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Bibliographic Details
Main Authors: Zhou, Shuang, Yu, Kai, Wang, Song, Xie, Wenya, Zhan, Zaifu, Tsai, Meng-Han, Chung, Yuen-Hei, Hou, Shutong, Zhou, Huixue, Zeng, Min, Ramu, Bhavadharini, Chen, Lin Yee, Xie, Feng, Zhang, Rui
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.10764
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Table of Contents:
  • Heart diseases remain a leading cause of morbidity and mortality worldwide, necessitating accurate and trustworthy differential diagnosis. However, existing artificial intelligence-based diagnostic methods are often limited by insufficient cardiology knowledge, inadequate support for complex reasoning, and poor interpretability. Here we present HeartAgent, a cardiology-specific agent system designed to support a reliable and explainable differential diagnosis. HeartAgent integrates customized tools and curated data resources and orchestrates multiple specialized sub-agents to perform complex reasoning while generating transparent reasoning trajectories and verifiable supporting references. Evaluated on the MIMIC dataset and a private electronic health records cohort, HeartAgent achieved over 36% and 20% improvements over established comparative methods, in top-3 diagnostic accuracy, respectively. Additionally, clinicians assisted by HeartAgent demonstrated gains of 26.9% in diagnostic accuracy and 22.7% in explanatory quality compared with unaided experts. These results demonstrate that HeartAgent provides reliable, explainable, and clinically actionable decision support for cardiovascular care.