College of Medicine, Korea University, Seoul, Republic of Korea.
Asan Medical Center, College of Medicine, University of Ulsan, Seoul, Republic of Korea.
J Dent Res. 2020 Nov;99(12):1363-1367. doi: 10.1177/0022034520936950. Epub 2020 Jul 1.
The purpose of this study was to develop a diagnostic tool to automatically detect temporomandibular joint osteoarthritis (TMJOA) from cone beam computed tomography (CBCT) images with artificial intelligence. CBCT images of patients diagnosed with temporomandibular disorder were included for image preparation. Single-shot detection, an object detection model, was trained with 3,514 sagittal CBCT images of the temporomandibular joint that showed signs of osseous changes in the mandibular condyle. The region of interest (condylar head) was defined and classified into 2 categories-indeterminate for TMJOA and TMJOA-according to image analysis criteria for the diagnosis of temporomandibular disorder. The model was tested with 2 sets of 300 images in total. The average accuracy, precision, recall, and F1 score over the 2 test sets were 0.86, 0.85, 0.84, and 0.84, respectively. Automated detection of TMJOA from sagittal CBCT images is possible by using a deep neural networks model. It may be used to support clinicians with diagnosis and decision making for treatments of TMJOA.
本研究旨在开发一种基于人工智能的诊断工具,用于从锥形束 CT(CBCT)图像中自动检测颞下颌关节骨关节炎(TMJOA)。为图像准备,纳入了诊断为颞下颌紊乱的患者的 CBCT 图像。使用 3514 张矢状位 CBCT 图像对单次检测(一种目标检测模型)进行了训练,这些图像显示下颌骨髁突有骨改变的迹象。根据颞下颌紊乱诊断的图像分析标准,定义了感兴趣区域(髁突头),并将其分为 2 类——TMJOA 不确定和 TMJOA。该模型用总共 2 组 300 张图像进行了测试。在这 2 组测试中,平均准确率、精度、召回率和 F1 分数分别为 0.86、0.85、0.84 和 0.84。使用深度神经网络模型从矢状 CBCT 图像中自动检测 TMJOA 是可行的。它可用于支持临床医生进行 TMJOA 的诊断和治疗决策。