基于深度学习分类和虚拟现实反馈的神经康复脑机接口

Tamás Karácsony, J. P. Hansen, H. Iversen, S. Puthusserypady
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引用次数: 32

摘要

虽然运动意象(MI)中风康复有效地促进神经重组,但目前的治疗方法是不可估量的,它们的重复性可能会使人失去动力。在这项工作中,开发了一种基于实时脑电图(EEG)的MI-BCI(脑机接口)系统,并以虚拟现实(VR)游戏作为动机反馈用于脑卒中康复。如果实验对象成功击中其中一个目标,它就会爆炸,从而为成功想象和虚拟执行的手或脚的运动提供反馈。采用了基于深度学习(DL)和卷积神经网络(CNN)架构的新型分类算法,并采用了独特的试验开始检测技术。我们的分类器在来自PhysioNet离线数据库的数据集上比以前的架构表现得更好。它为CNN架构使用0.5秒16通道输入,在实时游戏设置中提供了精细的分类。10名参与者报告说,培训很有趣、有趣、身临其境。一位测试者评论道:“这有点奇怪,因为它感觉就像我的手一样。”据报道,VR系统引起了轻微的不适,并为心肌梗死激活做出了适度的努力。我们得出结论,MI- bci - vr系统与基于DL的实时游戏应用分类器应该被考虑用于激励MI中风康复。
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Brain Computer Interface for Neuro-rehabilitation With Deep Learning Classification and Virtual Reality Feedback
Though Motor Imagery (MI) stroke rehabilitation effectively promotes neural reorganization, current therapeutic methods are immeasurable and their repetitiveness can be demotivating. In this work, a real-time electroencephalogram (EEG) based MI-BCI (Brain Computer Interface) system with a virtual reality (VR) game as a motivational feedback has been developed for stroke rehabilitation. If the subject successfully hits one of the targets, it explodes and thus providing feedback on a successfully imagined and virtually executed movement of hands or feet. Novel classification algorithms with deep learning (DL) and convolutional neural network (CNN) architecture with a unique trial onset detection technique was used. Our classifiers performed better than the previous architectures on datasets from PhysioNet offline database. It provided fine classification in the real-time game setting using a 0.5 second 16 channel input for the CNN architectures. Ten participants reported the training to be interesting, fun and immersive. "It is a bit weird, because it feels like it would be my hands", was one of the comments from a test person. The VR system induced a slight discomfort and a moderate effort for MI activations was reported. We conclude that MI-BCI-VR systems with classifiers based on DL for real-time game applications should be considered for motivating MI stroke rehabilitation.
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