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Using a motor imagery questionnaire to estimate the performance of a Brain-Computer Interface based on object oriented motor imagery

机译:使用运动图像调查表基于面向对象的运动图像估计脑机接口的性能

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Objectives: The primary objective was to test whether motor imagery (MI) questionnaires can be used to detect BCI 'illiterate'. The second objective was to test how different MI paradigms, with and without the physical presence of the goal of an action, influence a BCI classifier. Methods: Kinaesthetic (KI) and visual (VI) motor imagery questionnaires were administered to 30 healthy volunteers. Their EEG was recorded during a cue-based, simple imagery (SI) and goal oriented imagery (GOI). Results: The strongest correlation (Pearson r2=0.53, p=1.6e-5) was found between KI and SI, followed by a moderate correlation between KI and GOI (r2=0.33, p=0.001) and a weak correlation between VI and SI (r2=0.21, p=0.022) and VI and GOI (r2=0.17, p=0.05). Classification accuracy was similar for SI (71.1±7.8%) and GOI (70.5±5.9%) though corresponding classification features differed in 70% participants. Compared to SI, GOI improved the classification accuracy in 'poor' imagers while reducing the classification accuracy in 'very good' imagers. Conclusion: The KI score could potentially be a useful tool to predict the performance of a MI based BCI. The physical presence of the object of an action facilitates motor imagination in 'poor' able-bodied imagers. Significance: Although this study shows results on able-bodied people, its general conclusions should be transferable to BCI based on MI for assisted rehabilitation of the upper extremities in patients.
机译:目的:主要目的是测试运动图像(MI)问卷是否可用于检测BCI“不识字”。第二个目标是测试有无行动目标的物理存在与否,不同的MI范例如何影响BCI分类器。方法:对30名健康志愿者进行了动觉(KI)和视觉(VI)运动图像问卷调查。他们的脑电图是在基于提示的简单图像(SI)和面向目标的图像(GOI)期间记录的。结果:KI和SI之间的相关性最强(Pearson r2 = 0.53,p = 1.6e-5),其次是KI和GOI之间的相关性中等(r2 = 0.33,p = 0.001),VI和VI之间的相关性较弱。 SI(r2 = 0.21,p = 0.022)以及VI和GOI(r2 = 0.17,p = 0.05)。 SI(71.1±7.8%)和GOI(70.5±5.9%)的分类准确性相似,尽管70%的参与者对应的分类特征有所不同。与SI相比,GOI提高了“差”成像器的分类精度,同时降低了“非常好”成像器的分类精度。结论:KI评分可能是预测基于MI的BCI表现的有用工具。动作对象的物理存在有助于“不良”健全成像器中的运动想象。启示:尽管这项研究显示了强健的人的结果,但其一般结论应可转移至基于MI的BCI,以协助患者上肢的康复。

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