AI Agents 相关度: 9/10

UltrasoundAgents: Hierarchical Multi-Agent Evidence-Chain Reasoning for Breast Ultrasound Diagnosis

Yali Zhu, Kang Zhou, Dingbang Wu, Gaofeng Meng
arXiv: 2603.10852v1 发布: 2026-03-11 更新: 2026-03-11

AI 摘要

提出 UltrasoundAgents,一种用于乳腺超声诊断的分层多智能体证据链推理框架。

主要贡献

  • 提出 UltrasoundAgents 框架,模拟临床诊断流程
  • 引入解耦渐进训练策略,提升训练稳定性
  • 实现可审查的中间证据,提高诊断可信度

方法论

构建多智能体系统,主智能体定位病灶,子智能体分析属性,结合证据推理诊断,并采用解耦训练策略。

原文摘要

Breast ultrasound diagnosis typically proceeds from global lesion localization to local sign assessment and then evidence integration to assign a BI-RADS category and determine benignity or malignancy. Many existing methods rely on end-to-end prediction or provide only weakly grounded evidence, which can miss fine-grained lesion cues and limit auditability and clinical review. To align with the clinical workflow and improve evidence traceability, we propose a hierarchical multi-agent framework, termed UltrasoundAgents. A main agent localizes the lesion in the full image and triggers a crop-and-zoom operation. A sub-agent analyzes the local view and predicts four clinically relevant attributes, namely echogenicity pattern, calcification, boundary type, and edge (margin) morphology. The main agent then integrates these structured attributes to perform evidence-based reasoning and output the BI-RADS category and the malignancy prediction, while producing reviewable intermediate evidence. Furthermore, hierarchical multi-agent training often suffers from error propagation, difficult credit assignment, and sparse rewards. To alleviate this and improve training stability, we introduce a decoupled progressive training strategy. We first train the attribute agent, then train the main agent with oracle attributes to learn robust attribute-based reasoning, and finally apply corrective trajectory self-distillation with spatial supervision to build high-quality trajectories for supervised fine-tuning, yielding a deployable end-to-end policy. Experiments show consistent gains over strong vision-language baselines in diagnostic accuracy and attribute agreement, together with structured evidence and traceable reasoning.

标签

多智能体 乳腺超声 医学诊断 证据链推理

arXiv 分类

cs.CV