Molecular subtyping of diffuse gliomas using magnetic resonance imaging: comparison and correlation between radiomics and deep learning

被引:36
|
作者
Li, Yiming [1 ]
Wei, Dong [2 ]
Liu, Xing [3 ]
Fan, Xing [3 ]
Wang, Kai [4 ]
Li, Shaowu [3 ]
Zhang, Zhong [1 ]
Ma, Kai [2 ]
Qian, Tianyi [5 ]
Jiang, Tao [1 ,3 ,6 ,7 ,8 ,9 ]
Zheng, Yefeng [2 ]
Wang, Yinyan [1 ]
机构
[1] Capital Med Univ, Dept Neurosurg, Beijing Tiantan Hosp, 119 South Fourth Ring West Rd, Beijing 100070, Peoples R China
[2] Tencent Jarvis Lab, 10000 Shennan Ave, Shenzhen 518057, Peoples R China
[3] Capital Med Univ, Beijing Neurosurg Inst, Beijing, Peoples R China
[4] Capital Med Univ, Dept Nucl Med, Beijing Tiantan Hosp, Beijing, Peoples R China
[5] Tencent HthCare Co Ltd, Shenzhen, Peoples R China
[6] Beijing Inst Brain Disorders, Ctr Brain Tumor, Beijing, Peoples R China
[7] China Natl Clin Res Ctr Neurol Dis, Beijing, Peoples R China
[8] Chinese Glioma Genome Atlas Network CGGA, Beijing, Peoples R China
[9] Asian Glioma Genome Atlas Network AGGA, Beijing, Peoples R China
基金
中国国家自然科学基金;
关键词
Glioma; Magnetic resonance imaging; Diagnosis; Machine learning; Deep learning; DIABETIC-RETINOPATHY; CLASSIFICATION; SYSTEM; VALIDATION; MANAGEMENT;
D O I
10.1007/s00330-021-08237-6
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objectives The molecular subtyping of diffuse gliomas is important. The aim of this study was to establish predictive models based on preoperative multiparametric MRI. Methods A total of 1016 diffuse glioma patients were retrospectively collected from Beijing Tiantan Hospital. Patients were randomly divided into the training (n = 780) and validation (n = 236) sets. According to the 2016 WHO classification, diffuse gliomas can be classified into four binary classification tasks (tasks I-IV). Predictive models based on radiomics and deep convolutional neural network (DCNN) were developed respectively, and their performances were compared with receiver operating characteristic (ROC) curves. Additionally, the radiomics and DCNN features were visualized and compared with the t-distributed stochastic neighbor embedding technique and Spearman's correlation test. Results In the training set, areas under the curves (AUCs) of the DCNN models (ranging from 0.99 to 1.00) outperformed the radiomics models in all tasks, and the accuracies of the DCNN models (ranging from 0.90 to 0.94) outperformed the radiomics models in tasks I, II, and III. In the independent validation set, the accuracies of the DCNN models outperformed the radiomics models in all tasks (0.74-0.83), and the AUCs of the DCNN models (0.85-0.89) outperformed the radiomics models in tasks I, II, and III. DCNN features demonstrated more superior discriminative capability than the radiomics features in feature visualization analysis, and their general correlations were weak. Conclusions Both the radiomics and DCNN models could preoperatively predict the molecular subtypes of diffuse gliomas, and the latter performed better in most circumstances.
引用
收藏
页码:747 / 758
页数:12
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