Christian Doppler Laboratory for Ophthalmic Image Analysis, Vienna Reading Center, Department of Ophthalmology, Medical University of Vienna, Spitalgasse 23, 1090, Vienna, Austria.
Christian Doppler Laboratory for Ophthalmic Image Analysis, Vienna Reading Center, Department of Ophthalmology, Medical University of Vienna, Spitalgasse 23, 1090, Vienna, Austria.
Prog Retin Eye Res. 2018 Nov;67:1-29. doi: 10.1016/j.preteyeres.2018.07.004. Epub 2018 Aug 1.
Major advances in diagnostic technologies are offering unprecedented insight into the condition of the retina and beyond ocular disease. Digital images providing millions of morphological datasets can fast and non-invasively be analyzed in a comprehensive manner using artificial intelligence (AI). Methods based on machine learning (ML) and particularly deep learning (DL) are able to identify, localize and quantify pathological features in almost every macular and retinal disease. Convolutional neural networks thereby mimic the path of the human brain for object recognition through learning of pathological features from training sets, supervised ML, or even extrapolation from patterns recognized independently, unsupervised ML. The methods of AI-based retinal analyses are diverse and differ widely in their applicability, interpretability and reliability in different datasets and diseases. Fully automated AI-based systems have recently been approved for screening of diabetic retinopathy (DR). The overall potential of ML/DL includes screening, diagnostic grading as well as guidance of therapy with automated detection of disease activity, recurrences, quantification of therapeutic effects and identification of relevant targets for novel therapeutic approaches. Prediction and prognostic conclusions further expand the potential benefit of AI in retina which will enable personalized health care as well as large scale management and will empower the ophthalmologist to provide high quality diagnosis/therapy and successfully deal with the complexity of 21st century ophthalmology.
重大的诊断技术进步正在为视网膜及眼部疾病以外的疾病提供前所未有的洞察。使用人工智能(AI)可以快速、非侵入性地综合分析提供数百万形态数据集的数字图像。基于机器学习(ML),特别是深度学习(DL)的方法能够识别、定位和量化几乎所有黄斑和视网膜疾病的病理特征。卷积神经网络通过从训练集中学习病理特征、监督式 ML,甚至通过独立识别的模式进行外推、无监督式 ML,模拟了人类大脑进行物体识别的路径。基于 AI 的视网膜分析方法多种多样,在不同的数据集和疾病中,其适用性、可解释性和可靠性差异很大。最近,基于 AI 的全自动系统已被批准用于筛查糖尿病视网膜病变(DR)。ML/DL 的总体潜力包括筛查、诊断分级以及通过自动检测疾病活动、复发、治疗效果的量化以及识别新治疗方法的相关靶点来指导治疗。预测和预后结论进一步扩大了 AI 在视网膜中的潜在益处,这将使个性化医疗以及大规模管理成为可能,并使眼科医生能够提供高质量的诊断/治疗,并成功应对 21 世纪眼科的复杂性。