4.6 Article

EEG Fingerprints of Task-Independent Mental Workload Discrimination

Journal

IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS
Volume 25, Issue 10, Pages 3824-3833

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2021.3085131

Keywords

Task analysis; Electroencephalography; Feature extraction; Bioinformatics; Sun; Machine learning; Electrodes; Cross-task classification; functional connectivity; mental workload; feature fusion; EEG

Funding

  1. National Natural Science Foundation of China [81801785]
  2. Fundamental Research Funds for the Central Universities [2020FZZX01005]
  3. Zhejiang Lab [2019KE0AD01]
  4. Zhejiang University Global Partnership Fund [100000-11320]
  5. Ministry of Education of Singapore [MOE2014-T2-1-115]

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In the field of neuroergonomics, this study successfully overcame challenges in task-independent mental workload assessment using EEG spectral feature fusion and revealed common neural mechanisms underlying mental workload, providing promising indicators for different workload conditions applications.
In the nascent field of neuroergonomics, mental workload assessment is one of the most important issues and has an apparent significance in real-world applications. Although prior research has achieved efficient single-task classification, scatted studies on cross-task mental workload assessment usually result in unsatisfactory performance. Here, we introduce a data-driven analysis framework to overcome the challenges regarding task-independent workload assessment using a fusion of EEG spectral characteristics and unveil the common neural mechanisms underlying mental workload. Specifically, multi-frequency power spectrum and functional connectivity (FC) were estimated for two workload levels in two working-memory tasks performed by 40 healthy participants, subsequently being fed into a machine learning approach to obtain the importance of each feature vector and evaluate classification performance in a cross-task fashion. Our framework achieved a classification accuracy of 0.94 for task-independent mental workload discrimination. Further investigation of the designated features in terms of their spectral and localization properties revealed task-independent common patterns in the neural mechanisms governing workload. In particular, increased workload was associated with elevated frontal delta and theta power but reduced parietal alpha power, whereas FC exhibited complex frequency- and region-dependent alterations. By implication, the employment of the EEG feature fusion emphasized their utility in serving as promising indicators for different workload conditions applications.

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