Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity

Abstract Neurofeedback training (NFT) enables users to learn self-control of EEG activity of interest and then to create many benefits on cognitive function. A considerable number of nonresponders who fail to achieve successful NFT have often been reported in the within-session prediction. This stud...

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Main Authors: Ken-Hsien Su, Jen-Jui Hsueh, Tainsong Chen, Fu-Zen Shaw
Format: Article
Language:English
Published: Nature Publishing Group 2021-10-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-99235-7
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spelling doaj-3f885e1e74da4662a79641a566068fe12021-10-10T11:27:47ZengNature Publishing GroupScientific Reports2045-23222021-10-011111910.1038/s41598-021-99235-7Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activityKen-Hsien Su0Jen-Jui Hsueh1Tainsong Chen2Fu-Zen Shaw3Department of Biomedical Engineering, National Cheng Kung UniversityMind Research and Imaging Center, National Cheng Kung UniversityDepartment of Biomedical Engineering, National Cheng Kung UniversityMind Research and Imaging Center, National Cheng Kung UniversityAbstract Neurofeedback training (NFT) enables users to learn self-control of EEG activity of interest and then to create many benefits on cognitive function. A considerable number of nonresponders who fail to achieve successful NFT have often been reported in the within-session prediction. This study aimed to investigate successful EEG NFT of upregulation alpha activity in terms of trainability, independence, and between-session predictability validation. Forty-six participants completed 12 training sessions. Spectrotemporal analysis revealed the upregulation success on brain activity of 8–12 Hz exclusively to demonstrate trainability and independence of alpha NFT. Three learning indices of between-session changes exhibited significant correlations with eyes-closed resting state (ECRS) alpha amplitude before the training exclusively. Through a stepwise linear discriminant analysis, the prediction model of ECRS’s alpha frequency band amplitude exhibited the best accuracy (89.1%) validation regarding the learning index of increased alpha amplitude on average. This study performed a systematic analysis on NFT success, the performance of the 3 between-session learning indices, and the validation of ECRS alpha activity for responder prediction. The findings would assist researchers in obtaining insight into the training efficacy of individuals and then attempting to adapt an efficient strategy in NFT success.https://doi.org/10.1038/s41598-021-99235-7
collection DOAJ
language English
format Article
sources DOAJ
author Ken-Hsien Su
Jen-Jui Hsueh
Tainsong Chen
Fu-Zen Shaw
spellingShingle Ken-Hsien Su
Jen-Jui Hsueh
Tainsong Chen
Fu-Zen Shaw
Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity
Scientific Reports
author_facet Ken-Hsien Su
Jen-Jui Hsueh
Tainsong Chen
Fu-Zen Shaw
author_sort Ken-Hsien Su
title Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity
title_short Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity
title_full Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity
title_fullStr Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity
title_full_unstemmed Validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity
title_sort validation of eyes-closed resting alpha amplitude predicting neurofeedback learning of upregulation alpha activity
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-10-01
description Abstract Neurofeedback training (NFT) enables users to learn self-control of EEG activity of interest and then to create many benefits on cognitive function. A considerable number of nonresponders who fail to achieve successful NFT have often been reported in the within-session prediction. This study aimed to investigate successful EEG NFT of upregulation alpha activity in terms of trainability, independence, and between-session predictability validation. Forty-six participants completed 12 training sessions. Spectrotemporal analysis revealed the upregulation success on brain activity of 8–12 Hz exclusively to demonstrate trainability and independence of alpha NFT. Three learning indices of between-session changes exhibited significant correlations with eyes-closed resting state (ECRS) alpha amplitude before the training exclusively. Through a stepwise linear discriminant analysis, the prediction model of ECRS’s alpha frequency band amplitude exhibited the best accuracy (89.1%) validation regarding the learning index of increased alpha amplitude on average. This study performed a systematic analysis on NFT success, the performance of the 3 between-session learning indices, and the validation of ECRS alpha activity for responder prediction. The findings would assist researchers in obtaining insight into the training efficacy of individuals and then attempting to adapt an efficient strategy in NFT success.
url https://doi.org/10.1038/s41598-021-99235-7
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