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Evaluating the versatility of EEG models generated from motor imagery tasks: An exploratory investigation on upper-limb elbow-centered motor imagery tasks

机译:评估由运动图像任务生成的EEG模型的多功能性:对以上肢肘部为中心的运动图像任务的探索性研究

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摘要

Electroencephalography (EEG) has recently been considered for use in rehabilitation of people with motor deficits. EEG data from the motor imagery of different body movements have been used, for instance, as an EEG-based control method to send commands to rehabilitation devices that assist people to perform a variety of different motor tasks. However, it is both time and effort consuming to go through data collection and model training for every rehabilitation task. In this paper, we investigate the possibility of using an EEG model from one type of motor imagery (e.g.: elbow extension and flexion) to classify EEG from other types of motor imagery activities (e.g.: open a drawer). In order to study the problem, we focused on the elbow joint. Specifically, nine kinesthetic motor imagery tasks involving the elbow were investigated in twelve healthy individuals who participated in the study. While results reported that models from goal-oriented motor imagery tasks had higher accuracy than models from the simple joint tasks in intra-task testing (e.g., model from elbow extension and flexion task was tested on EEG data collected from elbow extension and flexion task), models from simple joint tasks had higher accuracies than the others in inter-task testing (e.g., model from elbow extension and flexion task tested on EEG data collected from drawer opening task). Simple single joint motor imagery tasks could, therefore, be considered for training models to potentially reduce the number of repetitive data acquisitions and model training in rehabilitation applications.
机译:最近已经考虑将脑电图(EEG)用于运动障碍者的康复。来自不同身体运动的运动图像的EEG数据已被用作基于EEG的控制方法,以向康复设备发送命令,以帮助人们执行各种不同的运动任务。但是,为每个康复任务进行数据收集和模型训练既费时又费力。在本文中,我们研究了使用一种类型的运动图像(例如:肘部伸展和屈曲)的脑电图模型对其他类型的运动图像活动(例如:打开抽屉)进行脑电图分类的可能性。为了研究这个问题,我们集中在肘关节。具体来说,在参与该研究的十二名健康个体中,调查了涉及肘部的九种运动觉运动成像任务。虽然结果报告说,在任务内测试中,来自目标目标的运动图像任务的模型比来自简单联合任务的模型具有更高的准确性(例如,对从肘部伸展和屈曲任务收集的EEG数据测试了肘部伸展和屈曲任务的模型) ,在任务间测试中,来自简单关节任务的模型的准确性高于其他任务(例如,根据从抽屉打开任务收集的EEG数据测试的肘部伸展和屈曲任务的模型)。因此,可以考虑将简单的单关节运动成像任务用于训练模型,以潜在地减少重复性数据获取和康复应用中模型训练的次数。

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