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MAARTA:Multi-Agentic Adaptive Radiology Teaching Assistant

MAARTA:Multi-Agentic Adaptive Radiology Teaching Assistant

来源:Arxiv_logoArxiv
英文摘要

Radiology students often struggle to develop perceptual expertise due to limited expert mentorship time, leading to errors in visual search and diagnostic interpretation. These perceptual errors, such as missed fixations, short dwell times, or misinterpretations, are not adequately addressed by current AI systems, which focus on diagnostic accuracy but fail to explain how and why errors occur. To address this gap, we introduce MAARTA (Multi-Agentic Adaptive Radiology Teaching Assistant), a multi-agent framework that analyzes gaze patterns and radiology reports to provide personalized feedback. Unlike single-agent models, MAARTA dynamically selects agents based on error complexity, enabling adaptive and efficient reasoning. By comparing expert and student gaze behavior through structured graphs, the system identifies missed findings and assigns Perceptual Error Teacher agents to analyze discrepancies. MAARTA then uses step-by-step prompting to help students understand their errors and improve diagnostic reasoning, advancing AI-driven radiology education.

Akash Awasthi、Brandon V. Chang、Anh M. Vu、Ngan Le、Rishi Agrawal、Zhigang Deng、Carol Wu、Hien Van Nguyen

教育计算技术、计算机技术

Akash Awasthi,Brandon V. Chang,Anh M. Vu,Ngan Le,Rishi Agrawal,Zhigang Deng,Carol Wu,Hien Van Nguyen.MAARTA:Multi-Agentic Adaptive Radiology Teaching Assistant[EB/OL].(2025-06-18)[2025-07-16].https://arxiv.org/abs/2506.17320.点此复制

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