Institute of Medical Psychology and Behavioral Neurobiology, University of Tübingen, Germany.
Institute of Medical Psychology and Behavioral Neurobiology, University of Tübingen, Germany.
Neuroimage Clin. 2018;20:972-986. doi: 10.1016/j.nicl.2018.09.035. Epub 2018 Oct 4.
The electroencephalogram (EEG) constitutes a relevant tool to study neural dynamics and to develop brain-machine interfaces (BMI) for rehabilitation of patients with paralysis due to stroke. However, the EEG is easily contaminated by artifacts of physiological origin, which can pollute the measured cortical activity and bias the interpretations of such data. This is especially relevant when recording EEG of stroke patients while they try to move their paretic limbs, since they generate more artifacts due to compensatory activity. In this paper, we study how physiological artifacts (i.e., eye movements, motion artifacts, muscle artifacts and compensatory movements with the other limb) can affect EEG activity of stroke patients. Data from 31 severely paralyzed stroke patients performing/attempting grasping movements with their healthy/paralyzed hand were analyzed offline. We estimated the cortical activation as the event-related desynchronization (ERD) of sensorimotor rhythms and used it to detect the movements with a pseudo-online simulated BMI. Automated state-of-the-art methods (linear regression to remove ocular contaminations and statistical thresholding to reject the other types of artifacts) were used to minimize the influence of artifacts. The effect of artifact reduction was quantified in terms of ERD and BMI performance. The results reveal a significant contamination affecting the EEG, being involuntary muscle activity the main source of artifacts. Artifact reduction helped extracting the oscillatory signatures of motor tasks, isolating relevant information from noise and revealing a more prominent ERD activity. Lower BMI performances were obtained when artifacts were eliminated from the training datasets. This suggests that artifacts produce an optimistic bias that improves theoretical accuracy but may result in a poor link between task-related oscillatory activity and BMI peripheral feedback. With a clinically relevant dataset of stroke patients, we evidence the need of appropriate methodologies to remove artifacts from EEG datasets to obtain accurate estimations of the motor brain activity.
脑电图(EEG)是研究神经动力学和开发脑机接口(BMI)以恢复中风引起瘫痪患者的重要工具。然而,EEG 很容易受到生理来源的伪影的污染,这会污染测量的皮质活动并影响对这些数据的解释。当记录中风患者在试图移动瘫痪肢体时的 EEG 时,这一点尤其重要,因为他们会由于代偿性活动而产生更多的伪影。在本文中,我们研究了生理伪影(即眼动、运动伪影、肌肉伪影和对侧肢体的代偿运动)如何影响中风患者的 EEG 活动。离线分析了 31 名严重瘫痪的中风患者使用健康/瘫痪手进行/尝试抓握运动时的数据。我们将皮质激活估计为感觉运动节律的事件相关去同步(ERD),并使用它来通过伪在线模拟 BMI 检测运动。使用自动化的最先进方法(线性回归去除眼部污染,以及统计阈值去除其他类型的伪影)来最大程度地减少伪影的影响。通过 ERD 和 BMI 性能来量化伪影减少的效果。结果显示,EEG 受到了明显的污染,其中非自愿肌肉活动是伪影的主要来源。伪影减少有助于提取运动任务的振荡特征,从噪声中分离出相关信息,并显示出更明显的 ERD 活动。当从训练数据集中消除伪影时,BMI 的性能会降低。这表明伪影产生了一种乐观的偏差,提高了理论准确性,但可能导致与任务相关的振荡活动和 BMI 外周反馈之间的联系较差。通过具有临床相关性的中风患者数据集,我们证明了需要适当的方法来从 EEG 数据集中消除伪影,以获得对运动大脑活动的准确估计。