Back to Search Start Over

Prognostic Value of a BCSC-associated MicroRNA Signature in Hormone Receptor-Positive HER2-Negative Breast Cancer

Authors :
Xinhua Xie
Fengxi Su
Qiang Liu
Kai Chen
Wan Yee Lau
Zhihua Li
Mu Sheng Zeng
Na You
Xueqin Wang
Shi-Mei Zhuang
Dong Yin
Weige Tan
Shan Zhu
Gehao Liang
Qian Li
Erwei Song
Yunjie Zeng
Chang Gong
Nengtai Ouyang
Source :
EBioMedicine, Vol 11, Iss C, Pp 199-209 (2016), EBioMedicine
Publisher :
The Authors. Published by Elsevier B.V.

Abstract

Highlights • Biology-driven strategy can be used in development of prognostic model. • The BCSC-associated miRNA classifier can predict prognosis for HR + HER2 − breast cancer. • The BCSC-associated miRNA classifier outperforms IHC4 scoring and 21-gene RS. • Chemotherapy can improve DRFS in patients predicted as high-risk. Breast cancer patients with high proportion of cancer stem cells (BCSCs) have poor clinical outcomes. MiRNAs regulate key features of BCSCs as oncogenes or tumor suppressors. Although hormone receptor (HR)-positive, HER2-negative breast cancers are the most common subtype, current methods are inadequate to predict its clinical outcome. In this multicenter study, we identified and validated a 10 BCSC-associated-miRNA classifier that can predict survival for HR + HER2 − patients. Retrospective analysis showed that this classifier outperformed IHC4 scoring and 21-gene Recurrence Score (RS), and chemotherapy could improve survival in high-risk patients determined by this classifier. This model may facilitate personalized clinical decision for HR + HER2 − individuals.<br />Purpose Breast cancer patients with high proportion of cancer stem cells (BCSCs) have unfavorable clinical outcomes. MicroRNAs (miRNAs) regulate key features of BCSCs. We hypothesized that a biology-driven model based on BCSC-associated miRNAs could predict prognosis for the most common subtype, hormone receptor (HR)-positive, HER2-negative breast cancer patients. Patients and Methods After screening candidate miRNAs based on literature review and a pilot study, we built a miRNA-based classifier using LASSO Cox regression method in the training group (n = 202) and validated its prognostic accuracy in an internal (n = 101) and two external validation groups (n = 308). Results In this multicenter study, a 10-miRNA classifier incorporating miR-21, miR-30c, miR-181a, miR-181c, miR-125b, miR-7, miR-200a, miR-135b, miR-22 and miR-200c was developed to predict distant relapse free survival (DRFS). With this classifier, HR + HER2 − patients were scored and classified into high-risk and low-risk disease recurrence, which was significantly associated with 5-year DRFS of the patients. Moreover, this classifier outperformed traditional clinicopathological risk factors, IHC4 scoring and 21-gene Recurrence Score (RS). The patients with high-risk recurrence determined by this classifier benefit more from chemotherapy. Conclusions Our 10-miRNA-based classifier provides a reliable prognostic model for disease recurrence in HR + HER2 − breast cancer patients. This model may facilitate personalized therapy-decision making for HR + HER2 − individuals.

Subjects

Subjects :
0301 basic medicine
Oncology
IHC, Immunohistochemistry
Pathology
HR, Hormone receptor
medicine.medical_treatment
lcsh:Medicine
Estrogen receptor
Kaplan-Meier Estimate
RS, Recurrence score
0302 clinical medicine
EMT, Epithelial-mesenchymal transition
Breast-conserving surgery
Breast cancer stem cell
Neoplasm Metastasis
skin and connective tissue diseases
BCS, Breast conserving surgery
BCSCs, Breast cancer stem cells
TAM → AI, Tamoxifen followed by aromatase inhibitor
lcsh:R5-920
AUC, Area under curve
General Medicine
Middle Aged
PR, Progesterone receptor
Prognosis
Combined Modality Therapy
ER, Estrogen receptor
Gene Expression Regulation, Neoplastic
Treatment Outcome
Receptors, Estrogen
Hormone receptor
DRFS, Distant relapse free survival
030220 oncology & carcinogenesis
HER2, Human epidermal growth factor receptor 2
Neoplastic Stem Cells
Receptors, Progesterone
lcsh:Medicine (General)
Biology-driven approach
LASSO, Least Absolute Shrinkage and Selection Operator
Research Paper
Adult
medicine.medical_specialty
ROC, Receiver operating characteristic
Breast Neoplasms
IRB, Institutional review board
Classifier
General Biochemistry, Genetics and Molecular Biology
03 medical and health sciences
Breast cancer
Cancer stem cell
Internal medicine
microRNA
Progesterone receptor
Biomarkers, Tumor
medicine
Humans
FFPE, Formalin-fixed paraffin-embedded
Epithelial–mesenchymal transition
Neoplasm Staging
CSCs, Cancer stem cells
miRNA
business.industry
Gene Expression Profiling
lcsh:R
Genes, erbB-2
medicine.disease
miRNAs, MicroRNAs
MicroRNAs
030104 developmental biology
ROC Curve
ET, Endocrine therapy
Neoplasm Grading
Neoplasm Recurrence, Local
Transcriptome
business
SYSMH, Sun Yat-sen Memorial Hospital

Details

Language :
English
ISSN :
23523964
Database :
OpenAIRE
Journal :
EBioMedicine
Accession number :
edsair.doi.dedup.....eee729cc1bcd15ec642bb2deb02f2984
Full Text :
https://doi.org/10.1016/j.ebiom.2016.08.016