首页 > 期刊导航 > 哲学大数据挖掘与分析(英文版) 2026年2期 > 2025年2期 > Large Language Model for Medical Images:A Survey of Taxonomy,Systematic Review,and Future Trends
Large Language Model for Medical Images:A Survey of Taxonomy,Systematic Review,and Future Trends
简介:The advent of Large Language Models(LLMs)has sparked considerable interest in the medical image domain,as they can generalize to multiple tasks and offer outstanding performance.While LLMs achieve promising results,there is currently a lack of a comprehensive summary of medical images,making it challenging for researchers to understand the progress within this domain.To fill this gap,we make the first attempt to present a comprehensive survey for LLM on medical images.In addition,to better summarize the current progress comprehensively,we further introduce a novel x-stage tuning paradigm for summarization,including zero-stage tuning,one-stage tuning,and multi-stage tuning,offering a unified perspective on LLMs for medical images.Finally,we discuss challenges and future directions in this domain,aiming to spur more breakthroughs in the future.We hope this work can pave the way for the broad application of LLMs in medical images and provide a valuable resource for this domain.展开
学者:PENGWangWenpengLuChunlinRuoxiZhouMinLILiboQin
关键词:large language model(LLM)x-stage tuningmedical images
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在线出版日期:2025-06-13 (网站首发日期)
页数:22(496-517)