Detection of mind wandering using EEG: Within and across individuals.

Mind wandering is often characterized by attention oriented away from an external task towards our internal, self-generated thoughts. This universal phenomenon has been linked to numerous disruptive functional outcomes, including performance errors and negative affect. Despite its prevalence and imp...

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Main Authors: Henry W Dong, Caitlin Mills, Robert T Knight, Julia W Y Kam
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0251490
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spelling doaj-5a2f6da8194940799dce4cb183485ce72021-05-29T04:32:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01165e025149010.1371/journal.pone.0251490Detection of mind wandering using EEG: Within and across individuals.Henry W DongCaitlin MillsRobert T KnightJulia W Y KamMind wandering is often characterized by attention oriented away from an external task towards our internal, self-generated thoughts. This universal phenomenon has been linked to numerous disruptive functional outcomes, including performance errors and negative affect. Despite its prevalence and impact, studies to date have yet to identify robust behavioral signatures, making unobtrusive, yet reliable detection of mind wandering a difficult but important task for future applications. Here we examined whether electrophysiological measures can be used in machine learning models to accurately predict mind wandering states. We recorded scalp EEG from participants as they performed an auditory target detection task and self-reported whether they were on task or mind wandering. We successfully classified attention states both within (person-dependent) and across (person-independent) individuals using event-related potential (ERP) measures. Non-linear and linear machine learning models detected mind wandering above-chance within subjects: support vector machine (AUC = 0.715) and logistic regression (AUC = 0.635). Importantly, these models also generalized across subjects: support vector machine (AUC = 0.613) and logistic regression (AUC = 0.609), suggesting we can reliably predict a given individual's attention state based on ERP patterns observed in the group. This study is the first to demonstrate that machine learning models can generalize to "never-seen-before" individuals using electrophysiological measures, highlighting their potential for real-time prediction of covert attention states.https://doi.org/10.1371/journal.pone.0251490
collection DOAJ
language English
format Article
sources DOAJ
author Henry W Dong
Caitlin Mills
Robert T Knight
Julia W Y Kam
spellingShingle Henry W Dong
Caitlin Mills
Robert T Knight
Julia W Y Kam
Detection of mind wandering using EEG: Within and across individuals.
PLoS ONE
author_facet Henry W Dong
Caitlin Mills
Robert T Knight
Julia W Y Kam
author_sort Henry W Dong
title Detection of mind wandering using EEG: Within and across individuals.
title_short Detection of mind wandering using EEG: Within and across individuals.
title_full Detection of mind wandering using EEG: Within and across individuals.
title_fullStr Detection of mind wandering using EEG: Within and across individuals.
title_full_unstemmed Detection of mind wandering using EEG: Within and across individuals.
title_sort detection of mind wandering using eeg: within and across individuals.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description Mind wandering is often characterized by attention oriented away from an external task towards our internal, self-generated thoughts. This universal phenomenon has been linked to numerous disruptive functional outcomes, including performance errors and negative affect. Despite its prevalence and impact, studies to date have yet to identify robust behavioral signatures, making unobtrusive, yet reliable detection of mind wandering a difficult but important task for future applications. Here we examined whether electrophysiological measures can be used in machine learning models to accurately predict mind wandering states. We recorded scalp EEG from participants as they performed an auditory target detection task and self-reported whether they were on task or mind wandering. We successfully classified attention states both within (person-dependent) and across (person-independent) individuals using event-related potential (ERP) measures. Non-linear and linear machine learning models detected mind wandering above-chance within subjects: support vector machine (AUC = 0.715) and logistic regression (AUC = 0.635). Importantly, these models also generalized across subjects: support vector machine (AUC = 0.613) and logistic regression (AUC = 0.609), suggesting we can reliably predict a given individual's attention state based on ERP patterns observed in the group. This study is the first to demonstrate that machine learning models can generalize to "never-seen-before" individuals using electrophysiological measures, highlighting their potential for real-time prediction of covert attention states.
url https://doi.org/10.1371/journal.pone.0251490
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