• Login
    View Item 
    •   Home
    • University Hospitals Birmingham NHS Foundation Trust
    • Medicine
    • Ophthalmology
    • View Item
    •   Home
    • University Hospitals Birmingham NHS Foundation Trust
    • Medicine
    • Ophthalmology
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Browse

    All of West Midlands Evidence RepositoryCommunitiesAuthorsTitlesPublication DateSubjectsPublication TypesJournalPublisherThis CollectionAuthorsTitlesPublication DateSubjectsPublication TypesJournalPublisherProfilesView

    My Account

    LoginRegister

    About

    AboutPolicies Privacy NoticeBlack Country Healthcare NHS Foundation TrustCoventry and Warwickshire Partnership NHS TrustDudley Group NHS Foundation TrustGeorge Eliot Hospital NHS TrustSandwell and West Birmingham NHS TrustSouth Warwickshire University NHS Foundation TrustUniversity Hospitals Birmingham NHS Foundation TrustUniversity Hospitals Coventry and Warwickshire NHS TrustWalsall Healthcare NHS Trust

    Statistics

    Most Popular ItemsStatistics by CountryMost Popular Authors

    A foundation model for generalizable disease detection from retinal images

    • CSV
    • RefMan
    • EndNote
    • BibTex
    • RefWorks
    Author
    Zhou, Yukun
    Chia, Mark A
    Wagner, Siegfried K
    Ayhan, Murat S
    Williamson, Dominic J
    Struyven, Robbert R
    Liu, Timing
    Xu, Moucheng
    Lozano, Mateo G
    Woodward-Court, Peter
    Kihara, Yuka
    Altmann, Andre
    Lee, Aaron Y
    Topol, Eric J
    Denniston, Alastair K
    Alexander, Daniel C
    Keane, Pearse A
    Show allShow less
    Publication date
    2023-09-13
    Subject
    Ophthalmology
    
    Metadata
    Show full item record
    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 disorders1. However, the development of AI models requires substantial annotation and models are usually task-specific with limited generalizability to different clinical applications2. 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.
    Citation
    Zhou Y, Chia MA, Wagner SK, Ayhan MS, Williamson DJ, Struyven RR, Liu T, Xu M, Lozano MG, Woodward-Court P, Kihara Y; UK Biobank Eye & Vision Consortium; Altmann A, Lee AY, Topol EJ, Denniston AK, Alexander DC, Keane PA. A foundation model for generalizable disease detection from retinal images. Nature. 2023 Oct;622(7981):156-163. doi: 10.1038/s41586-023-06555-x. Epub 2023 Sep 13. PMID: 37704728; PMCID: PMC10550819.
    Type
    Article
    Handle
    http://hdl.handle.net/20.500.14200/2547
    Additional Links
    http://www.nature.com/nature
    DOI
    10.1038/s41586-023-06555-x
    PMID
    37704728
    Journal
    Nature
    Publisher
    Nature Publishing Group
    ae974a485f413a2113503eed53cd6c53
    10.1038/s41586-023-06555-x
    Scopus Count
    Collections
    Ophthalmology

    entitlement

    DSpace software (copyright © 2002 - 2025)  DuraSpace
    Quick Guide | Contact Us
    Open Repository is a service operated by 
    Atmire NV
     

    Export search results

    The export option will allow you to export the current search results of the entered query to a file. Different formats are available for download. To export the items, click on the button corresponding with the preferred download format.

    By default, clicking on the export buttons will result in a download of the allowed maximum amount of items.

    To select a subset of the search results, click "Selective Export" button and make a selection of the items you want to export. The amount of items that can be exported at once is similarly restricted as the full export.

    After making a selection, click one of the export format buttons. The amount of items that will be exported is indicated in the bubble next to export format.