4.7 Article

Evidence for modulation of EEG microstates by mental workload levels and task types

Journal

HUMAN BRAIN MAPPING
Volume -, Issue -, Pages -

Publisher

WILEY
DOI: 10.1002/hbm.26552

Keywords

cognition; EEG; mental workload; microstate

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Electroencephalography (EEG) microstate analysis is a popular tool for studying the dynamics of brain electrophysiological activities. Recent studies have shown that mental workload (MWL) modulates microstate, but it is unclear whether the modulation is consistent across different tasks. This study found that the modulation of MWL on microstate depends on tasks, and microstate parameters can be used to distinguish MWL.
Electroencephalography (EEG) microstate analysis has become a popular tool for studying the spatial and temporal dynamics of large-scale electrophysiological activities in the brain in recent years. Four canonical topographies of the electric field (classes A, B, C, and D) have been widely identified, and changes in microstate parameters are associated with several psychiatric disorders and cognitive functions. Recent studies have reported the modulation of EEG microstate by mental workload (MWL). However, the common practice of evaluating MWL is in a specific task. Whether the modulation of microstate by MWL is consistent across different types of tasks is still not clear. Here, we studied the topographies and dynamics of microstate in two independent MWL tasks: NBack and the multi-attribute task battery (MATB) and showed that the modulation of MWL on microstate topographies and parameters depended on tasks. We found that the parameters of microstates A and C, and the topographies of microstates A, B, and D were significantly different between the two tasks. Meanwhile, all four microstate topographies and parameters of microstates A and C were different during the NBack task, but no significant difference was found during the MATB task. Furthermore, we employed a support vector machine recursive feature elimination procedure to investigate whether microstate parameters were suitable for MWL classification. An averaged classification accuracy of 87% for within-task and 78% for cross-task MWL discrimination was achieved with at least 10 features. Collectively, our findings suggest that topographies and parameters of microstates can provide valuable information about neural activity patterns with a dynamic temporal structure at different levels of MWL, but the modulation of MWL depends on tasks and their corresponding functional systems. Moreover, as a potential indicator, microstate parameters could be used to distinguish MWL.

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