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A Ternary Hybrid EEG-NIRS Brain-Computer Interface for the Classification of Brain Activation Patterns during Mental Arithmetic, Motor Imagery, and Idle State

机译:三元EEG-NIRS混合脑计算机接口,用于在算术,运动图像和空闲状态下对脑激活模式进行分类

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The performance of a brain-computer interface (BCI) can be enhanced by simultaneously using two or more modalities to record brain activity, which is generally referred to as a hybrid BCI. To date, many BCI researchers have tried to implement a hybrid BCI system by combining electroencephalography (EEG) and functional near-infrared spectroscopy (NIRS) to improve the overall accuracy of binary classification. However, since hybrid EEG-NIRS BCI, which will be denoted by hBCI in this paper, has not been applied to ternary classification problems, paradigms and classification strategies appropriate for ternary classification using hBCI are not well investigated. Here we propose the use of an hBCI for the classification of three brain activation patterns elicited by mental arithmetic, motor imagery, and idle state, with the aim to elevate the information transfer rate (ITR) of hBCI by increasing the number of classes while minimizing the loss of accuracy. EEG electrodes were placed over the prefrontal cortex and the central cortex, and NIRS optodes were placed only on the forehead. The ternary classification problem was decomposed into three binary classification problems using the “one-versus-one” (OVO) classification strategy to apply the filter-bank common spatial patterns filter to EEG data. A 10 × 10-fold cross validation was performed using shrinkage linear discriminant analysis (sLDA) to evaluate the average classification accuracies for EEG-BCI, NIRS-BCI, and hBCI when the meta-classification method was adopted to enhance classification accuracy. The ternary classification accuracies for EEG-BCI, NIRS-BCI, and hBCI were 76.1 ± 12.8, 64.1 ± 9.7, and 82.2 ± 10.2%, respectively. The classification accuracy of the proposed hBCI was thus significantly higher than those of the other BCIs ( p < 0.005). The average ITR for the proposed hBCI was calculated to be 4.70 ± 1.92 bits/minute, which was 34.3% higher than that reported for a previous binary hBCI study.
机译:可以通过同时使用两种或多种方式记录大脑活动来增强脑机接口(BCI)的性能,这通常称为混合BCI。迄今为止,许多BCI研究人员已尝试通过将脑电图(EEG)和功能性近红外光谱(NIRS)结合使用来实现混合BCI系统,以提高二进制分类的总体准确性。然而,由于本文将以hBCI表示的混合EEG-NIRS BCI尚未应用于三元分类问题,因此尚未对适用于使用hBCI进行三元分类的范式和分类策略进行很好的研究。在这里,我们建议使用hBCI来分类由心理算术,运动图像和空闲状态引起的三种大脑激活模式,目的是通过增加类别数量同时最小化hBCI的信息传递速率(ITR)准确性的损失。脑电图电极放置在前额叶皮层和中央皮层上,而NIRS光电二极管仅放置在前额上。使用“一对多”(OVO)分类策略将三元分类问题分解为三个二元分类问题,以将过滤器库公共空间模式过滤器应用于EEG数据。当采用元分类方法提高分类准确性时,使用收缩线性判别分析(sLDA)进行10×10倍交叉验证,以评估EEG-BCI,NIRS-BCI和hBCI的平均分类准确性。 EEG-BCI,NIRS-BCI和hBCI的三元分类精度分别为76.1±12.8%,64.1±9.7和82.2±10.2%。因此,提出的hBCI的分类准确度明显高于其他BCI(p <0.005)。拟议的hBCI的平均ITR计算为4.70±1.92位/分钟,比先前的二进制hBCI研究报告的平均ITR高34.3%。

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