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The molecular portraits of breast tumors are conserved across microarray platforms

Authors :
Perreard Laurent
Palazzo Juan P
Dreher Donna
Orrico Alejandra
Tretiakova Maria
Nanda Rita
Liu Yudong
Wu Junyuan
Sawyer Lynda R
Ewend Matthew G
Parker Joel
Nobel Andrew
Dressler Lynn
Reynolds Evangeline
Carey Lisa A
Livasy Chad
Qaqish Bahjat F
He Xiaping
Marron JS
Oh Daniel S
Fan Cheng
Hu Zhiyuan
Nelson Edward
Mone Mary
Hansen Heidi
Mullins Michael
Quackenbush John F
Ellis Matthew J
Olopade Olufunmilayo I
Bernard Philip S
Perou Charles M
Source :
BMC Genomics, Vol 7, Iss 1, p 96 (2006)
Publication Year :
2006
Publisher :
BMC, 2006.

Abstract

Abstract Background Validation of a novel gene expression signature in independent data sets is a critical step in the development of a clinically useful test for cancer patient risk-stratification. However, validation is often unconvincing because the size of the test set is typically small. To overcome this problem we used publicly available breast cancer gene expression data sets and a novel approach to data fusion, in order to validate a new breast tumor intrinsic list. Results A 105-tumor training set containing 26 sample pairs was used to derive a new breast tumor intrinsic gene list. This intrinsic list contained 1300 genes and a proliferation signature that was not present in previous breast intrinsic gene sets. We tested this list as a survival predictor on a data set of 311 tumors compiled from three independent microarray studies that were fused into a single data set using Distance Weighted Discrimination. When the new intrinsic gene set was used to hierarchically cluster this combined test set, tumors were grouped into LumA, LumB, Basal-like, HER2+/ER-, and Normal Breast-like tumor subtypes that we demonstrated in previous datasets. These subtypes were associated with significant differences in Relapse-Free and Overall Survival. Multivariate Cox analysis of the combined test set showed that the intrinsic subtype classifications added significant prognostic information that was independent of standard clinical predictors. From the combined test set, we developed an objective and unchanging classifier based upon five intrinsic subtype mean expression profiles (i.e. centroids), which is designed for single sample predictions (SSP). The SSP approach was applied to two additional independent data sets and consistently predicted survival in both systemically treated and untreated patient groups. Conclusion This study validates the "breast tumor intrinsic" subtype classification as an objective means of tumor classification that should be translated into a clinical assay for further retrospective and prospective validation. In addition, our method of combining existing data sets can be used to robustly validate the potential clinical value of any new gene expression profile.

Details

Language :
English
ISSN :
14712164
Volume :
7
Issue :
1
Database :
Directory of Open Access Journals
Journal :
BMC Genomics
Publication Type :
Academic Journal
Accession number :
edsdoj.8fa0c56fa604033aa5ee4d225f1d530
Document Type :
article
Full Text :
https://doi.org/10.1186/1471-2164-7-96