Research output: Contribution to journal › Article › peer-review
Convolutional neural networks for classifying healthy individuals practicing or not practicing meditation according to the EEG data. / Fu, X; Tamozhnikov, S S; Saprygin, A E et al.
In: Vavilovskii Zhurnal Genetiki i Selektsii, Vol. 27, No. 7, 12.2023, p. 851-858.Research output: Contribution to journal › Article › peer-review
}
TY - JOUR
T1 - Convolutional neural networks for classifying healthy individuals practicing or not practicing meditation according to the EEG data
AU - Fu, X
AU - Tamozhnikov, S S
AU - Saprygin, A E
AU - Istomina, N A
AU - Klemeshova, D I
AU - Savostyanov, A N
N1 - Copyright © AUTHORS. Публикация для корректировки.
PY - 2023/12
Y1 - 2023/12
N2 - The development of objective methods for assessing stress levels is an important task of applied neuroscience. Analysis of EEG recorded as part of a behavioral self-control program can serve as the basis for the development of test methods that allow classifying people by stress level. It is well known that participation in meditation practices leads to the development of skills of voluntary self-control over the individual's mental state due to an increased concentration of attention to themselves. As a consequence of meditation practices, participants can reduce overall anxiety and stress levels. The aim of our study was to develop, train and test a convolutional neural network capable of classifying individuals into groups of practitioners and non-practitioners of meditation by analysis of eventrelated brain potentials recorded during stop-signal paradigm. Four non-deep convolutional network architectures were developed, trained and tested on samples of 100 people (51 meditators and 49 non-meditators). Subsequently, all structures were additionally tested on an independent sample of 25 people. It was found that a structure using a one-dimensional convolutional layer combining the layer and a two-layer fully connected network showed the best performance in simulation tests. However, this model was often subject to overfitting due to the limitation of the display size of the data set. The phenomenon of overfitting was mitigated by changing the structure and scale of the model, initialization network parameters, regularization, random deactivation (dropout) and hyperparameters of cross-validation screening. The resulting model showed 82 % accuracy in classifying people into subgroups. The use of such models can be expected to be effective in assessing stress levels and inclination to anxiety and depression disorders in other groups of subjects.
AB - The development of objective methods for assessing stress levels is an important task of applied neuroscience. Analysis of EEG recorded as part of a behavioral self-control program can serve as the basis for the development of test methods that allow classifying people by stress level. It is well known that participation in meditation practices leads to the development of skills of voluntary self-control over the individual's mental state due to an increased concentration of attention to themselves. As a consequence of meditation practices, participants can reduce overall anxiety and stress levels. The aim of our study was to develop, train and test a convolutional neural network capable of classifying individuals into groups of practitioners and non-practitioners of meditation by analysis of eventrelated brain potentials recorded during stop-signal paradigm. Four non-deep convolutional network architectures were developed, trained and tested on samples of 100 people (51 meditators and 49 non-meditators). Subsequently, all structures were additionally tested on an independent sample of 25 people. It was found that a structure using a one-dimensional convolutional layer combining the layer and a two-layer fully connected network showed the best performance in simulation tests. However, this model was often subject to overfitting due to the limitation of the display size of the data set. The phenomenon of overfitting was mitigated by changing the structure and scale of the model, initialization network parameters, regularization, random deactivation (dropout) and hyperparameters of cross-validation screening. The resulting model showed 82 % accuracy in classifying people into subgroups. The use of such models can be expected to be effective in assessing stress levels and inclination to anxiety and depression disorders in other groups of subjects.
UR - https://www.scopus.com/record/display.uri?eid=2-s2.0-85181525501&origin=inward&txGid=55ac86bdbbb7d648ebc983ef4ed5e04c
U2 - 10.18699/VJGB-23-98
DO - 10.18699/VJGB-23-98
M3 - Article
C2 - 38213699
VL - 27
SP - 851
EP - 858
JO - Вавиловский журнал генетики и селекции
JF - Вавиловский журнал генетики и селекции
SN - 2500-0462
IS - 7
ER -
ID: 59530646