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Use of a Large Language Model to Assess Clinical Acuity of Adults in the Emergency Department
114
Zitationen
7
Autoren
2024
Jahr
Abstract
In this cross-sectional study of 10 000 pairs of ED visits, the LLM accurately identified the patient with higher acuity when given pairs of presenting histories extracted from patients' first ED documentation. These findings suggest that the integration of an LLM into ED workflows could enhance triage processes while maintaining triage quality and warrants further investigation.
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