Department of Orofacial Pain and Oral Medicine, Kyung Hee University Dental Hospital, #613 Hoegi-dong, Dongdaemun-gu, Seoul, 02447, South Korea.
Department of Computer Science, Hanyang University, Seoul, Korea.
Sci Rep. 2022 Jul 5;12(1):11352. doi: 10.1038/s41598-022-15231-5.
This study investigated the usefulness of deep learning-based automatic detection of anterior disc displacement (ADD) from magnetic resonance imaging (MRI) of patients with temporomandibular joint disorder (TMD). Sagittal MRI images of 2520 TMJs were collected from 861 men and 399 women (average age 37.33 ± 18.83 years). A deep learning algorithm with a convolutional neural network was developed. Data augmentation and the Adam optimizer were applied to reduce the risk of overfitting the deep-learning model. The prediction performances were compared between the models and human experts based on areas under the curve (AUCs). The fine-tuning model showed excellent prediction performance (AUC = 0.8775) and acceptable accuracy (approximately 77%). Comparing the AUC values of the from-scratch (0.8269) and freeze models (0.5858) showed lower performances of the other models compared to the fine-tuning model. In Grad-CAM visualizations, the fine-tuning scheme focused more on the TMJ disc when judging ADD, and the sparsity was higher than that of the from-scratch scheme (84.69% vs. 55.61%, p < 0.05). The three fine-tuned ensemble models using different data augmentation techniques showed a prediction accuracy of 83%. Moreover, the AUC values of ADD were higher when patients with TMD were divided by age (0.8549-0.9275) and sex (male: 0.8483, female: 0.9276). While the accuracy of the ensemble model was higher than that of human experts, the difference was not significant (p = 0.1987-0.0671). Learning from pre-trained weights allowed the fine-tuning model to outperform the from-scratch model. Another benefit of the fine-tuning model for diagnosing ADD of TMJ in Grad-CAM analysis was the deactivation of unwanted gradient values to provide clearer visualizations compared to the from-scratch model. The Grad-CAM visualizations also agreed with the model learned through important features in the joint disc area. The accuracy was further improved by an ensemble of three fine-tuning models using diversified data. The main benefits of this model were the higher specificity compared to human experts, which may be useful for preventing true negative cases, and the maintenance of its prediction accuracy across sexes and ages, suggesting a generalized prediction.
本研究旨在探讨基于深度学习的自动检测颞下颌关节紊乱症(TMD)患者前盘移位(ADD)的磁共振成像(MRI)的有效性。共采集了 861 名男性和 399 名女性(平均年龄 37.33±18.83 岁)2520 个 TMJ 的矢状面 MRI 图像。采用卷积神经网络的深度学习算法,应用数据扩充和 Adam 优化器以减少深度学习模型过度拟合的风险。基于曲线下面积(AUC),比较模型和人类专家的预测性能。微调模型表现出优异的预测性能(AUC=0.8775)和可接受的准确率(约 77%)。比较从头开始(0.8269)和冻结模型(0.5858)的 AUC 值表明,与微调模型相比,其他模型的性能较低。在 Grad-CAM 可视化中,微调方案在判断 ADD 时更关注 TMJ 盘,稀疏度高于从头开始方案(84.69%比 55.61%,p<0.05)。使用不同数据扩充技术的三个微调集成模型的预测准确率为 83%。此外,当根据年龄(0.8549-0.9275)和性别(男性:0.8483,女性:0.9276)将 TMD 患者分组时,ADD 的 AUC 值更高。虽然集成模型的准确率高于人类专家,但差异无统计学意义(p=0.1987-0.0671)。从预训练权重中学习使得微调模型优于从头开始模型。在 Grad-CAM 分析中,对 TMJ 的 ADD 进行诊断时,微调模型的另一个优势是停用不需要的梯度值,从而提供比从头开始模型更清晰的可视化效果。Grad-CAM 可视化结果与通过关节盘区域重要特征学习的模型一致。使用多样化数据的三个微调模型集成进一步提高了准确性。该模型的主要优势是与人类专家相比具有更高的特异性,这可能有助于防止真正的阴性病例,并保持其在性别和年龄方面的预测准确性,表明具有普遍的预测能力。