CLAILGFeb 21, 2024

ED-Copilot: Reduce Emergency Department Wait Time with Language Model Diagnostic Assistance

Berkeley
arXiv:2402.13448v27 citationsh-index: 16Has CodeICML
Originality Incremental advance
AI Analysis

This addresses ED crowding and its impacts on patient mortality and staff burnout, but it is incremental as it builds on existing language models and reinforcement learning for a specific healthcare domain.

The paper tackles the problem of emergency department (ED) wait times by developing ED-Copilot, an AI system that suggests laboratory tests to reduce delays while predicting critical outcomes like death, resulting in halving average wait time from four to two hours and improving prediction accuracy over baselines.

In the emergency department (ED), patients undergo triage and multiple laboratory tests before diagnosis. This time-consuming process causes ED crowding which impacts patient mortality, medical errors, staff burnout, etc. This work proposes (time) cost-effective diagnostic assistance that leverages artificial intelligence systems to help ED clinicians make efficient and accurate diagnoses. In collaboration with ED clinicians, we use public patient data to curate MIMIC-ED-Assist, a benchmark for AI systems to suggest laboratory tests that minimize wait time while accurately predicting critical outcomes such as death. With MIMIC-ED-Assist, we develop ED-Copilot which sequentially suggests patient-specific laboratory tests and makes diagnostic predictions. ED-Copilot employs a pre-trained bio-medical language model to encode patient information and uses reinforcement learning to minimize ED wait time and maximize prediction accuracy. On MIMIC-ED-Assist, ED-Copilot improves prediction accuracy over baselines while halving average wait time from four hours to two hours. ED-Copilot can also effectively personalize treatment recommendations based on patient severity, further highlighting its potential as a diagnostic assistant. Since MIMIC-ED-Assist is a retrospective benchmark, ED-Copilot is restricted to recommend only observed tests. We show ED-Copilot achieves competitive performance without this restriction as the maximum allowed time increases. Our code is available at https://github.com/cxcscmu/ED-Copilot.

Code Implementations1 repo
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