Zhou Zhanping, Zhao Chenyang, Qiao Hui, Wang Ming, Guo Yuchen, Wang Qian, Zhang Rui, Wu Huaiyu, Dong Fajin, Qi Zhenhong, Li Jianchu, Tian Xinping, Zeng Xiaofeng, Jiang Yuxin, Xu Feng, Dai Qionghai, Yang Meng
School of Software, Tsinghua University, Beijing 100084, China.
Institute for Brain and Cognitive Sciences, Tsinghua University, Beijing 100084, China.
Patterns (N Y). 2022 Sep 29;3(10):100592. doi: 10.1016/j.patter.2022.100592. eCollection 2022 Oct 14.
Multimodal ultrasound has demonstrated its power in the clinical assessment of rheumatoid arthritis (RA). However, for radiologists, it requires strong experience. In this paper, we propose a rheumatoid arthritis knowledge guided (RATING) system that automatically scores the RA activity and generates interpretable features to assist radiologists' decision-making based on deep learning. RATING leverages the complementary advantages of multimodal ultrasound images and solves the limited training data problem with self-supervised pretraining. RATING outperforms all of the existing methods, achieving an accuracy of 86.1% on a prospective test dataset and 85.0% on an external test dataset. A reader study demonstrates that the RATING system improves the average accuracy of 10 radiologists from 41.4% to 64.0%. As an assistive tool, not only can RATING indicate the possible lesions and enhance the diagnostic performance with multimodal ultrasound but it can also enlighten the road to human-machine collaboration in healthcare.
多模态超声已在类风湿性关节炎(RA)的临床评估中展现出其强大作用。然而,对于放射科医生而言,这需要丰富的经验。在本文中,我们提出了一种类风湿性关节炎知识引导(RATING)系统,该系统基于深度学习自动对RA活动进行评分并生成可解释的特征,以协助放射科医生进行决策。RATING利用多模态超声图像的互补优势,并通过自监督预训练解决了训练数据有限的问题。RATING优于所有现有方法,在前瞻性测试数据集上的准确率达到86.1%,在外部测试数据集上的准确率达到85.0%。一项读者研究表明,RATING系统将10位放射科医生的平均准确率从41.4%提高到了64.0%。作为一种辅助工具,RATING不仅可以指出可能的病变并通过多模态超声提高诊断性能,还能为医疗保健领域的人机协作指明方向。