Yuksel Ibrahim Burak, Boudesh Amin, Ghanbarzadehchaleshtori Masoud, Ozsoy Sumeyye Celik, Bahrilli Serkan, Mohammadi Reza, Altindag Ali
Faculty of Dentistry, Department of Oral and Maxillofacial Radiology, Necmettin Erbakan University, Konya, Turkey.
Concordia Institute for Information Systems Engineering, Concordia University, Montreal, QC, Canada.
Sci Rep. 2025 Aug 11;15(1):29407. doi: 10.1038/s41598-025-15451-5.
Idiopathic osteosclerosis (IOS) and condensing osteitis (CO) represent radiopaque lesions often detected incidentally within the jaws, posing substantial diagnostic challenges due to their overlapping radiographic characteristics. The objective of this study was to assess the diagnostic efficacy of YOLOv8 and YOLOv11 deep learning algorithms in the identification of IOS and CO lesions on panoramic radiographs. A comprehensive collection of 1,000 panoramic images was retrospectively gathered and meticulously annotated utilizing a bounding box approach by two proficient oral and maxillofacial radiologists. All images were standardized to a resolution of 640 × 640 pixels and segregated into training (70%), validation (15%), and testing (15%) subsets. The performance of the models was evaluated based on metrics including accuracy, sensitivity, precision, F1 score, and the area under the receiver operating characteristic curve (AUC). YOLOv11 achieved notable precision scores of 98.8% for IOS and 97.1% for CO, alongside F1 scores of 96.8% and 95.6%, respectively. Conversely, YOLOv8 produced precision scores of 96.6% for IOS and 91.4% for CO, with F1 scores of 94% and 90%. These findings illustrate that AI-enhanced deep learning models possess the capability to accurately identify IOS and CO lesions, thereby presenting opportunities to improve diagnostic consistency, avert unnecessary invasive procedures, and facilitate more effective treatment planning within clinical practice.
特发性骨硬化症(IOS)和致密性骨炎(CO)表现为颌骨内常偶然发现的不透射线病变,因其重叠的放射学特征而带来重大诊断挑战。本研究的目的是评估YOLOv8和YOLOv11深度学习算法在全景X线片上识别IOS和CO病变的诊断效能。回顾性收集了1000张全景图像,并由两名熟练的口腔颌面放射科医生采用边界框方法进行了细致标注。所有图像均标准化为640×640像素的分辨率,并分为训练集(70%)、验证集(15%)和测试集(15%)。基于准确率、灵敏度、精确率、F1分数以及受试者工作特征曲线下面积(AUC)等指标对模型性能进行评估。YOLOv11在IOS和CO方面分别取得了98.8%和97.1%的显著精确率分数,F1分数分别为96.8%和95.6%。相反,YOLOv8在IOS和CO方面的精确率分数分别为96.6%和91.4%,F1分数分别为94%和90%。这些发现表明,人工智能增强的深度学习模型有能力准确识别IOS和CO病变,从而为提高临床实践中的诊断一致性、避免不必要的侵入性操作以及促进更有效的治疗计划提供了机会。