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Developing and Evaluating Large Language Model-Generated Emergency Medicine Handoff Notes.


ABSTRACT:

Importance

An emergency medicine (EM) handoff note generated by a large language model (LLM) has the potential to reduce physician documentation burden without compromising the safety of EM-to-inpatient (IP) handoffs.

Objective

To develop LLM-generated EM-to-IP handoff notes and evaluate their accuracy and safety compared with physician-written notes.

Design, setting, and participants

This cohort study used EM patient medical records with acute hospital admissions that occurred in 2023 at NewYork-Presbyterian/Weill Cornell Medical Center. A customized clinical LLM pipeline was trained, tested, and evaluated to generate templated EM-to-IP handoff notes. Using both conventional automated methods (ie, recall-oriented understudy for gisting evaluation [ROUGE], bidirectional encoder representations from transformers score [BERTScore], and source chunking approach for large-scale inconsistency evaluation [SCALE]) and a novel patient safety-focused framework, LLM-generated handoff notes vs physician-written notes were compared. Data were analyzed from October 2023 to March 2024.

Exposure

LLM-generated EM handoff notes.

Main outcomes and measures

LLM-generated handoff notes were evaluated for (1) lexical similarity with respect to physician-written notes using ROUGE and BERTScore; (2) fidelity with respect to source notes using SCALE; and (3) readability, completeness, curation, correctness, usefulness, and implications for patient safety using a novel framework.

Results

In this study of 1600 EM patient records (832 [52%] female and mean [SD] age of 59.9 [18.9] years), LLM-generated handoff notes, compared with physician-written ones, had higher ROUGE (0.322 vs 0.088), BERTScore (0.859 vs 0.796), and SCALE scores (0.691 vs 0.456), indicating the LLM-generated summaries exhibited greater similarity and more detail. As reviewed by 3 board-certified EM physicians, a subsample of 50 LLM-generated summaries had a mean (SD) usefulness score of 4.04 (0.86) out of 5 (compared with 4.36 [0.71] for physician-written) and mean (SD) patient safety scores of 4.06 (0.86) out of 5 (compared with 4.50 [0.56] for physician-written). None of the LLM-generated summaries were classified as a critical patient safety risk.

Conclusions and relevance

In this cohort study of 1600 EM patient medical records, LLM-generated EM-to-IP handoff notes were determined superior compared with physician-written summaries via conventional automated evaluation methods, but marginally inferior in usefulness and safety via a novel evaluation framework. This study suggests the importance of a physician-in-loop implementation design for this model and demonstrates an effective strategy to measure preimplementation patient safety of LLM models.

SUBMITTER: Hartman V 

PROVIDER: S-EPMC11615705 | biostudies-literature | 2024 Dec

REPOSITORIES: biostudies-literature

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Publications

Developing and Evaluating Large Language Model-Generated Emergency Medicine Handoff Notes.

Hartman Vince V   Zhang Xinyuan X   Poddar Ritika R   McCarty Matthew M   Fortenko Alexander A   Sholle Evan E   Sharma Rahul R   Campion Thomas T   Steel Peter A D PAD  

JAMA network open 20241202 12


<h4>Importance</h4>An emergency medicine (EM) handoff note generated by a large language model (LLM) has the potential to reduce physician documentation burden without compromising the safety of EM-to-inpatient (IP) handoffs.<h4>Objective</h4>To develop LLM-generated EM-to-IP handoff notes and evaluate their accuracy and safety compared with physician-written notes.<h4>Design, setting, and participants</h4>This cohort study used EM patient medical records with acute hospital admissions that occu  ...[more]

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