2510.16658
2026-05-29
cs.AI
cs.CE
Large-Scale AI and Foundation Models for Neuroscience: A Comprehensive Review
大规模人工智能与基础模型在神经科学中的应用:综合综述
Shihao Yang, Xiying Huang, Danilo Bernardo, Jun-En Ding, Andrew Michael, Guoan Wang, Jingmei Yang, Alison Anderson, Dinesh Giritharan, Patrick Kwan, Ashish Raj, Yu Zhang, Feng Liu
发表机构
*
Department of Systems Engineering, Stevens Institute of Technology(系统工程系,史蒂文斯理工学院)
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Department of Neurology and Weill Institute for Neurosciences, University of California San Francisco(神经病学系和Weill神经科学研究所,旧金山大学)
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Duke Institute for Brain Sciences, Duke University(杜克大学脑科学研究所)
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Division of Systems Engineering, Department of Electrical and Computer Engineering, Boston University(系统工程 division,电气与计算机工程系,波士顿大学)
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Department of Neuroscience, School of Translational Medicine, Monash University(神经科学系,转化医学学院,莫纳什大学)
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Department of Neurology, Alfred Hospital, Melbourne, Victoria, Australia(神经病学系,阿尔弗雷德医院,墨尔本,维多利亚州,澳大利亚)
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Department of Radiology and Biomedical Imaging, University of California, San Francisco, CA, USA(放射学与生物医学成像系,旧金山大学,加州,美国)
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Department of Psychiatry and Behavioral Sciences, School of Medicine, Stanford University(精神病学与行为科学系,医学院,斯坦福大学)
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Wu Tsai Neurosciences Institute, Stanford University(吴氏神经科学研究所,斯坦福大学)
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Stanford Institute for Human-Centered AI, Stanford University(斯坦福大学人本人工智能研究所)
AI总结
本文综述了大规模AI模型在神经科学四个主要领域(神经影像与数据处理、脑机接口与神经解码、临床决策支持与转化框架、神经系统与精神疾病特定应用)的应用,展示了其在多模态数据整合、时空模式解释和临床转化方面的潜力,并强调了严格评估、领域知识整合、临床验证和伦理指南的重要性。