Fırat Murat, Fırat İlknur Tuncer, Üstündağ Ziynet Fadıllıoğlu, Öztürk Emrah, Tuncer Taner
Faculty of Medicine, Malatya Turgut Özal University, Ophthalmology, 44090 Malatya, Türkiye.
Faculty of Medicine, Inonu University, Ophthalmology, 44280 Malatya, Türkiye.
Diagnostics (Basel). 2025 Sep 5;15(17):2253. doi: 10.3390/diagnostics15172253.
: Wet age-related macular degeneration (AMD) is a progressive retinal disease characterized by macular neovascularization (MNV). Currently, the standard treatment for wet AMD is intravitreal anti-VEGF administration, which aims to control disease activity by suppressing neovascularization. In clinical practice, the decision to continue or discontinue treatment is largely based on the presence of fluid on optical coherence tomography (OCT) and changes in visual acuity. However, discrepancies between anatomic and functional responses can occur during these assessments. : This article presents an artificial intelligence (AI)-based classification model developed to objectively assess the response to anti-VEGF treatment in patients with AMD at 3 months. This retrospective study included 120 patients (144 eyes) who received intravitreal bevacizumab treatment. After bevacizumab loading treatment, the presence of subretinal/intraretinal fluid (SRF/IRF) on OCT images and changes in visual acuity (logMAR) were evaluated. Patients were divided into three groups: Class 0, active disease (persistent SRF/IRF); Class 1, good response (no SRF/IRF and ≥0.1 logMAR improvement); and Class 2, limited response (no SRF/IRF but with <0.1 logMAR improvement). Pre-treatment and 3-month post-treatment OCT image pairs were used for training and testing the artificial intelligence model. Based on this grouping, classification was performed with a Siamese neural network (ResNet-18-based) model. : The model achieved 95.4% accuracy. The macro precision, macro recall, and macro F1 scores for the classes were 0.948, 0.949, and 0.948, respectively. Layer Class Activation Map (LayerCAM) heat maps and Shapley Additive Explanations (SHAP) overlays confirmed that the model focused on pathology-related regions. : In conclusion, the model classifies post-loading response by predicting both anatomic disease activity and visual prognosis from OCT images.
湿性年龄相关性黄斑变性(AMD)是一种以黄斑新生血管形成(MNV)为特征的进行性视网膜疾病。目前,湿性AMD的标准治疗方法是玻璃体内注射抗血管内皮生长因子(VEGF),其目的是通过抑制新生血管形成来控制疾病活动。在临床实践中,继续或停止治疗的决定很大程度上基于光学相干断层扫描(OCT)上是否存在液体积聚以及视力变化。然而,在这些评估过程中,解剖学和功能反应之间可能会出现差异。
本文介绍了一种基于人工智能(AI)的分类模型,该模型旨在客观评估AMD患者在3个月时对抗VEGF治疗的反应。这项回顾性研究纳入了120例接受玻璃体内注射贝伐单抗治疗的患者(144只眼)。在贝伐单抗负荷治疗后,评估OCT图像上视网膜下/视网膜内液体积聚(SRF/IRF)的存在情况以及视力(logMAR)的变化。患者被分为三组:0级,疾病活动(持续性SRF/IRF);1级,良好反应(无SRF/IRF且视力改善≥0.1 logMAR);2级,有限反应(无SRF/IRF但视力改善<0.1 logMAR)。治疗前和治疗后3个月的OCT图像对用于训练和测试人工智能模型。基于此分组,使用连体神经网络(基于ResNet-18)模型进行分类。
该模型的准确率达到了95.4%。各等级的宏精度、宏召回率和宏F1分数分别为0.948、0.949和0.948。层类激活映射(LayerCAM)热图和夏普利值附加解释(SHAP)叠加图证实该模型聚焦于与病理相关的区域。
总之,该模型通过从OCT图像预测解剖学疾病活动和视觉预后,对负荷治疗后的反应进行分类。