Kuwada Chiaki, Mitsuya Yuta, Fukuda Motoki, Yang Sujin, Kise Yoshitaka, Mori Mizuho, Naitoh Munetaka, Ariji Yoshiko, Ariji Eiichiro
Department of Oral and Maxillofacial Radiology, Aichi Gakuin University School of Dentistry, 2-11 Suemori-Dori, Chikusa-Ku, Nagoya, Japan.
Department of Oral Radiology, Osaka Dental University, 5-17, Otemae 1-Chome, Chuo-Ku, Osaka, Japan.
Oral Radiol. 2025 Jul 22. doi: 10.1007/s11282-025-00843-0.
This study investigated deep learning (DL) systems for diagnosing carotid artery calcifications (CAC) on panoramic radiographs. To this end, two DL systems, one with preceding and one with simultaneous area detection functions, were developed to classify CAC on panoramic radiographs, and their person-based classification performances were compared with that of a DL model directly created using entire panoramic radiographs.
A total of 580 panoramic radiographs from 290 patients (with CAC) and 290 controls (without CAC) were used to create and evaluate the DL systems. Two convolutional neural networks, GoogLeNet and YOLOv7, were utilized. The following three systems were created: (1) direct classification of entire panoramic images (System 1), (2) preceding region-of-interest (ROI) detection followed by classification (System 2), and (3) simultaneous ROI detection and classification (System 3). Person-based evaluation using the same test data was performed to compare the three systems. A side-based (left and right sides of participants) evaluation was also performed on Systems 2 and 3. Between-system differences in area under the receiver-operating characteristics curve (AUC) were assessed using DeLong's test.
For the side-based evaluation, the AUCs of Systems 2 and 3 were 0.89 and 0.84, respectively, and in the person-based evaluation, Systems 2 and 3 had significantly higher AUC values of 0.86 and 0.90, respectively, compared with System 1 (P < 0.001). No significant difference was found between Systems 2 and 3.
Preceding or simultaneous use of area detection improved the person-based performance of DL for classifying the presence of CAC on panoramic radiographs.
本研究调查了用于在全景X线片上诊断颈动脉钙化(CAC)的深度学习(DL)系统。为此,开发了两个具有先验和同时区域检测功能的DL系统,用于对全景X线片上的CAC进行分类,并将它们基于个体的分类性能与直接使用整个全景X线片创建的DL模型的性能进行比较。
总共使用了来自290例患者(有CAC)和290例对照(无CAC)的580张全景X线片来创建和评估DL系统。使用了两个卷积神经网络,即GoogLeNet和YOLOv7。创建了以下三个系统:(1)对整个全景图像进行直接分类(系统1),(2)先进行感兴趣区域(ROI)检测然后进行分类(系统2),以及(3)同时进行ROI检测和分类(系统3)。使用相同的测试数据进行基于个体的评估,以比较这三个系统。还对系统2和系统3进行了基于侧别(参与者的左侧和右侧)的评估。使用DeLong检验评估系统之间在受试者操作特征曲线(AUC)下面积的差异。
在基于侧别的评估中,系统2和系统3的AUC分别为0.89和0.84,在基于个体的评估中,与系统1相比,系统2和系统3的AUC值显著更高,分别为0.86和0.90(P < 0.001)。系统2和系统3之间未发现显著差异。
先验或同时使用区域检测可提高DL在全景X线片上对CAC存在情况进行分类的基于个体的性能。