Irimia Danut C, Ortner Rupert, Poboroniuc Marian S, Ignat Bogdan E, Guger Christoph
g.tec Medical Engineering GmbH, Schiedlberg, Austria.
Gheorghe Asachi Technical University of Iasi, Iasi, Romania.
Front Robot AI. 2018 Nov 29;5:130. doi: 10.3389/frobt.2018.00130. eCollection 2018.
Motor imagery (MI) based brain-computer interfaces (BCI) extract commands in real-time and can be used to control a cursor, a robot or functional electrical stimulation (FES) devices. The control of FES devices is especially interesting for stroke rehabilitation, when a patient can use motor imagery to stimulate specific muscles in real-time. However, damage to motor areas resulting from stroke or other causes might impair control of a motor imagery BCI for rehabilitation. The current work presents a comparative evaluation of the MI-based BCI control accuracy between stroke patients and healthy subjects. Five patients who had a stroke that affected the motor system participated in the current study, and were trained across 10-24 sessions lasting about 1 h each with the recoveriX system. The participants' EEG data were classified while they imagined left or right hand movements, and real-time feedback was provided on a monitor. If the correct imagination was detected, the FES was also activated to move the left or right hand. The grand average mean accuracy was 87.4% for all patients and sessions. All patients were able to achieve at least one session with a maximum accuracy above 96%. Both the mean accuracy and the maximum accuracy were surprisingly high and above results seen with healthy controls in prior studies. Importantly, the study showed that stroke patients can control a MI BCI system with high accuracy relative to healthy persons. This may occur because these patients are highly motivated to participate in a study to improve their motor functions. Participants often reported early in the training of motor improvements and this caused additional motivation. However, it also reflects the efficacy of combining motor imagination, seeing continuous bar feedback, and real hand movement that also activates the tactile and proprioceptive systems. Results also suggested that motor function could improve even if classification accuracy did not, and suggest other new questions to explore in future work. Future studies will also be done with a first-person view 3D avatar to provide improved feedback and thereby increase each patients' sense of engagement.
基于运动想象(MI)的脑机接口(BCI)可实时提取指令,用于控制光标、机器人或功能性电刺激(FES)设备。对于中风康复而言,FES设备的控制尤其具有意义,因为患者可通过运动想象实时刺激特定肌肉。然而,中风或其他原因导致的运动区域损伤可能会削弱用于康复的运动想象脑机接口的控制能力。当前研究对中风患者和健康受试者基于运动想象的脑机接口控制精度进行了比较评估。五名运动系统受中风影响的患者参与了本研究,并使用recoveriX系统进行了10至24次训练,每次训练约持续1小时。在参与者想象左手或右手运动时,对其脑电图数据进行分类,并在监视器上提供实时反馈。如果检测到正确的想象,FES也会被激活以移动左手或右手。所有患者和训练阶段的总体平均准确率为87.4%。所有患者至少有一个训练阶段的最高准确率超过96%。平均准确率和最高准确率都出奇地高,高于先前研究中健康对照组的结果。重要的是,该研究表明中风患者相对于健康人能够高精度地控制运动想象脑机接口系统。这可能是因为这些患者积极参与旨在改善其运动功能的研究。参与者在训练早期经常报告运动功能有所改善,这进一步激发了他们的积极性。然而,这也反映了运动想象、持续的条形反馈以及实际手部运动相结合的效果,实际手部运动还激活了触觉和本体感觉系统。结果还表明,即使分类准确率没有提高,运动功能也可能改善,并为未来研究提出了其他新问题。未来的研究还将使用第一人称视角的3D虚拟形象来提供更好的反馈,从而增强每位患者的参与感。