Publication | Open Access
Evaluating Large Language Models for Drafting Emergency Department Discharge Summaries
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Citations
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References
2024
Year
In this cross-sectional study of 100 ED encounters, we found that LLMs could generate accurate discharge summaries, but were liable to hallucination and omission of clinically relevant information. A comprehensive understanding of the location and type of errors found in GPT-generated clinical text is important to facilitate clinician review of such content and prevent patient harm.
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