Large-scale meta-analysis of cancer microarray data identifies common transcriptional profiles of neoplastic transformation and progression
Johns Hopkins University · University of Michigan · +1 more institution
Abstract
Many studies have used DNA microarrays to identify the gene expression signatures of human cancer, yet the critical features of these often unmanageably large signatures remain elusive. To address this, we developed a statistical method, comparative metaprofiling, which identifies and assesses the intersection of multiple gene expression signatures from a diverse collection of microarray data sets. We collected and analyzed 40 published cancer microarray data sets, comprising 38 million gene expression measurements from >3,700 cancer samples. From this, we characterized a common transcriptional profile that is universally activated in most cancer types relative to the normal tissues from which they arose,…
Citation impact
- FWCI
- 36.04
- Percentile
- 100%
- References
- 56
Authors
9- DRDaniel R. RhodesCorresponding
Johns Hopkins University, University of Michigan, Institute of Bioinformatics
- JYJianjun Yu
Johns Hopkins University, University of Michigan, Institute of Bioinformatics
- KSK. Shanker
Johns Hopkins University, University of Michigan, Institute of Bioinformatics
- NDNandan Deshpande
Johns Hopkins University, University of Michigan, Institute of Bioinformatics
- RVRadhika Varambally
Johns Hopkins University, University of Michigan, Institute of Bioinformatics
Topics & keywords
- DNA microarray
- Biology
- Microarray analysis techniques
- Cancer
- Computational biology
- Microarray
- Neoplastic transformation
- Transformation (genetics)