Bhadra Kinkini, Giraud Anne-Lise, Marchesotti Silvia
Department of Basic Neurosciences, Faculty of Medicine, University of Geneva, Geneva, Switzerland.
Université Paris Cité, Institut Pasteur, AP-HP, Inserm, Fondation Pour l'Audition, Institut de l'Audition, IHU reConnect, Paris, France.
Commun Biol. 2025 Feb 20;8(1):271. doi: 10.1038/s42003-025-07464-7.
Brain-Computer Interfaces (BCI) will revolutionize the way people with severe impairment of speech production can communicate. While current efforts focus on training classifiers on vast amounts of neurophysiological signals to decode imagined speech, much less attention has been given to users' ability to adapt their neural activity to improve BCI-control. To address whether BCI-control improves with training and characterize the underlying neural dynamics, we trained 15 healthy participants to operate a binary BCI system based on electroencephalography (EEG) signals through syllable imagery for five consecutive days. Despite considerable interindividual variability in performance and learning, a significant improvement in BCI-control was globally observed. Using a control experiment, we show that a continuous feedback about the decoded activity is necessary for learning to occur. Performance improvement was associated with a broad EEG power increase in frontal theta activity and focal enhancement in temporal low-gamma activity, showing that learning to operate an imagined-speech BCI involves dynamic changes in neural features at different spectral scales. These findings demonstrate that combining machine and human learning is a successful strategy to enhance BCI controllability.
脑机接口(BCI)将彻底改变严重言语产生障碍患者的交流方式。目前的研究主要集中在利用大量神经生理信号训练分类器来解码想象中的言语,而对于用户调整神经活动以改善BCI控制的能力关注较少。为了研究BCI控制是否会随着训练而改善,并刻画其潜在的神经动力学特征,我们让15名健康参与者连续五天通过音节想象,基于脑电图(EEG)信号操作一个二进制BCI系统。尽管个体间在表现和学习方面存在很大差异,但总体上观察到BCI控制有显著改善。通过对照实验,我们表明解码活动的持续反馈是学习发生所必需的。性能提升与额叶θ活动的广泛脑电图功率增加以及颞叶低γ活动的局部增强有关,这表明学习操作想象言语BCI涉及不同频谱尺度上神经特征的动态变化。这些发现表明,将机器学习和人类学习相结合是增强BCI可控性的成功策略。