Tong Yan, Lu Wei, Yu Yue, Shen Yin
1Eye Center, Renmin Hospital of Wuhan University, Wuhan, 430060 Hubei China.
2Medical Research Institute, Wuhan University, Wuhan, Hubei China.
Eye Vis (Lond). 2020 Apr 16;7:22. doi: 10.1186/s40662-020-00183-6. eCollection 2020.
In clinical ophthalmology, a variety of image-related diagnostic techniques have begun to offer unprecedented insights into eye diseases based on morphological datasets with millions of data points. Artificial intelligence (AI), inspired by the human multilayered neuronal system, has shown astonishing success within some visual and auditory recognition tasks. In these tasks, AI can analyze digital data in a comprehensive, rapid and non-invasive manner. Bioinformatics has become a focus particularly in the field of medical imaging, where it is driven by enhanced computing power and cloud storage, as well as utilization of novel algorithms and generation of data in massive quantities. Machine learning (ML) is an important branch in the field of AI. The overall potential of ML to automatically pinpoint, identify and grade pathological features in ocular diseases will empower ophthalmologists to provide high-quality diagnosis and facilitate personalized health care in the near future. This review offers perspectives on the origin, development, and applications of ML technology, particularly regarding its applications in ophthalmic imaging modalities.
在临床眼科中,基于包含数百万数据点的形态学数据集,各种与图像相关的诊断技术已开始为眼病提供前所未有的见解。受人类多层神经元系统启发的人工智能(AI)在一些视觉和听觉识别任务中取得了惊人的成功。在这些任务中,人工智能可以以全面、快速且非侵入性的方式分析数字数据。生物信息学尤其已成为医学成像领域的一个焦点,该领域由增强的计算能力和云存储、新算法的应用以及大量数据的生成所驱动。机器学习(ML)是人工智能领域的一个重要分支。机器学习在自动精确识别和分级眼病病理特征方面的总体潜力,将使眼科医生在不久的将来能够提供高质量的诊断并促进个性化医疗保健。本综述提供了关于机器学习技术的起源、发展和应用的观点,特别是关于其在眼科成像模式中的应用。