Sub-scalp EEG for sensorimotor brain-computer interface.

Tim B Mahoney, David B Grayden, Sam E John
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Abstract

Objective: To establish sub-scalp electroencephalography (EEG) as a viable option for brain-computer interface (BCI) applications, particularly for chronic use, by demonstrating its effectiveness in recording and classifying sensorimotor neural activity. Approach: Two experiments were conducted in this study. The first aim was to demonstrate the high spatial resolution of sub-scalp EEG through analysis of somatosensory evoked potentials in sheep models. The second focused on the practical application of sub-scalp EEG, classifying motor execution using data collected during a sheep behavioural experiment. Main Results: We successfully demonstrated the recording of sensorimotor rhythms using sub-scalp EEG in sheep models. Important spatial, temporal, and spectral features of these signals were identified, and we were able to classify motor execution with above-chance performance. These results are comparable to previous work that investigated signal quality and motor execution classification using ECoG and endovascular arrays in sheep models. Significance: These results suggest that sub-scalp EEG may provide signal quality that approaches that of more invasive neural recording methods such as ECoG and endovascular arrays, and support the use of sub-scalp EEG for chronic BCI applications.

感觉运动脑机接口头皮下脑电图。
目的:通过证明头皮下脑电图(EEG)在记录和分类感觉运动神经活动方面的有效性,建立其作为脑机接口(BCI)应用的可行选择,特别是对于慢性使用。方法:在本研究中进行了两个实验。第一个目的是通过分析绵羊模型的体感诱发电位来证明头皮下脑电图的高空间分辨率。第二个重点是头皮下脑电图的实际应用,利用在绵羊行为实验中收集的数据对运动执行进行分类。主要结果:我们成功地证明了在绵羊模型中使用头皮下脑电图记录感觉运动节律。这些信号的重要空间、时间和频谱特征被识别出来,我们能够将运动执行与高于机会的表现进行分类。这些结果与之前在绵羊模型中使用ECoG和血管内阵列研究信号质量和运动执行分类的工作相当。意义:这些结果表明,头皮下脑电图可能提供接近更具侵入性的神经记录方法(如ECoG和血管内阵列)的信号质量,并支持将头皮下脑电图用于慢性脑机接口应用。
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