UltrasoundAgents: Hierarchical Multi-Agent Evidence-Chain Reasoning for Breast Ultrasound Diagnosis
arXiv cs.CV / 3/12/2026
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Key Points
- The paper proposes UltrasoundAgents, a hierarchical multi-agent framework for breast ultrasound diagnosis that improves evidence traceability and aligns with clinical workflows.
- A main agent localizes the lesion and triggers a crop-and-zoom operation, while a sub-agent analyzes the local view and predicts four clinically relevant attributes: echogenicity pattern, calcification, boundary type, and edge (margin) morphology.
- The main agent combines these attributes to output the BI-RADS category and malignancy prediction, along with intermediate evidence that can be reviewed.
- To mitigate training challenges such as error propagation, the authors propose a decoupled progressive training strategy that first trains the attribute agent, then the main agent with oracle attributes, followed by trajectory self-distillation with spatial supervision.
- Experiments report improvements over strong vision-language baselines in diagnostic accuracy and attribute agreement, demonstrating more structured evidence and traceable reasoning.
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