混合EEG-NIRS数据的开放存取存储库

Jaeyoung Shin, A. Lühmann, B. Blankertz, Do-Won Kim, J. Mehnert, Jichai Jeong, Han-Jeong Hwang, K. Müller
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引用次数: 4

摘要

近年来,为了克服单模态脑成像模式的低信噪比和易受运动伪影影响等缺点,提高系统性能,多模态脑成像系统(即所谓的混合成像系统)已成为一种有吸引力的替代方案。在本研究中,为了满足日益增长的对混合脑成像数据的需求,我们引入了在各种认知任务中同时测量的脑电图(EEG)和近红外光谱(NIRS)的开放获取数据集。这些数据集包含脑机接口数据,如运动意象(MI)-、心算(MA)和词生成(WG)相关的脑信号,以及认知任务数据,如n-back (NB)-和歧视/选择反应(DSR)相关的脑信号。我们提供了这些数据集的参考结果,并使用相关研究领域广泛使用的分析管道进行了验证。特别是,从分类分析中证实,混合EEG-NIRS系统比单峰脑成像系统具有更好的分类精度。
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Open access repository for hybrid EEG-NIRS data
Recently, in order to overcome the disadvantages of unimodal brain-imaging modalities such as low signal-to-noise ratio and vulnerability to motion artifact and to improve system performance, a multimodal imaging system (so-called hybrid system) has been emerging as an attractive alternative. In the present study, to meet the increasing demand on a hybrid brain-imaging data, we introduce open access datasets of electroencephalography (EEG) and near-infrared spectroscopy (NIRS) simultaneously measured during various cognitive tasks. The datasets contain BCI data such as motor imagery (MI)-, and mental arithmetic (MA), and word generation (WG)-related brain signals, and cognitive task data such as n-back (NB)-, and discrimination/selection response (DSR)-related brain signals. We provide the reference results of these datasets, which were validated using analysis pipelines widely used in related research fields. In particular, it was confirmed from classification analysis that a hybrid EEG-NIRS system can yield better classification accuracy than each of unimodal brain-imaging systems.
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