Subject-independent decoding of affective states using functional near-infrared spectroscopy.

Affective decoding is the inference of human emotional states using brain signal measurements. This approach is crucial to develop new therapeutic approaches for psychiatric rehabilitation, such as affective neurofeedback protocols. To reduce the training duration and optimize the clinical outputs,...

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Main Authors: Lucas R Trambaiolli, Juliana Tossato, André M Cravo, Claudinei E Biazoli, João R Sato
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.0244840
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spelling doaj-44805f4e46b845cdb44024723aae1fe82021-05-13T04:30:29ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01161e024484010.1371/journal.pone.0244840Subject-independent decoding of affective states using functional near-infrared spectroscopy.Lucas R TrambaiolliJuliana TossatoAndré M CravoClaudinei E BiazoliJoão R SatoAffective decoding is the inference of human emotional states using brain signal measurements. This approach is crucial to develop new therapeutic approaches for psychiatric rehabilitation, such as affective neurofeedback protocols. To reduce the training duration and optimize the clinical outputs, an ideal clinical neurofeedback could be trained using data from an independent group of volunteers before being used by new patients. Here, we investigated if this subject-independent design of affective decoding can be achieved using functional near-infrared spectroscopy (fNIRS) signals from frontal and occipital areas. For this purpose, a linear discriminant analysis classifier was first trained in a dataset (49 participants, 24.65±3.23 years) and then tested in a completely independent one (20 participants, 24.00±3.92 years). Significant balanced accuracies between classes were found for positive vs. negative (64.50 ± 12.03%, p<0.01) and negative vs. neutral (68.25 ± 12.97%, p<0.01) affective states discrimination during a reactive block consisting in viewing affective-loaded images. For an active block, in which volunteers were instructed to recollect personal affective experiences, significant accuracy was found for positive vs. neutral affect classification (71.25 ± 18.02%, p<0.01). In this last case, only three fNIRS channels were enough to discriminate between neutral and positive affective states. Although more research is needed, for example focusing on better combinations of features and classifiers, our results highlight fNIRS as a possible technique for subject-independent affective decoding, reaching significant classification accuracies of emotional states using only a few but biologically relevant features.https://doi.org/10.1371/journal.pone.0244840
collection DOAJ
language English
format Article
sources DOAJ
author Lucas R Trambaiolli
Juliana Tossato
André M Cravo
Claudinei E Biazoli
João R Sato
spellingShingle Lucas R Trambaiolli
Juliana Tossato
André M Cravo
Claudinei E Biazoli
João R Sato
Subject-independent decoding of affective states using functional near-infrared spectroscopy.
PLoS ONE
author_facet Lucas R Trambaiolli
Juliana Tossato
André M Cravo
Claudinei E Biazoli
João R Sato
author_sort Lucas R Trambaiolli
title Subject-independent decoding of affective states using functional near-infrared spectroscopy.
title_short Subject-independent decoding of affective states using functional near-infrared spectroscopy.
title_full Subject-independent decoding of affective states using functional near-infrared spectroscopy.
title_fullStr Subject-independent decoding of affective states using functional near-infrared spectroscopy.
title_full_unstemmed Subject-independent decoding of affective states using functional near-infrared spectroscopy.
title_sort subject-independent decoding of affective states using functional near-infrared spectroscopy.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description Affective decoding is the inference of human emotional states using brain signal measurements. This approach is crucial to develop new therapeutic approaches for psychiatric rehabilitation, such as affective neurofeedback protocols. To reduce the training duration and optimize the clinical outputs, an ideal clinical neurofeedback could be trained using data from an independent group of volunteers before being used by new patients. Here, we investigated if this subject-independent design of affective decoding can be achieved using functional near-infrared spectroscopy (fNIRS) signals from frontal and occipital areas. For this purpose, a linear discriminant analysis classifier was first trained in a dataset (49 participants, 24.65±3.23 years) and then tested in a completely independent one (20 participants, 24.00±3.92 years). Significant balanced accuracies between classes were found for positive vs. negative (64.50 ± 12.03%, p<0.01) and negative vs. neutral (68.25 ± 12.97%, p<0.01) affective states discrimination during a reactive block consisting in viewing affective-loaded images. For an active block, in which volunteers were instructed to recollect personal affective experiences, significant accuracy was found for positive vs. neutral affect classification (71.25 ± 18.02%, p<0.01). In this last case, only three fNIRS channels were enough to discriminate between neutral and positive affective states. Although more research is needed, for example focusing on better combinations of features and classifiers, our results highlight fNIRS as a possible technique for subject-independent affective decoding, reaching significant classification accuracies of emotional states using only a few but biologically relevant features.
url https://doi.org/10.1371/journal.pone.0244840
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