Akyuz Mehmet, Besnili Seyda, Magat Guldane, Ceylan Murat
Oral and Maxillofacial Radiologist, Denizli Oral and Dental Health Center, Denizli, Türkiye.
Software Engineer at a Private Company, Konya, Türkiye.
BMC Oral Health. 2025 May 28;25(1):828. doi: 10.1186/s12903-025-06196-8.
Ponticulus posticus (PP) is a bony structure in the cervical spine, often difficult to identify in radiographic images, and its detection is important for both orthodontic diagnosis and clinical decision-making related to craniovertebral pathologies. The purpose of this study is to develop a deep learning-based approach for detecting the PP in lateral cephalometric radiographs using the YOLOv8-seg model.
This retrospective study analyzed a dataset of 1000 anonymized lateral cephalometric radiographs, focusing on the segmentation and detection of the PP. Images were resized to 640 × 640 pixels and labeled by two experienced dentomaxillofacial radiologists. The YOLOv8-seg model, designed for segmentation tasks, was trained over 100 epochs with a batch size of sixteen, using pre-trained weights from the COCO dataset. Model performance was evaluated using precision, recall, mean average precision (mAP), and F1 score metrics.
The YOLOv8s-seg model demonstrated high accuracy in detecting the PP, with a precision of 62.81%, recall of 88.7%, mAP50 of 75.27%, mAP95 of 62.28%, and an F1 score of 73.54%. Even in cases where the boundaries of the C1 cervical vertebra were not clearly distinguishable, the model performed effectively, suggesting its reliability in clinical applications.
The proposed YOLOv8-seg model shows promising potential for improving the accuracy and efficiency of PP detection in lateral cephalometric radiographs. By integrating AI into the diagnostic process, orthodontic practices can benefit from more precise and reliable identification of small but clinically significant anatomical structures, ultimately enhancing patient care and diagnostic accuracy.
后小 Ponticulus posticus(PP)是颈椎中的一种骨结构,在放射影像中常难以识别,其检测对于正畸诊断和与颅颈病理相关的临床决策都很重要。本研究的目的是开发一种基于深度学习的方法,使用 YOLOv8-seg 模型在头颅侧位 X 光片中检测 PP。
这项回顾性研究分析了 1000 张匿名头颅侧位 X 光片的数据集,重点是 PP 的分割和检测。图像被调整为 640×640 像素,并由两名经验丰富的口腔颌面放射科医生进行标注。为分割任务设计的 YOLOv8-seg 模型使用来自 COCO 数据集的预训练权重,在 100 个轮次上进行训练,批次大小为 16。使用精确率、召回率、平均精度均值(mAP)和 F1 分数指标评估模型性能。
YOLOv8s-seg 模型在检测 PP 方面表现出较高的准确性,精确率为 62.81%,召回率为 88.7%,mAP50 为 75.27%,mAP95 为 62.28%,F1 分数为 73.54%。即使在第一颈椎边界无法清晰区分的情况下,该模型也能有效运行,表明其在临床应用中的可靠性。
所提出的 YOLOv8-seg 模型在提高头颅侧位 X 光片中 PP 检测的准确性和效率方面显示出有前景的潜力。通过将人工智能整合到诊断过程中,正畸实践可以从更精确和可靠地识别虽小但具有临床意义的解剖结构中受益,最终提高患者护理水平和诊断准确性。