Recording the tactile P300 with the cEEGrid for potential use in a brain-computer interface

被引:0
|
作者
Eidel, M. [1 ]
Pfeiffer, M. [1 ]
Ziebell, P. [1 ]
Kuebler, A. [1 ]
机构
[1] Univ Wurzburg, Inst Psychol, Wurzburg, Germany
来源
关键词
brain-computer interface (BCI); P300-event-related potential; tactile P300; tactually evoked potentials; somatosensory sensitivity; CENTERED DESIGN; COMMUNICATION; TECHNOLOGY; ODDBALL; BCI; DISCRIMINATION; PARTICIPANTS; PROBABILITY; PEOPLE; P3A;
D O I
10.3389/fnhum.2024.1371631
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Brain-computer interfaces (BCIs) are scientifically well established, but they rarely arrive in the daily lives of potential end-users. This could be in part because electroencephalography (EEG), a prevalent method to acquire brain activity for BCI operation, is considered too impractical to be applied in daily life of end-users with physical impairment as an assistive device. Hence, miniaturized EEG systems such as the cEEGrid have been developed. While they promise to be a step toward bridging the gap between BCI development, lab demonstrations, and home use, they still require further validation. Encouragingly, the cEEGrid has already demonstrated its ability to record visually and auditorily evoked event-related potentials (ERP), which are important as input signal for many BCIs. With this study, we aimed at evaluating the cEEGrid in the context of a BCI based on tactually evoked ERPs. To compare the cEEGrid with a conventional scalp EEG, we recorded brain activity with both systems simultaneously. Forty healthy participants were recruited to perform a P300 oddball task based on vibrotactile stimulation at four different positions. This tactile paradigm has been shown to be feasible for BCI repeatedly but has never been tested with the cEEGrid. We found distinct P300 deflections in the cEEGrid data, particularly at vertical bipolar channels. With an average of 63%, the cEEGrid classification accuracy was significantly above the chance level (25%) but significantly lower than the 81% reached with the EEG cap. Likewise, the P300 amplitude was significantly lower (cEEGrid R2-R7: 1.87 mu V, Cap Cz: 3.53 mu V). These results indicate that a tactile BCI using the cEEGrid could potentially be operated, albeit with lower efficiency. Additionally, participants' somatosensory sensitivity was assessed, but no correlation to the accuracy of either EEG system was shown. Our research contributes to the growing amount of literature comparing the cEEGrid to conventional EEG systems and provides first evidence that the tactile P300 can be recorded behind the ear. A BCI based on a thus simplified EEG system might be more readily accepted by potential end-users, provided the accuracy can be substantially increased, e.g., by training and improved classification.
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页数:12
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