Yoon Kyubaek, Kim Jae-Young, Kim Sun-Jong, Huh Jong-Ki, Kim Jin-Woo, Choi Jongeun
School of Mechanical Engineering, Yonsei University, 50 Yonsei Ro, Seodaemun Gu, Seoul 03722, Republic of Korea.
Department of Oral and Maxillofacial Surgery, Gangnam Severance Hospital, Yonsei University College of Dentistry, Seoul, Republic of Korea.
Comput Methods Programs Biomed. 2023 May;233:107465. doi: 10.1016/j.cmpb.2023.107465. Epub 2023 Mar 5.
MRI is considered the gold standard for diagnosing anterior disc displacement (ADD), the most common temporomandibular joint (TMJ) disorder. However, even highly trained clinicians find it difficult to integrate the dynamic nature of MRI with the complicated anatomical features of the TMJ. As the first validated study for MRI-based automatic TMJ ADD diagnosis, we propose a clinical decision support engine that diagnoses TMJ ADD using MR images and provides heat maps as the visualized rationale of diagnostic predictions using explainable artificial intelligence.
The engine builds on two deep learning models. The first deep learning model detects a region of interest (ROI) containing three TMJ components (i.e., temporal bone, disc, and condyle) in the entire sagittal MR image. The second deep learning model classifies TMJ ADD into three classes (i.e., normal, ADD without reduction, and ADD with reduction) within the detected ROI. In this retrospective study, the models were developed and tested on the dataset acquired between April 2005 to April 2020. The additional independent dataset acquired at a different hospital between January 2016 to February 2019 was used for the external test of the classification model. Detection performance was assessed by mean average precision (mAP). Classification performance was assessed by the area under the receiver operating characteristic (AUROC), sensitivity, specificity, and Youden's index. 95% confidence intervals were calculated via non-parametric bootstrap to assess the statistical significance of model performances.
The ROI detection model achieved mAP of 0.819 at 0.75 intersection over union (IoU) thresholds in the internal test. In internal and external tests, the ADD classification model achieved AUROC values of 0.985 and 0.960, sensitivities of 0.950 and 0.926, and specificities of 0.919 and 0.892, respectively.
The proposed explainable deep learning-based engine provides clinicians with the predictive result and its visualized rationale. The clinicians can make the final diagnosis by integrating primary diagnostic prediction obtained from the proposed engine with the patient's clinical examination findings.
磁共振成像(MRI)被认为是诊断前盘移位(ADD)的金标准,前盘移位是最常见的颞下颌关节(TMJ)疾病。然而,即使是训练有素的临床医生也难以将MRI的动态特性与TMJ复杂的解剖特征相结合。作为第一项基于MRI的TMJ ADD自动诊断的验证性研究,我们提出了一种临床决策支持引擎,该引擎使用MR图像诊断TMJ ADD,并使用可解释人工智能提供热图作为诊断预测的可视化依据。
该引擎基于两个深度学习模型构建。第一个深度学习模型在整个矢状面MR图像中检测包含三个TMJ组件(即颞骨、关节盘和髁突)的感兴趣区域(ROI)。第二个深度学习模型在检测到的ROI内将TMJ ADD分为三类(即正常、不可复性盘前移位和可复性盘前移位)。在这项回顾性研究中,模型是在2005年4月至2020年4月期间获取的数据集上开发和测试的。在2016年1月至2019年2月期间在另一家医院获取的额外独立数据集用于分类模型的外部测试。检测性能通过平均精度均值(mAP)进行评估。分类性能通过受试者工作特征曲线下面积(AUROC)、灵敏度、特异度和尤登指数进行评估。通过非参数自助法计算95%置信区间,以评估模型性能的统计学意义。
在内部测试中,ROI检测模型在交并比(IoU)阈值为0.75时的mAP为0.819。在内部和外部测试中,ADD分类模型的AUROC值分别为0.985和0.960,灵敏度分别为0.950和0.926,特异度分别为0.919和0.892。
所提出的基于可解释深度学习的引擎为临床医生提供了预测结果及其可视化依据。临床医生可以通过将从所提出的引擎获得的初步诊断预测与患者的临床检查结果相结合来做出最终诊断。