1. Gene expression signature of estrogen receptor α status in breast cancer
- Author
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Sally Gaddis, Yuhui Hu, Martín Carlos Abba, C. Marcelo Aldaz, Aysegul A. Sahin, Keith A. Baggerly, Hongxia Sun, and Jeffrey A. Drake
- Subjects
Genetic Markers ,lcsh:QH426-470 ,lcsh:Biotechnology ,Estrogen receptor ,Breast Neoplasms ,Biology ,Response Elements ,03 medical and health sciences ,0302 clinical medicine ,Breast cancer ,lcsh:TP248.13-248.65 ,Databases, Genetic ,Genetics ,medicine ,Biomarkers, Tumor ,Humans ,Serial analysis of gene expression ,Estrogen receptor beta ,030304 developmental biology ,Gene Library ,0303 health sciences ,Reverse Transcriptase Polymerase Chain Reaction ,Gene Expression Profiling ,Estrogen Receptor alpha ,Cancer ,Computational Biology ,Estrogens ,medicine.disease ,Molecular biology ,Immunohistochemistry ,3. Good health ,Up-Regulation ,Gene expression profiling ,Gene Expression Regulation, Neoplastic ,lcsh:Genetics ,Phenotype ,030220 oncology & carcinogenesis ,Steroid hormone receptor activity ,Estrogen receptor alpha ,Biotechnology ,Research Article - Abstract
Background Estrogens are known to regulate the proliferation of breast cancer cells and to modify their phenotypic properties. Identification of estrogen-regulated genes in human breast tumors is an essential step toward understanding the molecular mechanisms of estrogen action in cancer. To this end we generated and compared the Serial Analysis of Gene Expression (SAGE) profiles of 26 human breast carcinomas based on their estrogen receptor α (ER) status. Thus, producing a breast cancer SAGE database of almost 2.5 million tags, representing over 50,000 transcripts. Results We identified 520 transcripts differentially expressed between ERα-positive (+) and ERα-negative (-) primary breast tumors (Fold change ≥ 2; p < 0.05). Furthermore, we identified 220 high-affinity Estrogen Responsive Elements (EREs) distributed on the promoter regions of 163 out of the 473 up-modulated genes in ERα (+) breast tumors. In brief, we observed predominantly up-regulation of cell growth related genes, DNA binding and transcription factor activity related genes based on Gene Ontology (GO) biological functional annotation. GO terms over-representation analysis showed a statistically significant enrichment of various transcript families including: metal ion binding related transcripts (p = 0.011), calcium ion binding related transcripts (p = 0.033) and steroid hormone receptor activity related transcripts (p = 0.031). SAGE data associated with ERα status was compared with reported information from breast cancer DNA microarrays studies. A significant proportion of ERα associated gene expression changes was validated by this cross-platform comparison. However, our SAGE study also identified novel sets of genes as highly expressed in ERα (+) invasive breast tumors not previously reported. These observations were further validated in an independent set of human breast tumors by means of real time RT-PCR. Conclusion The integration of the breast cancer comparative transcriptome analysis based on ERα status coupled to the genome-wide identification of high-affinity EREs and GO over-representation analysis, provide useful information for validation and discovery of signaling networks related to estrogen response in this malignancy.
- Published
- 2005