ID | 115038 |
Title Alternative | Prediction Models of Breast Cancer Outcome
|
Author |
Shigemizu, Daichi
Tokyo Medical and Dental University|RIKEN Center for Integrative Medical Sciences|Japan Science and Technology Agency|National Center for Geriatrics and Gerontology
Iwase, Takuji
Japanese Foundation for Cancer Research
Yoshimoto, Masataka
Yoshimoto Breast Clinic
Suzuki, Yasuyo
Sapporo Medical University
Miya, Fuyuki
Tokyo Medical and Dental University|RIKEN Center for Integrative Medical Sciences
Boroevich, Keith A
RIKEN Center for Integrative Medical Sciences
Katagiri, Toyomasa
Tokushima University|The University of Tokyo
Tokushima University Educator and Researcher Directory
KAKEN Search Researchers
Zembutsu, Hitoshi
National Cancer Center Research Institute
Tsunoda, Tatsuhiko
Tokyo Medical and Dental University|RIKEN Center for Integrative Medical Sciences|Japan Science and Technology Agency
|
Keywords | Breast cancer
disease-free survival
MammaPrint genes
overall survival
prediction model
|
Content Type |
Journal Article
|
Description | The goal of this study is to establish a method for predicting overall survival (OS ) and disease‐free survival (DFS ) in breast cancer patients after surgical operation. The gene expression profiles of cancer tissues from the patients, who underwent complete surgical resection of breast cancer and were subsequently monitored for postoperative survival, were analyzed using cDNA microarrays. We detected seven and three probes/genes associated with the postoperative OS and DFS , respectively, from our discovery cohort data. By incorporating these genes associated with the postoperative survival into MammaPrint genes, often used to predict prognosis of patients with early‐stage breast cancer, we constructed postoperative OS and DFS prediction models from the discovery cohort data using a Cox proportional hazard model. The predictive ability of the models was evaluated in another independent cohort using Kaplan–Meier (KM ) curves and the area under the receiver operating characteristic curve (AUC ). The KM curves showed a statistically significant difference between the predicted high‐ and low‐risk groups in both OS (log‐rank trend test P = 0.0033) and DFS (log‐rank trend test P = 0.00030). The models also achieved high AUC scores of 0.71 in OS and of 0.60 in DFS . Furthermore, our models had improved KM curves when compared to the models using MammaPrint genes (OS : P = 0.0058, DFS : P = 0.00054). Similar results were observed when our model was tested in publicly available datasets. These observations indicate that there is still room for improvement in the current methods of predicting postoperative OS and DFS in breast cancer.
|
Journal Title |
Cancer Medicine
|
ISSN | 20457634
|
Publisher | John Wiley & Sons
|
Volume | 6
|
Issue | 7
|
Start Page | 1627
|
End Page | 1638
|
Published Date | 2017-05-24
|
Rights | © 2017 The Authors. Cancer Medicine published by John Wiley & Sons Ltd.
This is an open access article under the terms of the Creative Commons Attribution License(https://creativecommons.org/licenses/by/4.0/), which permits use, distribution and reproduction in any medium, provided the original work is properly cited. |
EDB ID | |
DOI (Published Version) | |
URL ( Publisher's Version ) | |
FullText File | |
language |
eng
|
TextVersion |
Publisher
|
departments |
Institute of Advanced Medical Sciences
|