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Building a Tensor Framework for the Analysis and Classification of Steady-State Visual Evoked Potentials in Children

机译:建立张量框架以分析和分类儿童的稳态视觉诱发电位

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Steady-state visual evoked potentials (SSVEP) are one of several underlying signals used in various electroencephalography (EEG) based applications, including brain-computer interface (BCI) technology. Through oscillating visual stimulus at distinct frequencies, an SSVEP can be detected by EEG at occipital electrodes on the scalp, with distinct visual stimuli representing distinct choices. Rapid, accurate detection and classification of these signals is crucial for real-time analysis in SSVEP-based applications. However, signal analysis and interpretation of SSVEP events may be hindered in children due to the significant variability in electrophysiological signals throughout development. Recently, multi-way tensors have been shown capable of exploiting higher-order interactions present in the naturally multi-dimensional EEG data. Using tensors as tools to identify latent structures between varying maturational signals thus may provide a potential solution for rapid classification of SSVEP signals in children at different developmental stages. The presented methodology builds upon previous tensor-based SSVEP analysis and extends it for the first time to developing paediatric populations. Results from a binary SSVEP classification task of n = 40 children age 8-11 are reported to be significantly greater than chance, at 67-74% accuracy across multiple training and testing blocks. The findings support that tensor decomposition could provide flexible advantages capable of accommodating developmental differences across children and lay groundwork for future tensor analysis in SSVEP-based applications, like BCIs.
机译:稳态视觉诱发电位(SSVEP)是在各种基于脑电图(EEG)的应用中使用的几种基础信号之一,包括脑机接口(BCI)技术。通过以不同的频率振荡视觉刺激,脑电图可以在头皮的枕骨电极上检测到SSVEP,不同的视觉刺激代表着不同的选择。这些信号的快速,准确的检测和分类对于基于SSVEP的应用程序中的实时分析至关重要。但是,由于整个发育过程中电生理信号的显着变化,可能会阻碍儿童进行SSVEP事件的信号分析和解释。近来,已经显示了多向张量能够利用自然多维EEG数据中存在的高阶相互作用。因此,使用张量作为工具来识别不同成熟信号之间的潜在结构可以为在不同发育阶段的儿童中对SSVEP信号进行快速分类提供潜在的解决方案。提出的方法建立在以前基于张量的SSVEP分析的基础上,并将其首次扩展到发展中的儿科人群。据报道,来自n = 40个8-11岁儿童的二元SSVEP分类任务的结果比偶然性要大得多,在多个培训和测试模块中,其准确性为67-74%。这些发现支持张量分解可以提供灵活的优势,能够适应儿童之间的发展差异,并为基于SSVEP的应用程序(例如BCI)中的将来的张量分析奠定基础。

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