Machine learning radiomics of magnetic resonance imaging predicts recurrence-free survival after surgery and correlation of LncRNAs in patients with breast cancer: a multicenter cohort study
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Published:2023-11-01
Issue:1
Volume:25
Page:
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ISSN:1465-542X
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Container-title:Breast Cancer Research
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language:en
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Short-container-title:Breast Cancer Res
Author:
Yu Yunfang,Ren Wei,He Zifan,Chen Yongjian,Tan Yujie,Mao Luhui,Ouyang Wenhao,Lu Nian,Ouyang Jie,Chen Kai,Li Chenchen,Zhang Rong,Wu Zhuo,Su Fengxi,Wang Zehua,Hu Qiugen,Xie Chuanmiao,Yao Herui
Abstract
Abstract
Background
Several studies have indicated that magnetic resonance imaging radiomics can predict survival in patients with breast cancer, but the potential biological underpinning remains indistinct. Herein, we aim to develop an interpretable deep-learning-based network for classifying recurrence risk and revealing the potential biological mechanisms.
Methods
In this multicenter study, 1113 nonmetastatic invasive breast cancer patients were included, and were divided into the training cohort (n = 698), the validation cohort (n = 171), and the testing cohort (n = 244). The Radiomic DeepSurv Net (RDeepNet) model was constructed using the Cox proportional hazards deep neural network DeepSurv for predicting individual recurrence risk. RNA-sequencing was performed to explore the association between radiomics and tumor microenvironment. Correlation and variance analyses were conducted to examine changes of radiomics among patients with different therapeutic responses and after neoadjuvant chemotherapy. The association and quantitative relation of radiomics and epigenetic molecular characteristics were further analyzed to reveal the mechanisms of radiomics.
Results
The RDeepNet model showed a significant association with recurrence-free survival (RFS) (HR 0.03, 95% CI 0.02–0.06, P < 0.001) and achieved AUCs of 0.98, 0.94, and 0.92 for 1-, 2-, and 3-year RFS, respectively. In the validation and testing cohorts, the RDeepNet model could also clarify patients into high- and low-risk groups, and demonstrated AUCs of 0.91 and 0.94 for 3-year RFS, respectively. Radiomic features displayed differential expression between the two risk groups. Furthermore, the generalizability of RDeepNet model was confirmed across different molecular subtypes and patient populations with different therapy regimens (All P < 0.001). The study also identified variations in radiomic features among patients with diverse therapeutic responses and after neoadjuvant chemotherapy. Importantly, a significant correlation between radiomics and long non-coding RNAs (lncRNAs) was discovered. A key lncRNA was found to be noninvasively quantified by a deep learning-based radiomics prediction model with AUCs of 0.79 in the training cohort and 0.77 in the testing cohort.
Conclusions
This study demonstrates that machine learning radiomics of MRI can effectively predict RFS after surgery in patients with breast cancer, and highlights the feasibility of non-invasive quantification of lncRNAs using radiomics, which indicates the potential of radiomics in guiding treatment decisions.
Funder
National Natural Science Foundation of China Guangdong Basic and Applied Basic Research Foundation Guangzhou Science and Technology Project Sun Yat-Sen University Clinical Research 5010 Program Sun Yat-Sen Clinical Research Cultivating Program Guangdong Medical Science and Technology Program Tencent Charity Foundation Scientific Research Launch Project of Sun Yat-Sen Memorial Hospital
Publisher
Springer Science and Business Media LLC
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