Skip to main content
Top
Published in: Breast Cancer Research and Treatment 3/2010

01-02-2010 | Preclinical study

Derivation of molecular signatures for breast cancer recurrence prediction using a two-way validation approach

Authors: Yijun Sun, Virginia Urquidi, Steve Goodison

Published in: Breast Cancer Research and Treatment | Issue 3/2010

Login to get access

Abstract

Previous studies have demonstrated the potential value of gene expression signatures in assessing the risk of post-surgical breast cancer recurrence, however, many of these predictive models have been derived using simple computational algorithms and validated internally or using one-way validation on a single dataset. We have recently developed a new feature selection algorithm that overcomes some limitations inherent to high-dimensional data analysis. In this study, we applied this algorithm to two publicly available gene expression datasets obtained from over 400 patients with breast cancer to investigate whether we could derive more accurate prognostic signatures and reveal common predictive factors across independent datasets. We compared the performance of three advanced computational algorithms using a robust two-way validation method, where one dataset was used for training and to establish a prediction model that was then blindly tested on the other dataset. The experiment was then repeated in the reverse direction. Analyses identified prognostic signatures that while comprised of only 10–13 genes, significantly outperformed previously reported signatures for breast cancer evaluation. The cross-validation approach revealed CEGP1 and PRAME as major candidates for breast cancer biomarker development.
Appendix
Available only for authorised users
Literature
3.
go back to reference National Institutes of Health Consensus Development Panel (2001) National Institutes of Health consensus development conference statement: adjuvant therapy for breast cancer. J Natl Cancer Inst 30:5–15 National Institutes of Health Consensus Development Panel (2001) National Institutes of Health consensus development conference statement: adjuvant therapy for breast cancer. J Natl Cancer Inst 30:5–15
4.
go back to reference van’t Veer LJ, Dai H, van de Vijver MJ et al (2002) Gene expression profiling predicts clinical outcome of breast cancer. Nature 415:530–536. doi:10.1038/415530a CrossRef van’t Veer LJ, Dai H, van de Vijver MJ et al (2002) Gene expression profiling predicts clinical outcome of breast cancer. Nature 415:530–536. doi:10.​1038/​415530a CrossRef
5.
go back to reference Wang Y, Klijn J, Zhang Y et al (2005) Gene-expression profiles to predict distant metastasis of lymph-node-negative primary breast cancer. Lancet 365:671–679PubMed Wang Y, Klijn J, Zhang Y et al (2005) Gene-expression profiles to predict distant metastasis of lymph-node-negative primary breast cancer. Lancet 365:671–679PubMed
8.
go back to reference Lafferty J, Wasserman L (2006) Challenges in statistical machine learning. Statist Sinica 16:307–322 Lafferty J, Wasserman L (2006) Challenges in statistical machine learning. Statist Sinica 16:307–322
10.
go back to reference Sun Y, Todorovic S, Goodison S (2008) A feature selection algorithm capable of handling extremely large data dimensionality. In: Proceedings of 8th SIAM international conference on data mining, pp 530–540 Sun Y, Todorovic S, Goodison S (2008) A feature selection algorithm capable of handling extremely large data dimensionality. In: Proceedings of 8th SIAM international conference on data mining, pp 530–540
11.
go back to reference Sun Y, Wu D (2009) Feature extraction through local learning. Stat Anal Data Min (in press) Sun Y, Wu D (2009) Feature extraction through local learning. Stat Anal Data Min (in press)
13.
go back to reference Sun Y, Cai Y, Goodison S (2008) Combining nomogram and microarray data for predicting prostate cancer recurrence. In: Proceedings of 8th IEEE international conference on bioinformatics and bioengineering, vol 183. pp 1–710 Sun Y, Cai Y, Goodison S (2008) Combining nomogram and microarray data for predicting prostate cancer recurrence. In: Proceedings of 8th IEEE international conference on bioinformatics and bioengineering, vol 183. pp 1–710
14.
go back to reference Buyse M, Loi S, van’t Veer L et al (2006) Validation and clinical utility of a 70-gene prognostic signature for women with node-negative breast cancer. J Natl Cancer Inst 98:1183–1192PubMedCrossRef Buyse M, Loi S, van’t Veer L et al (2006) Validation and clinical utility of a 70-gene prognostic signature for women with node-negative breast cancer. J Natl Cancer Inst 98:1183–1192PubMedCrossRef
17.
go back to reference Ng AY (2004) Feature selection, L1 vs. L2 regularization, and rotational invariance. In: Proceedings of 21st international conference on machine learning, vol 69. pp 78–86 Ng AY (2004) Feature selection, L1 vs. L2 regularization, and rotational invariance. In: Proceedings of 21st international conference on machine learning, vol 69. pp 78–86
18.
go back to reference Sterne Kirkwood B (2003) Essential medical statistics. Blackwell Publishing, Oxford Sterne Kirkwood B (2003) Essential medical statistics. Blackwell Publishing, Oxford
19.
Metadata
Title
Derivation of molecular signatures for breast cancer recurrence prediction using a two-way validation approach
Authors
Yijun Sun
Virginia Urquidi
Steve Goodison
Publication date
01-02-2010
Publisher
Springer US
Published in
Breast Cancer Research and Treatment / Issue 3/2010
Print ISSN: 0167-6806
Electronic ISSN: 1573-7217
DOI
https://doi.org/10.1007/s10549-009-0365-6

Other articles of this Issue 3/2010

Breast Cancer Research and Treatment 3/2010 Go to the issue
Webinar | 19-02-2024 | 17:30 (CET)

Keynote webinar | Spotlight on antibody–drug conjugates in cancer

Antibody–drug conjugates (ADCs) are novel agents that have shown promise across multiple tumor types. Explore the current landscape of ADCs in breast and lung cancer with our experts, and gain insights into the mechanism of action, key clinical trials data, existing challenges, and future directions.

Dr. Véronique Diéras
Prof. Fabrice Barlesi
Developed by: Springer Medicine