High-density EEG

高密度脑电图
  • 文章类型: Journal Article
    脑电图(EEG)的精度显着影响脑机接口(BCI)的性能。目前,BCI技术的大部分研究优先考虑轻量化设计和减少的电极数量,使其更适合在可穿戴环境中的应用。本文介绍了一种基于深度学习的时间序列双向(BiLSTM)网络,该网络旨在捕获从相邻电极获得的EEG通道的固有特征。它旨在预测EEG数据时间序列,并促进从低密度EEG信号到高密度EEG信号的转换过程。BiLSTM更关注时间序列数据中的依赖关系,而不是数学映射,均方根误差可以有效地限制在0.4μV以下,不到传统方法误差的一半。在将BCICompetitionIII3a数据集从18个通道扩展到60个通道后,我们对四种运动想象任务进行了分类实验。与原始低密度脑电信号(18通道)相比,分类准确率约为82%,增加约20%。当与真实的高密度信号并列时,错误率的增量保持在5%以下。与原始低密度信号相比,EEG通道的扩展显示出实质性和显着的改善。
    The precision of electroencephalograms (EEGs) significantly impacts the performance of brain-computer interfaces (BCI). Currently, the majority of research into BCI technology gives priority to lightweight design and a reduced electrode count to make it more suitable for application in wearable environments. This paper introduces a deep learning-based time series bidirectional (BiLSTM) network that is designed to capture the inherent characteristics of EEG channels obtained from neighboring electrodes. It aims to predict the EEG data time series and facilitate the conversion process from low-density EEG signals to high-density EEG signals. BiLSTM pays more attention to the dependencies in time series data rather than mathematical maps, and the root mean square error can be effectively restricted to below 0.4μV, which is less than half the error in traditional methods. After expanding the BCI Competition III 3a dataset from 18 channels to 60 channels, we conducted classification experiments on four types of motor imagery tasks. Compared to the original low-density EEG signals (18 channels), the classification accuracy was around 82%, an increase of about 20%. When juxtaposed with real high-density signals, the increment in the error rate remained below 5%. The expansion of the EEG channels showed a substantial and notable improvement compared with the original low-density signals.
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  • 文章类型: Journal Article
    近年来,关于基于视觉诱发电位(VEP)的脑机接口(BCI),已经有相当多的研究。然而,检测由小的视觉刺激引起的VEP仍然是一个巨大的挑战。为了应对这一挑战,这项研究采用了256电极高密度脑电图(EEG)帽,顶叶和枕叶中有66个电极来记录EEG信号。设计并实现了基于代码调制VEP(C-VEP)的在线BCI系统,该系统由30个时移二进制伪随机序列调制目标。采用任务判别分量分析(TDCA)算法进行特征提取和分类。离线和在线实验旨在评估EEG响应和分类性能,以便在0.5°的视角下比较四种不同的刺激大小。1°,2°,和3°。通过优化在线实验中每个受试者的数据长度,信息传输速率(ITR)为126.48±14.14比特/分钟,221.73±15.69位/分,258.39±9.28位/分,0.5°时达到266.40±6.52位/分钟,1°,2°,3°,分别。本研究进一步比较了来自256电极EEG帽的66电极布局的EEG特征和分类性能,128电极脑电图帽的32电极布局,以及64电极脑电图帽的21电极布局,阐明了更高的电极密度在使用小刺激增强C-VEPBCI系统性能方面的关键作用。
    In recent years, there has been a considerable amount of research on visual evoked potential (VEP)-based brain-computer interfaces (BCIs). However, it remains a big challenge to detect VEPs elicited by small visual stimuli. To address this challenge, this study employed a 256-electrode high-density electroencephalogram (EEG) cap with 66 electrodes in the parietal and occipital lobes to record EEG signals. An online BCI system based on code-modulated VEP (C-VEP) was designed and implemented with thirty targets modulated by a time-shifted binary pseudo-random sequence. A task-discriminant component analysis (TDCA) algorithm was employed for feature extraction and classification. The offline and online experiments were designed to assess EEG responses and classification performance for comparison across four different stimulus sizes at visual angles of 0.5°, 1°, 2°, and 3°. By optimizing the data length for each subject in the online experiment, information transfer rates (ITRs) of 126.48 ± 14.14 bits/min, 221.73 ± 15.69 bits/min, 258.39 ± 9.28 bits/min, and 266.40 ± 6.52 bits/min were achieved for 0.5°, 1°, 2°, and 3°, respectively. This study further compared the EEG features and classification performance of the 66-electrode layout from the 256-electrode EEG cap, the 32-electrode layout from the 128-electrode EEG cap, and the 21-electrode layout from the 64-electrode EEG cap, elucidating the pivotal importance of a higher electrode density in enhancing the performance of C-VEP BCI systems using small stimuli.
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  • 文章类型: Journal Article
    背景:眼部伪影长期以来一直被视为基础和应用研究中解释脑电图(EEG)信号的障碍。今天,使用盲源分离(BSS)方法,包括独立成分分析(ICA)和二阶盲识别(SOBI),被认为是改善神经信号质量的重要步骤。最近,我们介绍了一种由SOBI和基于判别和相似度(DANS)的识别方法组成的方法,能够识别和提取与眼睛运动相关的成分。这些回收的组件可以以高拟合优度(>95%)定位在眼部结构内。这提高了这种EEG导出的SOBI分量可以用于构建用于跟踪注视位置的预测模型的可能性。
    方法:作为这个新概念的证明,我们设计了一种基于EEG的虚拟眼睛跟踪器(EEG-VET),用于仅从EEG跟踪眼球运动。EEG-VET由SOBI算法组成,用于将EEG信号分离为不同的分量,用于自动识别眼部组件的DANS算法,和一个线性模型,将眼部成分转移到凝视位置。
    结果:EEG-VET的原型在最佳参与者中实现了0.920°的精度和1.510°的视角精度,而所有参与者的平均精确度为1.008°±0.357°,视角精确度为2.348°±0.580°(N=18)。
    结论:这项工作提供了一种新颖的方法,可以轻松地从单个EEG记录中记录眼球运动和神经信号。从而增加了在自由眼动的背景下研究自然认知的神经机制的便利性。
    Ocular artifact has long been viewed as an impediment to the interpretation of electroencephalogram (EEG) signals in basic and applied research. Today, the use of blind source separation (BSS) methods, including independent component analysis (ICA) and second-order blind identification (SOBI), is considered an essential step in improving the quality of neural signals. Recently, we introduced a method consisting of SOBI and a discriminant and similarity (DANS)-based identification method, capable of identifying and extracting eye movement-related components. These recovered components can be localized within ocular structures with a high goodness of fit (>95%). This raised the possibility that such EEG-derived SOBI components may be used to build predictive models for tracking gaze position.
    As proof of this new concept, we designed an EEG-based virtual eye-tracker (EEG-VET) for tracking eye movement from EEG alone. The EEG-VET is composed of a SOBI algorithm for separating EEG signals into different components, a DANS algorithm for automatically identifying ocular components, and a linear model to transfer ocular components into gaze positions.
    The prototype of EEG-VET achieved an accuracy of 0.920° and precision of 1.510° of a visual angle in the best participant, whereas an average accuracy of 1.008° ± 0.357° and a precision of 2.348° ± 0.580° of a visual angle across all participants (N = 18).
    This work offers a novel approach that readily co-registers eye movement and neural signals from a single-EEG recording, thus increasing the ease of studying neural mechanisms underlying natural cognition in the context of free eye movement.
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  • 文章类型: Journal Article
    Objective: The objective of this study was to use functional connectivity and graphic indicators to investigate the abnormal brain network topological characteristics caused by Parkinson\'s disease (PD) and the effect of acute deep brain stimulation (DBS) on those characteristics in patients with PD. Methods: We recorded high-density EEG (256 channels) data from 21 healthy controls (HC) and 20 patients with PD who were in the DBS-OFF state and DBS-ON state during the resting state with eyes closed. A high-density EEG source connectivity method was used to identify functional brain networks. Power spectral density (PSD) analysis was compared between the groups. Functional connectivity was calculated for 68 brain regions in the theta (4-8 Hz), alpha (8-13 Hz), beta1 (13-20 Hz), and beta2 (20-30 Hz) frequency bands. Network estimates were measured at both the global (network topology) and local (inter-regional connection) levels. Results: Compared with HC, PSD was significantly increased in the theta (p = 0.003) frequency band and was decreased in the beta1 (p = 0.009) and beta2 (p = 0.04) frequency bands in patients with PD. However, there were no differences in any frequency bands between patients with PD with DBS-OFF and DBS-ON. The clustering coefficient and local efficiency of patients with PD showed a significant decrease in the alpha, beta1, and beta2 frequency bands (p < 0.001). In addition, edgewise statistics showed a significant difference between the HC and patients with PD in all analyzed frequency bands (p < 0.005). However, there were no significant differences between the DBS-OFF state and DBS-ON state in the brain network, except for the functional connectivity in the beta2 frequency band (p < 0.05). Conclusion: Compared with HC, patients with PD showed the following characteristics: slowed EEG background activity, decreased clustering coefficient and local efficiency of the brain network, as well as both increased and decreased functional connectivity between different brain areas. Acute DBS induces a local response of the brain network in patients with PD, mainly showing decreased functional connectivity in a few brain regions in the beta2 frequency band.
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  • 文章类型: Journal Article
    Dynamically assessing the level of consciousness is still challenging during anesthesia. With the help of Electroencephalography (EEG), the human brain electric activity can be noninvasively measured at high temporal resolution. Several typical quasi-stable states are introduced to represent the oscillation of the global scalp electric field. These so-called microstates reflect spatiotemporal dynamics of coherent neural activities and capture the switch of brain states within the millisecond range. In this study, the microstates of high-density EEG were extracted and investigated during propofol-induced transition of consciousness. To analyze microstates on the frequency domain, a novel microstate-wise spectral analysis was proposed by the means of multivariate empirical mode decomposition and Hilbert-Huang transform. During the transition of consciousness, a map with a posterior central maximum denoted as microstate F appeared and became salient. The current results indicated that the coverage, occurrence, and power of microstate F significantly increased in moderate sedation. The results also demonstrated that the transition of brain state from rest to sedation was accompanied by significant increase in mean energy of all frequency bands in microstate F. Combined with studies on the possible cortical sources of microstates, the findings reveal that non-canonical microstate F is highly associated with propofol-induced altered states of consciousness. The results may also support the inference that this distinct topography can be derived from canonical microstate C (anterior-posterior orientation). Finally, this study further develops pertinent methodology and extends possible applications of the EEG microstate during propofol-induced anesthesia.
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  • 文章类型: Journal Article
    Face perception is mediated by a distributed brain network comprised of the core system at occipito-temporal areas and the extended system at other relevant brain areas involving bilateral hemispheres. In this study we explored how the brain connectivity changes over the time for face-sensitive processing. We investigated the dynamic functional connectivity in face perception by analyzing time-dependent EEG phase synchronization in four different frequency bands: theta (4-7 Hz), alpha (8-14 Hz), beta (15-24 Hz), and gamma (25-45 Hz) bands in the early stages of face processing from 30 to 300 ms. High-density EEG were recorded from subjects who were passively viewing faces, buildings, and chairs. The dynamic connectivity within the core system and between the extended system were investigated. Significant differences between faces and non-faces mainly appear in theta band connectivity: (1) at the time segment of 90-120 ms between parietal area and occipito-temporal area in the right hemisphere, and (2) at the time segment of 150-180 ms between bilateral occipito-temporal areas. These results indicate (1) the importance of theta-band connectivity in the face-sensitive processing, and (2) that different parts of network are involved for the initial stage of face categorization and the stage of face structural encoding.
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