期刊导航

论文摘要

基于深度学习的龋源性牙髓炎露髓风险预测

Prediction of pulp exposure risk of carious pulpitis based on deep learning

作者:王丽, 吴菲, 肖墨, 陈雨欣, 吴丽更

Author:Wang Li, Wu Fei, Xiao Mo, Chen Yu-xin, Wu Ligeng

收稿日期:2022-10-24          年卷(期)页码:2023,41(2):218-218-224

期刊名称:华西口腔医学杂志

Journal Name:West China Journal of Stomatology

关键字:牙本质深龋,龋源性牙髓炎,深度学习,卷积神经网络,

Key words:dentinal caries,caries-induced pulpitis,deep learning,convolution neural network,

基金项目:天津市教委科研计划项目(2020KJ184)

中文摘要

目的 基于卷积神经网络模型,预测根尖片图像中影像表现近髓的患牙露髓的风险,并将网络模型的预测结果与高年资医生的预测结果相比较,评估网络模型的性能,以用于教学训练口腔医学生和年轻医生,并辅助医生术前明确治疗计划和进行良好的医患沟通。 方法 选取2019—2022年于天津医科大学口腔医院牙体牙髓科就诊的深龋引起的牙髓炎病例206例,其中去腐备洞期间露髓的病例104例,未露髓的病例102例。将收集的206张根尖片图像按比例随机分为3组,分别为训练集126张根尖片、验证集40张根尖片和测试集40张根尖片。选取视觉几何群网络(VGG)、残差网络(ResNet)和密集卷积网络(DenseNet)3个卷积神经网络分析训练集中根尖片的规律,使用验证集的根尖片调整网络超参数,最终使用测试集的40张根尖片图像测试3个网络模型的性能,同时选择1名牙体牙髓专业的高年资主任医生预测测试集的40张根尖片影像深龋是否露髓。以临床操作过程中去腐备洞后是否露髓作为金标准,通过受试者工作特征曲线(ROC)、ROC曲线下面积(AUC)及准确率、灵敏度、特异度、阳性预测值、阴性预测值和F1评分比较VGG、ResNet、DenseNet 3种网络模型和高年资医生对测试集的40张根尖片是否露髓的预测效果,并选出最佳网络模型。 结果 最佳网络模型为DenseNet模型,其AUC为0.97;ResNet模型的AUC为0.89;VGG模型的AUC为0.78;高年资医生的AUC为0.87。比较高年资医生(0.850)与DenseNet模型的准确率(0.850),差异无统计学意义(P>0.05);Kappa一致性检验结果显示为中等可信度(Kappa=0.6>0.4,P<0.05)。 结论 在VGG、ResNet、DenseNet 3个卷积神经网络模型中,DenseNet模型对影像表现近髓的患牙是否露髓的预测效果最佳,该模型的预测效果等同于牙体牙髓专业的高年资医生水平。

英文摘要

ObjectiveThis study aims to predict the risk of deep caries exposure in radiographic images based on the convolutional neural network model, compare the prediction results of the network model with those of senior dentists, evaluate the performance of the model for teaching and training stomatological students and young dentists, and assist dentists to clarify treatment plans and conduct good doctor-patient communication before surgery.MethodsA total of 206 cases of pulpitis caused by deep caries were selected from the Department of Stomatological Hospital of Tianjin Medical University from 2019 to 2022. According to the inclusion and exclusion criteria, 104 cases of pulpitis were exposed during the decaying preparation period and 102 cases of pulpitis were not exposed. The 206 radiographic images collected were randomly divided into three groups according to the proportion: 126 radiographic images in the training set, 40 radiographic images in the validation set, and 40 radiographic images in the test set. Three convolutional neural networks, visual geometry group network (VGG), residual network (ResNet), and dense convolutional network (DenseNet) were selected to analyze the rules of the radiographic images in the training set. The radiographic images of the validation set were used to adjust the super parameters of the network. Finally, 40 radiographic images of the test set were used to evaluate the performance of the three network models. A senior dentist specializing in dental pulp was selected to predict whether the deep caries of 40 radiographic images in the test set were exposed. The gold standard is whether the pulp is exposed after decaying the prepared hole during the clinical operation. The prediction effect of the three network models (VGG, ResNet, and DenseNet) and the senior dentist on the pulp exposure of 40 radiographic images in the test set were compared using receiver operating characteristic (ROC) curve, area under the ROC curve (AUC), accuracy, sensitivity, specificity, positive predictive value, negative predictive value, and F1 score to select the best network model.ResultsThe best network model was DenseNet model, with AUC of 0.97. The AUC values of the ResNet model, VGG model, and the senior dentist were 0.89, 0.78, and 0.87, respectively. Accuracy was not statistically different between the senior dentist (0.850) and the DenseNet model (0.850)(P>0.05). Kappa consistency test showed moderate reliability (Kappa=0.6>0.4,P<0 .05).ConclusionAmong the three convolutional neural network models, the DenseNet model has the best predictive effect on whether deep caries are exposed in imaging. The predictive effect of this model is equivalent to the level of senior dentists specializing in dental pulp.

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