Ulusoy A Canberk, Toprak Tuğçe, Selver M Alper, Güneri Pelin, İlhan Betül
Department of Oral and Maxillofacial Radiology, School of Dentistry, Ege University, İzmir, Turkey.
The Graduate School of Natural and Applied Sciences and Izmir Vocational School (IMYO), Dokuz Eylül University, İzmir, Turkey.
Sci Rep. 2025 Feb 4;15(1):4178. doi: 10.1038/s41598-024-82915-5.
This study uses machine learning (ML) to elucidate the contact relationship between the mandibular third molar (M3M) and the inferior alveolar canal (IAC), leading to three major contributions; (1) The first publicly accessible PR image dataset with semantic annotations for 1,478 IACs and M3Ms from 1,010 patients is introduced, which includes challenging cases, such as false positive contacts, with CBCT images as the gold standard, (2) Established radiological indicators for M3M-IAC contact were extracted as features using digital image processing, and these features were used as inputs for various ML methods. Eligibility was assessed through statistical analysis and radiologists evaluations. Clinical feedback from radiologists on these features provides insights for future improvements. (3) ANNs, two custom CNNs, seven established DL models, and their combinations were used for automatic M3M-IAC contact determination with extracted features, semantic annotations, and ROIs. The ANN configuration surpassed both radiologists and DL models in specificity (82%), F1 score (92%), and accuracy (85%), while maintaining a comparable sensitivity (86%) to the DL models. This indicates that ANNs can effectively predict M3M-IAC contact relations and are particularly effective at identifying cases with no contact relation between M3M and IAC compared to other ML methods. Future work should focus on developing automated segmentation algorithms for M3M and IAC on PRs, to identify relevant anatomical structures, thereby improving clinical usability. The dataset, feature extraction, and ML codes are available through the CONTACT grand challenge.
本研究使用机器学习(ML)来阐明下颌第三磨牙(M3M)与下牙槽神经管(IAC)之间的接触关系,取得了三项主要成果:(1)引入了首个公开可用的PR图像数据集,该数据集包含来自1010名患者的1478个IAC和M3M的语义注释,以CBCT图像作为金标准,其中包括具有挑战性的病例,如假阳性接触;(2)使用数字图像处理提取了用于M3M-IAC接触的既定放射学指标作为特征,并将这些特征用作各种ML方法的输入。通过统计分析和放射科医生评估来评估其适用性。放射科医生对这些特征的临床反馈为未来的改进提供了见解。(3)使用人工神经网络(ANN)、两个定制的卷积神经网络(CNN)、七个既定的深度学习(DL)模型及其组合,通过提取的特征、语义注释和感兴趣区域(ROI)来自动确定M3M-IAC接触。ANN配置在特异性(82%)、F1分数(92%)和准确率(85%)方面超过了放射科医生和DL模型,同时保持了与DL模型相当的灵敏度(86%)。这表明ANN可以有效地预测M3M-IAC接触关系,并且与其他ML方法相比,在识别M3M与IAC之间无接触关系的病例方面特别有效。未来的工作应专注于开发PR上M3M和IAC的自动分割算法,以识别相关解剖结构,从而提高临床实用性。该数据集、特征提取和ML代码可通过CONTACT重大挑战获取。