2018
DOI: 10.1016/j.ijmedinf.2018.08.010
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Detection of mental fatigue state with wearable ECG devices

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Cited by 112 publications
(80 citation statements)
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“…More recently, a study examined various machine learning approaches (i.e., support vector machine, K-nearest neighbour, naive Bayes, and logistic regression) in predicting cognitive fatigue, using data collected from a portable electrocardiogram patch [ 108 ]. Using a random forest approach, three time-domain features were selected based on their contribution to prediction accuracy—as indicated by the mean decrease accuracy and mean decrease Gini values: AVNN, the root mean square of the differences between each successive normalised R-R interval (RMSSD), and the proportion of normalised R-R intervals that are more than 50 ms from preceding interval (pNN50).…”
Section: Digital Biomarkers Of Cognitive Fatigue Through Wearables and Machine Learningmentioning
confidence: 99%
“…More recently, a study examined various machine learning approaches (i.e., support vector machine, K-nearest neighbour, naive Bayes, and logistic regression) in predicting cognitive fatigue, using data collected from a portable electrocardiogram patch [ 108 ]. Using a random forest approach, three time-domain features were selected based on their contribution to prediction accuracy—as indicated by the mean decrease accuracy and mean decrease Gini values: AVNN, the root mean square of the differences between each successive normalised R-R interval (RMSSD), and the proportion of normalised R-R intervals that are more than 50 ms from preceding interval (pNN50).…”
Section: Digital Biomarkers Of Cognitive Fatigue Through Wearables and Machine Learningmentioning
confidence: 99%
“…For example, evidence of fatigue can be obtained by tracking eyeball states [54,55]. Similarly, physiological signals, such as ECG signals [56], respiratory (RSP) signals [57], galvanic skin response (GSR) signals, and blood oxygen [58,59], provide possibilities for the design of an FDS based on information fusion. Information on the fatigue of soldiers is a form of recessive information.…”
Section: Systematic Analysis Of Framework Unitsmentioning
confidence: 99%
“…In the process of fatigue, the activity of sympathetic nerves and parasympathetic nerves change significantly. Thus, the fatigue state of the human can be reflected to a certain extent by the ECG signal [ 20 , 21 , 22 , 23 ].…”
Section: Introductionmentioning
confidence: 99%