Long Jin, Wenyuan Zhou, Ying Tang, Zezheng Yu, Juan Fan, Lu Wang, Chao Liu, Yongchun Gu, Panpan Zhang
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In Group A, conventional panoramic images and CBCT images were derived from the same patients (n = 730 individuals), and the dataset consisted of conventional panoramic image patches of 1453 MSMs. In Group B (n = 610 individuals), the patients underwent CBCT examinations in the absence of available panoramic images; CBCT images were acquired and utilized to generate simulated panoramic images, and the dataset consisted of image patches of 1211 MSMs. Five pretrained CNN networks (ResNet-101 and - 50, DenseNet-121 and - 161, and Inception-V3) were utilized for the classification of C-shaped and non-C-shaped MSMs. Finally, the networks trained on the Group B dataset were tested on the Group A dataset. The diagnostic performance of each model was evaluated using receiver operating characteristic (ROC) curve analysis, and the CBCT images were taken as the gold standard. The results were compared with those achieved by three dental professionals.</p><p><strong>Results: </strong>In Group A, all five networks exhibited satisfactory diagnostic performance, with AUC values ranging from 0.875 to 0.916 and accuracies ranging from 81.8 to 86.7%. No statistical differences were detected among the five CNNs. Notably, the models trained with Group B dataset (CBCT-generated panoramic images) achieved enhanced performance as tested on Group A dataset. The AUC values reached 0.984-0.996, and the accuracies ranged between 94.5% and 98.1%. CNNs outperformed dental professionals in classification performance, and the AUC values achieved by dental specialist, novice dentist, and dental graduate student were only 0.806, 0.767 and 0.730, respectively.</p><p><strong>Conclusion: </strong>CNN-based deep learning system demonstrated higher accuracy in the detection of C-shaped MSMs on panoramic radiographs compared to dental professionals. CBCT-generated panoramic images can serve as a substitute for conventional panoramic images in the training of CNN models when the quantity and quality of conventional panoramic image dataset is insufficient.</p><p><strong>Clinical relevance: </strong>CNN-based deep learning models have demonstrated significant potential in assisting dentists with the identification of C-shaped MSMs on panoramic radiographs, which facilitating more effective, efficient and safer dental treatment.</p>","PeriodicalId":10461,"journal":{"name":"Clinical Oral Investigations","volume":"28 12","pages":"646"},"PeriodicalIF":3.1000,"publicationDate":"2024-11-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Detection of C-shaped mandibular second molars on panoramic radiographs using deep convolutional neural networks.\",\"authors\":\"Long Jin, Wenyuan Zhou, Ying Tang, Zezheng Yu, Juan Fan, Lu Wang, Chao Liu, Yongchun Gu, Panpan Zhang\",\"doi\":\"10.1007/s00784-024-06049-8\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objectives: </strong>The C-shaped mandibular second molars (MSMs) may pose an endodontic challenge. The aim of this study was to develop a convolutional neural network (CNN)-based deep learning system for the diagnosis of C-shaped MSMs on panoramic radiographs.</p><p><strong>Materials and methods: </strong>Panoramic radiographs and cone beam computed tomographic (CBCT) images were collected from a hospital in China and subsequently divided into two groups. In Group A, conventional panoramic images and CBCT images were derived from the same patients (n = 730 individuals), and the dataset consisted of conventional panoramic image patches of 1453 MSMs. In Group B (n = 610 individuals), the patients underwent CBCT examinations in the absence of available panoramic images; CBCT images were acquired and utilized to generate simulated panoramic images, and the dataset consisted of image patches of 1211 MSMs. Five pretrained CNN networks (ResNet-101 and - 50, DenseNet-121 and - 161, and Inception-V3) were utilized for the classification of C-shaped and non-C-shaped MSMs. Finally, the networks trained on the Group B dataset were tested on the Group A dataset. The diagnostic performance of each model was evaluated using receiver operating characteristic (ROC) curve analysis, and the CBCT images were taken as the gold standard. The results were compared with those achieved by three dental professionals.</p><p><strong>Results: </strong>In Group A, all five networks exhibited satisfactory diagnostic performance, with AUC values ranging from 0.875 to 0.916 and accuracies ranging from 81.8 to 86.7%. No statistical differences were detected among the five CNNs. Notably, the models trained with Group B dataset (CBCT-generated panoramic images) achieved enhanced performance as tested on Group A dataset. The AUC values reached 0.984-0.996, and the accuracies ranged between 94.5% and 98.1%. CNNs outperformed dental professionals in classification performance, and the AUC values achieved by dental specialist, novice dentist, and dental graduate student were only 0.806, 0.767 and 0.730, respectively.</p><p><strong>Conclusion: </strong>CNN-based deep learning system demonstrated higher accuracy in the detection of C-shaped MSMs on panoramic radiographs compared to dental professionals. 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引用次数: 0
摘要
目的:C形下颌第二磨牙(MSMs)可能会给牙髓病治疗带来挑战。本研究旨在开发一种基于卷积神经网络(CNN)的深度学习系统,用于在全景X光片上诊断C形下颌第二磨牙:从中国一家医院收集全景X光片和锥形束计算机断层扫描(CBCT)图像,然后将其分为两组。在 A 组中,常规全景图像和 CBCT 图像来自同一患者(n = 730 人),数据集由 1453 个 MSM 的常规全景图像片段组成。在 B 组(n = 610 人)中,患者在没有全景图像的情况下接受了 CBCT 检查;获取 CBCT 图像并用于生成模拟全景图像,数据集由 1211 个 MSM 的图像片段组成。五个预先训练好的 CNN 网络(ResNet-101 和 -50、DenseNet-121 和 -161、Inception-V3)被用于对 C 形和非 C 形 MSM 进行分类。最后,在 B 组数据集上训练的网络在 A 组数据集上进行了测试。使用接收者操作特征曲线(ROC)分析评估了每个模型的诊断性能,并将 CBCT 图像作为金标准。结果与三位牙科专家的诊断结果进行了比较:在 A 组中,所有五个网络都表现出令人满意的诊断性能,AUC 值在 0.875 到 0.916 之间,准确率在 81.8% 到 86.7% 之间。五个 CNN 之间未发现统计差异。值得注意的是,使用 B 组数据集(CBCT 生成的全景图像)训练的模型在 A 组数据集测试中取得了更高的性能。AUC值达到0.984-0.996,准确率介于94.5%和98.1%之间。CNN 的分类性能优于牙科专业人员,牙科专家、牙科新手和牙科研究生的 AUC 值分别仅为 0.806、0.767 和 0.730:结论:与牙科专家相比,基于 CNN 的深度学习系统在全景 X 光片上检测 C 形 MSM 的准确率更高。当传统全景图像数据集的数量和质量不足时,CBCT 生成的全景图像可替代传统全景图像用于 CNN 模型的训练:基于 CNN 的深度学习模型在协助牙医识别全景 X 光片上的 C 形 MSM 方面展现出了巨大的潜力,从而促进了更有效、更高效、更安全的牙科治疗。
Detection of C-shaped mandibular second molars on panoramic radiographs using deep convolutional neural networks.
Objectives: The C-shaped mandibular second molars (MSMs) may pose an endodontic challenge. The aim of this study was to develop a convolutional neural network (CNN)-based deep learning system for the diagnosis of C-shaped MSMs on panoramic radiographs.
Materials and methods: Panoramic radiographs and cone beam computed tomographic (CBCT) images were collected from a hospital in China and subsequently divided into two groups. In Group A, conventional panoramic images and CBCT images were derived from the same patients (n = 730 individuals), and the dataset consisted of conventional panoramic image patches of 1453 MSMs. In Group B (n = 610 individuals), the patients underwent CBCT examinations in the absence of available panoramic images; CBCT images were acquired and utilized to generate simulated panoramic images, and the dataset consisted of image patches of 1211 MSMs. Five pretrained CNN networks (ResNet-101 and - 50, DenseNet-121 and - 161, and Inception-V3) were utilized for the classification of C-shaped and non-C-shaped MSMs. Finally, the networks trained on the Group B dataset were tested on the Group A dataset. The diagnostic performance of each model was evaluated using receiver operating characteristic (ROC) curve analysis, and the CBCT images were taken as the gold standard. The results were compared with those achieved by three dental professionals.
Results: In Group A, all five networks exhibited satisfactory diagnostic performance, with AUC values ranging from 0.875 to 0.916 and accuracies ranging from 81.8 to 86.7%. No statistical differences were detected among the five CNNs. Notably, the models trained with Group B dataset (CBCT-generated panoramic images) achieved enhanced performance as tested on Group A dataset. The AUC values reached 0.984-0.996, and the accuracies ranged between 94.5% and 98.1%. CNNs outperformed dental professionals in classification performance, and the AUC values achieved by dental specialist, novice dentist, and dental graduate student were only 0.806, 0.767 and 0.730, respectively.
Conclusion: CNN-based deep learning system demonstrated higher accuracy in the detection of C-shaped MSMs on panoramic radiographs compared to dental professionals. CBCT-generated panoramic images can serve as a substitute for conventional panoramic images in the training of CNN models when the quantity and quality of conventional panoramic image dataset is insufficient.
Clinical relevance: CNN-based deep learning models have demonstrated significant potential in assisting dentists with the identification of C-shaped MSMs on panoramic radiographs, which facilitating more effective, efficient and safer dental treatment.
期刊介绍:
The journal Clinical Oral Investigations is a multidisciplinary, international forum for publication of research from all fields of oral medicine. The journal publishes original scientific articles and invited reviews which provide up-to-date results of basic and clinical studies in oral and maxillofacial science and medicine. The aim is to clarify the relevance of new results to modern practice, for an international readership. Coverage includes maxillofacial and oral surgery, prosthetics and restorative dentistry, operative dentistry, endodontics, periodontology, orthodontics, dental materials science, clinical trials, epidemiology, pedodontics, oral implant, preventive dentistiry, oral pathology, oral basic sciences and more.