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Boosting bit rates and error detection for the classification of fast-paced motor commands based on single-trial EEG analysis

机译:基于单次EEG分析,提高比特率和错误检测,以对快节奏的电机命令进行分类

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Brain-computer interfaces (BCIs) involve two coupled adapting systems-the human subject and the computer. In developing our BCI, our goal was to minimize the need for subject training and to impose the major learning load on the computer. To this end, we use behavioral paradigms that exploit single-trial EEG potentials preceding voluntary finger movements. Here, we report recent results on the basic physiology of such premovement event-related potentials (ERP). 1) We predict the laterality of imminent left- versus right-hand finger movements in a natural keyboard typing condition and demonstrate that a single-trial classification based on the lateralized Bereitschaftspotential (BP) achieves good accuracies even at a pace as fast as 2 taps/s. Results for four out of eight subjects reached a peak information transfer rate of more than 15 b/min; the four other subjects reached 6-10 b/min. 2) We detect cerebral error potentials from single false-response trials in a forced-choice task, reflecting the subject's recognition of an erroneous response. Based on a specifically tailored classification procedure that limits the rate of false positives at, e.g., 2%, the algorithm manages to detect 85% of error trials in seven out of eight subjects. Thus, concatenating a primary single-trial BP-paradigm involving finger classification feedback with such secondary error detection could serve as an efficient online confirmation/correction tool for improvement of bit rates in a future BCI setting. As the present variant of the Berlin BCI is designed to achieve fast classifications in normally behaving subjects, it opens a new perspective for assistance of action control in time-critical behavioral contexts; the potential transfer to paralyzed patients will require further study.
机译:脑机接口(BCI)涉及两个耦合的适应系统-人体和计算机。在开发BCI时,我们的目标是最大程度地减少对主题培训的需求,并将主要的学习负担强加于计算机上。为此,我们使用行为范式,这些行为范式在自愿手指运动之前利用了单项EEG电位。在这里,我们报告有关这种运动事件相关电位(ERP)的基本生理学的最新结果。 1)我们预测了自然键盘打字条件下即将发生的左右手指运动的横向性,并证明了基于横向Bereitschaftspotential(BP)的单次尝试分类,即使以2次敲击的速度也能达到良好的精度/ s。八分之四的受试者的结果达到了超过15 b / min的峰值信息传递速率;其他四个受试者达到6-10 b / min。 2)我们从强制选择任务中的单个错误响应试验中检测出潜在的脑部错误,反映出受试者对错误响应的认识。基于专门定制的分类程序,该程序将误报率限制在例如2%,该算法设法在八分之七的受试者中检测到85%的错误试验。因此,将包含手指分类反馈的主要单次BP范例与此类次要错误检测连接起来,可以用作有效的在线确认/校正工具,以改善未来BCI设置中的比特率。由于柏林BCI的当前变体旨在在正常行为的主题中实现快速分类,因此它为在时间紧迫的行为情境中协助控制动作打开了新的视野。潜在转移到瘫痪患者中需要进一步研究。

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