4.6 Article

Cognitive Reorganization Due to Mental Workload: A Functional Connectivity Analysis Based on Working Memory Paradigms

期刊

APPLIED SCIENCES-BASEL
卷 13, 期 4, 页码 -

出版社

MDPI
DOI: 10.3390/app13042129

关键词

EEG; mental workload; brain network; functional connectivity

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Mental workload has a significant impact on an individual's performance in real-world tasks, leading to potential errors. This study investigated the effects of workload on brain network organization using EEG data. The results showed that higher workload led to reduced clustering coefficient, characteristic path length, and small-worldness metrics. Additionally, the brain network reorganized in a task-independent manner with increasing mental load. The network metrics were also effective in classifying workload levels.
Mental workload has a major effect on the individual's performance in most real-world tasks, which can lead to significant errors in critical operations. On this premise, the analysis and assessment of mental workload attain high research interest in both the fields of Neuroergonomics and Neuroscience. In this work, we implemented an EEG experimental design consisting of two distinct mental tasks (mental arithmetic task, n-back task), each with two conditions of complexity (low and high) to investigate the task-related and task-unrelated workload effects. Since mental workload is an intricate phenomenon involving multiple brain areas, we performed a graph theoretical analysis estimating the Phase Locking Index (PLI) in four frequency bands (delta, theta, alpha, beta). The brainwave-dependent network results show statistically significant reductions in clustering coefficient, characteristic path length, and small-worldness metrics with higher workload in both tasks across several bands. Moreover, functional connectivity analysis indicates a task-independent fashion of the brain topological re-organization with increasing mental load. These results revealed how the brain network is re-organized with increasing mental workload in a task-independent way. Finally, the network metrics were used as classification features, leading to high performance in workload level discrimination.

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