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Predicting postural control adaptation measuring EEG, EMG, and center of pressure changes : BioVRSea paradigm

Predicting postural control adaptation measuring EEG, EMG, and center of pressure changes : BioVRSea paradigm


Titill: Predicting postural control adaptation measuring EEG, EMG, and center of pressure changes : BioVRSea paradigm
Höfundur: Stehle, Simon A.
Aubonnet, Romain   orcid.org/0000-0002-5395-775X
Hassan, Mahmoud
Recenti, Marco   orcid.org/0000-0001-9440-8434
Jacob, Deborah Cecelia Rose
Petersen, Hannes   orcid.org/0000-0002-2327-523X
Gargiulo, Paolo   orcid.org/0000-0002-5049-4817
Útgáfa: 2022-12-15
Tungumál: Enska
Umfang: 2445983
Deild: Department of Engineering
Faculty of Medicine
Other departments
Birtist í: Frontiers in Human Neuroscience; 16()
ISSN: 1662-5161
DOI: 10.3389/fnhum.2022.1038976
Efnisorð: Vísindadeild; center of pressure; EEG; EMG; machine learning; postural control; virtual reality; Neuropsychology and Physiological Psychology; Neurology; Psychiatry and Mental Health; Biological Psychiatry; Behavioral Neuroscience
URI: https://hdl.handle.net/20.500.11815/4327

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Tilvitnun:

Stehle , S A , Aubonnet , R , Hassan , M , Recenti , M , Jacob , D C R , Petersen , H & Gargiulo , P 2022 , ' Predicting postural control adaptation measuring EEG, EMG, and center of pressure changes : BioVRSea paradigm ' , Frontiers in Human Neuroscience , vol. 16 , 1038976 . https://doi.org/10.3389/fnhum.2022.1038976

Útdráttur:

Introduction: Postural control is a sensorimotor mechanism that can reveal neurophysiological disorder. The present work studies the quantitative response to a complex postural control task. Methods: We measure electroencephalography (EEG), electromyography (EMG), and center of pressure (CoP) signals during a virtual reality (VR) experience called BioVRSea with the aim of classifying different postural control responses. The BioVRSea paradigm is based on six different phases where motion and visual stimulation are modulated throughout the experiment, inducing subjects to a different adaptive postural control strategy. The goal of the study is to assess the predictability of those responses. During the experiment, brain activity was recorded from a 64-channel EEG, muscle activity was determined with six wireless EMG sensors placed on lower leg muscles, and individual movement measured by the CoP. One-hundred and seventy-two healthy individuals underwent the BioVRSea paradigm and 318 features were extracted from each phase of the experiment. Machine learning techniques were employed to: (1) classify the phases of the experiment; (2) assess the most notable features; and (3) identify a quantitative pattern for healthy responses. Results: The results show that the EEG features are not sufficient to predict the distinct phases of the experiment, but they can distinguish visual and motion onset stimulation. EMG features and CoP features, when used jointly, can predict five out of six phases with a mean accuracy of 74.4% (±8%) and an AUC of 0.92. The most important feature to identify the different adaptive strategies is the Squared Root Mean Distance of points on Medio-Lateral axis (RDIST_ML). Discussion: This work shows the importance and the feasibility of a quantitative evaluation in a complex postural control task and demonstrates the potential of EEG, CoP, and EMG for assessing pathological conditions. These predictive systems pave the way for developing an objective assessment of pathological behavior PC responses. This will be a first step in identifying individual disorders and treatment options.

Athugasemdir:

Funding Information: This work has been funded by Landspitali Research Fund (Grant number: 935836; Landspítali Háskólasjúkrahús). Publisher Copyright: Copyright © 2022 Stehle, Aubonnet, Hassan, Recenti, Jacob, Petersen and Gargiulo.

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