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Supervised Risk Predictor of Breast Cancer Based on Intrinsic Subtypes
4.801
Zitationen
20
Autoren
2009
Jahr
Abstract
The intrinsic subtypes as discrete entities showed prognostic significance (P = 2.26E-12) and remained significant in multivariable analyses that incorporated standard parameters (estrogen receptor status, histologic grade, tumor size, and node status). A prognostic model for node-negative breast cancer was built using intrinsic subtype and clinical information. The C-index estimate for the combined model (subtype and tumor size) was a significant improvement on either the clinicopathologic model or subtype model alone. The intrinsic subtype model predicted neoadjuvant chemotherapy efficacy with a negative predictive value for pCR of 97%. CONCLUSION Diagnosis by intrinsic subtype adds significant prognostic and predictive information to standard parameters for patients with breast cancer. The prognostic properties of the continuous risk score will be of value for the management of node-negative breast cancers. The subtypes and risk score can also be used to assess the likelihood of efficacy from neoadjuvant chemotherapy.
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Autoren
- Joel S. Parker
- Michael E. Mullins
- Maggie C.U. Cheang
- Samuel Leung
- David Voduc
- Tammi L. Vickery
- Sherri R. Davies
- Christiane Fauron
- Xiaping He
- Zhiyuan Hu
- John F. Quackenbush
- Inge J. Stijleman
- Juan Palazzo
- J. S. Marron
- Andrew B. Nobel
- Elaine R. Mardis
- Torsten O. Nielsen
- Matthew J. Ellis
- Charles M. Perou
- Philip S. Bernard