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Transforming cataract care through artificial intelligence: an evaluation of large language models’ performance in addressing cataract-related queries
1
Zitationen
9
Autoren
2025
Jahr
Abstract
Our study suggested that LLMs exhibited considerable potential in providing accurate and comprehensive responses to common cataract-related clinical issues. Notably, ChatGPT-4o achieved the best scores in accuracy, completeness, and harmlessness. Despite these promising results, clinicians and patients should be aware of the limitations of artificial intelligence (AI) to ensure critical evaluation in clinical practice.
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