Wang Huiquan, Liu Chunli, Zhao Zhe, Zhang Chao, Wang Xin, Li Huiyang, Wu Haixiao, Liu Xiaofeng, Li Chunxiang, Qi Lisha, Ma Wenjuan
School of Electrical and Electronic Engineering, TianGong University, Tianjin, China.
Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center for Cancer, Key Laboratory of Cancer Prevention and Therapy, Tianjin's Clinical Research Center for Cancer, Tianjin, China.
Front Oncol. 2021 Dec 20;11:770683. doi: 10.3389/fonc.2021.770683. eCollection 2021.
This study aimed to evaluate the performance of the deep convolutional neural network (DCNN) to discriminate between benign, borderline, and malignant serous ovarian tumors (SOTs) on ultrasound(US) images.
This retrospective study included 279 pathology-confirmed SOTs US images from 265 patients from March 2013 to December 2016. Two- and three-class classification task based on US images were proposed to classify benign, borderline, and malignant SOTs using a DCNN. The 2-class classification task was divided into two subtasks: benign vs. borderline & malignant (task A), borderline vs. malignant (task B). Five DCNN architectures, namely VGG16, GoogLeNet, ResNet34, MobileNet, and DenseNet, were trained and model performance before and after transfer learning was tested. Model performance was analyzed using accuracy, sensitivity, specificity, and the area under the receiver operating characteristic curve (AUC).
The best overall performance was for the ResNet34 model, which also achieved the better performance after transfer learning. When classifying benign and non-benign tumors, the AUC was 0.96, the sensitivity was 0.91, and the specificity was 0.91. When predicting malignancy and borderline tumors, the AUC was 0.91, the sensitivity was 0.98, and the specificity was 0.74. The model had an overall accuracy of 0.75 for in directly classifying the three categories of benign, malignant and borderline SOTs, and a sensitivity of 0.89 for malignant, which was better than the overall diagnostic accuracy of 0.67 and sensitivity of 0.75 for malignant of the senior ultrasonographer.
DCNN model analysis of US images can provide complementary clinical diagnostic information and is thus a promising technique for effective differentiation of benign, borderline, and malignant SOTs.
本研究旨在评估深度卷积神经网络(DCNN)在超声(US)图像上鉴别良性、交界性和恶性浆液性卵巢肿瘤(SOT)的性能。
这项回顾性研究纳入了2013年3月至2016年12月期间265例患者的279幅经病理证实的SOT的US图像。提出了基于US图像的二分类和三分类任务,使用DCNN对良性、交界性和恶性SOT进行分类。二分类任务分为两个子任务:良性vs交界性和恶性(任务A),交界性vs恶性(任务B)。训练了五种DCNN架构,即VGG16、GoogLeNet、ResNet34、MobileNet和DenseNet,并测试了迁移学习前后的模型性能。使用准确率、敏感性、特异性和受试者操作特征曲线下面积(AUC)分析模型性能。
总体性能最佳的是ResNet34模型,该模型在迁移学习后也取得了较好的性能。在对良性和非良性肿瘤进行分类时,AUC为0.96,敏感性为0.91,特异性为0.91。在预测恶性和交界性肿瘤时,AUC为0.91,敏感性为0.98,特异性为0.74。该模型对良性、恶性和交界性SOT三类进行直接分类的总体准确率为0.75,对恶性的敏感性为0.89,优于高级超声医师0.67的总体诊断准确率和0.75的恶性敏感性。
对US图像进行DCNN模型分析可提供补充性临床诊断信息,因此是有效鉴别良性、交界性和恶性SOT的一项有前景的技术。