Center of Orthodontics, Department of Dentistry, Sir Run Run Shaw Hospital, Zhejiang University School of Medicine, 3# Qingchundong Road, Hangzhou, China.
Department of Orthodontics, College of Stomatology, Zhejiang Chinese Medical University, 548# Binwen Road, Hangzhou, China.
BMC Oral Health. 2023 Jan 17;23(1):28. doi: 10.1186/s12903-023-02734-4.
It is difficult for orthodontists to accurately predict the growth trend of the mandible in children with anterior crossbite. This study aims to develop a deep learning model to automatically predict the mandibular growth result into normal or overdeveloped using cephalometric radiographs.
A deep convolutional neural network (CNN) model was constructed based on the algorithm ResNet50 and trained on the basis of 256 cephalometric radiographs. The prediction behavior of the model was tested on 40 cephalograms and visualized by equipped with Grad-CAM. The prediction performance of the CNN model was compared with that of three junior orthodontists.
The deep-learning model showed a good prediction accuracy about 85%, much higher when compared with the 54.2% of the junior orthodontists. The sensitivity and specificity of the model was 0.95 and 0.75 respectively, higher than that of the junior orthodontists (0.62 and 0.47 respectively). The area under the curve value of the deep-learning model was 0.9775. Visual inspection showed that the model mainly focused on the characteristics of special regions including chin, lower edge of the mandible, incisor teeth, airway and condyle to conduct the prediction.
The deep-learning CNN model could predict the growth trend of the mandible in anterior crossbite children with relatively high accuracy using cephalometric images. The deep learning model made the prediction decision mainly by identifying the characteristics of the regions of chin, lower edge of the mandible, incisor teeth area, airway and condyle in cephalometric images.
对于正畸医生来说,准确预测前牙反颌儿童下颌的生长趋势具有一定难度。本研究旨在开发一种深度学习模型,通过头颅侧位片自动预测下颌的生长结果为正常或过度发育。
基于 ResNet50 算法构建深度卷积神经网络(CNN)模型,并在 256 张头颅侧位片的基础上进行训练。通过配备 Grad-CAM 对模型的预测行为进行测试,并在 40 张头颅侧位片上进行验证。将 CNN 模型的预测性能与 3 位初级正畸医生进行比较。
深度学习模型的预测准确率约为 85%,明显高于初级正畸医生的 54.2%。模型的灵敏度和特异度分别为 0.95 和 0.75,高于初级正畸医生(分别为 0.62 和 0.47)。深度学习模型的曲线下面积值为 0.9775。通过可视化检查发现,模型主要关注颏部、下颌下缘、切牙区、气道和髁突等特殊区域的特征来进行预测。
使用头颅侧位片,深度学习 CNN 模型可以较准确地预测前牙反颌儿童的下颌生长趋势。该深度学习模型主要通过识别头颅侧位片中颏部、下颌下缘、切牙区、气道和髁突等区域的特征来做出预测决策。