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    Artificial intelligence in corneal diseases : a narrative review

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    Author
    Nguyen, Tuan
    Ong, Joshua
    Masalkhi, Mouayad
    Waisberg, Ethan
    Zaman, Nasif
    Sarker, Prithul
    Aman, Sarah
    Lin, Haotian
    Luo, Mingjie
    Ambrosio, Renato
    Machado, Aydano P
    Ting, Darren Shu Jeng cc
    Mehta, Jodhbir S
    Tavakkoli, Alireza
    Lee, Andrew G
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    Affiliation
    Weill Cornell/Rockefeller/Sloan-Kettering Tri-Institutional MD-PhD Program; University of Michigan Kellogg Eye Center; University College Dublin; Sandwell and West Birmingham NHS Trust; et al.
    Publication date
    2024-08-27
    Subject
    Ophthalmology
    
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    Abstract
    Corneal diseases represent a growing public health burden, especially in resource-limited settings lacking access to specialized eye care. Artificial intelligence (AI) offers promising solutions for automating the diagnosis and management of corneal conditions. This narrative review examines the application of AI in corneal diseases, focusing on keratoconus, infectious keratitis, pterygium, dry eye disease, Fuchs endothelial corneal dystrophy, and corneal transplantation. AI models integrating diverse imaging modalities (e.g., corneal topography, slit-lamp, and anterior segment OCT images) and clinical data have demonstrated high diagnostic accuracy, often outperforming human experts. Emerging trends include the incorporation of biomechanical data to enhance keratoconus detection, leveraging in vivo confocal microscopy for diagnosing infectious keratitis, and employing multimodal approaches for comprehensive disease analysis. Additionally, AI has shown potential in predicting disease progression, treatment outcomes, and postoperative complications in corneal transplantation. While challenges remain such as population heterogeneity, limited external validation, and the "black box" nature of some models, ongoing advancement in explainable AI, data augmentation, and improved regulatory frameworks can serve to address these limitations.
    Citation
    Nguyen T, Ong J, Masalkhi M, Waisberg E, Zaman N, Sarker P, Aman S, Lin H, Luo M, Ambrosio R, Machado AP, Ting DSJ, Mehta JS, Tavakkoli A, Lee AG. Artificial intelligence in corneal diseases: A narrative review. Cont Lens Anterior Eye. 2024 Aug 27:102284. doi: 10.1016/j.clae.2024.102284. Epub ahead of print
    Type
    Article
    Handle
    http://hdl.handle.net/20.500.14200/5686
    Journal
    Contact Lens & Anterior Eye
    Publisher
    Elsevier
    Collections
    Research (Articles)

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