Department of Oral and Maxillofacial Surgery, University Hospitals Leuven, Kapucijnenvoer 33, Leuven 3000, Belgium; OMFS-IMPATH Research Group, Department of Imaging and Pathology, Catholic University Leuven, Belgium.
OMFS-IMPATH Research Group, Department of Imaging and Pathology, Catholic University Leuven, Belgium.
J Dent. 2023 Aug;135:104581. doi: 10.1016/j.jdent.2023.104581. Epub 2023 Jun 7.
Dentists and oral surgeons often face difficulties distinguishing between radicular cysts and periapical granulomas on panoramic imaging. Radicular cysts require surgical removal while root canal treatment is the first-line treatment for periapical granulomas. Therefore, an automated tool to aid clinical decision making is needed.
A deep learning framework was developed using panoramic images of 80 radicular cysts and 72 periapical granulomas located in the mandible. Additionally, 197 normal images and 58 images with other radiolucent lesions were selected to improve model robustness. The images were cropped into global (affected half of the mandible) and local images (only the lesion) and then the dataset was split into 90% training and 10% testing sets. Data augmentation was performed on the training dataset. A two-route convolutional neural network using the global and local images was constructed for lesion classification. These outputs were concatenated into the object detection network for lesion localization.
The classification network achieved a sensitivity of 1.00 (95% C.I. 0.63-1.00), specificity of 0.95 (0.86-0.99), and AUC (area under the receiver-operating characteristic curve) of 0.97 for radicular cysts and a sensitivity of 0.77 (0.46-0.95), specificity of 1.00 (0.93-1.00), and AUC of 0.88 for periapical granulomas. Average precision for the localization network was 0.83 for radicular cysts and 0.74 for periapical granulomas.
The proposed model demonstrated reliable diagnostic performance for the detection and differentiation of radicular cysts and periapical granulomas. Using deep learning, diagnostic efficacy can be enhanced leading to a more efficient referral strategy and subsequent treatment efficacy.
A two-route deep learning approach using global and local images can reliably differentiate between radicular cysts and periapical granulomas on panoramic imaging. Concatenating its output to a localizing network creates a clinically usable workflow for classifying and localizing these lesions, enhancing treatment and referral practices.
牙医和口腔外科医生在全景成像中常常难以区分根尖囊肿和根尖肉芽肿。根尖囊肿需要手术切除,而根管治疗是根尖肉芽肿的首选治疗方法。因此,需要一种自动化工具来辅助临床决策。
使用 80 个位于下颌骨的根尖囊肿和 72 个根尖肉芽肿的全景图像开发了一个深度学习框架。此外,选择了 197 个正常图像和 58 个具有其他透光性病变的图像,以提高模型的稳健性。将图像裁剪为全局(下颌骨受影响的一半)和局部图像(仅病变),然后将数据集分为 90%的训练集和 10%的测试集。在训练数据集上进行了数据增强。使用全局和局部图像构建了一个两路线卷积神经网络进行病变分类。将这些输出串联到用于病变定位的目标检测网络中。
分类网络对根尖囊肿的敏感性为 1.00(95%置信区间 0.63-1.00)、特异性为 0.95(0.86-0.99)和 AUC(接受者操作特征曲线下的面积)为 0.97,对根尖肉芽肿的敏感性为 0.77(0.46-0.95)、特异性为 1.00(0.93-1.00)和 AUC 为 0.88。定位网络的平均精度为根尖囊肿 0.83,根尖肉芽肿 0.74。
所提出的模型对根尖囊肿和根尖肉芽肿的检测和鉴别具有可靠的诊断性能。使用深度学习可以提高诊断效果,从而制定更有效的转诊策略和提高后续治疗效果。
使用全景成像,基于全局和局部图像的两路线深度学习方法可以可靠地区分根尖囊肿和根尖肉芽肿。将其输出串联到定位网络中,可以为这些病变的分类和定位创建一个临床可用的工作流程,从而增强治疗和转诊实践。