Electrooculography

眼电图
  • 文章类型: Dataset
    警惕代表了一种持续长时间关注的能力,在确保各种任务的可靠性和最佳性能方面发挥着至关重要的作用。在这份报告中,我们描述了一个多模态警惕(MMV)数据集,包括在两个脑机接口(BCI)任务期间采集的七个生理信号。BCI任务包括基于快速串行视觉呈现(RSVP)的目标图像检索任务和基于稳态视觉诱发电位(SSVEP)的光标控制任务。MMV数据集包括18名受试者的七个生理信号的四个会话,包括脑电图(EEG),眼电图(EOG),心电图(ECG),光电容积图(PPG),皮肤电活动(EDA),肌电图(EMG),和眼球运动。MMV数据集提供来自四个阶段的数据:1)原始数据,2)预处理数据,3)试验数据,4)可直接用于警惕性估计的特征数据。我们相信这个数据集将实现灵活的重用,并满足研究人员的各种需求。该数据集将极大地有助于推进基于生理信号的警惕性研究和估计的研究。
    Vigilance represents an ability to sustain prolonged attention and plays a crucial role in ensuring the reliability and optimal performance of various tasks. In this report, we describe a MultiModal Vigilance (MMV) dataset comprising seven physiological signals acquired during two Brain-Computer Interface (BCI) tasks. The BCI tasks encompass a rapid serial visual presentation (RSVP)-based target image retrieval task and a steady-state visual evoked potential (SSVEP)-based cursor-control task. The MMV dataset includes four sessions of seven physiological signals for 18 subjects, which encompasses electroencephalogram(EEG), electrooculogram (EOG), electrocardiogram (ECG), photoplethysmogram (PPG), electrodermal activity (EDA), electromyogram (EMG), and eye movement. The MMV dataset provides data from four stages: 1) raw data, 2) pre-processed data, 3) trial data, and 4) feature data that can be directly used for vigilance estimation. We believe this dataset will achieve flexible reuse and meet the various needs of researchers. And this dataset will greatly contribute to advancing research on physiological signal-based vigilance research and estimation.
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  • 文章类型: Journal Article
    随着计算机视觉技术的快速发展,机器学习,和消费电子产品,近年来,眼动追踪已成为越来越感兴趣的话题。它在包括人机交互在内的各个领域发挥着关键作用,虚拟现实,以及临床和医疗保健应用。最近开发了近眼跟踪(NET),以具有令人鼓舞的功能,例如可穿戴性,负担能力,和互动。这些特征在健康领域引起了相当大的关注,NET为长期和连续的健康监测提供了可访问的解决方案,以及舒适和交互式的用户界面。在这里,这项工作提供了对健康网络的首次简要回顾,包括过去二十年发表的大约70篇相关文章,并对前五年的30篇文献进行了深入的研究。本文从技术规范的角度对健康相关的NET技术进行了简明的分析,数据处理工作流,以及实际的优势和局限性。此外,NET的具体应用进行了介绍和比较,揭示NET正在相当影响我们的生活,并在日常生活中提供显著的便利。最后,我们总结了NET的当前结果,并强调了其局限性。
    With the rapid advancement of computer vision, machine learning, and consumer electronics, eye tracking has emerged as a topic of increasing interest in recent years. It plays a key role across diverse domains including human-computer interaction, virtual reality, and clinical and healthcare applications. Near-eye tracking (NET) has recently been developed to possess encouraging features such as wearability, affordability, and interactivity. These features have drawn considerable attention in the health domain, as NET provides accessible solutions for long-term and continuous health monitoring and a comfortable and interactive user interface. Herein, this work offers an inaugural concise review of NET for health, encompassing approximately 70 related articles published over the past two decades and supplemented by an in-depth examination of 30 literatures from the preceding five years. This paper provides a concise analysis of health-related NET technologies from aspects of technical specifications, data processing workflows, and the practical advantages and limitations. In addition, the specific applications of NET are introduced and compared, revealing that NET is fairly influencing our lives and providing significant convenience in daily routines. Lastly, we summarize the current outcomes of NET and highlight the limitations.
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  • 文章类型: Journal Article
    对于意识障碍(DoC)的患者,准确评估残余意识水平和认知能力对于制定适当的康复干预措施至关重要。在这项研究中,我们调查了眼电图(EOG)在评估语言处理能力和意识水平方面的潜力。在明确语言学习之前和之后分析患者的EOG数据和相关的电生理数据。结果显示,不同意识水平的患者在词汇学习模式上存在明显差异。虽然最低意识患者表现出明显的人工单词神经跟踪和显着的学习效果,与健康对照组相似,而无反应的觉醒综合征患者没有表现出这种影响。相关分析进一步表明,EOG检测词汇学习效果具有与脑电图相当的有效性,加强EOG指标作为诊断工具的可信度。严重的,EOG还揭示了通过行为量表评估的个体患者的语言学习表现与其动作/言语功能之间的显着相关性。总之,这项研究探讨了不同意识水平的患者在语言处理能力方面的差异。通过证明EOG在评估意识和检测词汇学习效果方面的效用,以及它指导个性化康复的潜力,我们的研究结果表明,EOG指标显示出迅速的希望,诊断和管理DoC患者的准确有效的附加工具。
    For patients with disorders of consciousness (DoC), accurate assessment of residual consciousness levels and cognitive abilities is critical for developing appropriate rehabilitation interventions. In this study, we investigated the potential of electrooculography (EOG) in assessing language processing abilities and consciousness levels. Patients\' EOG data and related electrophysiological data were analysed before and after explicit language learning. The results showed distinct differences in vocabulary learning patterns among patients with varying levels of consciousness. While minimally conscious patients showed significant neural tracking of artificial words and notable learning effects similar to those observed in healthy controls, whereas patients with unresponsive wakefulness syndrome did not show such effects. Correlation analysis further indicated that EOG detected vocabulary learning effects with comparable validity to electroencephalography, reinforcing the credibility of EOG indicator as a diagnostic tool. Critically, EOG also revealed significant correlations between individual patients\' linguistic learning performance and their Oromotor/verbal function as assessed through behavioural scales. In conclusion, this study explored the differences in language processing abilities among patients with varying consciousness levels. By demonstrating the utility of EOG in evaluating consciousness and detecting vocabulary learning effects, as well as its potential to guide personalised rehabilitation, our findings indicate that EOG indicators show promise as a rapid, accurate and effective additional tool for diagnosing and managing patients with DoC.
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  • 文章类型: Journal Article
    目的:通过多模态成像和下一代测序(NGS),为中国常染色体隐性遗传型β-β病(ARB)患者的BEST1突变提供基因型和表型特征。
    方法:一项回顾性队列研究包括来自17个不相关的中国血统的ARB家庭的17例患者。表型特征,包括眼前段特征,通过多模态成像进行评估。多基因小组测试,涉及586个眼科疾病相关基因,进行Sanger测序以鉴定致病变异。
    结果:在17例ARB患者中,平均随访15.65个月,平均发病年龄30.53岁(范围:9~68岁).最佳矫正视力范围从光感知到0.8。EOG记录显示12例患者的Arden比率通常降低,两名患者的Arden比率正常或略有下降。前特征包括浅前房(16/17),纤毛旋前(16/17),虹膜波贝(13/17),iridoschisis(2/17),虹膜高原(1/17),窄的角度(16/17)和减少的轴向长度(16/17)。16例患者有多个双侧小,圆形,黄色卵黄状沉积物分布在整个后极,围绕着视盘.初步诊断包括闭角型青光眼(4例),最佳疾病(三名患者),和继发于脉络膜新生血管(CNV)的中心性浆液性脉络膜视网膜病变(1例),其余患者被诊断为ARB。十四名患者接受了预防性激光周围虹膜切开术,其中4人还因眼压失控而接受了双眼小梁切除术和虹膜切开术联合治疗.一名患者接受玻璃体内康柏西普治疗CNV。总的来说,确定了15种不同的BEST1致病变体,14例(82.35%)患者发生错义突变。常见的突变包括p。Arg255-256和p。Ala195Val(均为23.68%),外显子7和5中最常见的位点。
    结论:这项研究提供了ARB眼前段和遗传特征的综合特征,有各种各样的形态异常.研究结果与完善临床实践和遗传咨询以及推进发病机理研究有关。
    OBJECTIVE: To provide a genotype and phenotype characterization of the BEST1 mutation in Chinese patients with autosomal recessive bestrophinopathy (ARB) through multimodal imaging and next-generation sequencing (NGS).
    METHODS: Seventeen patients from 17 unrelated families of Chinese origin with ARB were included in a retrospective cohort study. Phenotypic characteristics, including anterior segment features, were assessed by multimodal imaging. Multigene panel testing, involving 586 ophthalmic disease-associated genes, and Sanger sequencing were performed to identify disease-causing variants.
    RESULTS: Among 17 ARB patients, the mean follow-up was 15.65 months and average onset age was 30.53 years (range: 9-68). Best corrected visual acuity ranged from light perception to 0.8. EOG recordings showed a typically decreased Arden ratio in 12 patients, and a normal or slightly decreased Arden ratio in two patients. Anterior features included shallow anterior chambers (16/17), ciliary pronation (16/17), iris bombe (13/17), iridoschisis (2/17), iris plateau (1/17), narrow angles (16/17) and reduced axial lengths (16/17). Sixteen patients had multiple bilateral small, round, yellow vitelliform deposits distributed throughout the posterior pole, surrounding the optic disc. Initial diagnoses included angle-closure glaucoma (four patients), Best disease (three patients), and central serous chorioretinopathy secondary to choroidal neovascularization (CNV) (one patient), with the remainder diagnosed with ARB. Fourteen patients underwent preventive laser peripheral iridotomy, four of whom also received combined trabeculectomy and iridotomy in both eyes for uncontrolled intraocular pressure. One patient received intravitreal conbercept for CNV. Overall, 15 distinct disease-causing variants of BEST1 were identified, with 14 (82.35%) patients having missense mutations. Common mutations included p. Arg255-256 and p. Ala195Val (both 23.68%), with the most frequent sites in exons 7 and 5.
    CONCLUSIONS: This study provides a comprehensive characterization of anterior segment and genetic features in ARB, with a wide array of morphological abnormalities. Findings are relevant for refining clinical practices and genetic counseling and advancing pathogenesis research.
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  • 文章类型: Journal Article
    目的:比较自动深度神经网络和PhilipSleepwareG3™Somnolizer系统(Somnolizer)使用美国睡眠医学学会(AASM)指南进行睡眠阶段评分的准确性和通用性。
    方法:通过卷积神经网络(CNN)分析了104名参与者的睡眠记录,Somnolizer和熟练的技术人员。针对睡眠阶段的不同组合得出评估度量。还进行了使用单通道信号作为输入的Somnolyzer和CNN模型之间的进一步比较。来自263名OSA患病率较低的参与者的睡眠记录作为交叉验证数据集,以验证CNN模型的普遍性。
    结果:根据各种指标,104名参与者的自动和手动睡眠分期评分之间的总体一致性优于Somnolyzer(准确性:81.81%vs.77.07%;F1:76.36%vs.73.80%;科恩的卡帕:0.7403vs.0.6848)。结果表明,左眼电图(EOG)单通道模型比Somnolizer具有较小的优势。在与手动睡眠分期的一致性方面,CNN模型在识别更明显的睡眠过渡方面表现优异,特别是在N2阶段和睡眠延迟度量中。相反,Somnolyzer在快速眼动阶段的分析中表现出了更高的熟练程度,特别是在测量REM延迟方面。263名参与者的交叉验证组中的准确性也高于80%。
    结论:基于CNN的自动深度神经网络优于Somnolizer,并且对于使用AASM分类标准的睡眠研究分析足够准确。
    OBJECTIVE: To compare the accuracy and generalizability of an automated deep neural network and the Philip Sleepware G3™ Somnolyzer system (Somnolyzer) for sleep stage scoring using American Academy of Sleep Medicine (AASM) guidelines.
    METHODS: Sleep recordings from 104 participants were analyzed by a convolutional neural network (CNN), the Somnolyzer and skillful technicians. Evaluation metrics were derived for different combinations of sleep stages. A further comparison between the Somnolyzer and the CNN model using a single-channel signal as input was also performed. Sleep recordings from 263 participants with a lower prevalence of OSA served as a cross-validation dataset to validate the generalizability of the CNN model.
    RESULTS: The overall agreement between automated and manual scoring for sleep staging in 104 participants outperformed that of the Somnolyzer according to various metrics (accuracy: 81.81 % vs. 77.07 %; F1: 76.36 % vs. 73.80 %; Cohen\'s kappa: 0.7403 vs. 0.6848). The results showed that the left electrooculography (EOG) single-channel model had minor advantages over the Somnolyzer. In terms of consistency with manual sleep staging, the CNN model demonstrated superior performance in identifying more pronounced sleep transitions, particularly in the N2 stage and sleep latency metrics. Conversely, the Somnolyzer showed enhanced proficiency in the analysis of REM stages, notably in measuring REM latency. The accuracy in the cross-validation set of 263 participants was also above 80 %.
    CONCLUSIONS: The CNN-based automated deep neural network outperformed the Somnolyzer and is sufficiently accurate for sleep study analyses using the AASM classification criteria.
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  • 文章类型: Journal Article
    眨眼期间的眼球运动可能是事件相关电位(ERP)分析中的重要伪像。闪烁在垂直眼电图(VEOG)中产生正电位,向后传播。经常使用两种方法来抑制VEOG:线性回归从脑电图(EEG)和独立分量分析(ICA)中减去VEOG信号。然而,两者都丢失了一些信息。本算法(1)统计地识别VEOG在前极通道中的位置;(2)对每个通道进行EEG平均,这导致\'闪烁模板\';(3)从每个VEOG位置的相应EEG中减去每个模板,只有当模板和片段之间的线性相关指数大于选定的阈值L时,才使用行为测试获得来自20名受试者的信号,并使用FilterBlink进行后续ERP分析。设计了一个模型来使用来自受试者的中间中央通道(几乎没有VEOG)的二十份EEG信号来测试每个受试者的方法,这些EEG信号代表EEG通道及其各自的眨眼模板。在相同的200个等距时间点(标记),将信号(在1050ms处模拟ERP的2.5个正弦周期)与每个模型通道和该通道的相应闪烁模板混合,在每个标记后500到1200ms之间。根据模型,VEOGs干扰了ERPs和正在进行的EEG,主要在前内侧导线上,对中部通道(Cz)没有观察到显着影响。对于L=0.1,FilterBlink恢复原始ERP和EEG信号的大约90%(Fp1)至98%(Fz)。在分析真实信号时,该方法降低了ERP和闪烁伪影平均后对EEG的影响。该方法对于VEOG衰减是直接且有效的,而在EEG信号和嵌入的ERP中没有显著失真。
    Eye movement during blinking can be a significant artifact in Event-Related Potentials (ERP) analysis. Blinks produce a positive potential in the vertical electrooculogram (VEOG), spreading towards the posterior direction. Two methods are frequently used to suppress VEOGs: linear regression to subtract the VEOG signal from the electroencephalogram (EEG) and Independent Component Analysis (ICA). However, some information is lost in both. The present algorithm (1) statistically identifies the position of VEOGs in the frontopolar channels; (2) performs EEG averaging for each channel, which results in \'blink templates\'; (3) subtracts each template from the respective EEG at each VEOG position, only when the linear correlation index between the template and the segment is greater than a chosen threshold L. The signals from twenty subjects were acquired using a behavioral test and were treated using FilterBlink for subsequent ERP analysis. A model was designed to test the method for each subject using twenty copies of the EEG signal from the subject\'s mid-central channel (with nearly no VEOG) representing the EEG channels and their respective blink templates. At the same 200 equidistant time points (marks), a signal (2.5 sinusoidal cycles at 1050 ms emulating an ERP) was mixed with each model channel and the respective blink template of that channel, between 500 to 1200 ms after each mark. According to the model, VEOGs interfered with both ERPs and the ongoing EEG, mainly on the anterior medial leads, and no significant effect was observed on the mid-central channel (Cz). FilterBlink recovered approximately 90% (Fp1) to 98% (Fz) of the original ERP and EEG signals for L = 0.1. The method reduced the VEOG effect on the EEG after ERP and blink-artifact averaging in analyzing real signals. The method is straightforward and effective for VEOG attenuation without significant distortion in the EEG signal and embedded ERPs.
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  • 文章类型: Journal Article
    目的:基于生理信号的情感识别是人机交互领域的一个重要研究领域。以前的研究主要集中在单峰数据上,对多种模式之间的相互作用给予有限的关注。在多模态情感识别的范围内,整合来自不同模式的信息和利用互补信息是获得稳健表示的两个基本问题。
    方法:因此,我们提出了一种中间融合策略,用于将低秩张量融合与跨模态注意力相结合,以增强脑电图(EEG)的融合,眼电图(EOG),肌电图(EMG),和皮肤电反应(GSR)。首先,来自不同模态的手工制作的特征被单独馈送到相应的特征提取器以获得潜在特征。随后,融合低秩张量以通过模态交互表示来整合信息。最后,跨模态注意力模块被用来探索不同的潜在特征和模态交互表示之间的潜在关系,并重新校准不同模态的权重。并将结果表示用于情感识别。
    结果:此外,为了验证该方法的有效性,我们在DEAP数据集中进行独立于受试者的实验.所提出的方法对于效价和唤醒分类的准确率分别为73.82%和74.55%。
    结论:大量实验的结果验证了所提出方法的出色性能。
    Objective. Physiological signals based emotion recognition is a prominent research domain in the field of human-computer interaction. Previous studies predominantly focused on unimodal data, giving limited attention to the interplay among multiple modalities. Within the scope of multimodal emotion recognition, integrating the information from diverse modalities and leveraging the complementary information are the two essential issues to obtain the robust representations.Approach. Thus, we propose a intermediate fusion strategy for combining low-rank tensor fusion with the cross-modal attention to enhance the fusion of electroencephalogram, electrooculogram, electromyography, and galvanic skin response. Firstly, handcrafted features from distinct modalities are individually fed to corresponding feature extractors to obtain latent features. Subsequently, low-rank tensor is fused to integrate the information by the modality interaction representation. Finally, a cross-modal attention module is employed to explore the potential relationships between the distinct latent features and modality interaction representation, and recalibrate the weights of different modalities. And the resultant representation is adopted for emotion recognition.Main results. Furthermore, to validate the effectiveness of the proposed method, we execute subject-independent experiments within the DEAP dataset. The proposed method has achieved the accuracies of 73.82% and 74.55% for valence and arousal classification.Significance. The results of extensive experiments verify the outstanding performance of the proposed method.
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  • 文章类型: Journal Article
    睡眠分期在临床睡眠障碍的诊断和治疗中起着重要作用。睡眠分期标准将每30秒定义为一个睡眠周期,这可能意味着在同一睡眠期间存在类似的大脑活动模式。因此,在这项工作中,我们提出了一种新的时间相关同步分析框架,称为时间相关多模式睡眠评分模型(TRMSC),以探索潜在的时间相关睡眠模式.在拟议的TRMSC中,首先对单通道电生理信号进行时间相关同步分析,即,脑电图(EEG)和眼电图(EOG),探索与时间相关的模式,并通过频谱分析提取光谱激活特征,得到多模态特征。利用提取的多模态特征,利用特征融合和选择策略获得最优特征集,实现稳健的睡眠分期。为了验证所提出的TRMSC的有效性,睡眠分期实验是在睡眠-EDF数据集上进行的,实验结果表明,所提出的TRMSC比其他现有策略具有更好的性能,证明了与时间相关的同步特征可以弥补传统基于频谱策略的不足,达到较高的分类精度。所提出的TRMSC模型可能有助于便携式睡眠分析仪,并为临床睡眠研究提供了一种新的分析方法。
    Sleep staging plays an important role in the diagnosis and treatment of clinical sleep disorders. The sleep staging standard defines every 30 seconds as a sleep period, which may mean that there exist similar brain activity patterns during the same sleep period. Thus, in this work, we propose a novel time-related synchronization analysis framework named time-related multimodal sleep scoring model (TRMSC) to explore the potential time-related patterns of sleeping. In the proposed TRMSC, the time-related synchronization analysis is first conducted on the single channel electrophysiological signal, i.e., Electroencephalogram (EEG) and Electrooculogram (EOG), to explore the time-related patterns, and the spectral activation features are also extracted by spectrum analysis to obtain the multimodal features. With the extracted multimodal features, the feature fusion and selection strategy is utilized to obtain the optimal feature set and achieve robust sleep staging. To verify the effectiveness of the proposed TRMSC, sleep staging experiments were conducted on the Sleep-EDF dataset, and the experimental results indicate that the proposed TRMSC has achieved better performance than other existing strategies, which proves that the time-related synchronization features can make up for the shortcomings of traditional spectrum-based strategies and achieve a higher classification accuracy. The proposed TRMSC model may be helpful for portable sleep analyzers and provide a new analytical method for clinical sleeping research.
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  • 文章类型: Journal Article
    睡眠分期是睡眠质量测量和睡眠障碍诊断的基本评估。尽管当前的深度学习方法已经成功地集成了多模式睡眠信号,提高自动睡眠分期的准确性,某些挑战依然存在,如下:1)优化多模态信息互补的利用,2)有效提取睡眠信息的长程和短程时间特征,和3)解决睡眠数据中的类不平衡问题。为了应对这些挑战,本文提出了一种双流编码解码器网络,名为TSEDSleepNet,这是由深度敏感注意和自动多模态融合(DSA2F)框架的启发。在TSEDSleepNet中,双流编码器用于提取眼电图(EOG)和脑电图(EEG)信号的多尺度特征。利用自我注意机制来融合多尺度特征,生成多模态显著特征。随后,采用较粗尺度构造模块(CSCM)从多尺度特征和显著特征中提取和构造多分辨率特征。此后,变换器模块被应用于从多分辨率特征捕获长程和短程时间特征。最后,用低层细节恢复长程和短程时间特征,并映射到预测的分类结果。此外,Lovász损失函数用于缓解睡眠数据集中的类不平衡问题。我们提出的方法在Sleep-EDF-39和Sleep-EDF-153数据集上进行了测试,分类准确率分别为88.9%和85.2%,Macro-F1评分分别为84.8%和79.7%,分别,从而优于传统的基线模型。这些结果突出了所提出的方法在融合多模态信息方面的功效。该方法具有作为诊断睡眠障碍的辅助工具的应用潜力。
    Sleep staging serves as a fundamental assessment for sleep quality measurement and sleep disorder diagnosis. Although current deep learning approaches have successfully integrated multimodal sleep signals, enhancing the accuracy of automatic sleep staging, certain challenges remain, as follows: 1) optimizing the utilization of multi-modal information complementarity, 2) effectively extracting both long- and short-range temporal features of sleep information, and 3) addressing the class imbalance problem in sleep data. To address these challenges, this paper proposes a two-stream encode-decoder network, named TSEDSleepNet, which is inspired by the depth sensitive attention and automatic multi-modal fusion (DSA2F) framework. In TSEDSleepNet, a two-stream encoder is used to extract the multiscale features of electrooculogram (EOG) and electroencephalogram (EEG) signals. And a self-attention mechanism is utilized to fuse the multiscale features, generating multi-modal saliency features. Subsequently, the coarser-scale construction module (CSCM) is adopted to extract and construct multi-resolution features from the multiscale features and the salient features. Thereafter, a Transformer module is applied to capture both long- and short-range temporal features from the multi-resolution features. Finally, the long- and short-range temporal features are restored with low-layer details and mapped to the predicted classification results. Additionally, the Lovász loss function is applied to alleviate the class imbalance problem in sleep datasets. Our proposed method was tested on the Sleep-EDF-39 and Sleep-EDF-153 datasets, and it achieved classification accuracies of 88.9% and 85.2% and Macro-F1 scores of 84.8% and 79.7%, respectively, thus outperforming conventional traditional baseline models. These results highlight the efficacy of the proposed method in fusing multi-modal information. This method has potential for application as an adjunct tool for diagnosing sleep disorders.
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  • 文章类型: Journal Article
    在这项研究中,我们试图通过听觉流分离来改善脑机接口(BCI)系统,其中交替呈现的音调被感知为各种不同音调(流)的序列。使用三个音调序列的3类BCI,它们被认为是三种不同的音调流,进行了调查和评估。每个呈现的音乐音调由软件合成器生成。11名受试者参加了实验。刺激被呈现给每个用户的右耳。要求受试者参加三个流之一,并计算参加流中的目标刺激的数量。此外,以1000Hz的采样频率记录了参与者的64通道脑电图(EEG)和两通道眼电图(EOG)信号。根据黎曼几何对测量的EEG数据进行分类,以检测受试者的选择性注意的对象。P300活性是由分离的音调流中的目标刺激引起的。在11个科目中有5个,P300活动仅由参与流中包含的目标刺激引起。在10倍交叉验证测试中,5名受试者的分类准确率超过80%,9名受试者的分类准确率超过75%.对于准确率低于75%的受试者,对于无人值守的流也引起了P300,或者P300的幅度很小。结论是,基于听觉流隔离的选定BCI系统的数量可以增加到三类,这些类别可以在没有任何视觉模态的帮助下被单耳检测到。
    In this study, we attempted to improve brain-computer interface (BCI) systems by means of auditory stream segregation in which alternately presented tones are perceived as sequences of various different tones (streams). A 3-class BCI using three tone sequences, which were perceived as three different tone streams, was investigated and evaluated. Each presented musical tone was generated by a software synthesizer. Eleven subjects took part in the experiment. Stimuli were presented to each user\'s right ear. Subjects were requested to attend to one of three streams and to count the number of target stimuli in the attended stream. In addition, 64-channel electroencephalogram (EEG) and two-channel electrooculogram (EOG) signals were recorded from participants with a sampling frequency of 1000 Hz. The measured EEG data were classified based on Riemannian geometry to detect the object of the subject\'s selective attention. P300 activity was elicited by the target stimuli in the segregated tone streams. In five out of eleven subjects, P300 activity was elicited only by the target stimuli included in the attended stream. In a 10-fold cross validation test, a classification accuracy over 80% for five subjects and over 75% for nine subjects was achieved. For subjects whose accuracy was lower than 75%, either the P300 was also elicited for nonattended streams or the amplitude of P300 was small. It was concluded that the number of selected BCI systems based on auditory stream segregation can be increased to three classes, and these classes can be detected by a single ear without the aid of any visual modality.
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