Jochumsen Mads, Petersen Bolette Schramm, Vestergaard Liane Mikkelsen, Falborg Nanna Frost, Wisler Line, Olesen Mads Vestergaard, Andersen Mathias Sølvkær, Sørensen Niels Bach, Jørgensen Signe Tange
Department of Health Science and Technology, Aalborg University, Aalborg, Denmark.
J Neural Eng. 2025 Jul 24;22(4). doi: 10.1088/1741-2552/adf010.
Brain-computer interface (BCI) training has been shown to be effective for inducing neural plasticity and for improving motor function in stroke patients. BCI training could potentially have a positive effect on people with multiple sclerosis (MS) as well by pairing movement-related brain activity with congruent afferent feedback from e.g. functional electrical stimulation. In the current study, the aim was to detect movement-related cortical potentials (MRCPs) from single-trial EEG in people with MS across two separate days using different classifier calibration schemes to estimate the performance of a BCI that can be used for neurorehabilitation.Fifteen individuals with MS performed 100 wrist movements and 100 ankle movements while continuous EEG was recorded. Also, idle brain activity was recorded. This was repeated on a separate day. The data were filtered and divided into epochs containing data prior to the movement onset. Temporal, spectral and template matching features were extracted and classified with a random forest classifier using different calibration schemes to estimate the performance when training the classifier on data from the same day and same participant, different day but same participant, and across different participants.Clear MRCPs were elicited across both recording days, and it was possible to discriminate between idle activity and movement-related brain activity with accuracies between ∼80%-90% when training and testing the classifier on data from the same day and participant. The performance decreased when using data from a separate day but same participant (∼70%-80%) or data from separate participants (∼70%) for training the classifier.The results showed that it is feasible for people with MS to use a BCI for inducing neural plasticity.
脑机接口(BCI)训练已被证明对诱导中风患者的神经可塑性和改善运动功能有效。通过将与运动相关的大脑活动与来自例如功能性电刺激等一致的传入反馈配对,BCI训练也可能对多发性硬化症(MS)患者产生积极影响。在当前的研究中,目的是使用不同的分类器校准方案,在两天内从MS患者的单次试验脑电图中检测与运动相关的皮层电位(MRCPs),以估计可用于神经康复的BCI的性能。15名MS患者在连续记录脑电图的同时进行了100次腕部运动和100次踝部运动。此外,还记录了静息脑活动。在另一天重复此操作。数据经过滤波并分成包含运动开始前数据的时间段。提取时间、频谱和模板匹配特征,并使用不同的校准方案通过随机森林分类器进行分类,以估计在同一天和同一参与者、不同天但同一参与者以及不同参与者的数据上训练分类器时的性能。在两个记录日都诱发了清晰的MRCPs,并且当在同一天和同一参与者的数据上训练和测试分类器时,能够以约80%-90%的准确率区分静息活动和与运动相关的大脑活动。当使用来自另一天但同一参与者的数据(约70%-80%)或来自不同参与者的数据(约70%)训练分类器时,性能会下降。结果表明,MS患者使用BCI诱导神经可塑性是可行的。