Collaborative Medical Triage under Uncertainty: A Multi-Agent Dynamic Matching Approach
Hongyan Cheng, Chengzhang Yu, Yanshu Shi, Chiyue Wang, Cong Liu, and Zhanpeng Jin

TL;DR
This paper introduces a multi-agent AI system for medical triage that improves accuracy and adaptability in diverse healthcare settings by transforming unstructured symptoms into precise department recommendations.
Contribution
It presents a novel multi-agent framework with guidance mechanisms that enhance triage accuracy and adaptability across heterogeneous hospital structures.
Findings
Achieved 89.6% accuracy in primary department classification
Achieved 74.3% accuracy in secondary department classification
Demonstrated effective adaptation to diverse hospital configurations
Abstract
The post-pandemic surge in healthcare demand, coupled with critical nursing shortages, has placed unprecedented pressure on medical triage systems, necessitating innovative AI-driven solutions. We present a multi-agent interactive intelligent system for medical triage that addresses three fundamental challenges in current AI-based triage systems: inadequate medical specialization leading to misclassification, heterogeneous department structures across healthcare institutions, and inefficient detail-oriented questioning that impedes rapid triage decisions. Our system employs three specialized agents--RecipientAgent, InquirerAgent, and DepartmentAgent--that collaborate through Inquiry Guidance mechanism and Classification Guidance Mechanism to transform unstructured patient symptoms into accurate department recommendations. To ensure robust evaluation, we constructed a comprehensive…
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Taxonomy
TopicsEmergency and Acute Care Studies · Machine Learning in Healthcare · COVID-19 diagnosis using AI
