Division of Translational Neurosurgery & Division of Functional and Restorative Neurosurgery, Department of Neurosurgery, and Centre for Integrative Neuroscience, University of Tuebingen, Germany.
Division of Translational Neurosurgery & Division of Functional and Restorative Neurosurgery, Department of Neurosurgery, and Centre for Integrative Neuroscience, University of Tuebingen, Germany.
Neuroimage. 2015 Mar;108:319-27. doi: 10.1016/j.neuroimage.2014.12.026. Epub 2014 Dec 17.
According to electrophysiological studies motor imagery and motor execution are associated with perturbations of brain oscillations over spatially similar cortical areas. By contrast, neuroimaging and lesion studies suggest that at least partially distinct cortical networks are involved in motor imagery and execution. We sought to further disentangle this relationship by studying the role of brain-robot interfaces in the context of motor imagery and motor execution networks. Twenty right-handed subjects performed several behavioral tasks as indicators for imagery and execution of movements of the left hand, i.e. kinesthetic imagery, visual imagery, visuomotor integration and tonic contraction. In addition, subjects performed motor imagery supported by haptic/proprioceptive feedback from a brain-robot-interface. Principal component analysis was applied to assess the relationship of these indicators. The respective cortical resting state networks in the α-range were investigated by electroencephalography using the phase slope index. We detected two distinct abilities and cortical networks underlying motor control: a motor imagery network connecting the left parietal and motor areas with the right prefrontal cortex and a motor execution network characterized by transmission from the left to right motor areas. We found that a brain-robot-interface might offer a way to bridge the gap between these networks, opening thereby a backdoor to the motor execution system. This knowledge might promote patient screening and may lead to novel treatment strategies, e.g. for the rehabilitation of hemiparesis after stroke.
根据电生理学研究,运动想象和运动执行与脑振荡在空间上相似的皮质区域的干扰有关。相比之下,神经影像学和病变研究表明,运动想象和执行至少部分涉及不同的皮质网络。我们试图通过研究脑-机器人接口在运动想象和运动执行网络中的作用来进一步理清这种关系。20 名右利手受试者进行了几项行为任务,作为左手运动想象和执行的指标,即运动想象、视觉想象、视动整合和紧张性收缩。此外,受试者还进行了由脑-机器人接口提供触觉/本体感觉反馈的运动想象。应用主成分分析来评估这些指标的关系。使用相位斜率指数通过脑电图研究了相应的 α 频段皮质静息状态网络。我们检测到两个不同的运动控制能力和皮质网络:一个连接左顶叶和运动区与右前额叶的运动想象网络,一个以从左到右运动区的传输为特征的运动执行网络。我们发现脑-机器人接口可能提供了一种在这些网络之间架起桥梁的方法,从而为运动执行系统打开了一个后门。这些知识可能会促进患者的筛选,并可能导致新的治疗策略,例如中风后偏瘫的康复。