Yu Hongjie, Dong Xingbo
School of Communication and Information Engineering, Shanghai University, Shanghai, 200444, China.
Anhui Provincial International Joint Research Center for Advanced Technology in Medical Imaging, School of Artificial Intelligence, Anhui University, Hefei, 230601, China.
Sci Rep. 2025 Jun 2;15(1):19298. doi: 10.1038/s41598-025-04503-5.
Retinal disorders, posing significant risks of the loss of vision or blindness, are increasingly prevalent, due to factors such as the aging population and chronic conditions like diabetes. Traditional diagnostic methods, relying on manually analyzing images, often have problems making an early detection and with their accuracy and efficiency, largely due to the subjectivity of human judgment and the time-consuming nature of the process. This study introduces a novel AI-based framework for diagnosing retinal disease, referred to as RetinaDNet. This framework leverages dual-branch input, incorporating both retinal images and vessel segmentation images, along with transfer learning and ensemble learning algorithms. This enhances the accuracy of the diagnoses and the stability of the model, particularly in scenarios with small sample sizes. By using vascular features and mitigating the risk of overfitting, this framework demonstrates superior performance in terms of multiple metrics. In particular, a soft voting classifier combined with the ResNet50 model attains accuracy rate of 99.2% on the diabetic retinopathy diagnosis task, and 98.8% on the retina disease classification task. The source code can be accessed at https://github.com/yu0809/Dual-branch-retinal-diseases .
视网膜疾病因人口老龄化和糖尿病等慢性病等因素而日益普遍,会带来严重的视力丧失或失明风险。传统的诊断方法依靠人工分析图像,往往在早期检测以及准确性和效率方面存在问题,这在很大程度上是由于人为判断的主观性和该过程的耗时性。本研究介绍了一种用于诊断视网膜疾病的基于人工智能的新型框架,称为RetinaDNet。该框架利用双分支输入,结合视网膜图像和血管分割图像,以及迁移学习和集成学习算法。这提高了诊断的准确性和模型的稳定性,特别是在小样本量的情况下。通过使用血管特征并降低过拟合风险,该框架在多个指标方面表现出卓越性能。特别是,结合ResNet50模型的软投票分类器在糖尿病视网膜病变诊断任务上的准确率达到99.2%,在视网膜疾病分类任务上的准确率达到98.8%。源代码可在https://github.com/yu0809/Dual-branch-retinal-diseases获取。