Purpose: To introduce the applications of artificial intelligence (AI) in the clinical diagnosis and treatment of dry eye (DE) and to explore its common workflows, effectiveness, challenges, and future development directions. Methods: This article conducts a literature review, focusing on the applications of AI in the diagnosis and treatment of DE. The primary search terms include “artificial intelligence”, “machine learning”, “deep learning”, “computer-aided”, and “Dry Eye”. Results: A total of 48 relevant original studies were identified, and their algorithms, sample characteristics, and data types were summarized. Through data analysis and image recognition, AI assists in DE examinations, identifies risk factors, aids diagnosis, and manages and monitors treatment. AI excels in enhancing diagnostic efficiency, accuracy, and objectivity, and shows promise in cloud-based treatment management. However, the applications of AI in DE also face certain challenges that need to be addressed. Conclusions: AI has the potential to revolutionize the diagnosis of DE and recommend personalized treatment strategies. This review summarizes existing challenges and offers clinicians and researchers a comprehensive, objective overview of AI applications and workflows in DE.
Lu et al. (Tue,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: