Artificial intelligence in neurology: opportunities, challenges, and policy implications

被引:0
|
作者
Sebastian Voigtlaender
Johannes Pawelczyk
Mario Geiger
Eugene J. Vaios
Philipp Karschnia
Merit Cudkowicz
Jorg Dietrich
Ira R. J. Hebold Haraldsen
Valery Feigin
Mayowa Owolabi
Tara L. White
Paweł Świeboda
Nita Farahany
Vivek Natarajan
Sebastian F. Winter
机构
[1] Max-Planck-Institute for Biological Cybernetics,Systems Neuroscience Division
[2] Virtual Diagnostics Team,Faculty of Medicine
[3] QuantCo Inc.,Graduate Center of Medicine and Health
[4] Ruprecht-Karls-University,Department of Electrical Engineering and Computer Science
[5] Technical University Munich,Department of Radiation Oncology
[6] Massachusetts Institute of Technology,Department of Neurosurgery
[7] NVIDIA,Department of Neurology
[8] Duke University Medical Center,Department of Neurology, Division of Clinical Neuroscience
[9] Ludwig-Maximilians-University and University Hospital Munich,National Institute for Stroke and Applied Neurosciences
[10] Massachusetts General Hospital and Harvard Medical School,Center for Genomics and Precision Medicine, College of Medicine
[11] Oslo University Hospital,Neurology Unit, Department of Medicine
[12] Auckland University of Technology,Department of Behavioral and Social Sciences
[13] University of Ibadan,Human Brain Project
[14] University of Ibadan,undefined
[15] Blossom Specialist Medical Center,undefined
[16] Lebanese American University of Beirut,undefined
[17] Brown University,undefined
[18] European Union,undefined
[19] Duke University School of Law,undefined
[20] Google Research,undefined
来源
Journal of Neurology | 2024年 / 271卷
关键词
Artificial intelligence; Machine learning; Digital health; Neurology; Brain health; Policy; Future trends;
D O I
暂无
中图分类号
学科分类号
摘要
Neurological conditions are the leading cause of disability and mortality combined, demanding innovative, scalable, and sustainable solutions. Brain health has become a global priority with adoption of the World Health Organization’s Intersectoral Global Action Plan in 2022. Simultaneously, rapid advancements in artificial intelligence (AI) are revolutionizing neurological research and practice. This scoping review of 66 original articles explores the value of AI in neurology and brain health, systematizing the landscape for emergent clinical opportunities and future trends across the care trajectory: prevention, risk stratification, early detection, diagnosis, management, and rehabilitation. AI’s potential to advance personalized precision neurology and global brain health directives hinges on resolving core challenges across four pillars—models, data, feasibility/equity, and regulation/innovation—through concerted pursuit of targeted recommendations. Paramount actions include swift, ethical, equity-focused integration of novel technologies into clinical workflows, mitigating data-related issues, counteracting digital inequity gaps, and establishing robust governance frameworks balancing safety and innovation.
引用
收藏
页码:2258 / 2273
页数:15
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