计算机科学
人工智能
概化理论
机器学习
视网膜
适应(眼睛)
疾病
医学
病理
神经科学
眼科
数学
生物
统计
作者
Yukun Zhou,Mark A. Chia,Siegfried Wagner,Murat Seçkin Ayhan,Dominic J. Williamson,Robbert Struyven,Timing Liu,Moucheng Xu,Mateo Gende,Peter Woodward-Court,Yuka Kihara,Naomi E. Allen,John Gallacher,Thomas J. Littlejohns,Tariq Aslam,Paul N. Bishop,Graeme C. Black,Panagiotis I. Sergouniotis,Denize Atan,Andrew D. Dick
出处
期刊:Nature
[Springer Nature]
日期:2023-09-13
卷期号:622 (7981): 156-163
被引量:594
标识
DOI:10.1038/s41586-023-06555-x
摘要
Abstract Medical artificial intelligence (AI) offers great potential for recognizing signs of health conditions in retinal images and expediting the diagnosis of eye diseases and systemic disorders 1 . However, the development of AI models requires substantial annotation and models are usually task-specific with limited generalizability to different clinical applications 2 . Here, we present RETFound, a foundation model for retinal images that learns generalizable representations from unlabelled retinal images and provides a basis for label-efficient model adaptation in several applications. Specifically, RETFound is trained on 1.6 million unlabelled retinal images by means of self-supervised learning and then adapted to disease detection tasks with explicit labels. We show that adapted RETFound consistently outperforms several comparison models in the diagnosis and prognosis of sight-threatening eye diseases, as well as incident prediction of complex systemic disorders such as heart failure and myocardial infarction with fewer labelled data. RETFound provides a generalizable solution to improve model performance and alleviate the annotation workload of experts to enable broad clinical AI applications from retinal imaging.
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