中国神经再生研究(英文版) ›› 2026, Vol. 21 ›› Issue (9): 3885-3907.doi: 10.4103/NRR.NRR-D-25-00217

• 综述:神经损伤修复保护与再生 •    下一篇

基于脑电图的脑机接口:挑战、进展与应用

  

  • 出版日期:2026-09-15 发布日期:2026-05-15

Technical system of electroencephalography-based brain–computer interface: Advances, applications, and challenges

Hui Yu1, 2, 3, Qiyue Mu1, Chong Liu4, 5, Shuo Wang1, *, Jinglai Sun1, 2, 3, *   

  1. 1Department of Biomedical Engineering, Tianjin University School of Medicine, Tianjin, China; 
    2State Key Laboratory of Advanced Medical Materials and Devices, Tianjin University School of Medicine, Tianjin, China; 
    3Haihe Laboratory of Brain-Computer Interaction and Human-Machine Integration, Tianjin University School of Medicine, Tianjin, China;
    4Department of Anesthesiology, Tianjin 4th Center Hospital, The Fourth Center Clinical College of Tianjin Medical University, Tianjin, China; 
    5School of Electronics and Information Engineering, Tiangong University, Tianjin, China
  • Online:2026-09-15 Published:2026-05-15
  • Contact: Shuo Wang, ws111@tju.edu.cn; Jinglai Sun, sunjinglai@tju.edu.cn.
  • Supported by:
    This work was supported by the Health and Wellness Science and Technology Project of Tianjin, No. RC20013 (to CL); the Integrated Traditional Chinese and Western Medicine Research Projects of Tianjin, No. 2019129 (to CL); the Scientific Research Project of Tianjin Education Commission, No. 2024ZXZD005 (to JS); and the Natural Science Foundation of Tianjin Science and Technology Bureau, No. 25JCZDSN00010 (to JS).

摘要:

基于脑电图的脑机接口彻底改变了神经信号与技术系统的集成,这为神经科学、生物医学工程和临床实践提供了变革性的解决方案。此次综述系统地分析了EEG-BCI架构的进展,主要关注其4个支柱:信号采集、范式设计、解码算法和各种应用,旨在弥合技术和应用之间的差距,指导未来的研究。在信号采集中,与传统方法相比,采用湿、干和半干电极的无创系统对皮肤更舒适、更温和。然而,确保长期稳定的信号质量仍然是一个挑战。微创方法,如微针阵列和血管内探头,无需大手术即可实现近乎侵入性的信号保真度。范式设计探索了特定任务的神经编码器。运动想象范式广泛应用于康复,但需要数周的用户训练,而稳态视觉诱发电位和P300范式能够快速校准,但会导致视觉和认知疲劳。先进系统可将EEG与肌电图或眼动追踪相结合,以更好地处理现实世界的任务。解码算法已经通过黎曼几何实现了更好的噪声滤波,可通过深度学习架构实现自动时空特征提取,并通过迁移学习框架实现跨学科校准的最小化。然而,在监管不一致的脑电图、降低处理需求和确保不同脑电图设备之间的兼容性方面仍存在挑战。临床试验表明,脑卒中康复是基于脑电图的脑机接口主要应用热点,而新兴的前沿领域包括太空探索中宇航员的神经监测等。其挑战包括提高信号准确性、最大限度地减少运动干扰、解决道德数据问题以及确保现实世界的使用。未来应关注该领域生物相容性纳米材料、自适应算法和多模态集成方面,以将基于脑电图的脑机接口作为下一代神经技术的关键工具。


https://orcid.org/0000-0001-8984-8857 (Shuo Wang); https://orcid.org/0000-0003-3683-1968 (Jinglai Sun)

关键词: 临床试验, 深度学习, 诊断, 脑电图范式, 电极, 运动成像, 康复, 传感器, 稳态视觉诱发电位, 跨学科学习

Abstract:

Electroencephalography-based brain–computer interfaces have revolutionized the integration of neural signals with technological systems, offering transformative solutions across neuroscience, biomedical engineering, and clinical practice. This review systematically analyzes advancements in electroencephalography-based brain–computer interface architectures, emphasizing four pillars, namely signal acquisition, paradigm design, decoding algorithms, and diverse applications. The aim is to bridge the gap between technology and application and guide future research. In signal acquisition, noninvasive systems using wet, dry, and semi-dry electrodes are more comfortable and gentler on the skin compared to traditional methods. However, ensuring stable signal quality over long periods of time remains a challenge. Minimally invasive approaches, such as microneedle arrays and endovascular probes, achieve near-invasive signal fidelity without major surgery. Paradigm design explores task-specific neural encoders. Although motor imagery paradigms are widely used in rehabilitation, they require weeks of user training. Steady-state visually evoked potential and P300 speller paradigms enable rapid calibration, but cause visual and cognitive fatigue. Advanced systems currently combine electroencephalography with electromyography or eye-tracking to better handle real-world tasks. Decoding algorithms have advanced through Riemannian geometry for improved noise filtering, deep learning architectures for automated spatiotemporal feature extraction, and transfer learning frameworks to minimize cross-subject calibration. However, challenges remain in managing inconsistent electroencephalography, reducing processing demands, and ensuring compatibility across different electroencephalography devices. Clinical trials reveal a predominant focus on stroke rehabilitation, while emerging frontiers include astronaut neuro-monitoring in space exploration. Challenges include improving signal accuracy, minimizing movement interference, addressing ethical data concerns, and ensuring real-world use. Future advancements focus on biocompatible nanomaterials, adaptive algorithms, and multimodal integration, positioning electroencephalography-based brain–computer interfaces as pivotal tools in next-generation neurotechnology.

Key words: clinical trial, deep learning, diagnosis, electroencephalography paradigms, electrode, motor imagery, rehabilitation, sensor, steady-state visually evoked potential, transfer learning