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Identification of Cancer Related Genes Using a Comprehensive Map of Human Gene Expression

Author(s)
Torrente, Aurora; Lukk, Margus; Xue, Vincent; Parkinson, Helen; Rung, Johan; Brazma, Alvis; ... Show more Show less
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Abstract
Rapid accumulation and availability of gene expression datasets in public repositories have enabled large-scale meta-analyses of combined data. The richness of cross-experiment data has provided new biological insights, including identification of new cancer genes. In this study, we compiled a human gene expression dataset from ∼40,000 publicly available Affymetrix HG-U133Plus2 arrays. After strict quality control and data normalisation the data was quantified in an expression matrix of ∼20,000 genes and ∼28,000 samples. To enable different ways of sample grouping, existing annotations where subjected to systematic ontology assisted categorisation and manual curation. Groups like normal tissues, neoplasmic tissues, cell lines, homoeotic cells and incompletely differentiated cells were created. Unsupervised analysis of the data confirmed global structure of expression consistent with earlier analysis but with more details revealed due to increased resolution. A suitable mixed-effects linear model was used to further investigate gene expression in solid tissue tumours, and to compare these with the respective healthy solid tissues. The analysis identified 1,285 genes with systematic expression change in cancer. The list is significantly enriched with known cancer genes from large, public, peer-reviewed databases, whereas the remaining ones are proposed as new cancer gene candidates. The compiled dataset is publicly available in the ArrayExpress Archive. It contains the most diverse collection of biological samples, making it the largest systematically annotated gene expression dataset of its kind in the public domain
Date issued
2016-06
URI
http://hdl.handle.net/1721.1/107889
Department
Massachusetts Institute of Technology. Computational and Systems Biology Program
Journal
PLOS ONE
Publisher
Public Library of Science
Citation
Torrente, Aurora et al. “Identification of Cancer Related Genes Using a Comprehensive Map of Human Gene Expression.” Ed. Paolo Provero. PLOS ONE 11.6 (2016): e0157484.
Version: Final published version
ISSN
1932-6203

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