Tracking of Mental Workload with a Mobile EEG Sensor

The aim of the present investigation was to assess if a mobile electroencephalography (EEG) setup can be used to track mental workload, which is an important aspect of learning performance and motivation and may thus represent a valuable source of information in the evaluation of cognitive training...

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Published in:Sensors
Main Authors: Ekaterina Kutafina, Anne Heiligers, Radomir Popovic, Alexander Brenner, Bernd Hankammer, Stephan M. Jonas, Klaus Mathiak, Jana Zweerings
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/15/5205
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author Ekaterina Kutafina
Anne Heiligers
Radomir Popovic
Alexander Brenner
Bernd Hankammer
Stephan M. Jonas
Klaus Mathiak
Jana Zweerings
author_facet Ekaterina Kutafina
Anne Heiligers
Radomir Popovic
Alexander Brenner
Bernd Hankammer
Stephan M. Jonas
Klaus Mathiak
Jana Zweerings
author_sort Ekaterina Kutafina
collection DOAJ
container_title Sensors
description The aim of the present investigation was to assess if a mobile electroencephalography (EEG) setup can be used to track mental workload, which is an important aspect of learning performance and motivation and may thus represent a valuable source of information in the evaluation of cognitive training approaches. Twenty five healthy subjects performed a three-level N-back test using a fully mobile setup including tablet-based presentation of the task and EEG data collection with a self-mounted mobile EEG device at two assessment time points. A two-fold analysis approach was chosen including a standard analysis of variance and an artificial neural network to distinguish the levels of cognitive load. Our findings indicate that the setup is feasible for detecting changes in cognitive load, as reflected by alterations across lobes in different frequency bands. In particular, we observed a decrease of occipital alpha and an increase in frontal, parietal and occipital theta with increasing cognitive load. The most distinct levels of cognitive load could be discriminated by the integrated machine learning models with an accuracy of 86%.
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spelling doaj-art-c77bcd8e98314e0f804ebfa7eeb100e22025-08-19T22:59:35ZengMDPI AGSensors1424-82202021-07-012115520510.3390/s21155205Tracking of Mental Workload with a Mobile EEG SensorEkaterina Kutafina0Anne Heiligers1Radomir Popovic2Alexander Brenner3Bernd Hankammer4Stephan M. Jonas5Klaus Mathiak6Jana Zweerings7Institute of Medical Informatics, Medical Faculty, RWTH Aachen University, 52074 Aachen, GermanyDepartment of Psychiatry, Psychotherapy and Psychosomatics, School of Medicine, RWTH Aachen University, 52074 Aachen, GermanyInstitute of Medical Informatics, Medical Faculty, RWTH Aachen University, 52074 Aachen, GermanyInstitute of Medical Informatics, University of Münster, 48149 Münster, GermanyInstitute of Medical Informatics, Medical Faculty, RWTH Aachen University, 52074 Aachen, GermanyDepartment of Informatics, Technical University of Munich, 85748 Garching, GermanyDepartment of Psychiatry, Psychotherapy and Psychosomatics, School of Medicine, RWTH Aachen University, 52074 Aachen, GermanyDepartment of Psychiatry, Psychotherapy and Psychosomatics, School of Medicine, RWTH Aachen University, 52074 Aachen, GermanyThe aim of the present investigation was to assess if a mobile electroencephalography (EEG) setup can be used to track mental workload, which is an important aspect of learning performance and motivation and may thus represent a valuable source of information in the evaluation of cognitive training approaches. Twenty five healthy subjects performed a three-level N-back test using a fully mobile setup including tablet-based presentation of the task and EEG data collection with a self-mounted mobile EEG device at two assessment time points. A two-fold analysis approach was chosen including a standard analysis of variance and an artificial neural network to distinguish the levels of cognitive load. Our findings indicate that the setup is feasible for detecting changes in cognitive load, as reflected by alterations across lobes in different frequency bands. In particular, we observed a decrease of occipital alpha and an increase in frontal, parietal and occipital theta with increasing cognitive load. The most distinct levels of cognitive load could be discriminated by the integrated machine learning models with an accuracy of 86%.https://www.mdpi.com/1424-8220/21/15/5205mHealthEEGN-backcognitive effortwearable
spellingShingle Ekaterina Kutafina
Anne Heiligers
Radomir Popovic
Alexander Brenner
Bernd Hankammer
Stephan M. Jonas
Klaus Mathiak
Jana Zweerings
Tracking of Mental Workload with a Mobile EEG Sensor
mHealth
EEG
N-back
cognitive effort
wearable
title Tracking of Mental Workload with a Mobile EEG Sensor
title_full Tracking of Mental Workload with a Mobile EEG Sensor
title_fullStr Tracking of Mental Workload with a Mobile EEG Sensor
title_full_unstemmed Tracking of Mental Workload with a Mobile EEG Sensor
title_short Tracking of Mental Workload with a Mobile EEG Sensor
title_sort tracking of mental workload with a mobile eeg sensor
topic mHealth
EEG
N-back
cognitive effort
wearable
url https://www.mdpi.com/1424-8220/21/15/5205
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