多囊卵巢
标杆管理
工作流程
计算机科学
指南
领域(数学分析)
人工智能
机器学习
医学诊断
医学
数据科学
临床实习
梅德林
临床决策支持系统
领域知识
现成的
构造(python库)
公共卫生
包裹体(矿物)
强化学习
医疗保健系统
循证医学
图形
风险分析(工程)
作者
He, Zanxiang,Li, Meng,Shi, Liyun,Daia, Weiye,Nie, Liming
出处
期刊:Cornell University - arXiv
日期:2025-12-17
标识
DOI:10.48550/arxiv.2512.15398
摘要
Polycystic Ovary Syndrome (PCOS) constitutes a significant public health issue affecting 10% of reproductive-aged women, highlighting the critical importance of developing effective diagnostic tools. Previous machine learning and deep learning detection tools are constrained by their reliance on large-scale labeled data and an lack of interpretability. Although multi-agent systems have demonstrated robust capabilities, the potential of such systems for PCOS detection remains largely unexplored. Existing medical multi-agent frameworks are predominantly designed for general medical tasks, suffering from insufficient domain integration and a lack of specific domain knowledge. To address these challenges, we propose Mapis, the first knowledge-grounded multi-agent framework explicitly designed for guideline-based PCOS diagnosis. Specifically, it built upon the 2023 International Guideline into a structured collaborative workflow that simulates the clinical diagnostic process. It decouples complex diagnostic tasks across specialized agents: a gynecological endocrine agent and a radiology agent collaborative to verify inclusion criteria, while an exclusion agent strictly rules out other causes. Furthermore, we construct a comprehensive PCOS knowledge graph to ensure verifiable, evidence-based decision-making. Extensive experiments on public benchmarks and specialized clinical datasets, benchmarking against nine diverse baselines, demonstrate that Mapis significantly outperforms competitive methods. On the clinical dataset, it surpasses traditional machine learning models by 13.56%, single-agent by 6.55%, and previous medical multi-agent systems by 7.05% in Accuracy.
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