Mental workload assessment by monitoring brain, heart, and eye with six biomedical modalities during six cognitive tasks.

Journal: Frontiers in neuroergonomics

Volume: 5

Issue: 

Year of Publication: 

Affiliated Institutions:  School of Biomedical Engineering, Science, and Health Systems, Drexel University, Philadelphia, PA, United States. Advanced Technology Laboratories, Lockheed Martin, Arlington, VA, United States.

Abstract summary 

The efficiency and safety of complex high precision human-machine systems such as in aerospace and robotic surgery are closely related to the cognitive readiness, ability to manage workload, and situational awareness of their operators. Accurate assessment of mental workload could help in preventing operator error and allow for pertinent intervention by predicting performance declines that can arise from either work overload or under stimulation. Neuroergonomic approaches based on measures of human body and brain activity collectively can provide sensitive and reliable assessment of human mental workload in complex training and work environments.In this study, we developed a new six-cognitive-domain task protocol, coupling it with six biomedical monitoring modalities to concurrently capture performance and cognitive workload correlates across a longitudinal multi-day investigation. Utilizing two distinct modalities for each aspect of cardiac activity (ECG and PPG), ocular activity (EOG and eye-tracking), and brain activity (EEG and fNIRS), 23 participants engaged in four sessions over 4 weeks, performing tasks associated with working memory, vigilance, risk assessment, shifting attention, situation awareness, and inhibitory control.The results revealed varying levels of sensitivity to workload within each modality. While certain measures exhibited consistency across tasks, neuroimaging modalities, in particular, unveiled meaningful differences between task conditions and cognitive domains.This is the first comprehensive comparison of these six brain-body measures across multiple days and cognitive domains. The findings underscore the potential of wearable brain and body sensing methods for evaluating mental workload. Such comprehensive neuroergonomic assessment can inform development of next generation neuroadaptive interfaces and training approaches for more efficient human-machine interaction and operator skill acquisition.

Authors & Co-authors:  Mark Curtin Kraft Ziegler Ayaz

Study Outcome 

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Statistics
Citations :  Ahlstrom U., Friedman-Berg F. J. (2006). Using eye movement activity as a correlate of cognitive workload. Int. J. Ind. Ergon. 36, 623–636. 10.1016/j.ergon.2006.04.002
Authors :  5
Identifiers
Doi : 1345507
SSN : 2673-6195
Study Population
Male,Female
Mesh Terms
Other Terms
ECG;EEG;EOG;PPG;eye-tracking;fNIRS;multimodal;neuroergonomics
Study Design
Study Approach
Country of Study
Publication Country
Switzerland