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Data from Visualizing Chromosomes as Transcriptome Correlation Maps: Evidence of Chromosomal Domains Containing Co-expressed Genes—A Study of 130 Invasive Ductal Breast Carcinomas

Authors :
François Radvanyi
Jean Paul Thiery
Olivier Delattre
Xavier Sastre-Garau
Bernard Asselain
Brigitte Sigal-Zafrani
Jérôme Couturier
Dominique Stoppa-Lyonnet
Henri Magdelénat
Pierre Pouillart
Claude Nos
Alain Fourquet
Yoann Désille
Carolyn Spraggon
Alexander Graham
Andrew Cassidy
Paul Elvin
Yann de Rycke
Anne Vincent-Salomon
Isabelle Bernard-Pierrot
Nicolas Stransky
Fabien Reyal
Publication Year :
2023
Publisher :
American Association for Cancer Research (AACR), 2023.

Abstract

Completion of the working draft of the human genome has made it possible to analyze the expression of genes according to their position on the chromosomes. Here, we used a transcriptome data analysis approach involving for each gene the calculation of the correlation between its expression profile and those of its neighbors. We used the U133 Affymetrix transcriptome data set for a series of 130 invasive ductal breast carcinomas to construct chromosomal maps of gene expression correlation (transcriptome correlation map). This highlighted nonrandom clusters of genes along the genome with correlated expression in tumors. Some of the gene clusters identified by this method probably arose because of genetic alterations, as most of the chromosomes with the highest percentage of correlated genes (1q, 8p, 8q, 16p, 16q, 17q, and 20q) were also the most frequent sites of genomic alterations in breast cancer. Our analysis showed that several known breast tumor amplicons (at 8p11-p12, 11q13, and 17q12) are located within clusters of genes with correlated expression. Using hierarchical clustering on samples and a Treeview representation of whole chromosome arms, we observed a higher-order organization of correlated genes, sometimes involving very large chromosomal domains that could extend to a whole chromosome arm. Transcription correlation maps are a new way of visualizing transcriptome data. They will help to identify new genes involved in tumor progression and new mechanisms of gene regulation in tumors.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....8be44a45437e5f4a6a15c727e5f51e4c