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A large scale screening study with a SMR-based BCI: Categorization of BCI users and differences in their SMR activity

机译:基于SMR的BCI的大规模筛查研究:BCI用户的分类及其SMR活动的差异

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摘要

Brain-Computer Interfaces (BCIs) are inefficient for a non-negligible part of the population, estimated around 25%. To understand this phenomenon in Sensorimotor Rhythm (SMR) based BCIs, data from a large-scale screening study conducted on 80 novice participants with the Berlin BCI system and its standard machine-learning approach were investigated. Each participant performed one BCI session with resting state Encephalography, Motor Observation, Motor Execution and Motor Imagery recordings and 128 electrodes. A significant portion of the participants (40%) could not achieve BCI control (feedback performance > 70%). Based on the performance of the calibration and feedback runs, BCI users were stratified in three groups. Analyses directed to detect and elucidate the differences in the SMR activity of these groups were performed. Statistics on reactive frequencies, task prevalence and classification results are reported. Based on their SMR activity, also a systematic list of potential reasons leading to performance drops and thus hints for possible improvements of BCI experimental design are given. The categorization of BCI users has several advantages, allowing researchers 1) to select subjects for further analyses as well as for testing new BCI paradigms or algorithms, 2) to adopt a better subject-dependent training strategy and 3) easier comparisons between different studies.
机译:脑计算机接口(BCI)对于不可忽略的部分人群效率低下,估计约为25%。为了理解基于感觉运动节律(SMR)的BCI中的这种现象,我们对来自柏林BCI系统及其标准机器学习方法的80位新手参与者进行的大规模筛选研究的数据进行了调查。每个参与者进行了一次BCI会议,包括静息状态脑电图,运动观察,运动执行和运动图像记录以及128个电极。很大一部分参与者(40%)无法实现BCI控制(反馈性能> 70%)。根据校准和反馈运行的性能,将BCI用户分为三组。进行了旨在检测​​和阐明这些组的SMR活性差异的分析。报告了无功频率,任务患病率和分类结果的统计信息。基于它们的SMR活动,还给出了导致性能下降的潜在原因的系统清单,从而给出了BCI实验设计可能改进的提示。 BCI用户的分类具有多个优势,这使研究人员1)选择主题进行进一步分析以及测试新的BCI范例或算法,2)采用更好的主题相关培训策略,以及3)在不同研究之间进行比较比较容易。

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