Yasin Elham Tahsin, Erturk Mediha, Tassoker Melek, Koklu Murat
Graduate School of Natural and Applied Sciences, Department of Computer Engineering, Faculty of Technology, Selcuk University, Konya, Türkiye.
Department of Dentomaxillofacial Radiology, Faculty of Dentistry, Necmettin Erbakan University, Konya, Türkiye.
Clin Oral Investig. 2025 Mar 25;29(4):203. doi: 10.1007/s00784-025-06285-6.
This study explores the application of deep learning models for classifying the spatial relationship between mandibular third molars and the mandibular canal using cone-beam computed tomography images. Accurate classification of this relationship is essential for preoperative planning, as improper assessment can lead to complications such as inferior alveolar nerve injury during extractions.
A dataset of 305 cone-beam computed tomography scans, categorized into three classes (not contacted, nearly contacted, and contacted), was meticulously annotated and validated by maxillofacial radiology experts to ensure reliability. Multiple state-of-the-art convolutional neural networks, including MobileNet, Xception, and DenseNet201, were trained and evaluated. Performance metrics were analysed.
MobileNet achieved the highest overall performance, with an accuracy of 99.44%. Xception and DenseNet201 also demonstrated strong classification capabilities, with accuracies of 98.74% and 98.73%, respectively.
These results highlight the potential of deep learning models to automate and improve the accuracy and consistency of mandibular third molars and the mandibular canal relationship classifications.
The integration of such systems into clinical workflows could enhance surgical risk assessments, streamline diagnostics, and reduce reliance on manual analysis, particularly in resource-constrained settings. This study contributes to advancing the use of artificial intelligence in dental imaging, offering a promising avenue for safer and more efficient surgical planning.
本研究探讨深度学习模型在利用锥束计算机断层扫描图像对下颌第三磨牙与下颌管的空间关系进行分类中的应用。准确分类这种关系对于术前规划至关重要,因为评估不当可能导致拔牙过程中出现下牙槽神经损伤等并发症。
一个包含305例锥束计算机断层扫描的数据集,分为三类(未接触、接近接触和接触),由颌面放射学专家进行了细致标注和验证,以确保可靠性。对包括MobileNet、Xception和DenseNet201在内的多个先进卷积神经网络进行了训练和评估。分析了性能指标。
MobileNet实现了最高的总体性能,准确率为99.44%。Xception和DenseNet201也表现出强大的分类能力,准确率分别为98.74%和98.73%。
这些结果凸显了深度学习模型在自动进行下颌第三磨牙与下颌管关系分类并提高其准确性和一致性方面的潜力。
将此类系统整合到临床工作流程中可加强手术风险评估、简化诊断并减少对人工分析的依赖,尤其是在资源有限的环境中。本研究有助于推动人工智能在牙科成像中的应用,为更安全、高效的手术规划提供了一条有前景的途径。