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Feature Extraction and Classification Methods for Hybrid fNIRS-EEG Brain-Computer Interfaces

机译:混合fNIRS-EEG脑机接口的特征提取和分类方法

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摘要

In this study, a brain-computer interface (BCI) framework for hybrid functional near-infrared spectroscopy (fNIRS) and electroencephalography (EEG) for locked-in syndrome (LIS) patients is investigated. Brain tasks, channel selection methods, and feature extraction and classification algorithms available in the literature are reviewed. First, we categorize various types of patients with cognitive and motor impairments to assess the suitability of BCI for each of them. The prefrontal cortex is identified as a suitable brain region for imaging. Second, the brain activity that contributes to the generation of hemodynamic signals is reviewed. Mental arithmetic and word formation tasks are found to be suitable for use with LIS patients. Third, since a specific targeted brain region is needed for BCI, methods for determining the region of interest are reviewed. The combination of a bundled-optode configuration and threshold-integrated vector phase analysis turns out to be a promising solution. Fourth, the usable fNIRS features and EEG features are reviewed. For hybrid BCI, a combination of the signal peak and mean fNIRS signals and the highest band powers of EEG signals is promising. For classification, linear discriminant analysis has been most widely used. However, further research on vector phase analysis as a classifier for multiple commands is desirable. Overall, proper brain region identification and proper selection of features will improve classification accuracy. In conclusion, five future research issues are identified, and a new BCI scheme, including brain therapy for LIS patients and using the framework of hybrid fNIRS-EEG BCI, is provided.
机译:在这项研究中,研究了锁定综合征(LIS)患者的混合功能近红外光谱(fNIRS)和脑电图(EEG)的脑机接口(BCI)框架。对文献中可用的脑任务,通道选择方法以及特征提取和分类算法进行了回顾。首先,我们对各种类型的认知障碍和运动障碍患者进行分类,以评估BCI是否适合每个患者。前额叶皮层被确定为适合成像的大脑区域。其次,回顾了有助于血液动力学信号产生的大脑活动。发现心理算术和单词形成任务适合与LIS患者一起使用。第三,由于BCI需要特定的目标大脑区域,因此将对确定感兴趣区域的方法进行综述。捆绑光电管配置和阈值集成矢量相位分析相结合是一个很有前途的解决方案。第四,回顾了可用的fNIRS功能和EEG功能。对于混合BCI,将信号峰值和平均fNIRS信号以及EEG信号的最高频带功率结合起来是有希望的。对于分类,线性判别分析已被最广泛地使用。然而,需要进一步研究矢量相位分析作为多个命令的分类器。总体而言,正确的大脑区域识别和特征的正确选择将提高分类的准确性。总之,确定了五个未来的研究问题,并提供了一种新的BCI方案,包括针对LIS患者的脑部治疗以及使用混合fNIRS-EEG BCI框架。

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