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Major Depression Detection from EEG Signals Using Kernel Eigen-Filter-Bank Common Spatial Patterns

机译:使用核特征滤波器组公共空间模式从脑电信号中检测重大抑郁症

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摘要

Major depressive disorder (MDD) has become a leading contributor to the global burden of disease; however, there are currently no reliable biological markers or physiological measurements for efficiently and effectively dissecting the heterogeneity of MDD. Here we propose a novel method based on scalp electroencephalography (EEG) signals and a robust spectral-spatial EEG feature extractor called kernel eigen-filter-bank common spatial pattern (KEFB-CSP). The KEFB-CSP first filters the multi-channel raw EEG signals into a set of frequency sub-bands covering the range from theta to gamma bands, then spatially transforms the EEG signals of each sub-band from the original sensor space to a new space where the new signals (i.e., CSPs) are optimal for the classification between MDD and healthy controls, and finally applies the kernel principal component analysis (kernel PCA) to transform the vector containing the CSPs from all frequency sub-bands to a lower-dimensional feature vector called KEFB-CSP. Twelve patients with MDD and twelve healthy controls participated in this study, and from each participant we collected 54 resting-state EEGs of 6 s length (5 min and 24 s in total). Our results show that the proposed KEFB-CSP outperforms other EEG features including the powers of EEG frequency bands, and fractal dimension, which had been widely applied in previous EEG-based depression detection studies. The results also reveal that the 8 electrodes from the temporal areas gave higher accuracies than other scalp areas. The KEFB-CSP was able to achieve an average EEG classification accuracy of 81.23% in single-trial analysis when only the 8-electrode EEGs of the temporal area and a support vector machine (SVM) classifier were used. We also designed a voting-based leave-one-participant-out procedure to test the participant-independent individual classification accuracy. The voting-based results show that the mean classification accuracy of about 80% can be achieved by the KEFP-CSP feature and the SVM classifier with only several trials, and this level of accuracy seems to become stable as more trials (i.e., <7 trials) are used. These findings therefore suggest that the proposed method has a great potential for developing an efficient (required only a few 6-s EEG signals from the 8 electrodes over the temporal) and effective (~80% classification accuracy) EEG-based brain-computer interface (BCI) system which may, in the future, help psychiatrists provide individualized and effective treatments for MDD patients.
机译:严重抑郁症(MDD)已成为全球疾病负担的主要诱因;但是,目前尚没有可靠的生物学标记或生理学测量方法可以有效地解剖MDD的异质性。在这里,我们提出了一种基于头皮脑电图(EEG)信号和健壮的光谱空间EEG特征提取器的新方法,该特征提取器称为内核特征滤波器组公共空间模式(KEFB-CSP)。 KEFB-CSP首先将多通道原始EEG信号过滤到一组涵盖从theta到gamma波段范围的频率子带中,然后将每个子带的EEG信号从原始传感器空间空间转换到新空间新信号(即CSP)最适合用于MDD和健康控件之间的分类,并最终应用内核主成分分析(内核PCA)将包含CSP的矢量从所有子频带转换为低维特征向量称为KEFB-CSP。 12名MDD患者和12名健康对照者参加了这项研究,并且从每位参与者中我们收集了54个6 s长(总共5分钟和24 s)的静息状态脑电图。我们的结果表明,提出的KEFB-CSP优于其他EEG功能,包括EEG频带的功率和分形维数,这些功能已在以前的基于EEG的抑郁症检测研究中广泛应用。结果还显示,颞部区域的8个电极比其他头皮区域具有更高的准确性。当仅使用颞区的8电极EEG和支持向量机(SVM)分类器时,KEFB-CSP在单次试验分析中的平均EEG分类准确率达到81.23%。我们还设计了一种基于投票的“一人退出”程序,以测试独立于参与者的个人分类准确性。基于投票的结果表明,仅通过几次试验,KEFP-CSP功能和SVM分类器就可以实现约80%的平均分类精度,并且随着更多试验的进行,这一精度水平似乎变得稳定(即,<7试用)。因此,这些发现表明,所提出的方法具有开发基于脑电接口的高效(从整个时间上的8个电极仅需要几个6-s EEG信号)和有效(〜80%分类精度)的巨大潜力。 (BCI)系统,将来可能会帮助精神科医生为MDD患者提供个性化且有效的治疗方法。

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