Design of a Neurofeedback Training System for Meditation Based on EEG Technology

Meditation is a form of mental training that has therapeutic potential and cognitive benefits that may enhance attention, mental well-being, and neuroplasticity. However, the learning process is not easy because meditators do not receive immediate feedback that lets them know if they are correctly...

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Main Authors: Andrés Eduardo Nieto-Vallejo, Omar Fernando Ramírez-Pérez, Luis Eduardo Ballesteros-Arroyave, Angela Aragón
Format: Article
Language:English
Published: Universidad Pedagógica y Tecnológica de Colombia 2021-03-01
Series:Revista Facultad de Ingeniería
Subjects:
Online Access:https://revistas.uptc.edu.co/index.php/ingenieria/article/view/12489
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author Andrés Eduardo Nieto-Vallejo
Omar Fernando Ramírez-Pérez
Luis Eduardo Ballesteros-Arroyave
Angela Aragón
author_facet Andrés Eduardo Nieto-Vallejo
Omar Fernando Ramírez-Pérez
Luis Eduardo Ballesteros-Arroyave
Angela Aragón
author_sort Andrés Eduardo Nieto-Vallejo
collection DOAJ
description Meditation is a form of mental training that has therapeutic potential and cognitive benefits that may enhance attention, mental well-being, and neuroplasticity. However, the learning process is not easy because meditators do not receive immediate feedback that lets them know if they are correctly doing the activity. EEG Neurofeedback training is one of the techniques to train brain self-regulation and it has the potential to increase the effectiveness of meditation. However, the benefits greatly differ between subjects with a high percentage of inefficacy. In this work, an EEG Neurofeedback Training System is proposed based on user-centered design methodology to provide real-time performance feedback to meditators to increase levels of attention and relaxation through a visual, sound and smell stimuli interface. Levels of attention and relaxation of nine participants were measured with a mobile Neurosky EEG headset biosensor during meditation practice to analyze the incidence of each type of stimuli during activity. Visual stimuli feedback was able to increase attention levels of 78% of the participants by 11.8% compared to a meditation session without any stimuli. The sound stimuli feedback was able to increase the relaxation levels of 44.4% of the participants by 16% compared to a session without any stimuli. These results might bring new insights for the design of a neurofeedback system interface for meditation. Further research on neurofeedback training interfaces for meditators is suggested to validate these results with more participants.
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spelling doaj.art-38ca598b161d465295b1bdffbe386ef72023-11-30T04:49:09ZengUniversidad Pedagógica y Tecnológica de ColombiaRevista Facultad de Ingeniería0121-11292357-53282021-03-01305510.19053/01211129.v30.n55.2021.1248912489Design of a Neurofeedback Training System for Meditation Based on EEG TechnologyAndrés Eduardo Nieto-Vallejo0Omar Fernando Ramírez-Pérez1Luis Eduardo Ballesteros-Arroyave2Angela Aragón3Pontificia Universidad JaverianaPontificia Universidad JaverianaPontificia Universidad JaverianaPontificia Universidad Javeriana Meditation is a form of mental training that has therapeutic potential and cognitive benefits that may enhance attention, mental well-being, and neuroplasticity. However, the learning process is not easy because meditators do not receive immediate feedback that lets them know if they are correctly doing the activity. EEG Neurofeedback training is one of the techniques to train brain self-regulation and it has the potential to increase the effectiveness of meditation. However, the benefits greatly differ between subjects with a high percentage of inefficacy. In this work, an EEG Neurofeedback Training System is proposed based on user-centered design methodology to provide real-time performance feedback to meditators to increase levels of attention and relaxation through a visual, sound and smell stimuli interface. Levels of attention and relaxation of nine participants were measured with a mobile Neurosky EEG headset biosensor during meditation practice to analyze the incidence of each type of stimuli during activity. Visual stimuli feedback was able to increase attention levels of 78% of the participants by 11.8% compared to a meditation session without any stimuli. The sound stimuli feedback was able to increase the relaxation levels of 44.4% of the participants by 16% compared to a session without any stimuli. These results might bring new insights for the design of a neurofeedback system interface for meditation. Further research on neurofeedback training interfaces for meditators is suggested to validate these results with more participants. https://revistas.uptc.edu.co/index.php/ingenieria/article/view/12489AttentionElectroencephalogramMeditationNeurofeedbackRelaxationTraining
spellingShingle Andrés Eduardo Nieto-Vallejo
Omar Fernando Ramírez-Pérez
Luis Eduardo Ballesteros-Arroyave
Angela Aragón
Design of a Neurofeedback Training System for Meditation Based on EEG Technology
Revista Facultad de Ingeniería
Attention
Electroencephalogram
Meditation
Neurofeedback
Relaxation
Training
title Design of a Neurofeedback Training System for Meditation Based on EEG Technology
title_full Design of a Neurofeedback Training System for Meditation Based on EEG Technology
title_fullStr Design of a Neurofeedback Training System for Meditation Based on EEG Technology
title_full_unstemmed Design of a Neurofeedback Training System for Meditation Based on EEG Technology
title_short Design of a Neurofeedback Training System for Meditation Based on EEG Technology
title_sort design of a neurofeedback training system for meditation based on eeg technology
topic Attention
Electroencephalogram
Meditation
Neurofeedback
Relaxation
Training
url https://revistas.uptc.edu.co/index.php/ingenieria/article/view/12489
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