Department of Respiratory Medicine and Clinical Immunology, Osaka University Graduate School of Medicine, 2-2, Yamadaoka, Suita, Osaka, 565-0871, Japan.
Department of Rheumatology, Nishinomiya Municipal Central Hospital, Hyogo, Japan.
Arthritis Res Ther. 2023 Sep 25;25(1):181. doi: 10.1186/s13075-023-03172-x.
This work aims to develop a deep learning model, assessing atlantoaxial subluxation (AAS) in rheumatoid arthritis (RA), which can often be ambiguous in clinical practice.
We collected 4691 X-ray images of the cervical spine of the 906 patients with RA. Among these images, 3480 were used for training the deep learning model, 803 were used for validating the model during the training process, and the remaining 408 were used for testing the performance of the trained model. The two-dimensional key points' detection model of Deep High-Resolution Representation Learning for Human Pose Estimation was adopted as the base convolutional neural network model. The model inferred four coordinates to calculate the atlantodental interval (ADI) and space available for the spinal cord (SAC). Finally, these values were compared with those by clinicians to evaluate the performance of the model.
Among the 408 cervical images for testing the performance, the trained model correctly identified the four coordinates in 99.5% of the dataset. The values of ADI and SAC were positively correlated among the model and two clinicians. The sensitivity of AAS diagnosis with ADI or SAC by the model was 0.86 and 0.97 respectively. The specificity of that was 0.57 and 0.5 respectively.
We present the development of a deep learning model for the evaluation of cervical lesions of patients with RA. The model was demonstrably shown to be useful for quantitative evaluation.
本研究旨在开发一种深度学习模型,用于评估类风湿关节炎(RA)患者的寰枢关节半脱位(AAS),因为在临床实践中,这种疾病的诊断可能存在一定的模糊性。
我们收集了 906 例 RA 患者的 4691 张颈椎 X 光片。其中 3480 张用于训练深度学习模型,803 张用于在训练过程中验证模型,其余 408 张用于测试训练后的模型性能。该研究采用二维关键点检测模型 Deep High-Resolution Representation Learning for Human Pose Estimation 作为基础卷积神经网络模型。该模型推断出四个坐标,用于计算寰齿间距(ADI)和脊髓可用空间(SAC)。最后,将这些值与临床医生的测量值进行比较,以评估模型的性能。
在用于测试性能的 408 张颈椎图像中,训练后的模型在数据集的 99.5%中正确识别了四个坐标。模型和两位临床医生测量的 ADI 和 SAC 值之间呈正相关。模型诊断 AAS 的敏感度分别为 0.86 和 0.97,特异度分别为 0.57 和 0.5。
我们提出了一种用于评估 RA 患者颈椎病变的深度学习模型。该模型在定量评估方面表现出了良好的效果。