首页> 外文会议>2014 International Winter Workshop on Brain-Computer Interface >Brain-computer interface for neurorehabilitation: Looking beyond upper limbs
【24h】

Brain-computer interface for neurorehabilitation: Looking beyond upper limbs

机译:用于康复的脑机接口:超越上肢

获取原文
获取原文并翻译 | 示例

摘要

With deeper understanding and appreciation of the roles of Brain-computer interface (BCI) in assisting stroke survivors to restore motor function by inducing activity-dependent brain plasticity through Hebbian learning, more and more studies in applying BCI for stroke rehabilitation have been conducted. Previous studies mainly focused on upper limb rehabilitation, typically by combining BCI with a mechanical feedback device (robotic arm or haptic knob) or functional electrical stimulation (FES). In our lab, in collaboration with clinicians in Tan Tock Seng Hospital, National Neuroscience Institute and National University Hospital, we have conducted three clinical studies involving more than 60 hemiplegic stroke patients to perform upper limb rehabilitation. In these studies, we observed statistically and clinically significant improvement in patients' upper limb recovery comparing their post-with pre-rehabilitation assessments. Neural imaging also shows statistically significant enhancement in functional connectivity. Learning from the upper limb rehabilitation, we are interested in applying BCI for the rehabilitation of lower limb, which is equally important for the improvement of a patient's quality of life, but more challenging compared with that for upper limb due to less alternatives available. In this talk, we present a study on the detection of motor imagery of brisk walking, aiming at developing a training system for lower limb rehabilitation. We are particularly interested in identifying the most relevant channels and frequency bands with regard to the detection of motor imagery of brisk walking from the EEG data when a subject imagines brisk walking. Specifically, we propose to select the most informative channels and frequencies by jointly maximizing the mutual information between the laplacian derivatives of power features and class labels, and minimizing the redundancy between the to-be-selected features with those already selected. Evaluated on heal- hy subjects, the results demonstrated that the most frequently selected channels were mainly located at the premotor cortex, supplementary motor area, dorsolateral prefrontal association cortex and posterior
机译:随着对脑机接口(BCI)在通过卒中学习诱导活动依赖型大脑可塑性帮助中风幸存者恢复运动功能中的作用的更深刻理解和认识,进行了越来越多的将BCI用于中风康复的研究。先前的研究主要集中在上肢康复方面,通常将BCI与机械反馈设备(机械手臂或触觉旋钮)或功能性电刺激(FES)结合使用。在我们的实验室中,我们与Tan Tock Seng医院,国家神经科学研究所和国立大学医院的临床医生合作,进行了三项临床研究,涉及60多名偏瘫性中风患者以进行上肢康复。在这些研究中,我们比较了患者康复前后的评估结果,观察到患者上肢恢复的统计学和临床​​显着改善。神经成像还显示出功能连通性的统计学显着增强。从上肢康复中学习,我们有兴趣将BCI应用于下肢康复,这对改善患者的生活质量同样重要,但由于替代方法较少,因此与上肢相比更具挑战性。在本次演讲中,我们将对快走运动的运动图像检测进行研究,旨在开发下肢康复训练系统。当受检者想象快走时,我们特别感兴趣的是从EEG数据中识别与快走的运动图像检测有关的最相关的通道和频带。具体来说,我们建议通过共同最大化功率特征和类别标签的拉普拉斯导数之间的互信息,以及将要选择的特征与已经选择的特征之间的冗余最小化,来选择信息量最大的信道和频率。对健康受试者进行了评估,结果表明,最常选择的通道主要位于运动前皮质,辅助运动区,背外侧前额叶联合皮质和后方

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号