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Assessment of Large Language Models in Cataract Care Information Provision: A Quantitative Comparison
18
Zitationen
6
Autoren
2024
Jahr
Abstract
Our findings emphasize the potential of LLMs, particularly ChatGPT-4o, to deliver accurate and comprehensive responses to cataract-related queries, especially in prevention, indicating potential for medical consultation. Continuous efforts to enhance LLMs' accuracy through ongoing strategies and evaluations are essential.
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