Lin Ye-Ting, Xiong Xu, Zheng Ying-Ping, Zhou Qiong
Department of Ophthalmology, The First Affiliated Hospital, Jiangxi Medical College, Nanchang University, Nanchang, Jiangxi, People's Republic of China.
Department of Product Design, Jiangxi Normal University, Nanchang, Jiangxi, People's Republic of China.
Clin Ophthalmol. 2025 May 16;19:1593-1607. doi: 10.2147/OPTH.S521558. eCollection 2025.
Idiopathic macular hole is an ophthalmic disease that seriously affects vision, and its early diagnosis and treatment have important clinical significance to reduce the occurrence of blindness. At present, OCT is the gold standard for diagnosing this disease, but its application is limited due to the need for professional ophthalmologist to diagnose it. The introduction of artificial intelligence will break this situation and make its diagnosis efficient, and how to build an effective predictive model is the key to the problem, and more clinical trials are still needed to verify it.
This study aims to evaluate the role of deep learning systems in Idiopathic Macular Hole diagnosis, grading, and prediction.
A single-center, retrospective study used binocular OCT images from IMH patients at the First Affiliated Hospital of Nanchang University (November 2019 - January 2023). A deep learning algorithm, including traditional omics, Resnet101, and fusion models incorporating multi-feature fusion and transfer learning, was developed. Model performance was evaluated using accuracy and AUC. Logistic regression analyzed clinical factors, and a nomogram predicted surgical risk. Analysis was conducted with SPSS 22.0 and R 3.6.3. < 0.05 was statistically significant.
Among 229 OCT images, the traditional omics, Resnet101, and fusion models achieved accuracies of 93%, 94%, and 95%, respectively, in the training set. In the test set, the fusion model and Resnet101 correctly identified 39 images, while the traditional omics model identified 35. The nomogram had a C-index of 0.996, with macular hole diameter most strongly associated with surgical risk.
The deep learning system with transfer learning and multi-feature fusion effectively diagnoses and grades IMH from OCT images.
特发性黄斑裂孔是一种严重影响视力的眼科疾病,其早期诊断和治疗对于减少失明的发生具有重要的临床意义。目前,光学相干断层扫描(OCT)是诊断该疾病的金标准,但由于需要专业眼科医生进行诊断,其应用受到限制。人工智能的引入将打破这种局面,使其诊断更加高效,而如何构建有效的预测模型是关键问题,仍需要更多的临床试验来验证。
本研究旨在评估深度学习系统在特发性黄斑裂孔诊断、分级和预测中的作用。
一项单中心回顾性研究使用了南昌大学第一附属医院特发性黄斑裂孔患者的双眼OCT图像(2019年11月至2023年1月)。开发了一种深度学习算法,包括传统组学、Resnet101以及结合多特征融合和迁移学习的融合模型。使用准确率和曲线下面积(AUC)评估模型性能。采用逻辑回归分析临床因素,并绘制列线图预测手术风险。使用SPSS 22.0和R 3.6.3进行分析。P<0.05具有统计学意义。
在229张OCT图像中,传统组学、Resnet101和融合模型在训练集中的准确率分别为93%、94%和95%。在测试集中,融合模型和Resnet101正确识别了39张图像,而传统组学模型识别了35张。列线图的C指数为0.996,黄斑裂孔直径与手术风险的相关性最强。
具有迁移学习和多特征融合的深度学习系统能够有效地从OCT图像中诊断特发性黄斑裂孔并进行分级。