从人类脑电图预测运动和体感觉功能

Seokyun Ryun, J. Kim, Donghyuk Lee, C. Chung
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引用次数: 2

摘要

在最近的脑机接口研究中,最具挑战性的问题之一是不仅要实现高性能,还要创造一种对人工设备的所有权感。要研究这一问题,应考虑感觉-运动一体化BMI系统。在这项研究中,我们试图利用脑皮质电图(ECoG)信号来预测触觉刺激的体感觉特性以及运动轨迹和类型。结果表明:1)单次试验三维运动轨迹可以通过低频ECoG信号估计,且性能相对较高;2)高伽马活动可以作为运动类型分类的稳健特征;3)压力刺激的位置可以通过来自感觉相关皮层区域的宏观ECoG信号进行分类。这些结果可以应用于在运动解码过程中同时编码感觉信息的闭环BMBI系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of motor and somatosensory function from human ECoG
One of the most challenging issues in recent BCI research is not only achieving high performance, but also creating a sense of ownership of artificial devices. To investigate this issue, sensory-motor integrated BMI system should be considered. In this study, we attempted to predict the somatosensory property of tactile stimulus as well as the movement trajectory and type using elctrocorticography (ECoG) signals. We showed that 1) single-trial 3-D movement trajectory can be estimated from low-frequency ECoG signals with relatively high performance, 2) high-gamma activity can be a robust feature for movement type classification, and 3) the location of pressure stimulation can be classified by macro ECoG signals from sensory-related cortical areas. These results might be applied to the closed-loop BMBI systems which simultaneously encode sensory information during movement decoding.
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