EchoAgent: Towards Reliable Echocardiography Interpretation with "Eyes","Hands" and "Minds"
Qin Wang, Zhiqing He, Yu Liu, Bowen Guo, Zeju Li, Miao Zhao, Wenhao Ju, Zhiling Luo, Xianhong Shu, Yi Guo, Yuanyuan Wang

TL;DR
EchoAgent is an integrated AI system that mimics a cardiac sonographer's skills by learning, observing, operating, and reasoning to improve echocardiography interpretation accuracy.
Contribution
It introduces a comprehensive agentic framework combining knowledge assimilation, multimodal perception, and explainable reasoning for end-to-end Echo analysis.
Findings
Achieves up to 80% accuracy in structure analysis
Supports diverse echocardiographic views and regions
Demonstrates effective integration of knowledge and perception
Abstract
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…
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