Automatic detection of glaucoma via fundus imaging and artificial intelligence: A review
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Authors
Coan, Lauren J.Williiams, Bryan M.
Krishna Adithya, Venkatesh
Upadhyaya, Swati
Alkafri, Ala
Czanner, Silvester
Venkatesh, Rengaraj
Willoughby, Colin E.
Kavitha, Srinivasan
Czanner, Gabriela
Affiliation
Liverpool John Moores University; Lancaster University; Aravind Eye Hospital; Teesside University; Slovak University of Technology; Ulster UniversityPublication Date
2022-08-17
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Glaucoma is a leading cause of irreversible vision impairment globally, and cases are continuously rising worldwide. Early detection is crucial, allowing timely intervention that can prevent further visual field loss. To detect glaucoma an examination of the optic nerve head via fundus imaging can be performed, at the center of which is the assessment of the optic cup and disc boundaries. Fundus imaging is noninvasive and low-cost; however, image examination relies on subjective, time-consuming, and costly expert assessments. A timely question to ask is: "Can artificial intelligence mimic glaucoma assessments made by experts?" Specifically, can artificial intelligence automatically find the boundaries of the optic cup and disc (providing a so-called segmented fundus image) and then use the segmented image to identify glaucoma with high accuracy? We conducted a comprehensive review on artificial intelligence-enabled glaucoma detection frameworks that produce and use segmented fundus images and summarized the advantages and disadvantages of such frameworks. We identified 36 relevant papers from 2011 to 2021 and 2 main approaches: 1) logical rule-based frameworks, based on a set of rules; and 2) machine learning/statistical modeling-based frameworks. We critically evaluated the state-of-art of the 2 approaches, identified gaps in the literature and pointed at areas for future research.Citation
Coan, L. J., Williiams, B. M., Krishna Adithya, V., Upadhyaya, S., Alkafri, A., Czanner, S., Venkatesh, R., Willoughby, C. E., Kavitha, S., & Czanner, G. (2023). Automatic detection of glaucoma via fundus imaging and artificial intelligence: A review. Survey of Ophthalmology, 68(1), 17-41. https://doi.org/10.1016/j.survophthal.2022.08.005Publisher
ElsevierJournal
Survey of OphthalmologyType
ArticleLanguage
enDescription
© 2022 The Authors. Published by Elsevier Inc.ISSN
0039-6257EISSN
1879-3304Sponsors
This work was supported by a PhD studentship funding from the British Council for Prevention of Blindnessae974a485f413a2113503eed53cd6c53
10.1016/j.survophthal.2022.08.005
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