Artificial intelligence in dry eye disease

Dry eye disease (DED) has a prevalence of between 5 and 50%, depending on the diagnostic criteria used and population under study. However, it remains one of the most underdiagnosed and undertreated conditions in ophthalmology. Many tests used in the diagnosis of DED rely on an experienced observer...

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Veröffentlicht in:The ocular surface 2022-01, Vol.23, p.74-86
Hauptverfasser: Storås, Andrea M., Strümke, Inga, Riegler, Michael A., Grauslund, Jakob, Hammer, Hugo L., Yazidi, Anis, Halvorsen, Pål, Gundersen, Kjell G., Utheim, Tor P., Jackson, Catherine J.
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container_end_page 86
container_issue
container_start_page 74
container_title The ocular surface
container_volume 23
creator Storås, Andrea M.
Strümke, Inga
Riegler, Michael A.
Grauslund, Jakob
Hammer, Hugo L.
Yazidi, Anis
Halvorsen, Pål
Gundersen, Kjell G.
Utheim, Tor P.
Jackson, Catherine J.
description Dry eye disease (DED) has a prevalence of between 5 and 50%, depending on the diagnostic criteria used and population under study. However, it remains one of the most underdiagnosed and undertreated conditions in ophthalmology. Many tests used in the diagnosis of DED rely on an experienced observer for image interpretation, which may be considered subjective and result in variation in diagnosis. Since artificial intelligence (AI) systems are capable of advanced problem solving, use of such techniques could lead to more objective diagnosis. Although the term ‘AI’ is commonly used, recent success in its applications to medicine is mainly due to advancements in the sub-field of machine learning, which has been used to automatically classify images and predict medical outcomes. Powerful machine learning techniques have been harnessed to understand nuances in patient data and medical images, aiming for consistent diagnosis and stratification of disease severity. This is the first literature review on the use of AI in DED. We provide a brief introduction to AI, report its current use in DED research and its potential for application in the clinic. Our review found that AI has been employed in a wide range of DED clinical tests and research applications, primarily for interpretation of interferometry, slit-lamp and meibography images. While initial results are promising, much work is still needed on model development, clinical testing and standardisation.
doi_str_mv 10.1016/j.jtos.2021.11.004
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subjects Artificial Intelligence
Basale medisinske, odontologiske og veterinærmedisinske fag: 710
Basic medical, dental and veterinary science disciplines: 710
Dry eye disease
Dry Eye Syndromes - diagnosis
Humans
Machine Learning
Medical disciplines: 700
Medisinske Fag: 700
Ophthalmology
VDP
title Artificial intelligence in dry eye disease
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