Institute of Image Communication and Network Engineering, Shanghai Jiao Tong University, Shanghai, 200040, China.
Department of Ophthalmology, Shanghai Ninth People's Hospital, Shanghai Key Laboratory of Orbital Diseases and Ocular Oncology, and Center for Basic Medical Research and Innovation in Visual System Diseases of Ministry of Education, Shanghai Jiao Tong University School of Medicine, Shanghai, 200011, China.
Endocrine. 2024 Dec;86(3):1055-1064. doi: 10.1007/s12020-024-03906-0. Epub 2024 Jul 24.
Thyroid eye disease (TED) is the most common orbital disease in adults. Ocular motility restriction is the primary complaint of patients, while its evaluation is quite difficult. The present study aimed to introduce an artificial intelligence (AI) model based on orbital computed tomography (CT) images for ocular motility score.
A total of 410 sets of CT images and clinical data were obtained from the hospital. To build a triple classification predictive model for ocular motility score, multiple deep learning models were employed to extract features of images and clinical data. Subgroup analyses based on pertinent clinical features were performed to test the efficacy of models.
The ResNet-34 network outperformed Alex-Net and VGG16-Net in prediction of ocular motility score, with the optimal accuracy (ACC) of 0.907, 0.870, and 0.890, respectively. Subgroup analyses indicated no significant difference in ACC between active or inactive phase, functional visual field diplopia or peripheral visual field diplopia (p > 0.05). However, in the gender subgroup, the prediction model performed more accurately in female patients than males (p = 0.02).
In conclusion, the AI model based on CT images and clinical data successfully realized automatic scoring of ocular motility in TED patients. This approach potentially enhanced the efficiency and accuracy of ocular motility evaluation, thus facilitating clinical application.
甲状腺眼病(TED)是成人中最常见的眼眶疾病。眼球运动受限是患者的主要主诉,但其评估相当困难。本研究旨在介绍一种基于眼眶计算机断层扫描(CT)图像的人工智能(AI)模型,用于评估眼球运动评分。
从医院获得了 410 套 CT 图像和临床数据。为了建立眼球运动评分的三重分类预测模型,采用了多种深度学习模型来提取图像和临床数据的特征。根据相关临床特征进行了亚组分析,以测试模型的疗效。
ResNet-34 网络在预测眼球运动评分方面优于 Alex-Net 和 VGG16-Net,其最佳准确性(ACC)分别为 0.907、0.870 和 0.890。亚组分析表明,在活动期或非活动期、功能性视野复视或周边视野复视(p>0.05)之间,ACC 无显著差异。然而,在性别亚组中,预测模型在女性患者中的表现优于男性(p=0.02)。
总之,基于 CT 图像和临床数据的 AI 模型成功实现了 TED 患者眼球运动的自动评分。这种方法有可能提高眼球运动评估的效率和准确性,从而促进临床应用。