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Integration of Artificial Intelligence into the Approach for Diagnosis and Monitoring of Dry Eye Disease

Hee Kyung Yang, Song A Che, Joon Young Hyon, Sang Beom Han

2022Diagnostics23 citationsDOIOpen Access PDF

Abstract

Dry eye disease (DED) is one of the most common diseases worldwide that can lead to a significant impairment of quality of life. The diagnosis and treatment of the disease are often challenging because of the lack of correlation between the signs and symptoms, limited reliability of diagnostic tests, and absence of established consensus on the diagnostic criteria. The advancement of machine learning, particularly deep learning technology, has enabled the application of artificial intelligence (AI) in various anterior segment disorders, including DED. Currently, many studies have reported promising results of AI-based algorithms for the accurate diagnosis of DED and precise and reliable assessment of data obtained by imaging devices for DED. Thus, the integration of AI into clinical approaches for DED can enhance diagnostic and therapeutic performance. In this review, in addition to a brief summary of the application of AI in anterior segment diseases, we will provide an overview of studies regarding the application of AI in DED and discuss the recent advances in the integration of AI into the clinical approach for DED.

Topics & Concepts

Artificial intelligenceDiseaseApplications of artificial intelligenceReliability (semiconductor)Clinical PracticeMachine learningComputer scienceMedicinePathologyPhysical therapyPhysicsQuantum mechanicsPower (physics)Ocular Surface and Contact LensAllergic Rhinitis and SensitizationGlaucoma and retinal disorders
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