Department of Ophthalmology, Afffliated Hospital of Shandong Second Medical University, School of Clinical Medicine, Shandong Second Medical University, Weifang, 261000, Shandong, China.
Department of Ophthalmology, Afffliated Hospital of Shandong Second Medical University, Weifang, 261000, Shandong, China.
Sci Rep. 2024 Aug 28;14(1):20018. doi: 10.1038/s41598-024-71061-7.
Deep learning techniques were used in ophthalmology to develop artificial intelligence (AI) models for predicting the short-term effectiveness of anti-VEGF therapy in patients with macular edema secondary to branch retinal vein occlusion (BRVO-ME). 180 BRVO-ME patients underwent pre-treatment FFA scans. After 3 months of ranibizumab injections, CMT measurements were taken at baseline and 1-month intervals. Patients were categorized into good and poor prognosis groups based on macular edema at the 4th month follow-up. FFA-Net, a VGG-based classification network, was trained using FFA images from both groups. Class activation heat maps highlighted important locations. Benchmark models (DesNet-201, MobileNet-V3, ResNet-152, MansNet-75) were compared for training results. Performance metrics included accuracy, sensitivity, specificity, F1 score, and ROC curves. FFA-Net predicted BRVO-ME treatment effect with an accuracy of 88.63% and an F1 score of 0.89, with a sensitivity and specificity of 79.40% and 71.34%, respectively.The AUC of the ROC curve for the FFA-Net model was 0.71. The use of FFA based on deep learning technology has feasibility in predicting the treatment effect of BRVO-ME. The FFA-Net model constructed with the VGG model as the main body has good results in predicting the treatment effect of BRVO-ME. The typing of BRVO in FFA may be an important factor affecting the prognosis.
深度学习技术在眼科领域被用于开发人工智能(AI)模型,以预测继发于视网膜分支静脉阻塞(BRVO)的黄斑水肿(BRVO-ME)患者抗血管内皮生长因子(VEGF)治疗的短期疗效。180 例 BRVO-ME 患者接受了治疗前的 FFA 扫描。在接受 ranibizumab 注射治疗 3 个月后,在基线和 1 个月的间隔时间测量 CMT。根据第 4 个月随访时的黄斑水肿情况,将患者分为预后良好和预后不良组。使用来自两组的 FFA 图像对基于 VGG 的分类网络 FFA-Net 进行训练。类激活热图突出显示了重要位置。比较了基准模型(DesNet-201、MobileNet-V3、ResNet-152、MansNet-75)的训练结果。性能指标包括准确性、敏感性、特异性、F1 评分和 ROC 曲线。FFA-Net 预测 BRVO-ME 治疗效果的准确性为 88.63%,F1 得分为 0.89,敏感性和特异性分别为 79.40%和 71.34%。FFA-Net 模型的 ROC 曲线 AUC 为 0.71。基于深度学习技术的 FFA 具有预测 BRVO-ME 治疗效果的可行性。以 VGG 模型为主体构建的 FFA-Net 模型在预测 BRVO-ME 治疗效果方面具有良好的效果。FFA 中 BRVO 的分型可能是影响预后的一个重要因素。