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Abstract #117728 Published in IGR 24-4

Artificial intelligence in glaucoma: opportunities, challenges, and future directions

Huang X; Islam MR; Islam MR; Islam MR; Akter S; Ahmed F; Kazami E; Serhan HA; Abd-Alrazaq A; Yousefi S
Biomedical engineering online 2023; 22: 126


Artificial intelligence (AI) has shown excellent diagnostic performance in detecting various complex problems related to many areas of healthcare including ophthalmology. AI diagnostic systems developed from fundus images have become state-of-the-art tools in diagnosing retinal conditions and glaucoma as well as other ocular diseases. However, designing and implementing AI models using large imaging data is challenging. In this study, we review different machine learning (ML) and deep learning (DL) techniques applied to multiple modalities of retinal data, such as fundus images and visual fields for glaucoma detection, progression assessment, staging and so on. We summarize findings and provide several taxonomies to help the reader understand the evolution of conventional and emerging AI models in glaucoma. We discuss opportunities and challenges facing AI application in glaucoma and highlight some key themes from the existing literature that may help to explore future studies. Our goal in this systematic review is to help readers and researchers to understand critical aspects of AI related to glaucoma as well as determine the necessary steps and requirements for the successful development of AI models in glaucoma.

Department of Ophthalmology, University of Tennessee Health Science Center, Memphis, USA.

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15 Miscellaneous



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