Nguyen Truong X, Ran An Ran, Hu Xiaoyan, Yang Dawei, Jiang Meirui, Dou Qi, Cheung Carol Y
Department of Ophthalmology and Visual Sciences, The Chinese University of Hong Kong, Hong Kong SAR, China.
Department of Computer Science and Engineering, The Chinese University of Hong Kong, Hong Kong SAR, China.
Diagnostics (Basel). 2022 Nov 17;12(11):2835. doi: 10.3390/diagnostics12112835.
Advances in artificial intelligence deep learning (DL) have made tremendous impacts on the field of ocular imaging over the last few years. Specifically, DL has been utilised to detect and classify various ocular diseases on retinal photographs, optical coherence tomography (OCT) images, and OCT-angiography images. In order to achieve good robustness and generalisability of model performance, DL training strategies traditionally require extensive and diverse training datasets from various sites to be transferred and pooled into a "centralised location". However, such a data transferring process could raise practical concerns related to data security and patient privacy. Federated learning (FL) is a distributed collaborative learning paradigm which enables the coordination of multiple collaborators without the need for sharing confidential data. This distributed training approach has great potential to ensure data privacy among different institutions and reduce the potential risk of data leakage from data pooling or centralisation. This review article aims to introduce the concept of FL, provide current evidence of FL in ocular imaging, and discuss potential challenges as well as future applications.
在过去几年中,人工智能深度学习(DL)的进展对眼科成像领域产生了巨大影响。具体而言,DL已被用于在视网膜照片、光学相干断层扫描(OCT)图像和OCT血管造影图像上检测和分类各种眼科疾病。为了实现模型性能的良好稳健性和通用性,传统的DL训练策略需要将来自各个站点的大量多样的训练数据集传输并汇总到一个“集中位置”。然而,这样的数据传输过程可能会引发与数据安全和患者隐私相关的实际问题。联邦学习(FL)是一种分布式协作学习范式,它能够在无需共享机密数据的情况下协调多个协作者。这种分布式训练方法在确保不同机构之间的数据隐私以及降低数据汇总或集中化导致的数据泄露潜在风险方面具有巨大潜力。这篇综述文章旨在介绍FL的概念,提供FL在眼科成像中的当前证据,并讨论潜在挑战以及未来应用。