Mejia Tobar Alejandra, Hyoudou Rikiya, Kita Kahori, Nakamura Tatsuhiro, Kambara Hiroyuki, Ogata Yousuke, Hanakawa Takashi, Koike Yasuharu, Yoshimura Natsue
Institute of Innovative Research, Tokyo Institute of Technology, Yokohama, Japan.
Center for Frontier Medical Engineering, Chiba University, Chiba, Japan.
Front Neurosci. 2018 Jan 8;11:733. doi: 10.3389/fnins.2017.00733. eCollection 2017.
The classification of ankle movements from non-invasive brain recordings can be applied to a brain-computer interface (BCI) to control exoskeletons, prosthesis, and functional electrical stimulators for the benefit of patients with walking impairments. In this research, ankle flexion and extension tasks at two force levels in both legs, were classified from cortical current sources estimated by a hierarchical variational Bayesian method, using electroencephalography (EEG) and functional magnetic resonance imaging (fMRI) recordings. The hierarchical prior for the current source estimation from EEG was obtained from activated brain areas and their intensities from an fMRI group (second-level) analysis. The fMRI group analysis was performed on regions of interest defined over the primary motor cortex, the supplementary motor area, and the somatosensory area, which are well-known to contribute to movement control. A sparse logistic regression method was applied for a nine-class classification (eight active tasks and a resting control task) obtaining a mean accuracy of 65.64% for time series of current sources, estimated from the EEG and the fMRI signals using a variational Bayesian method, and a mean accuracy of 22.19% for the classification of the pre-processed of EEG sensor signals, with a chance level of 11.11%. The higher classification accuracy of current sources, when compared to EEG classification accuracy, was attributed to the high number of sources and the different signal patterns obtained in the same vertex for different motor tasks. Since the inverse filter estimation for current sources can be done offline with the present method, the present method is applicable to real-time BCIs. Finally, due to the highly enhanced spatial distribution of current sources over the brain cortex, this method has the potential to identify activation patterns to design BCIs for the control of an affected limb in patients with stroke, or BCIs from motor imagery in patients with spinal cord injury.
从无创脑记录中对踝关节运动进行分类,可应用于脑机接口(BCI),以控制外骨骼、假肢和功能性电刺激器,造福于行走障碍患者。在本研究中,使用脑电图(EEG)和功能磁共振成像(fMRI)记录,从通过分层变分贝叶斯方法估计的皮层电流源中,对双腿在两个力水平下的踝关节屈伸任务进行分类。EEG电流源估计的分层先验是从fMRI组(二级)分析中激活的脑区及其强度获得的。fMRI组分析是在定义于初级运动皮层、辅助运动区和体感区的感兴趣区域上进行的,这些区域对运动控制有重要作用是众所周知的。应用稀疏逻辑回归方法进行九类分类(八个主动任务和一个静息对照任务),对于使用变分贝叶斯方法从EEG和fMRI信号估计的电流源时间序列,平均准确率为65.64%,对于EEG传感器信号预处理后的分类,平均准确率为22.19%,机遇水平为11.11%。与EEG分类准确率相比,电流源的分类准确率更高,这归因于源的数量众多以及在同一顶点针对不同运动任务获得的不同信号模式。由于当前方法可以离线进行电流源的逆滤波器估计,因此该方法适用于实时BCI。最后,由于电流源在大脑皮层上的空间分布高度增强,该方法有潜力识别激活模式,以设计用于控制中风患者受影响肢体的BCI,或用于脊髓损伤患者运动想象的BCI。