甲状腺结节
计算机科学
结核(地质)
人工智能
过度诊断
放射科
深度学习
医学
甲状腺
超声波
模式识别(心理学)
机器学习
生物
内科学
古生物学
作者
Jiawei Sun,Bobo Wu,Tong Zhao,Liugang Gao,Kai Xie,Tao Lin,Jianfeng Sui,Xiaoqin Li,Xiaojin Wu,Xinye Ni
标识
DOI:10.1016/j.compbiomed.2022.106444
摘要
The lack of representative features between benign nodules, especially level 3 of Thyroid Imaging Reporting and Data System (TI-RADS), and malignant nodules limits diagnostic accuracy, leading to inconsistent interpretation, overdiagnosis, and unnecessary biopsies. We propose a Vision-Transformer-based (ViT) thyroid nodule classification model using contrast learning, called TC-ViT, to improve accuracy of diagnosis and specificity of biopsy recommendations. ViT can explore the global features of thyroid nodules well. Nodule images are used as ROI to enhance the local features of the ViT. Contrast learning can minimize the representation distance between nodules of the same category, enhance the representation consistency of global and local features, and achieve accurate diagnosis of TI-RADS 3 or malignant nodules. The test results achieve an accuracy of 86.9%. The evaluation metrics show that the network outperforms other classical deep learning-based networks in terms of classification performance. TC-ViT can achieve automatic classification of TI-RADS 3 and malignant nodules on ultrasound images. It can also be used as a key step in computer-aided diagnosis for comprehensive analysis and accurate diagnosis. The code will be available at https://github.com/Jiawei217/TC-ViT.
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