A Survey of LLM-based Agents in Medicine: How far are we from Baymax?
- URL: http://arxiv.org/abs/2502.11211v1
- Date: Sun, 16 Feb 2025 17:21:05 GMT
- Title: A Survey of LLM-based Agents in Medicine: How far are we from Baymax?
- Authors: Wenxuan Wang, Zizhan Ma, Zheng Wang, Chenghan Wu, Wenting Chen, Xiang Li, Yixuan Yuan,
- Abstract summary: Large Language Models (LLMs) are transforming healthcare through the development of LLM-based agents.
This survey provides a comprehensive review of LLM-based agents in medicine.
We analyze the key components of medical agent systems, including system profiles, clinical planning mechanisms, medical reasoning frameworks, and external capacity enhancement.
- Score: 44.97640611811786
- License:
- Abstract: Large Language Models (LLMs) are transforming healthcare through the development of LLM-based agents that can understand, reason about, and assist with medical tasks. This survey provides a comprehensive review of LLM-based agents in medicine, examining their architectures, applications, and challenges. We analyze the key components of medical agent systems, including system profiles, clinical planning mechanisms, medical reasoning frameworks, and external capacity enhancement. The survey covers major application scenarios such as clinical decision support, medical documentation, training simulations, and healthcare service optimization. We discuss evaluation frameworks and metrics used to assess these agents' performance in healthcare settings. While LLM-based agents show promise in enhancing healthcare delivery, several challenges remain, including hallucination management, multimodal integration, implementation barriers, and ethical considerations. The survey concludes by highlighting future research directions, including advances in medical reasoning inspired by recent developments in LLM architectures, integration with physical systems, and improvements in training simulations. This work provides researchers and practitioners with a structured overview of the current state and future prospects of LLM-based agents in medicine.
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