Saved in:
Bibliographic Details
Main Authors: Wang, Qin, He, Zhiqing, Liu, Yu, Guo, Bowen, Li, Zeju, Zhao, Miao, Ju, Wenhao, Luo, Zhiling, Shu, Xianhong, Guo, Yi, Wang, Yuanyuan
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.05541
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915940132716544
author Wang, Qin
He, Zhiqing
Liu, Yu
Guo, Bowen
Li, Zeju
Zhao, Miao
Ju, Wenhao
Luo, Zhiling
Shu, Xianhong
Guo, Yi
Wang, Yuanyuan
author_facet Wang, Qin
He, Zhiqing
Liu, Yu
Guo, Bowen
Li, Zeju
Zhao, Miao
Ju, Wenhao
Luo, Zhiling
Shu, Xianhong
Guo, Yi
Wang, Yuanyuan
contents Reliable interpretation of echocardiography (Echo) is crucial for assessing cardiac function, which demands clinicians to synchronously orchestrate multiple capabilities, including visual observation (eyes), manual measurement (hands), and expert knowledge learning and reasoning (minds). While current task-specific deep-learning approaches and multimodal large language models have demonstrated promise in assisting Echo analysis through automated segmentation or reasoning, they remain focused on restricted skills, i.e., eyes-hands or eyes-minds, thereby limiting clinical reliability and utility. To address these issues, we propose EchoAgent, an agentic system tailored for end-to-end Echo interpretation, which achieves a fully coordinated eyes-hands-minds workflow that learns, observes, operates, and reasons like a cardiac sonographer. First, we introduce an expertise-driven cognition engine where our agent can automatically assimilate credible Echo guidelines into a structured knowledge base, thus constructing an Echo-customized mind. Second, we devise a hierarchical collaboration toolkit to endow EchoAgent with eyes-hands, which can automatically parse Echo video streams, identify cardiac views, perform anatomical segmentation, and quantitative measurement. Third, we integrate the perceived multimodal evidence with the exclusive knowledge base into an orchestrated reasoning hub to conduct explainable inferences. We evaluate EchoAgent on CAMUS and MIMIC-EchoQA datasets, which cover 48 distinct echocardiographic views spanning 14 cardiac anatomical regions. Experimental results show that EchoAgent achieves optimal performance across diverse structure analyses, yielding overall accuracy of up to 80.00%. Importantly, EchoAgent empowers a single system with abilities to learn, observe, operate and reason like an echocardiologist, which holds great promise for reliable Echo interpretation.
format Preprint
id arxiv_https___arxiv_org_abs_2604_05541
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle EchoAgent: Towards Reliable Echocardiography Interpretation with "Eyes","Hands" and "Minds"
Wang, Qin
He, Zhiqing
Liu, Yu
Guo, Bowen
Li, Zeju
Zhao, Miao
Ju, Wenhao
Luo, Zhiling
Shu, Xianhong
Guo, Yi
Wang, Yuanyuan
Computer Vision and Pattern Recognition
Reliable interpretation of echocardiography (Echo) is crucial for assessing cardiac function, which demands clinicians to synchronously orchestrate multiple capabilities, including visual observation (eyes), manual measurement (hands), and expert knowledge learning and reasoning (minds). While current task-specific deep-learning approaches and multimodal large language models have demonstrated promise in assisting Echo analysis through automated segmentation or reasoning, they remain focused on restricted skills, i.e., eyes-hands or eyes-minds, thereby limiting clinical reliability and utility. To address these issues, we propose EchoAgent, an agentic system tailored for end-to-end Echo interpretation, which achieves a fully coordinated eyes-hands-minds workflow that learns, observes, operates, and reasons like a cardiac sonographer. First, we introduce an expertise-driven cognition engine where our agent can automatically assimilate credible Echo guidelines into a structured knowledge base, thus constructing an Echo-customized mind. Second, we devise a hierarchical collaboration toolkit to endow EchoAgent with eyes-hands, which can automatically parse Echo video streams, identify cardiac views, perform anatomical segmentation, and quantitative measurement. Third, we integrate the perceived multimodal evidence with the exclusive knowledge base into an orchestrated reasoning hub to conduct explainable inferences. We evaluate EchoAgent on CAMUS and MIMIC-EchoQA datasets, which cover 48 distinct echocardiographic views spanning 14 cardiac anatomical regions. Experimental results show that EchoAgent achieves optimal performance across diverse structure analyses, yielding overall accuracy of up to 80.00%. Importantly, EchoAgent empowers a single system with abilities to learn, observe, operate and reason like an echocardiologist, which holds great promise for reliable Echo interpretation.
title EchoAgent: Towards Reliable Echocardiography Interpretation with "Eyes","Hands" and "Minds"
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.05541