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Generative Artificial Intelligence to Transform Inpatient Discharge Summaries to Patient-Friendly Language and Format
218
Zitationen
9
Autoren
2024
Jahr
Abstract
The findings of this cross-sectional study of 50 discharge summaries suggest that LLMs can be used to translate discharge summaries into patient-friendly language and formats that are significantly more readable and understandable than discharge summaries as they appear in electronic health records. However, implementation will require improvements in accuracy, completeness, and safety. Given the safety concerns, initial implementation will require physician review.
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