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Evaluation Framework of Large Language Models in Medical Documentation: Development and Usability Study
28
Zitationen
10
Autoren
2024
Jahr
Abstract
Our research provides robust support for the reliability and clinical acceptability of the proposed evaluation framework. It underscores the framework's potential to mitigate clinical burdens and foster the responsible integration of artificial intelligence technologies in health care, suggesting a promising direction for future research and practical applications in the field.
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