Towards a near infrared spectroscopy-based estimation of operator attentional state.

Given the critical risks to public health and safety that can involve lapses in attention (e.g., through implication in workplace accidents), researchers have sought to develop cognitive-state tracking technologies, capable of alerting individuals engaged in cognitively demanding tasks of potentiall...

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Main Authors: Gérard Derosière, Sami Dalhoumi, Stéphane Perrey, Gérard Dray, Tomas Ward
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3954803?pdf=render
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spelling doaj-891025b9748a48b7830697538e4e0ed22020-11-25T02:48:44ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0193e9204510.1371/journal.pone.0092045Towards a near infrared spectroscopy-based estimation of operator attentional state.Gérard DerosièreSami DalhoumiStéphane PerreyGérard DrayTomas WardGiven the critical risks to public health and safety that can involve lapses in attention (e.g., through implication in workplace accidents), researchers have sought to develop cognitive-state tracking technologies, capable of alerting individuals engaged in cognitively demanding tasks of potentially dangerous decrements in their levels of attention. The purpose of the present study was to address this issue through an investigation of the reliability of optical measures of cortical correlates of attention in conjunction with machine learning techniques to distinguish between states of full attention and states characterized by reduced attention capacity during a sustained attention task. Seven subjects engaged in a 30 minutes duration sustained attention reaction time task with near infrared spectroscopy (NIRS) monitoring over the prefrontal and the right parietal areas. NIRS signals from the first 10 minutes of the task were considered as characterizing the 'full attention' class, while the NIRS signals from the last 10 minutes of the task were considered as characterizing the 'attention decrement' class. A two-class support vector machine algorithm was exploited to distinguish between the two levels of attention using appropriate NIRS-derived signal features. Attention decrement occurred during the task as revealed by the significant increase in reaction time in the last 10 compared to the first 10 minutes of the task (p<.05). The results demonstrate relatively good classification accuracy, ranging from 65 to 90%. The highest classification accuracy results were obtained when exploiting the oxyhemoglobin signals (i.e., from 77 to 89%, depending on the cortical area considered) rather than the deoxyhemoglobin signals (i.e., from 65 to 66%). Moreover, the classification accuracy increased to 90% when using signals from the right parietal area rather than from the prefrontal cortex. The results support the feasibility of developing cognitive tracking technologies using NIRS and machine learning techniques.http://europepmc.org/articles/PMC3954803?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Gérard Derosière
Sami Dalhoumi
Stéphane Perrey
Gérard Dray
Tomas Ward
spellingShingle Gérard Derosière
Sami Dalhoumi
Stéphane Perrey
Gérard Dray
Tomas Ward
Towards a near infrared spectroscopy-based estimation of operator attentional state.
PLoS ONE
author_facet Gérard Derosière
Sami Dalhoumi
Stéphane Perrey
Gérard Dray
Tomas Ward
author_sort Gérard Derosière
title Towards a near infrared spectroscopy-based estimation of operator attentional state.
title_short Towards a near infrared spectroscopy-based estimation of operator attentional state.
title_full Towards a near infrared spectroscopy-based estimation of operator attentional state.
title_fullStr Towards a near infrared spectroscopy-based estimation of operator attentional state.
title_full_unstemmed Towards a near infrared spectroscopy-based estimation of operator attentional state.
title_sort towards a near infrared spectroscopy-based estimation of operator attentional state.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Given the critical risks to public health and safety that can involve lapses in attention (e.g., through implication in workplace accidents), researchers have sought to develop cognitive-state tracking technologies, capable of alerting individuals engaged in cognitively demanding tasks of potentially dangerous decrements in their levels of attention. The purpose of the present study was to address this issue through an investigation of the reliability of optical measures of cortical correlates of attention in conjunction with machine learning techniques to distinguish between states of full attention and states characterized by reduced attention capacity during a sustained attention task. Seven subjects engaged in a 30 minutes duration sustained attention reaction time task with near infrared spectroscopy (NIRS) monitoring over the prefrontal and the right parietal areas. NIRS signals from the first 10 minutes of the task were considered as characterizing the 'full attention' class, while the NIRS signals from the last 10 minutes of the task were considered as characterizing the 'attention decrement' class. A two-class support vector machine algorithm was exploited to distinguish between the two levels of attention using appropriate NIRS-derived signal features. Attention decrement occurred during the task as revealed by the significant increase in reaction time in the last 10 compared to the first 10 minutes of the task (p<.05). The results demonstrate relatively good classification accuracy, ranging from 65 to 90%. The highest classification accuracy results were obtained when exploiting the oxyhemoglobin signals (i.e., from 77 to 89%, depending on the cortical area considered) rather than the deoxyhemoglobin signals (i.e., from 65 to 66%). Moreover, the classification accuracy increased to 90% when using signals from the right parietal area rather than from the prefrontal cortex. The results support the feasibility of developing cognitive tracking technologies using NIRS and machine learning techniques.
url http://europepmc.org/articles/PMC3954803?pdf=render
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