Multiparametric MRI-based radiomics analysis for the prediction of breast tumor regression patterns after neoadjuvant chemotherapy

Xiaosheng Zhuang(Shantou University), Chi Chen(Chinese Academy of Sciences), Zhenyu Liu(Chinese Academy of Sciences), Liulu Zhang(Guangdong Academy of Medical Sciences), Xuezhi Zhou(Xidian University), Minyi Cheng(Guangdong Academy of Medical Sciences), Fei Ji(Guangdong Academy of Medical Sciences), Teng Zhu(Guangdong Academy of Medical Sciences), Chuqian Lei(Guangdong Academy of Medical Sciences), Junsheng Zhang(Shantou University), Jingying Jiang(Beihang University), Jie Tian(Xidian University), Kun Wang(Guangdong Academy of Medical Sciences)
Translational Oncology
August 3, 2020
Cited by 44Open Access
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Abstract

OBJECTIVES: Breast cancers show different regression patterns after neoadjuvant chemotherapy. Certain regression patterns are associated with more reliable margins in breast-conserving surgery. Our study aims to establish a nomogram based on radiomic features and clinicopathological factors to predict regression patterns in breast cancer patients. METHODS: We retrospectively reviewed 144 breast cancer patients who received neoadjuvant chemotherapy and underwent definitive surgery in our center from January 2016 to December 2019. Tumor regression patterns were categorized as type 1 (concentric regression + pCR) and type 2 (multifocal residues + SD + PD) based on pathological results. We extracted 1158 multidimensional features from 2 sequences of MRI images. After feature selection, machine learning was applied to construct a radiomic signature. Clinical characteristics were selected by backward stepwise selection. The combined prediction model was built based on both the radiomic signature and clinical factors. The predictive performance of the combined prediction model was evaluated. RESULTS: Two radiomic features were selected for constructing the radiomic signature. Combined with two significant clinical characteristics, the combined prediction model showed excellent prediction performance, with an area under the receiver operating characteristic curve of 0.902 (95% confidence interval 0.8343-0.9701) in the primary cohort and 0.826 (95% confidence interval 0.6774-0.9753) in the validation cohort. CONCLUSIONS: Our study established a unique model combining a radiomic signature and clinicopathological factors to predict tumor regression patterns prior to the initiation of NAC. The early prediction of type 2 regression offers the opportunity to modify preoperative treatments or aids in determining surgical options.


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