Department of Ophthalmology, University of Tennessee Health Science Center, Memphis, USA.
Business Information Systems, Australian Institute of Higher Education, Sydney, Australia.
Biomed Eng Online. 2023 Dec 16;22(1):126. doi: 10.1186/s12938-023-01187-8.
Artificial intelligence (AI) has shown excellent diagnostic performance in detecting various complex problems related to many areas of healthcare including ophthalmology. AI diagnostic systems developed from fundus images have become state-of-the-art tools in diagnosing retinal conditions and glaucoma as well as other ocular diseases. However, designing and implementing AI models using large imaging data is challenging. In this study, we review different machine learning (ML) and deep learning (DL) techniques applied to multiple modalities of retinal data, such as fundus images and visual fields for glaucoma detection, progression assessment, staging and so on. We summarize findings and provide several taxonomies to help the reader understand the evolution of conventional and emerging AI models in glaucoma. We discuss opportunities and challenges facing AI application in glaucoma and highlight some key themes from the existing literature that may help to explore future studies. Our goal in this systematic review is to help readers and researchers to understand critical aspects of AI related to glaucoma as well as determine the necessary steps and requirements for the successful development of AI models in glaucoma.
人工智能(AI)在检测与包括眼科在内的许多医疗保健领域相关的各种复杂问题方面表现出了出色的诊断性能。基于眼底图像开发的 AI 诊断系统已经成为诊断视网膜疾病和青光眼以及其他眼部疾病的最新工具。然而,使用大型成像数据设计和实现 AI 模型具有挑战性。在本研究中,我们回顾了应用于多种视网膜数据模式(如眼底图像和用于青光眼检测、进展评估、分期等的视野)的不同机器学习(ML)和深度学习(DL)技术。我们总结了研究结果,并提供了几种分类法,以帮助读者了解青光眼领域中传统和新兴 AI 模型的发展。我们讨论了 AI 在青光眼应用中面临的机遇和挑战,并从现有文献中强调了一些可能有助于探索未来研究的关键主题。我们进行这项系统综述的目的是帮助读者和研究人员了解与青光眼相关的 AI 的关键方面,并确定成功开发青光眼 AI 模型所需的步骤和要求。