Department of Ophthalmology, Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Shanghai Key Laboratory of Orbital Diseases and Ocular Oncology, Shanghai, China.
JAMA Netw Open. 2024 Aug 1;7(8):e2425124. doi: 10.1001/jamanetworkopen.2024.25124.
Identifying pediatric eye diseases at an early stage is a worldwide issue. Traditional screening procedures depend on hospitals and ophthalmologists, which are expensive and time-consuming. Using artificial intelligence (AI) to assess children's eye conditions from mobile photographs could facilitate convenient and early identification of eye disorders in a home setting.
To develop an AI model to identify myopia, strabismus, and ptosis using mobile photographs.
DESIGN, SETTING, AND PARTICIPANTS: This cross-sectional study was conducted at the Department of Ophthalmology of Shanghai Ninth People's Hospital from October 1, 2022, to September 30, 2023, and included children who were diagnosed with myopia, strabismus, or ptosis.
A deep learning-based model was developed to identify myopia, strabismus, and ptosis. The performance of the model was assessed using sensitivity, specificity, accuracy, the area under the curve (AUC), positive predictive values (PPV), negative predictive values (NPV), positive likelihood ratios (P-LR), negative likelihood ratios (N-LR), and the F1-score. GradCAM++ was utilized to visually and analytically assess the impact of each region on the model. A sex subgroup analysis and an age subgroup analysis were performed to validate the model's generalizability.
A total of 1419 images obtained from 476 patients (225 female [47.27%]; 299 [62.82%] aged between 6 and 12 years) were used to build the model. Among them, 946 monocular images were used to identify myopia and ptosis, and 473 binocular images were used to identify strabismus. The model demonstrated good sensitivity in detecting myopia (0.84 [95% CI, 0.82-0.87]), strabismus (0.73 [95% CI, 0.70-0.77]), and ptosis (0.85 [95% CI, 0.82-0.87]). The model showed comparable performance in identifying eye disorders in both female and male children during sex subgroup analysis. There were differences in identifying eye disorders among different age subgroups.
In this cross-sectional study, the AI model demonstrated strong performance in accurately identifying myopia, strabismus, and ptosis using only smartphone images. These results suggest that such a model could facilitate the early detection of pediatric eye diseases in a convenient manner at home.
早期发现儿科眼病是一个全球性问题。传统的筛查程序依赖于医院和眼科医生,既昂贵又耗时。使用人工智能(AI)从移动照片评估儿童的眼部状况,可以在家庭环境中方便、早期地识别眼部疾病。
开发一种使用移动照片识别近视、斜视和上睑下垂的 AI 模型。
设计、设置和参与者:这是一项在 2022 年 10 月 1 日至 2023 年 9 月 30 日期间在上海第九人民医院眼科进行的横断面研究,纳入了被诊断为近视、斜视或上睑下垂的儿童。
开发了一种基于深度学习的模型来识别近视、斜视和上睑下垂。使用敏感性、特异性、准确性、曲线下面积(AUC)、阳性预测值(PPV)、阴性预测值(NPV)、阳性似然比(P-LR)、阴性似然比(N-LR)和 F1 评分来评估模型的性能。使用 GradCAM++ 对每个区域对模型的影响进行视觉和分析评估。进行了性别亚组分析和年龄亚组分析,以验证模型的泛化能力。
共使用 476 名患者的 1419 张图像(225 名女性[47.27%];299 名[62.82%]年龄在 6 至 12 岁之间)来构建模型。其中,946 张单眼图像用于识别近视和上睑下垂,473 张双眼图像用于识别斜视。该模型在检测近视(0.84[95%CI,0.82-0.87])、斜视(0.73[95%CI,0.70-0.77])和上睑下垂(0.85[95%CI,0.82-0.87])方面具有良好的敏感性。在性别亚组分析中,该模型在识别女性和男性儿童眼部疾病方面表现相当。在不同的年龄亚组中,识别眼部疾病存在差异。
在这项横断面研究中,该 AI 模型仅使用智能手机图像即可准确识别近视、斜视和上睑下垂,表现出强大的性能。这些结果表明,这样的模型可以方便地在家中早期发现儿科眼病。