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3555 Neurology resident and fellow teaching cases can be delivered in an interactive format with artificial intelligence
0
Zitationen
5
Autoren
2025
Jahr
Abstract
Results LLMs and expert feedback were similar in terms of word length and number of sentences.In the feedback provided, the AI commented on 20/20 (100%) aspects of the key learning points, compared to 39/60 (65%) for the human experts.Components of the history, examination, and investigations were referred to with similar frequency.Both expert and student evaluation of the feedback demonstrated higher scores for the LLM than for the human experts on both the QuAL and EFeCT scores (P <0.001).There were no medical inaccuracies in the LLM feedback.Conclusion In this study, LLM feedback on case-based interactions was at least similar in terms of content to a panel of experts, and possibly superior.
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