CVMAMay 25

Towards Reliable Fetal Ultrasound Interpretation with Multi-Agent Collaboration

arXiv:2605.2535725.1Has Code
Predicted impact top 25% in CV · last 90 daysOriginality Highly original
AI Analysis

For clinicians performing fetal ultrasound analysis, this work provides a more reliable, evidence-driven AI assistant that integrates visual and clinical reasoning, outperforming existing MLLMs.

FetUSAgents, a multi-agent system with tool-augmented LLMs and Dual-Path Evidence Arbitration, improves fetal ultrasound interpretation accuracy by over 25% in VQA compared to the strongest baseline, addressing hallucination and domain grounding issues.

Automated fetal ultrasound interpretation requires a workflow from visual perception, including plane recognition and anatomical segmentation, to clinical understanding, including biometric measurement and diagnostic reporting. However, the prevailing "one-task, one-model" paradigm limits systematic integration of evidence across this multi-step process. Although multimodal large language models (MLLMs) show promising visual understanding, their limited domain-specific grounding and hallucination risks restrict reliability in fetal ultrasound analysis. To address these limitations, we propose FetUSAgents, a tool-augmented multi-agent system for comprehensive fetal ultrasound interpretation, supporting visual question answering (VQA), report generation, image captioning, and video summarization. FetUSAgents coordinates task-specific visual tools through collaborative LLM agents and decomposes clinical queries into subtasks that progress from anatomical recognition to quantitative measurement. We further introduce Dual-Path Evidence Arbitration (DPEA), which integrates LLM-based deliberative reasoning with structured computational evidence from specialized visual tools. A retrieval-enhanced evidence bank consolidates intermediate findings to support traceable and clinically grounded conclusions. In addition, we construct FetUS-VQA, a dedicated VQA benchmark for fetal ultrasound, comprising 1,892 images and 3,205 question-answer pairs across 10 clinical tasks. Extensive out-of-distribution experiments show that FetUSAgents outperforms general and medical MLLMs, exceeding the strongest baseline by more than 25 percent in VQA accuracy. These results suggest a scalable route toward evidence-driven clinical assistants for prenatal imaging. Code is available.

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