• 1. College of Electronic Information and Optical Engineering, Nankai University, Tianjin 300350, P. R. China;
  • 2. School and Hospital of Stomatology, Tianjin Medical University, Tianjin 300070, P. R. China;
  • 3. Tianjin Key Laboratory of Optoelectronic Sensor and Sensing Network Technology, Tianjin 300350, P. R. China;
LIU Zhiyang, Email: liuzhiyang@nankai.edu.cn
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Temporomandibular joint disorder (TMD) is a common oral and maxillofacial disease, which is difficult to detect due to its subtle early symptoms. In this study, a TMD intelligent diagnostic system implemented on edge computing devices was proposed, which can achieve rapid detection of TMD in clinical diagnosis and facilitate its early-stage clinical intervention. The proposed system first automatically segments the important components of the temporomandibular joint, followed by quantitative measurement of the joint gap area, and finally predicts the existence of TMD according to the measurements. In terms of segmentation, this study employs semi-supervised learning to achieve the accurate segmentation of temporomandibular joint, with an average Dice coefficient (DC) of 0.846. A 3D region extraction algorithm for the temporomandibular joint gap area is also developed, based on which an automatic TMD diagnosis model is proposed, with an accuracy of 83.87%. In summary, the intelligent TMD diagnosis system developed in this paper can be deployed at edge computing devices within a local area network, which is able to achieve rapid detecting and intelligent diagnosis of TMD with privacy guarantee.

Citation: ZHANG Minghao, YANG Dong, LI Xiaonan, ZHANG Qian, LIU Zhiyang. Research and implementation of intelligent diagnostic system for temporomandibular joint disorder. Journal of Biomedical Engineering, 2024, 41(5): 869-877. doi: 10.7507/1001-5515.202402002 Copy

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