Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective
Cognitive fatigue is a psychological state characterised by feelings of tiredness and impaired cognitive functioning arising from high cognitive demands. This paper examines the recent research progress on the assessment of cognitive fatigue and provides informed recommendations for future research....
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sg-ntu-dr.10356-1517812023-05-19T07:31:19Z Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective Lee, Kar Fye Alvin Gan, Woon-Seng Christopoulos, Georgios Nanyang Business School School of Electrical and Electronic Engineering Social sciences::Psychology Cognitive Fatigue Heart Rate Variability Cognitive fatigue is a psychological state characterised by feelings of tiredness and impaired cognitive functioning arising from high cognitive demands. This paper examines the recent research progress on the assessment of cognitive fatigue and provides informed recommendations for future research. Traditionally, cognitive fatigue is introspectively assessed through self-report or objectively inferred from a decline in behavioural performance. However, more recently, researchers have attempted to explore the biological underpinnings of cognitive fatigue to understand and measure this phenomenon. In particular, there is evidence indicating that the imbalance between sympathetic and parasympathetic nervous activity appears to be a physiological correlate of cognitive fatigue. This imbalance has been indexed through various heart rate variability indices that have also been proposed as putative biomarkers of cognitive fatigue. Moreover, in contrast to traditional inferential methods, there is also a growing research interest in using data-driven approaches to assessing cognitive fatigue. The ubiquity of wearables with the capability to collect large amounts of physiological data appears to be a major facilitator in the growth of data-driven research in this area. Preliminary findings indicate that such large datasets can be used to accurately predict cognitive fatigue through various machine learning approaches. Overall, the potential of combining domain-specific knowledge gained from biomarker research with machine learning approaches should be further explored to build more robust predictive models of cognitive fatigue. Ministry of National Development (MND) National Research Foundation (NRF) Published version This research/project is supported by the National Research Foundation, Singapore, and Ministry of National Development, Singapore under its Cities of Tomorrow R&D Programme (CoT Award: COT-V4-2020-1). Any opinions, findings and conclusions or recommendations expressed in this material are those of the author(s) and do not reflect the view of National Research Foundation, Singapore and Ministry of National Development, Singapore. 2021-07-05T06:55:28Z 2021-07-05T06:55:28Z 2021 Journal Article Lee, K. F. A., Gan, W. & Christopoulos, G. (2021). Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective. Sensors, 21(11), 3843-. https://dx.doi.org/10.3390/s21113843 1424-8220 https://hdl.handle.net/10356/151781 10.3390/s21113843 11 21 3843 en COT-V4-2020-1 Sensors © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). application/pdf |
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Social sciences::Psychology Cognitive Fatigue Heart Rate Variability Lee, Kar Fye Alvin Gan, Woon-Seng Christopoulos, Georgios Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective |
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Cognitive fatigue is a psychological state characterised by feelings of tiredness and impaired cognitive functioning arising from high cognitive demands. This paper examines the recent research progress on the assessment of cognitive fatigue and provides informed recommendations for future research. Traditionally, cognitive fatigue is introspectively assessed through self-report or objectively inferred from a decline in behavioural performance. However, more recently, researchers have attempted to explore the biological underpinnings of cognitive fatigue to understand and measure this phenomenon. In particular, there is evidence indicating that the imbalance between sympathetic and parasympathetic nervous activity appears to be a physiological correlate of cognitive fatigue. This imbalance has been indexed through various heart rate variability indices that have also been proposed as putative biomarkers of cognitive fatigue. Moreover, in contrast to traditional inferential methods, there is also a growing research interest in using data-driven approaches to assessing cognitive fatigue. The ubiquity of wearables with the capability to collect large amounts of physiological data appears to be a major facilitator in the growth of data-driven research in this area. Preliminary findings indicate that such large datasets can be used to accurately predict cognitive fatigue through various machine learning approaches. Overall, the potential of combining domain-specific knowledge gained from biomarker research with machine learning approaches should be further explored to build more robust predictive models of cognitive fatigue. |
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Nanyang Business School |
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Nanyang Business School Lee, Kar Fye Alvin Gan, Woon-Seng Christopoulos, Georgios |
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Article |
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Lee, Kar Fye Alvin Gan, Woon-Seng Christopoulos, Georgios |
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Lee, Kar Fye Alvin |
title |
Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective |
title_short |
Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective |
title_full |
Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective |
title_fullStr |
Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective |
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Biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective |
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biomarker-informed machine learning model of cognitive fatigue from a heart rate response perspective |
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2021 |
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https://hdl.handle.net/10356/151781 |
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