Orchestrator Multi-Agent Clinical Decision Support System for Secondary Headache Diagnosis in Primary Care
Xizhi Wu, Nelly Estefanie Garduno-Rapp, Justin F Rousseau, Mounika Thakkallapally, Hang Zhang, Yuelyu Ji, Shyam Visweswaran, Yifan Peng, Yanshan Wang

TL;DR
This paper introduces a multi-agent clinical decision support system using large language models, which improves secondary headache diagnosis accuracy and interpretability in primary care by decomposing tasks among specialized agents.
Contribution
The study presents a novel multi-agent architecture with an orchestrator and domain-specific agents that enhances diagnostic accuracy and interpretability over single-LLM systems.
Findings
Multi-agent system with GPrompt outperforms single-LLM baseline.
Structured reasoning improves diagnostic accuracy, especially in smaller models.
The system provides transparent, evidence-grounded explanations for diagnoses.
Abstract
Unlike most primary headaches, secondary headaches need specialized care and can have devastating consequences if not treated promptly. Clinical guidelines highlight several 'red flag' features, such as thunderclap onset, meningismus, papilledema, focal neurologic deficits, signs of temporal arteritis, systemic illness, and the 'worst headache of their life' presentation. Despite these guidelines, determining which patients require urgent evaluation remains challenging in primary care settings. Clinicians often work with limited time, incomplete information, and diverse symptom presentations, which can lead to under-recognition and inappropriate care. We present a large language model (LLM)-based multi-agent clinical decision support system built on an orchestrator-specialist architecture, designed to perform explicit and interpretable secondary headache diagnosis from free-text…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Machine Learning in Healthcare · Clinical Reasoning and Diagnostic Skills
