EEG channel selection

  • 文章类型: Journal Article
    背景:通过使用持续的脑电图(EEG)信号检测发作前状态,癫痫发作预测算法已证明了其减轻癫痫风险的潜力。然而,大多数需要高密度脑电图,这对患者的日常监测来说是沉重的负担。此外,流行的癫痫发作模型需要使用大量标记数据进行大量训练,这对癫痫学家来说非常耗时和苛刻。
    方法:为了应对这些挑战,在这里,我们分别提出了一种自适应通道选择策略和半监督深度学习模型,以减少脑电通道的数量,并限制准确预测癫痫发作所需的标记数据量。我们的通道选择模块集中在EEG功率谱参数化的特征上,这些特征可以精确表征癫痫活动,以识别每位患者的癫痫发作相关通道。半监督模型集成了生成对抗网络和双向长短期记忆网络以增强癫痫发作预测。
    结果:我们的方法在CHB-MIT和锡耶纳癫痫数据集上进行了评估。只利用4个频道,该方法在CHB-MIT数据集上的AUC为93.15%,在Siena数据集上的AUC为88.98%。实验结果还表明,我们的选择方法减少了模型参数和训练时间。
    结论:自适应通道选择与半监督学习相结合可以为轻量级和计算高效的癫痫发作预测系统提供可能的基础,使日常监测切实可行,以提高患者的生活质量。
    BACKGROUND: The seizure prediction algorithms have demonstrated their potential in mitigating epilepsy risks by detecting the pre-ictal state using ongoing electroencephalogram (EEG) signals. However, most of them require high-density EEG, which is burdensome to the patients for daily monitoring. Moreover, prevailing seizure models require extensive training with significant labeled data which is very time-consuming and demanding for the epileptologists.
    METHODS: To address these challenges, here we propose an adaptive channel selection strategy and a semi-supervised deep learning model respectively to reduce the number of EEG channels and to limit the amount of labeled data required for accurate seizure prediction. Our channel selection module is centered on features from EEG power spectra parameterization that precisely characterize the epileptic activities to identify the seizure-associated channels for each patient. The semi-supervised model integrates generative adversarial networks and bidirectional long short-term memory networks to enhance seizure prediction.
    RESULTS: Our approach is evaluated on the CHB-MIT and Siena epilepsy datasets. With utilizing only 4 channels, the method demonstrates outstanding performance with an AUC of 93.15% on the CHB-MIT dataset and an AUC of 88.98% on the Siena dataset. Experimental results also demonstrate that our selection approach reduces the model parameters and training time.
    CONCLUSIONS: Adaptive channel selection coupled with semi-supervised learning can offer the possible bases for a light weight and computationally efficient seizure prediction system, making the daily monitoring practical to improve patients\' quality of life.
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  • 文章类型: Journal Article
    睡眠皮层脑电图(EEG)具有检测抑郁症的潜力,不同的睡眠结构和皮质连接已在抑郁症患者中得到证实。然而,多通道睡眠脑电图记录操作繁琐,需要实验室设备和专业睡眠技术人员。这里,我们专注于使用最少睡眠脑电图通道进行抑郁症检测。
    在睡眠期间记录30例抑郁症患者和30例年龄匹配的正常对照的16个通道的脑电图数据。计算各单脑电通道的功率谱密度,然后测量不同频段EEG通道对之间的符号传递熵(STE)和加权相位滞后指数(WPLI)。此后,这些特征在双向分类中通过F评分进行评估(抑郁与控制)30秒睡眠脑电图片段。根据F分数,引入熵值法计算权重,进一步评估各脑电通道或通道对的分类能力。最后,通过机器学习来验证抑郁症诊断中重要的脑电图通道或通道对。
    表征后叶半球间连通性的特征,尤其是颞叶,显示出较高的分类能力。在颞叶中使用两个和四个EEG通道的分类准确率分别为97.96%和99.61%,分别。
    这项研究表明,仅使用少数睡眠脑电图通道进行抑郁症筛查的可能性,这可以大大促进医院外抑郁症的诊断。
    Sleeping cortical electroencephalogram (EEG) has the potential for depression detection, for different sleep structure and cortical connection have been proved in depressed patients. However, the operation of multi-channel sleep EEG recording is cumbersome and requires laboratory equipment and professional sleep technician. Here, we focus on the depression detection using minimal sleep EEG channels.
    Sixteen channels of EEG data of 30 patients with depression and 30 age-matched normal controls were recorded during sleep. Power spectral density of each single EEG channel was calculated, followed by measuring the symbolic transfer entropy (STE) and weighed phase lag index (WPLI) between EEG channel pairs in various frequency bands. Thereafter, these features were evaluated by F-score in the two-way classification (depression vs. control) of 30-s sleep EEG segments. Based on the F-score, entropy method was introduced to calculate the weight which could further assess the classification ability of various EEG channels or channel pairs. Finally, machine learning was implemented to verify the important EEG channels or channel pairs in depression diagnosis.
    The features characterizing the inter-hemispheric connectivity in the posterior lobe, especially in the temporal lobe, showed high classification capacity. The classification accuracy of using two and four EEG channels in the temporal lobe were 97.96% and 99.61%, respectively.
    This study showed the possibility of using only a few sleep EEG channels for depression screening, which may greatly facilitate the diagnosis of depression outside the hospital.
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  • 文章类型: Journal Article
    通过脑电信号识别人类的情绪状态对人机交互的发展具有重要意义。本研究旨在通过特定区域的信息和脑电信号的动态功能连接以及深度学习神经网络来自动识别音乐诱发的情绪。收集15名健康志愿者不同情绪时的脑电信号(高心价-唤醒与低价唤醒)是由音乐实验范式引起的。然后提出了一种与深度神经网络相结合的序列后向选择算法Xception来评估不同通道组合对情感识别的影响。此外,我们还评估了额叶皮质的动态功能网络,通过不同的试验编号构建,可能会影响情绪认知的表现。结果表明,基于所有30个通道的二元分类准确率为70.19%,基于位于额叶区域的所有通道的准确度为71.05%,基于正面区域最佳通道组合的准确性为76.84%。此外,我们发现,随着额叶皮层更长的时间功能网络被构建为输入特征,分类性能会提高。总之,通过我们提出的方法,可以通过特定区域的EEG信号和额叶皮层的时变功能网络来识别不同音乐刺激引起的情绪。我们的发现可以为基于EEG的情感识别系统的发展提供新的视角,并促进我们对情感处理背后的神经机制的理解。
    Recognizing the emotional states of humans through EEG signals are of great significance to the progress of human-computer interaction. The present study aimed to perform automatic recognition of music-evoked emotions through region-specific information and dynamic functional connectivity of EEG signals and a deep learning neural network. EEG signals of 15 healthy volunteers were collected when different emotions (high-valence-arousal vs. low-valence-arousal) were induced by a musical experimental paradigm. Then a sequential backward selection algorithm combining with deep neural network called Xception was proposed to evaluate the effect of different channel combinations on emotion recognition. In addition, we also assessed whether dynamic functional network of frontal cortex, constructed through different trial number, may affect the performance of emotion cognition. Results showed that the binary classification accuracy based on all 30 channels was 70.19%, the accuracy based on all channels located in the frontal region was 71.05%, and the accuracy based on the best channel combination in the frontal region was 76.84%. In addition, we found that the classification performance increased as longer temporal functional network of frontal cortex was constructed as input features. In sum, emotions induced by different musical stimuli can be recognized by our proposed approach though region-specific EEG signals and time-varying functional network of frontal cortex. Our findings could provide a new perspective for the development of EEG-based emotional recognition systems and advance our understanding of the neural mechanism underlying emotion processing.
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  • 文章类型: Journal Article
    最近的研究表明,头皮脑电图(EEG)作为一种非侵入性接口,在脑机接口(BCI)方面具有巨大的潜力。然而,到目前为止,限制基于EEG的BCI实际应用的一个因素是难以以可靠和有效的方式解码脑信号。本文提出了一种新的鲁棒处理框架,用于基于五个主要处理步骤的多类运动图像(MI)解码。(i)无需视觉伪影检查的原始EEG分割。(ii)考虑到脑电图记录通常不仅被眼电图(EOG)污染,而且还被其他类型的伪影污染,我们建议首先实现一种自动伪影校正方法,该方法将回归分析与独立分量分析相结合,以恢复原始源信号。(iii)然后使用基于事件相关(去)同步和样本熵的频率分量之间的显著差异来找到非连续辨别节律。在使用区分节奏的光谱过滤之后,信道选择算法用于仅选择相关信道。(iv)基于信号的类间分集和时变动态特性来提取特征向量。(五)最后,支持向量机用于四类分类。我们在从BCI竞赛IV(2008)的数据集2a获得的实验数据上测试了我们提出的算法。总体四类kappa值(在0.41和0.80之间)与其他模型相当,但不需要任何伪影污染的试验去除。性能表明,可以使用来自几个通道的伪影污染的EEG记录来可靠地区分多类MI任务。这可能是在线鲁棒的基于EEG的BCI应用的有希望的途径。
    Recent studies show that scalp electroencephalography (EEG) as a non-invasive interface has great potential for brain-computer interfaces (BCIs). However, one factor that has limited practical applications for EEG-based BCI so far is the difficulty to decode brain signals in a reliable and efficient way. This paper proposes a new robust processing framework for decoding of multi-class motor imagery (MI) that is based on five main processing steps. (i) Raw EEG segmentation without the need of visual artifact inspection. (ii) Considering that EEG recordings are often contaminated not just by electrooculography (EOG) but also other types of artifacts, we propose to first implement an automatic artifact correction method that combines regression analysis with independent component analysis for recovering the original source signals. (iii) The significant difference between frequency components based on event-related (de-) synchronization and sample entropy is then used to find non-contiguous discriminating rhythms. After spectral filtering using the discriminating rhythms, a channel selection algorithm is used to select only relevant channels. (iv) Feature vectors are extracted based on the inter-class diversity and time-varying dynamic characteristics of the signals. (v) Finally, a support vector machine is employed for four-class classification. We tested our proposed algorithm on experimental data that was obtained from dataset 2a of BCI competition IV (2008). The overall four-class kappa values (between 0.41 and 0.80) were comparable to other models but without requiring any artifact-contaminated trial removal. The performance showed that multi-class MI tasks can be reliably discriminated using artifact-contaminated EEG recordings from a few channels. This may be a promising avenue for online robust EEG-based BCI applications.
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