Keser Gaye, Yülek Hakan, Öner Talmaç Ayşe Gül, Bayrakdar İbrahim Şevki, Namdar Pekiner Filiz, Çelik Özer
Department of Oral Diagnosis and Radiology, Faculty of Dentistry, Marmara University, Başıbüyük Sağlık Yerleşkesi Başıbüyük Yolu 9/3, 34854, Maltepe, Istanbul, Turkey.
Private Clinic, İstanbul, Turkey.
J Imaging Inform Med. 2025 May 6. doi: 10.1007/s10278-025-01527-1.
Deep learning techniques have demonstrated potential in various fields, including segmentation, and have recently been applied to medical image processing. This study aims to develop and evaluate computer-based diagnostic software designed to assess the segmentation of the mandibular condyle in ultrasound images. A total of 668 retrospective ultrasound images of anonymous adult mandibular condyles were analyzed. The CranioCatch labeling program (CranioCatch, Eskişehir, Turkey) was utilized to annotate the mandibular condyle using a polygonal labeling method. These annotations were subsequently reviewed and validated by experts in oral and maxillofacial radiology. In this study, all test images were detected and segmented using the YOLOv8 deep learning artificial intelligence (AI) model. When evaluating the model's performance in image estimation, it achieved an F1 score of 0.93, a sensitivity of 0.90, and a precision of 0.96. The automatic segmentation of the mandibular condyle from ultrasound images presents a promising application of artificial intelligence. This approach can help surgeons, radiologists, and other specialists save time in the diagnostic process.
深度学习技术已在包括分割在内的各个领域展现出潜力,并且最近已应用于医学图像处理。本研究旨在开发和评估用于评估超声图像中下颌髁突分割的计算机辅助诊断软件。共分析了668例匿名成人下颌髁突的回顾性超声图像。使用CranioCatch标记程序(CranioCatch,土耳其埃斯基谢希尔)采用多边形标记方法对下颌髁突进行标注。随后,这些标注由口腔颌面放射学专家进行审查和验证。在本研究中,所有测试图像均使用YOLOv8深度学习人工智能(AI)模型进行检测和分割。在评估该模型在图像估计中的性能时,其F1分数为0.93,灵敏度为0.90,精确度为0.96。从超声图像中自动分割下颌髁突展现了人工智能的一个有前景的应用。这种方法可以帮助外科医生、放射科医生和其他专家在诊断过程中节省时间。