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Transcript and protein expression profiles of the NCI-60 cancer cell panel: an integromic microarray study

Authors :
Douglas Dolginow
Jae K. Lee
Satoshi Nishizuka
Lance A. Liotta
Jeffrey Cossman
Uwe Scherf
Daisaku Morita
Mark Reimers
Krishna K. Chary
Eric P. Kaldjian
Dominic A. Scudiero
William C. Reinhold
John N. Weinstein
Sylvia M. Major
Uma Shankavaram
Ari B. Kahn
Emanuel F. Petricoin
Source :
Molecular Cancer Therapeutics. 6:820-832
Publication Year :
2007
Publisher :
American Association for Cancer Research (AACR), 2007.

Abstract

To evaluate the utility of transcript profiling for prediction of protein expression levels, we compared profiles across the NCI-60 cancer cell panel, which represents nine tissues of origin. For that analysis, we present here two new NCI-60 transcript profile data sets (A based on Affymetrix HG-U95 and HG-U133A chips; Affymetrix, Santa Clara, CA) and one new protein profile data set (based on reverse-phase protein lysate arrays). The data sets are available online at http://discover.nci.nih.gov in the CellMiner program package. Using the new transcript data in combination with our previously published cDNA array and Affymetrix HU6800 data sets, we first developed a “consensus set” of transcript profiles based on the four different microarray platforms. Using that set, we found that 65% of the genes showed statistically significant transcript-protein correlation, and the correlations were generally higher than those reported previously for panels of mammalian cells. Using the predictive analysis of microarray nearest shrunken centroid algorithm for functional prediction of tissue of origin, we then found that (a) the consensus mRNA set did better than did data from any of the individual mRNA platforms and (b) the protein data seemed to do somewhat better (P = 0.027) on a gene-for-gene basis in this particular study than did the consensus mRNA data, but both did well. Analysis based on the Gene Ontology showed protein levels of structure-related genes to be well predicted by mRNA levels (mean r = 0.71). Because the transcript-based technologies are more mature and are currently able to assess larger numbers of genes at one time, they continue to be useful, even when the ultimate aim is information about proteins. [Mol Cancer Ther 2007;6(3):820–32]

Details

ISSN :
15388514 and 15357163
Volume :
6
Database :
OpenAIRE
Journal :
Molecular Cancer Therapeutics
Accession number :
edsair.doi.dedup.....553721d8787f93c8458fb3bc9f9fe8ab
Full Text :
https://doi.org/10.1158/1535-7163.mct-06-0650