Kamnig Rupert, Robatsch Noah, Hillenmayer Anna, Vogt Denise, König Susanna F, Vounotrypidis Efstathios, Wolf Armin, Wertheimer Christian M
Department of Ophthalmology, University Hospital Ulm, Ulm, Germany.
Ophthalmol Sci. 2025 Mar 13;5(4):100762. doi: 10.1016/j.xops.2025.100762. eCollection 2025 Jul-Aug.
A significant proportion of patients with epiretinal membrane (ERM) demonstrate improvement in visual acuity (VA) 3 months after pars plana vitrectomy (PPV) and membrane peeling. The identification of these patients before surgery is clinically relevant.
This retrospective study was conducted to establish a neural network to predict improvement using preoperative clinical factors and OCT.
A total of 427 eyes from 423 patients who underwent a PPV for primary idiopathic ERM combined with or without cataract surgery were included.
The data were automatically labeled according to whether an improvement of at least 2 logarithm of the minimum angle of resolution lines was observed. A multilayer perceptron was trained using a set of 7 clinical factors. The images were processed using a convolutional network. The output of both networks was concatenated and presented to a second multilayer perceptron. The dataset was divided into training, validation, and test datasets.
The accuracy of the neural network on an independent test dataset for the prediction of postoperative VA was analyzed. The impact of individual clinical factors and images on performance was assessed using ablation studies and class activation maps.
The clinical factors alone demonstrated the highest accuracy of 0.74, with a sensitivity of 0.82 and a specificity of 0.67. These results were obtained after the exclusion of less significant factors in an ablation study. The inclusion of the factors age, preoperative lens status, preoperative VA, and the distinction between combined phacovitrectomy and vitrectomy yielded the most accurate results. In contrast, the use of ResNet18 as a neural network for image processing alone (0.61) or images combined with clinical factors (0.70) resulted in reduced accuracy. In the class activation map, image regions corresponding to the outer, central, and inner retina appeared to be important for the decision-making process.
Our neural network has yielded favorable results in predicting improvement in VA in approximately 3-quarters of patients. This artificial intelligence-based personalized therapeutic strategy has the potential to aid decision-making. Future studies are to assess the clinical potential and generalizability and improve accuracy by including a more extensive dataset.
The author(s) have no proprietary or commercial interest in any materials discussed in this article.
相当一部分视网膜前膜(ERM)患者在玻璃体切割术(PPV)联合视网膜前膜剥除术后3个月视力(VA)得到改善。术前识别这些患者具有临床意义。
本回顾性研究旨在建立一个神经网络,利用术前临床因素和光学相干断层扫描(OCT)来预测视力改善情况。
纳入423例因原发性特发性ERM接受PPV联合或不联合白内障手术患者的427只眼。
根据是否观察到最小分辨角对数视力至少提高2行对数据进行自动标注。使用一组7个临床因素训练多层感知器。利用卷积网络处理图像。将两个网络的输出连接起来,并呈现给第二个多层感知器。将数据集分为训练集、验证集和测试集。
分析神经网络在独立测试数据集上预测术后视力的准确性。使用消融研究和类激活映射评估个体临床因素和图像对性能的影响。
仅临床因素显示出最高准确率0.74,敏感性0.82,特异性0.67。这些结果是在消融研究中排除不太重要的因素后获得的。纳入年龄、术前晶状体状态、术前视力以及晶状体玻璃体切除术和玻璃体切除术之间的区别等因素产生了最准确的结果。相比之下,单独使用ResNet18作为图像处理神经网络(0.61)或图像与临床因素结合使用(0.70)导致准确率降低。在类激活映射中,对应于视网膜外层、中央和内层的图像区域似乎对决策过程很重要。
我们的神经网络在预测约四分之三患者的视力改善方面取得了良好结果。这种基于人工智能的个性化治疗策略有可能辅助决策。未来的研究将评估其临床潜力和普遍性,并通过纳入更广泛的数据集提高准确性。
作者对本文讨论的任何材料均无所有权或商业利益。