Application of MRI Radiomics-Based Machine Learning Model to Improve Contralateral BI-RADS 4 Lesion Assessment

被引:18
|
作者
Hao, Wen [1 ,2 ]
Gong, Jing [1 ]
Wang, Shengping [1 ]
Zhu, Hui [1 ]
Zhao, Bin [2 ]
Peng, Weijun [1 ]
机构
[1] Fudan Univ, Dept Radiol, Shanghai Canc Ctr, Dept Oncol,Shanghai Med Coll, Shanghai, Peoples R China
[2] Shandong Univ, Shandong Med Imaging Res Inst, Jinan, Peoples R China
来源
FRONTIERS IN ONCOLOGY | 2020年 / 10卷
基金
中国国家自然科学基金;
关键词
MRI; contralateral breast cancer; radiomics; machine learning; Breast Imaging Reporting and Data System category 4; BREAST-CANCER; NEOADJUVANT CHEMOTHERAPY; PATHOLOGICAL FINDINGS; MALIGNANCY; FEATURES; RISK;
D O I
10.3389/fonc.2020.531476
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Objective This study aimed to explore the potential of magnetic resonance imaging (MRI) radiomics-based machine learning to improve assessment and diagnosis of contralateral Breast Imaging Reporting and Data System (BI-RADS) category 4 lesions in women with primary breast cancer. Materials and Methods A total of 178 contralateral BI-RADS 4 lesions (97 malignant and 81 benign) collected from 178 breast cancer patients were involved in our retrospective dataset. T1 + C and T2 weighted images were used for radiomics analysis. These lesions were randomly assigned to the training (n = 124) dataset and an independent testing dataset (n = 54). A three-dimensional semi-automatic segmentation method was performed to segment lesions depicted on T2 and T1 + C images, 1,046 radiomic features were extracted from each segmented region, and a least absolute shrinkage and operator feature selection method reduced feature dimensionality. Three support vector machine (SVM) classifiers were trained to build classification models based on the T2, T1 + C, and fusion image features, respectively. The diagnostic performance of each model was evaluated and tested using the independent testing dataset. The area under the receiver operating characteristic curve (AUC) was used as a performance metric. Results The T1+C image feature-based model and T2 image feature-based model yielded AUCs of 0.71 +/- 0.07 and 0.69 +/- 0.07 respectively, and the difference between them was not significant (P > 0.05). After fusing T1 + C and T2 imaging features, the proposed model's AUC significantly improved to 0.77 +/- 0.06 (P < 0.001). The fusion model yielded an accuracy of 74.1%, which was higher than that of the T1 + C (66.7%) and T2 (59.3%) image feature-based models. Conclusion The MRI radiomics-based machine learning model is a feasible method to assess contralateral BI-RADS 4 lesions. T2 and T1 + C image features provide complementary information in discriminating benign and malignant contralateral BI-RADS 4 lesions.
引用
收藏
页数:8
相关论文
共 50 条
  • [31] MRI radiomics-based machine learning for classification of deep-seated lipoma and atypical lipomatous tumor of the extremities
    Gitto, Salvatore
    Interlenghi, Matteo
    Cuocolo, Renato
    Salvatore, Christian
    Giannetta, Vincenzo
    Badalyan, Julietta
    Gallazzi, Enrico
    Spinelli, Maria Silvia
    Gallazzi, Mauro
    Serpi, Francesca
    Messina, Carmelo
    Albano, Domenico
    Annovazzi, Alessio
    Anelli, Vincenzo
    Baldi, Jacopo
    Aliprandi, Alberto
    Armiraglio, Elisabetta
    Parafioriti, Antonina
    Daolio, Primo Andrea
    Luzzati, Alessandro
    Biagini, Roberto
    Castiglioni, Isabella
    Sconfienza, Luca Maria
    RADIOLOGIA MEDICA, 2023, 128 (08): : 989 - 998
  • [32] MRI radiomics-based machine learning for classification of deep-seated lipoma and atypical lipomatous tumor of the extremities
    Salvatore Gitto
    Matteo Interlenghi
    Renato Cuocolo
    Christian Salvatore
    Vincenzo Giannetta
    Julietta Badalyan
    Enrico Gallazzi
    Maria Silvia Spinelli
    Mauro Gallazzi
    Francesca Serpi
    Carmelo Messina
    Domenico Albano
    Alessio Annovazzi
    Vincenzo Anelli
    Jacopo Baldi
    Alberto Aliprandi
    Elisabetta Armiraglio
    Antonina Parafioriti
    Primo Andrea Daolio
    Alessandro Luzzati
    Roberto Biagini
    Isabella Castiglioni
    Luca Maria Sconfienza
    La radiologia medica, 2023, 128 : 989 - 998
  • [33] BI-RADS Reading of Non-Mass Lesions on DCE-MRI and Differential Diagnosis Performed by Radiomics and Deep Learning
    Zhou, Jiejie
    Liu, Yan-Lin
    Zhang, Yang
    Chen, Jeon-Hor
    Combs, Freddie J.
    Parajuli, Ritesh
    Mehta, Rita S.
    Liu, Huiru
    Chen, Zhongwei
    Zhao, Youfan
    Pan, Zhifang
    Wang, Meihao
    Yu, Risheng
    Su, Min-Ying
    FRONTIERS IN ONCOLOGY, 2021, 11
  • [34] Classification of pulmonary lesion based on multiparametric MRI: utility of radiomics and comparison of machine learning methods
    Xinhui Wang
    Qi Wan
    Houjin Chen
    Yanfeng Li
    Xinchun Li
    European Radiology, 2020, 30 : 4595 - 4605
  • [35] CT radiomics-based machine learning model for differentiating between enchondroma and low-grade chondrosarcoma
    Yildirim, Mustafa
    Yildirim, Hanefi
    MEDICINE, 2024, 103 (33) : e39311
  • [36] Multiparameter MRI Model With DCE-MRI, DWI, and Synthetic MRI Improves the Diagnostic Performance of BI-RADS 4 Lesions
    Sun, Shi Yun
    Ding, Yingying
    Li, Zhuolin
    Nie, Lisha
    Liao, Chengde
    Liu, Yifan
    Zhang, Jia
    Zhang, Dongxue
    FRONTIERS IN ONCOLOGY, 2021, 11
  • [37] High-spatial-resolution MRI of non-masslike breast lesions: Interpretation model based on BI-RADS MRI descriptors
    Tozaki, Mitsuhiro
    Fukuda, Kunihiko
    AMERICAN JOURNAL OF ROENTGENOLOGY, 2006, 187 (02) : 330 - 337
  • [38] Identification of patients with internet gaming disorder via a radiomics-based machine learning model of subcortical structures in high-resolution T1-weighted MRI
    Wang, Li
    Zhou, Li
    Liu, Shengdan
    Zheng, Yurong
    Liu, Qianhan
    Yu, Minglin
    Lu, Xiaofei
    Lei, Wei
    Chen, Guangxiang
    PROGRESS IN NEURO-PSYCHOPHARMACOLOGY & BIOLOGICAL PSYCHIATRY, 2024, 133
  • [39] Automatic Breast Volume Scanner and B-Ultrasound-Based Radiomics Nomogram for Clinician Management of BI-RADS 4A Lesions
    Ma, Qianqing
    Wang, Junli
    Xu, Daojing
    Zhu, Chao
    Qin, Jing
    Wu, Yimin
    Gao, Yankun
    Zhang, Chaoxue
    ACADEMIC RADIOLOGY, 2023, 30 (08) : 1628 - 1637
  • [40] Radiomics-Based Machine Learning Model for Diagnosis of Acute Pancreatitis Using Computed Tomography
    Bette, Stefanie
    Canalini, Luca
    Feitelson, Laura-Marie
    Woznicki, Piotr
    Risch, Franka
    Huber, Adrian
    Decker, Josua A.
    Tehlan, Kartikay
    Becker, Judith
    Wollny, Claudia
    Scheurig-Muenkler, Christian
    Wendler, Thomas
    Schwarz, Florian
    Kroencke, Thomas
    DIAGNOSTICS, 2024, 14 (07)