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首页> 外文期刊>Neuroscience Letters: An International Multidisciplinary Journal Devoted to the Rapid Publication of Basic Research in the Brain Sciences >Application of a common spatial pattern-based algorithm for an fNIRS-based motor imagery brain-computer interface
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Application of a common spatial pattern-based algorithm for an fNIRS-based motor imagery brain-computer interface

机译:基于Fnirs的电动机图像脑接口应用基于空间模式的算法的应用

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Motor imagery is one of the most investigated paradigms in the field of brain-computer interfaces (BCIs). The present study explored the feasibility of applying a common spatial pattern (CSP)-based algorithm for a functional near-infrared spectroscopy (fNIRS)-based motor imagery BCI. Ten participants performed kinesthetic imagery of their left- and right-hand movements while 20-channel fNIRS signals were recorded over the motor cortex. The CSP method was implemented to obtain the spatial filters specific for both imagery tasks. The mean, slope, and variance of the CSP filtered signals were taken as features for BCI classification. Results showed that the CSP-based algorithm outperformed two representative channel-wise methods for classifying the two imagery statuses using either data from all channels or averaged data from imagery responsive channels only (oxygenated hemoglobin: CSP-based: 75.3 +/- 13.1%; all-channel: 52.3 +/- 5.3%; averaged: 64.8 +/- 13.2%; deoxygenated hemoglobin: CSP-based: 72.3 +/- 13.0%; all-channel: 48.8 +/- 8.2%; averaged: 63.3 +/- 13.3%). Furthermore, the effectiveness of the CSP method was also observed for the motor execution data to a lesser extent. A partial correlation analysis revealed significant independent contributions from all three types of features, including the often ignored variance feature. To our knowledge, this is the first study demonstrating the effectiveness of the CSP method for fNIRS-based motor imagery BCIs. (C) 2017 Elsevier B.V. All rights reserved.
机译:电机图像是脑 - 计算机接口领域中最受研究的范式之一(BCIS)。本研究探讨了应用于功能近红外光谱(FNIR)的常用空间模式(CSP)的算法的可行性,基于近红外光谱(FNIR)的电动机图像BCI。十名参与者在电机皮层上记录了20通道FNIR信号的左手和右手运动的动态图像。实施CSP方法以获取特定于图像任务的空间滤波器。 CSP滤波信号的平均值,斜率和方差被视为BCI分类的特征。结果表明,基于CSP的算法表现出两种代表性的渠道,用于使用来自所有通道的数据或仅从图像响应通道的平均数据进行分类的两个图像状态(氧化血红蛋白:CSP:75.3 +/- 13.1%;全频道:52.3 +/- 5.3%;平均:64.8 +/- 13.2%;脱氧血红蛋白:CSP为基础:72.3 +/- 13.0%;全频道:48.8 +/- 8.2%;平均:63.3 + / - 13.3%)。此外,还观察到CSP方法的有效性,用于电动机执行数据在较小程度上。部分相关性分析显示了来自所有三种类型的功能的显着独立贡献,包括通常忽略的方差特征。据我们所知,这是第一项研究证明了基于FNIRS的电机图像BCIS的CSP方法的有效性。 (c)2017年Elsevier B.V.保留所有权利。

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