Department of Optometry, Jinling Institute of Technology, Nanjing, Jiangsu, China.
Nanjing Key Laboratory of Optometric Materials and Application Technology, Nanjing, Jiangsu, China.
Dis Markers. 2022 Aug 24;2022:4988256. doi: 10.1155/2022/4988256. eCollection 2022.
This study is aimed at developing an intelligent algorithm based on deep learning and discussing its application for the classification and diagnosis of retinal vein occlusions (RVO) using fundus images. A total of 501 fundus images of healthy eyes and patients with RVO were used for model training and testing to investigate an intelligent diagnosis system. The images were first classified into four categories by fundus disease specialists: (i) healthy fundus (group 0), (ii) branch RVO (BRVO) (group 1), (iii) central RVO (CRVO) (group 2), and (iv) macular branch RVO (MBRVO) (group 3), before being diagnosed using the ResNet18 network model. Intelligent diagnoses were compared with clinical diagnoses. The specificity of the intelligent diagnosis system under each attention mechanism was 100% in group 0 and also revealed a high sensitivity of over 95%, 1 score of over 97%, and an accuracy of over 97% in this group. For the other three groups, the specificities of diagnosis ranged from 0.45 to 0.91 with different attention mechanisms, in which the ResNet18+coordinate attention (CA) model had the highest specificities of 0.91, 0.88, and 0.83 for groups 1, 2, and 3, respectively. It also provided a high accuracy of over 94% with a coordinate attention mechanism in all four groups. The intelligent diagnosis and classifier system developed herein based on deep learning can determine the presence of RVO and classify disease according to the site of occlusion. This proposed system is expected to provide a new tool for RVO diagnosis and screening and will help solve the current challenges due to the shortage of medical resources.
本研究旨在开发一种基于深度学习的智能算法,并探讨其在使用眼底图像对视网膜静脉阻塞(RVO)进行分类和诊断中的应用。共使用了 501 张健康眼和 RVO 患者的眼底图像进行模型训练和测试,以研究一种智能诊断系统。这些图像首先由眼底疾病专家分为四类:(i)健康眼底(0 组)、(ii)分支 RVO(BRVO)(1 组)、(iii)中央 RVO(CRVO)(2 组)和(iv)黄斑分支 RVO(MBRVO)(3 组),然后使用 ResNet18 网络模型进行诊断。智能诊断与临床诊断进行了比较。在每个注意力机制下,智能诊断系统在 0 组的特异性均为 100%,且在该组的灵敏度也超过 95%,1 分率超过 97%,准确率超过 97%。对于其他三组,不同注意力机制下的诊断特异性在 0.45 到 0.91 之间,其中 ResNet18+坐标注意力(CA)模型在 1、2 和 3 组中的特异性分别为 0.91、0.88 和 0.83,且均提供了超过 94%的准确率。基于深度学习的 RVO 智能诊断和分类系统能够确定 RVO 的存在并根据阻塞部位对疾病进行分类。该系统有望为 RVO 诊断和筛查提供新的工具,并有助于解决由于医疗资源短缺而导致的当前挑战。