Bo Linlin, Zhang Zijian, Jiang Zekun, Yang Chao, Huang Pu, Chen Tingyin, Wang Yifan, Yu Gang, Tan Xiao, Cheng Quan, Li Dengwang, Liu Zhixiong
Shandong Key Laboratory of Medical Physics and Image Processing, Shandong Institute of Industrial Technology for Health Sciences and Precision Medicine, School of Physics and Electronics, Shandong Normal University, Jinan, China.
Department of Oncology, Xiangya Hospital, Central South University, Changsha, China.
Front Med (Lausanne). 2021 Nov 12;8:748144. doi: 10.3389/fmed.2021.748144. eCollection 2021.
To develop and validate the model for distinguishing brain abscess from cystic glioma by combining deep transfer learning (DTL) features and hand-crafted radiomics (HCR) features in conventional T1-weighted imaging (T1WI) and T2-weighted imaging (T2WI). This single-center retrospective analysis involved 188 patients with pathologically proven brain abscess (102) or cystic glioma (86). One thousand DTL and 105 HCR features were extracted from the T1WI and T2WI of the patients. Three feature selection methods and four classifiers, such as k-nearest neighbors (KNN), random forest classifier (RFC), logistic regression (LR), and support vector machine (SVM), for distinguishing brain abscess from cystic glioma were compared. The best feature combination and classifier were chosen according to the quantitative metrics including area under the curve (AUC), Youden Index, and accuracy. In most cases, deep learning-based radiomics (DLR) features, i.e., DTL features combined with HCR features, contributed to a higher accuracy than HCR and DTL features alone for distinguishing brain abscesses from cystic gliomas. The AUC values of the model established, based on the DLR features in T2WI, were 0.86 (95% CI: 0.81, 0.91) in the training cohort and 0.85 (95% CI: 0.75, 0.95) in the test cohort, respectively. The model established with the DLR features can distinguish brain abscess from cystic glioma efficiently, providing a useful, inexpensive, convenient, and non-invasive method for differential diagnosis. This is the first time that conventional MRI radiomics is applied to identify these diseases. Also, the combination of HCR and DTL features can lead to get impressive performance.
通过结合传统T1加权成像(T1WI)和T2加权成像(T2WI)中的深度迁移学习(DTL)特征和手工制作的放射组学(HCR)特征,开发并验证用于区分脑脓肿和囊性胶质瘤的模型。这项单中心回顾性分析纳入了188例经病理证实为脑脓肿(102例)或囊性胶质瘤(86例)的患者。从患者的T1WI和T2WI中提取了1000个DTL特征和105个HCR特征。比较了三种特征选择方法和四种分类器,如k近邻(KNN)、随机森林分类器(RFC)、逻辑回归(LR)和支持向量机(SVM),以区分脑脓肿和囊性胶质瘤。根据曲线下面积(AUC)、约登指数和准确率等定量指标选择最佳特征组合和分类器。在大多数情况下,基于深度学习的放射组学(DLR)特征,即DTL特征与HCR特征相结合,在区分脑脓肿和囊性胶质瘤方面比单独的HCR和DTL特征具有更高的准确率。基于T2WI中DLR特征建立的模型在训练队列中的AUC值为0.86(95%CI:0.81,0.91),在测试队列中的AUC值为0.85(95%CI:0.75,0.95)。基于DLR特征建立的模型能够有效区分脑脓肿和囊性胶质瘤,为鉴别诊断提供了一种有用、廉价、便捷且非侵入性的方法。这是首次将传统MRI放射组学应用于识别这些疾病。此外,HCR和DTL特征的结合可带来令人印象深刻的性能。