Quintessence Int. 2021 Jun 9;52(7):568-574. doi: 10.3290/j.qi.b1244461.
The aim of this study was to examine the success of deep learning-based convolutional neural networks (CNN) in the detection and differentiation of amalgam, composite resin, and metal-ceramic restorations from bitewing and periapical radiographs.
Five hundred and fifty bitewing and periapical radiographs were used. Eighty percent of the images were used for training, and 20% were left for testing. Twenty percent of the images allocated for training were then used for validation during learning. The image classification model was based on the application of CNN. The model used Resnet34 architecture, which is pre-trained on the ImageNet dataset. Average sensitivity, receiver operating characteristic (ROC) curve, and area under the curve (AUC) were calculated for performance evaluation of the model.
The model training loss was 0.13, and the validation loss was 0.63. The independent test group result was 0.67. Amalgam AUC was 0.95, composite AUC was 0.95, and metal-ceramic AUC was 1.00. The average AUC was 0.97. The false positive rate in the validation set was 18, the false negative rate was 18, the true positive rate was 60, and the true negative rate was 138. The true positive rate was 0.82 for amalgam, 0.75 for composite, and 0.73 for metal-ceramic.
Deep learning-based CNNs from periapical and bitewing radiographs appear to be a promising technique for the detection and differentiation of restorations.
本研究旨在探讨基于深度学习的卷积神经网络(CNN)在从根尖片和口内片检测和区分银汞合金、复合树脂和金属陶瓷修复体方面的成功。
使用了 550 张根尖片和口内片。80%的图像用于训练,20%留作测试。在学习过程中,20%用于训练的图像被用于验证。图像分类模型基于 CNN 的应用。该模型使用了预先在 ImageNet 数据集上进行训练的 Resnet34 架构。平均灵敏度、接收者操作特征(ROC)曲线和曲线下面积(AUC)用于评估模型的性能。
模型训练损失为 0.13,验证损失为 0.63。独立测试组的结果为 0.67。银汞合金 AUC 为 0.95,复合树脂 AUC 为 0.95,金属陶瓷 AUC 为 1.00。平均 AUC 为 0.97。验证集中的假阳性率为 18,假阴性率为 18,真阳性率为 60,真阴性率为 138。银汞合金的真阳性率为 0.82,复合树脂为 0.75,金属陶瓷为 0.73。
基于深度学习的 CNN 从根尖片和口内片似乎是一种很有前途的技术,可用于检测和区分修复体。