Department of Periodontology, Nanjing Stomatological Hospital, Medical School of Nanjing University, Nanjing, China.
University of California, Los Angeles, CA, USA.
Oral Dis. 2022 Jan;28(1):173-181. doi: 10.1111/odi.13735. Epub 2020 Dec 19.
To develop and evaluate the performance of a deep learning system based on convolutional neural network (ConvNet) to detect dental caries from oral photographs.
3,932 oral photographs obtained from 625 volunteers with consumer cameras were included for the development and evaluation of the model. A deep ConvNet was developed by adapting from Single Shot MultiBox Detector. The hard negative mining algorithm was applied to automatically train the model. The model was evaluated for: (i) classification accuracy for telling the existence of dental caries from a photograph and (ii) localization accuracy for locations of predicted dental caries.
The system exhibited a classification area under the curve (AUC) of 85.65% (95% confidence interval: 82.48% to 88.71%). The model also achieved an image-wise sensitivity of 81.90%, and a box-wise sensitivity of 64.60% at a high-sensitivity operating point. The hard negative mining algorithm significantly boosted both classification (p < .001) and localization (p < .001) performance of the model by reducing false-positive predictions.
The deep learning model is promising to detect dental caries on oral photographs captured with consumer cameras. It can be useful for enabling the preliminary and cost-effective screening of dental caries among large populations.
开发并评估一种基于卷积神经网络(ConvNet)的深度学习系统,以从口腔照片中检测龋齿。
从 625 名志愿者使用消费级相机获得的 3932 张口腔照片被用于模型的开发和评估。通过从单镜头多盒探测器(Single Shot MultiBox Detector)改编,开发了一个深度卷积网络。采用硬负挖掘算法自动训练模型。该模型的评估包括:(i)根据照片判断是否存在龋齿的分类准确率,以及(ii)预测龋齿位置的定位准确率。
该系统的分类曲线下面积(AUC)为 85.65%(95%置信区间:82.48%至 88.71%)。该模型在高灵敏度工作点处的图像灵敏度为 81.90%,框灵敏度为 64.60%。硬负挖掘算法通过减少假阳性预测,显著提高了模型的分类(p<.001)和定位(p<.001)性能。
该深度学习模型有望从消费级相机拍摄的口腔照片中检测龋齿。它可用于在大量人群中进行初步和经济有效的龋齿筛查。