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Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals

Motion sickness (MS) and postural control (PC) conditions are common complaints among those who passively travel. Many theories explaining a probable cause for MS have been proposed but the most prominent is the sensory conflict theory, stating that a mismatch between vestibular and visual signals c...

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Autores principales: Recenti, Marco, Ricciardi, Carlo, Aubonnet, Romain, Picone, Ilaria, Jacob, Deborah, Svansson, Halldór Á. R., Agnarsdóttir, Sólveig, Karlsson, Gunnar H., Baeringsdóttir, Valdís, Petersen, Hannes, Gargiulo, Paolo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8047066/
https://www.ncbi.nlm.nih.gov/pubmed/33869153
http://dx.doi.org/10.3389/fbioe.2021.635661
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author Recenti, Marco
Ricciardi, Carlo
Aubonnet, Romain
Picone, Ilaria
Jacob, Deborah
Svansson, Halldór Á. R.
Agnarsdóttir, Sólveig
Karlsson, Gunnar H.
Baeringsdóttir, Valdís
Petersen, Hannes
Gargiulo, Paolo
author_facet Recenti, Marco
Ricciardi, Carlo
Aubonnet, Romain
Picone, Ilaria
Jacob, Deborah
Svansson, Halldór Á. R.
Agnarsdóttir, Sólveig
Karlsson, Gunnar H.
Baeringsdóttir, Valdís
Petersen, Hannes
Gargiulo, Paolo
author_sort Recenti, Marco
collection PubMed
description Motion sickness (MS) and postural control (PC) conditions are common complaints among those who passively travel. Many theories explaining a probable cause for MS have been proposed but the most prominent is the sensory conflict theory, stating that a mismatch between vestibular and visual signals causes MS. Few measurements have been made to understand and quantify the interplay between muscle activation, brain activity, and heart behavior during this condition. We introduce here a novel multimetric system called BioVRSea based on virtual reality (VR), a mechanical platform and several biomedical sensors to study the physiology associated with MS and seasickness. This study reports the results from 28 individuals: the subjects stand on the platform wearing VR goggles, a 64-channel EEG dry-electrode cap, two EMG sensors on the gastrocnemius muscles, and a sensor on the chest that captures the heart rate (HR). The virtual environment shows a boat surrounded by waves whose frequency and amplitude are synchronized with the platform movement. Three measurement protocols are performed by each subject, after each of which they answer the Motion Sickness Susceptibility Questionnaire. Nineteen parameters are extracted from the biomedical sensors (5 from EEG, 12 from EMG and, 2 from HR) and 13 from the questionnaire. Eight binary indexes are computed to quantify the symptoms combining all of them in the Motion Sickness Index (I(MS)). These parameters create the MS database composed of 83 measurements. All indexes undergo univariate statistical analysis, with EMG parameters being most significant, in contrast to EEG parameters. Machine learning (ML) gives good results in the classification of the binary indexes, finding random forest to be the best algorithm (accuracy of 74.7 for I(MS)). The feature importance analysis showed that muscle parameters are the most relevant, and for EEG analysis, beta wave results were the most important. The present work serves as the first step in identifying the key physiological factors that differentiate those who suffer from MS from those who do not using the novel BioVRSea system. Coupled with ML, BioVRSea is of value in the evaluation of PC disruptions, which are among the most disturbing and costly health conditions affecting humans.
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spelling pubmed-80470662021-04-16 Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals Recenti, Marco Ricciardi, Carlo Aubonnet, Romain Picone, Ilaria Jacob, Deborah Svansson, Halldór Á. R. Agnarsdóttir, Sólveig Karlsson, Gunnar H. Baeringsdóttir, Valdís Petersen, Hannes Gargiulo, Paolo Front Bioeng Biotechnol Bioengineering and Biotechnology Motion sickness (MS) and postural control (PC) conditions are common complaints among those who passively travel. Many theories explaining a probable cause for MS have been proposed but the most prominent is the sensory conflict theory, stating that a mismatch between vestibular and visual signals causes MS. Few measurements have been made to understand and quantify the interplay between muscle activation, brain activity, and heart behavior during this condition. We introduce here a novel multimetric system called BioVRSea based on virtual reality (VR), a mechanical platform and several biomedical sensors to study the physiology associated with MS and seasickness. This study reports the results from 28 individuals: the subjects stand on the platform wearing VR goggles, a 64-channel EEG dry-electrode cap, two EMG sensors on the gastrocnemius muscles, and a sensor on the chest that captures the heart rate (HR). The virtual environment shows a boat surrounded by waves whose frequency and amplitude are synchronized with the platform movement. Three measurement protocols are performed by each subject, after each of which they answer the Motion Sickness Susceptibility Questionnaire. Nineteen parameters are extracted from the biomedical sensors (5 from EEG, 12 from EMG and, 2 from HR) and 13 from the questionnaire. Eight binary indexes are computed to quantify the symptoms combining all of them in the Motion Sickness Index (I(MS)). These parameters create the MS database composed of 83 measurements. All indexes undergo univariate statistical analysis, with EMG parameters being most significant, in contrast to EEG parameters. Machine learning (ML) gives good results in the classification of the binary indexes, finding random forest to be the best algorithm (accuracy of 74.7 for I(MS)). The feature importance analysis showed that muscle parameters are the most relevant, and for EEG analysis, beta wave results were the most important. The present work serves as the first step in identifying the key physiological factors that differentiate those who suffer from MS from those who do not using the novel BioVRSea system. Coupled with ML, BioVRSea is of value in the evaluation of PC disruptions, which are among the most disturbing and costly health conditions affecting humans. Frontiers Media S.A. 2021-04-01 /pmc/articles/PMC8047066/ /pubmed/33869153 http://dx.doi.org/10.3389/fbioe.2021.635661 Text en Copyright © 2021 Recenti, Ricciardi, Aubonnet, Picone, Jacob, Svansson, Agnarsdóttir, Karlsson, Baeringsdóttir, Petersen and Gargiulo. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Bioengineering and Biotechnology
Recenti, Marco
Ricciardi, Carlo
Aubonnet, Romain
Picone, Ilaria
Jacob, Deborah
Svansson, Halldór Á. R.
Agnarsdóttir, Sólveig
Karlsson, Gunnar H.
Baeringsdóttir, Valdís
Petersen, Hannes
Gargiulo, Paolo
Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals
title Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals
title_full Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals
title_fullStr Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals
title_full_unstemmed Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals
title_short Toward Predicting Motion Sickness Using Virtual Reality and a Moving Platform Assessing Brain, Muscles, and Heart Signals
title_sort toward predicting motion sickness using virtual reality and a moving platform assessing brain, muscles, and heart signals
topic Bioengineering and Biotechnology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8047066/
https://www.ncbi.nlm.nih.gov/pubmed/33869153
http://dx.doi.org/10.3389/fbioe.2021.635661
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