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Joint source separation of simultaneous EEG-fMRI recording in two experimental conditions using common spatial patterns

机译:使用共同的空间模式在两个实验条件下同时进行EEG-fMRI同步记录的联合源分离

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Simultaneous collection of electroencephalography (EEG) and functional magnetic resonance imaging (fMRI) data has become increasingly popular in neuroscientific studies, because it can provide neural information with both high spatial and temporal resolution. In order to maximally utilize the information contained in simultaneous EEG-fMRI recording, many sophisticated multimodal data-mining methods, such as joint ICA, have been developed. However, these methods normally deal with data recorded in one experimental condition, and they cannot effectively extract information on activities that are distinct in two conditions. In this paper, a new data decomposition method called joint common spatial pattern (jCSP) is proposed. Compared with previous methods, the jCSP method exploits inter-conditional difference in the strength of brain source activities to achieve source separation, and is able to uncover the source activities with the strongest discriminative power. A group analysis based on clustering is further proposed to reveal distinctive jCSP patterns at group level. We applied joint CSP to a simultaneous EEG-fMRI dataset collected from 21 subjects under two different resting-state conditions (eyes-closed and eyes-open). Results show a distinct dynamic pattern shared by EEG alpha power and fMRI signal during eyes-open resting-state.
机译:同时收集脑电图(EEG)和功能磁共振成像(fMRI)数据已在神经科学研究中变得越来越流行,因为它可以提供具有高时空分辨率的神经信息。为了最大程度地利用同时进行的EEG-fMRI记录中包含的信息,已经开发了许多复杂的多模式数据挖掘方法,例如联合ICA。然而,这些方法通常处理在一种实验条件下记录的数据,并且它们不能有效地提取关于在两种条件下不同的活动的信息。本文提出了一种新的数据分解方法,称为联合公共空间模式(jCSP)。与以前的方法相比,jCSP方法利用脑源活动强度的条件间差异来实现源分离,并且能够发现具有最大判别力的源活动。进一步提出了基于聚类的组分析,以揭示组级别上独特的jCSP模式。我们将联合CSP应用于同时在两个不同的静止状态条件下(闭眼和睁眼)从21名受试者收集的EEG-fMRI数据集。结果显示,在睁眼的静止状态下,EEG alpha功率和fMRI信号共享一种独特的动态模式。

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