A Survey of Large Language Models in Medicine: Progress, Application, and Challenge
Hongjian Zhou, Fenglin Liu, Boyang Gu, Xinyu Zou, Jinfa Huang, Jinge, Wu, Yiru Li, Sam S. Chen, Peilin Zhou, Junling Liu, Yining Hua, Chengfeng, Mao, Chenyu You, Xian Wu, Yefeng Zheng, Lei Clifton, Zheng Li, Jiebo Luo,, David A. Clifton

TL;DR
This survey reviews the development, deployment, and challenges of large language models in medicine, highlighting their applications in diagnostics and education, and providing guidance for future development.
Contribution
It offers a comprehensive overview of medical LLMs, including their principles, performance comparison, and practical deployment insights, which is scarce in current literature.
Findings
Medical LLMs vary in model structure and data sources.
Performance differs across medical tasks and models.
Challenges include data quality and ethical considerations.
Abstract
Large language models (LLMs), such as ChatGPT, have received substantial attention due to their capabilities for understanding and generating human language. While there has been a burgeoning trend in research focusing on the employment of LLMs in supporting different medical tasks (e.g., enhancing clinical diagnostics and providing medical education), a review of these efforts, particularly their development, practical applications, and outcomes in medicine, remains scarce. Therefore, this review aims to provide a detailed overview of the development and deployment of LLMs in medicine, including the challenges and opportunities they face. In terms of development, we provide a detailed introduction to the principles of existing medical LLMs, including their basic model structures, number of parameters, and sources and scales of data used for model development. It serves as a guide for…
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Taxonomy
TopicsTopic Modeling · Machine Learning in Healthcare · Artificial Intelligence in Healthcare and Education
