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Review
. 2024 Sep 1;35(5):391-402.
doi: 10.1097/ICU.0000000000001062. Epub 2024 May 30.

Vision of the future: large language models in ophthalmology

Affiliations
Review

Vision of the future: large language models in ophthalmology

Prashant D Tailor et al. Curr Opin Ophthalmol. .

Abstract

Purpose of review: Large language models (LLMs) are rapidly entering the landscape of medicine in areas from patient interaction to clinical decision-making. This review discusses the evolving role of LLMs in ophthalmology, focusing on their current applications and future potential in enhancing ophthalmic care.

Recent findings: LLMs in ophthalmology have demonstrated potential in improving patient communication and aiding preliminary diagnostics because of their ability to process complex language and generate human-like domain-specific interactions. However, some studies have shown potential for harm and there have been no prospective real-world studies evaluating the safety and efficacy of LLMs in practice.

Summary: While current applications are largely theoretical and require rigorous safety testing before implementation, LLMs exhibit promise in augmenting patient care quality and efficiency. Challenges such as data privacy and user acceptance must be overcome before LLMs can be fully integrated into clinical practice.

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