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ArticleOpen Access http://dx.doi.org/10.26855/ftair.2024.12.003

Research Progress in the Application of Artificial Intelligence in the Diagnosis and Treatment of Glaucoma

Bin Zhang1, Jiantao Wang2,*

1The Second Clinical College of Jinan University, Shenzhen 518020, Guangdong, China.

2Shenzhen Eye Hospital, Shenzhen 518040, Guangdong, China.

*Corresponding author: Jiantao Wang

Published: November 17,2024

Abstract

In today's digital age, artificial intelligence (AI) is developing rapidly in various fields around the world and has become an important force leading reform and innovation in various industries. AI has promoted the development of AI ophthalmology and provided a new model for the diagnosis and treatment of eye diseases. Glaucoma is a common irreversible blinding eye disease. Its early diagnosis and treatment can prevent the occurrence and development of the disease to a certain extent, improve patient prognosis, and reduce the global blindness rate. Starting from the direction of AI, this article reviews the relevant research and application in the diagnosis and treatment of glaucoma, aiming to provide new ideas for the AI diagnosis and treatment of glaucoma.

Keywords

Artificial intelligence (AI); Glaucoma; Diagnosis and treatment

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How to cite this paper

Research Progress in the Application of Artificial Intelligence in the Diagnosis and Treatment of Glaucoma

How to cite this paper: Bin Zhang, Jiantao Wang. (2024) Research Progress in the Application of Artificial Intelligence in the Diagnosis and Treatment of Glaucoma. Future Trends in AI Research, 1(1), 9-12.

DOI: http://dx.doi.org/10.26855/ftair.2024.12.003