Khurshid Zohaib, Waqas Maria, Hasan Shehzad, Kazmi Shakeel, Faheemuddin Muhammad
Department of Prosthodontics and Dental Implantology, College of Dentistry, King Faisal University, Al-Ahsa, KSA; Center of Excellence for Regenerative Dentistry, Department of Anatomy, Faculty of Dentistry, Chulalongkorn University, Bangkok, Thailand.
Department of Computer and Information Systems Engineering, NED University of Engineering and Technology, Karachi, Pakistan.
Int Dent J. 2025 Feb;75(1):223-235. doi: 10.1016/j.identj.2024.11.005. Epub 2024 Dec 6.
Dental health is integral to overall well-being, with early detection of issues critical for prevention. This research work focuses on utilizing artificial intelligence and deep learning-based object detection techniques for automated detection of common dental issues in orthopantomography x-ray images, including broken roots, periodontally compromised teeth, and the Kennedy classification of partially edentulous arches.
An orthopantomography dataset has been used to train several models employing various object detection architectures, hyperparameters, and training techniques. The performance of these models was evaluated to select the one with the highest accuracy. This selected model was subsequently deployed for further testing and validation on unseen data to assess its real-world performance and potential for clinical application.
The proposed model not only facilitates the classification of the Kennedy classification but also offers detailed information about the arch (maxillary or mandibular) and specifies the affected side of the arch (right or left). It can diagnose multiple dental issues simultaneously within an image, enhancing diagnostic capabilities for dental practitioners.
Despite a small dataset, satisfactory results were achieved through tailored hyperparameters and a piecewise annotation scheme.
牙齿健康是整体健康不可或缺的一部分,早期发现问题对预防至关重要。本研究工作专注于利用基于人工智能和深度学习的目标检测技术,对口腔全景X射线图像中的常见牙齿问题进行自动检测,包括牙根折断、牙周受损牙齿以及部分牙列缺失牙弓的肯尼迪分类。
使用一个口腔全景数据集来训练多个采用不同目标检测架构、超参数和训练技术的模型。对这些模型的性能进行评估,以选择准确率最高的模型。随后,将这个选定的模型部署到未见数据上进行进一步测试和验证,以评估其在实际应用中的性能和临床应用潜力。
所提出的模型不仅有助于肯尼迪分类的分类,还提供有关牙弓(上颌或下颌)的详细信息,并指定牙弓的患侧(右侧或左侧)。它可以在一张图像中同时诊断多个牙齿问题,增强了牙科医生的诊断能力。
尽管数据集较小,但通过定制的超参数和分段标注方案取得了令人满意的结果。