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Early Detection and Diagnosis
Prediction of metastasis from low-malignant breast cancer by gene expression profiling
Article first published online: 27 NOV 2006
DOI: 10.1002/ijc.22449
Copyright © 2006 Wiley-Liss, Inc.
Additional Information
How to Cite
Thomassen, M., Tan, Q., Eiriksdottir, F., Bak, M., Cold, S. and Kruse, T. A. (2007), Prediction of metastasis from low-malignant breast cancer by gene expression profiling. Int. J. Cancer, 120: 1070–1075. doi: 10.1002/ijc.22449
Publication History
- Issue published online: 19 JAN 2007
- Article first published online: 27 NOV 2006
- Manuscript Accepted: 5 OCT 2006
- Manuscript Received: 20 JUL 2006
Funded by
- Clinical Institute and Regional Institute of Health Sciences Research
- Raimond and Dagmar Ringgård Bohns Fond
- Dagmar Marshalls fond
- AP Møllers Fond til Lægevidenskabens Fremme
- Fabrikant Einar Willumsens Mindelegat
- Kurt Boennelyckes fond
- Købmand Svend Hansens Fond
- Else Poulsens Mindelegat
- Bankdirektør Hans Stener og Hustru Agnes Steners legat
- Danish Biotechnology Instrumentation Centre (DABIC)
- Clinical Institute and Regional Institute of Health Sciences Research at University of Southern Denmark
Keywords:
- low risk;
- breast cancer;
- microarray;
- prognosis;
- meta-stasizing
Abstract
Promising results for prediction of outcome in breast cancer have been obtained by genome wide gene expression profiling. Some studies have suggested that an extensive overtreatment of breast cancer patients might be reduced by risk assessment with gene expression profiling. A patient group hardly examined in these studies is the low-risk patients for whom outcome is very difficult to predict with currently used methods. These patients do not receive adjuvant treatment according to the guidelines of the Danish Breast Cancer Cooperative Group (DBCG). In this study, 26 tumors from low-risk patients were examined with gene expression profiling. An intermediate risk group of 34 low-malignant T2 tumors that fulfilled all other low-risk criteria than tumor size was included to increase statistical power. A 32-gene classifier, HUMAC32, was identified and it predicted metastases with 80% sensitivity and 77% specificity. The classifier was also validated in an independent group of high-risk tumors resulting in comparable performance of HUMAC32 and a 70-gene classifier developed for this group. Furthermore, the 70-gene signature was tested in our low- and intermediate-risk samples. The results demonstrated high cross-platform consistency of the classifiers. Higher performance of HUMAC32 was demonstrated among the low-malignant cancers compared with the 70-gene classifier. This suggests that although the metastatic potential to some extend is determined by the same genes in groups of tumors with different characteristics and risk, expression-based classification specifically developed in low-risk patients have higher predictive power in this group. © 2006 Wiley-Liss, Inc.

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