify the differentially expressed ones. I have read several articles on this issue and most of them imply that the number of differential expressed genes in such experiments should be a small number (compared to the whole set). Could anyone tell me why this is correct? What if I find half of the genes to be differentially expressed according to the t-test p-value? I am not discussing the issue of p-values and q-values yet. I am asking only about why most of the papers imply a low number of differentially expressed genes. Thank you, Makis ---------------------- E Motakis, Mathematics E.Motakis at bristol.ac.uk
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Hi, It depends entirely on the biology of the experiment and you have said nothing about that. For most experiments, the experimentor knows, a priori, that only a small number of genes are likely to change (in the low hundreds). If you did an experiment where you anticipate lots of genes changing expression values, then as has already been pointed out, the assumptions of most normalization methods are not met. What to do in that case is up to you and would require consultation with a local expert, IMHO. best wishes Robert E Motakis, Mathematics wrote: > Dear all, > > I am working on two colours microarray experiments and, from a set of 42000 > genes, I would like to identify the differentially expressed ones. I have > read several articles on this issue and most of them imply that the number > of differential expressed genes in such experiments should be a small > number (compared to the whole set). > > Could anyone tell me why this is correct? What if I find half of the genes > to be differentially expressed according to the t-test p-value? > > I am not discussing the issue of p-values and q-values yet. I am asking > only about why most of the papers imply a low number of differentially > expressed genes. > > Thank you, > Makis > > > ---------------------- > E Motakis, Mathematics > E.Motakis at bristol.ac.uk > > _______________________________________________ > 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 > -- Robert Gentleman, PhD Program in Computational Biology Division of Public Health Sciences Fred Hutchinson Cancer Research Center 1100 Fairview Ave. N, M2-B876 PO Box 19024 Seattle, Washington 98109-1024 206-667-7700 rgentlem at fhcrc.org
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Dear Makis, I think the idea is that the normalization methods must assume that the expression is basically the same between the types of cells in order to work. This might not always be in fact the case, but if it isn't, then the use of methods like quantile normalization to reduce technical variation leaving only biological normalization become suspect. Anyway, that's my take. I would love to hear from people more knowledgeable than myself on this issue. Best wishes, Rich On May 26, 2006, at 11:06 AM, E Motakis, Mathematics wrote: > Dear all, > > I am working on two colours microarray experiments and, from a set of > 42000 > genes, I would like to identify the differentially expressed ones. I > have > read several articles on this issue and most of them imply that the > number > of differential expressed genes in such experiments should be a small > number (compared to the whole set). > > Could anyone tell me why this is correct? What if I find half of the > genes > to be differentially expressed according to the t-test p-value? > > I am not discussing the issue of p-values and q-values yet. I am asking > only about why most of the papers imply a low number of differentially > expressed genes. > > Thank you, > Makis > > > ---------------------- > E Motakis, Mathematics > E.Motakis at bristol.ac.uk > > _______________________________________________ > 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 > ------------------------------------------------------------ Richard A. Friedman, PhD Associate Research Scientist Herbert Irving Comprehensive Cancer Center Oncoinformatics Core Lecturer Department of Biomedical Informatics Box 95, Room 130BB or P&S 1-420C Columbia University Medical Center 630 W. 168th St. New York, NY 10032 (212)305-6901 (5-6901) (voice) friedman at cancercenter.columbia.edu http://cancercenter.columbia.edu/~friedman/ "Cartesian duelism is when somebody told Decartes that he didn't think therefore he was, and Descartes challenged him to a duel". -Isaac Friedman, age 16
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