A Comprehensive Survey of Large Language Models and Multimodal Large Language Models in Medicine
Hanguang Xiao, Feizhong Zhou, Xingyue Liu, Tianqi Liu, Zhipeng Li, Xin, Liu, Xiaoxuan Huang

TL;DR
This survey reviews the development, applications, challenges, and future prospects of large language models and multimodal large language models in medicine, highlighting their transformative potential in healthcare.
Contribution
It provides a comprehensive overview of medical LLMs and MLLMs, including their construction, evaluation, applications, and future directions, bridging AI technology and clinical practice.
Findings
Detailed review of existing medical LLMs and MLLMs
Identification of five key healthcare applications
Discussion of challenges and future strategies
Abstract
Since the release of ChatGPT and GPT-4, large language models (LLMs) and multimodal large language models (MLLMs) have attracted widespread attention for their exceptional capabilities in understanding, reasoning, and generation, introducing transformative paradigms for integrating artificial intelligence into medicine. This survey provides a comprehensive overview of the development, principles, application scenarios, challenges, and future directions of LLMs and MLLMs in medicine. Specifically, it begins by examining the paradigm shift, tracing the transition from traditional models to LLMs and MLLMs, and highlighting the unique advantages of these LLMs and MLLMs in medical applications. Next, the survey reviews existing medical LLMs and MLLMs, providing detailed guidance on their construction and evaluation in a clear and systematic manner. Subsequently, to underscore the substantial…
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Taxonomy
TopicsMachine Learning in Healthcare · Topic Modeling · Radiomics and Machine Learning in Medical Imaging
MethodsLinear Layer · Multi-Head Attention · Dense Connections · Position-Wise Feed-Forward Layer · Dropout · Label Smoothing · Residual Connection · Absolute Position Encodings · Byte Pair Encoding · Adam
