Iao Wai Cheng, Zhang Weixing, Wang Xun, Wu Yuxuan, Lin Duoru, Lin Haotian
State Key Laboratory of Ophthalmology, Zhongshan Ophthalmic Center, Sun Yat-sen University, Guangdong Provincial Key Laboratory of Ophthalmology and Vision Science, Guangdong Provincial Clinical Research Center for Ocular Diseases, Guangzhou 510060, China.
Hainan Eye Hospital and Key Laboratory of Ophthalmology, Zhongshan Ophthalmic Center, Sun Yat-sen University, Haikou 570311, China.
Diagnostics (Basel). 2023 Feb 27;13(5):900. doi: 10.3390/diagnostics13050900.
Deep learning (DL) is the new high-profile technology in medical artificial intelligence (AI) for building screening and diagnosing algorithms for various diseases. The eye provides a window for observing neurovascular pathophysiological changes. Previous studies have proposed that ocular manifestations indicate systemic conditions, revealing a new route in disease screening and management. There have been multiple DL models developed for identifying systemic diseases based on ocular data. However, the methods and results varied immensely across studies. This systematic review aims to summarize the existing studies and provide an overview of the present and future aspects of DL-based algorithms for screening systemic diseases based on ophthalmic examinations. We performed a thorough search in PubMed, Embase, and Web of Science for English-language articles published until August 2022. Among the 2873 articles collected, 62 were included for analysis and quality assessment. The selected studies mainly utilized eye appearance, retinal data, and eye movements as model input and covered a wide range of systemic diseases such as cardiovascular diseases, neurodegenerative diseases, and systemic health features. Despite the decent performance reported, most models lack disease specificity and public generalizability for real-world application. This review concludes the pros and cons and discusses the prospect of implementing AI based on ocular data in real-world clinical scenarios.
深度学习(DL)是医学人工智能(AI)领域备受瞩目的新技术,用于构建各种疾病的筛查和诊断算法。眼睛为观察神经血管病理生理变化提供了一个窗口。先前的研究表明,眼部表现提示全身状况,为疾病筛查和管理开辟了一条新途径。已经开发了多个基于眼部数据识别全身性疾病的深度学习模型。然而,不同研究的方法和结果差异极大。本系统评价旨在总结现有研究,并概述基于眼科检查的深度学习算法在筛查全身性疾病方面的现状和未来发展。我们在PubMed、Embase和Web of Science中进行了全面检索,以查找截至2022年8月发表的英文文章。在收集的2873篇文章中,有62篇被纳入分析和质量评估。所选研究主要将眼部外观、视网膜数据和眼球运动作为模型输入,涵盖了广泛的全身性疾病,如心血管疾病、神经退行性疾病和全身健康特征。尽管报告的性能不错,但大多数模型缺乏疾病特异性和在现实世界应用中的公共通用性。本综述总结了利弊,并讨论了在现实世界临床场景中基于眼部数据实施人工智能的前景。