PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERS

Aim. To predict the course of epilepsy using a set of physiological parameters.Materials and methods. We examined 72 healthy individuals (control group) and 163 patients with epilepsy by monitoring the EEG, the evoked potentials, and the parameters of the motor and vegetative systems. Based on the c...

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Main Authors: R. A. Zorin, V. A. Zhadnov, M. M. Lapkin
Format: Article
Language:Russian
Published: IRBIS LLC 2018-02-01
Series:Эпилепсия и пароксизмальные состояния
Subjects:
Online Access:https://www.epilepsia.su/jour/article/view/366
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spelling doaj-581d61fffc294463b86178a4bb045cf22021-07-28T13:43:35ZrusIRBIS LLCЭпилепсия и пароксизмальные состояния2077-83332311-40882018-02-0194122110.17749/2077-8333.2017.9.4.012-021353PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERSR. A. Zorin0V. A. Zhadnov1M. M. Lapkin2Ryazan State Medical UniversityRyazan State Medical UniversityRyazan State Medical UniversityAim. To predict the course of epilepsy using a set of physiological parameters.Materials and methods. We examined 72 healthy individuals (control group) and 163 patients with epilepsy by monitoring the EEG, the evoked potentials, and the parameters of the motor and vegetative systems. Based on the cluster approach, the patients were subdivided into subgroups according to their clinical and psychological characteristics, as well as the quality of life. These subgroups were quantitatively described using the logit regression models and the artificial neural networks technology.Results. We were able to discern between the subgroups of patients with a favorable and unfavorable course of the disease. The patients with an unfavorable course of epilepsy had an increased latency of cognitive evoked potentials, a decreased activation of the associative and the motor cerebral mechanisms, as well as a prevalence of the sympathetic activity. We have found reasonably good correlations between the patients’ clinical characteristics and the physiological parameters based on the logit regression analysis and artificial neural networks models.Conclusion. The clinical and psychosocial heterogeneity of patients with epilepsy is associated with the prevalence of symptomatic forms in the group with an unfavorable course of the disease. The crucial role in dividing the patients into clinical groups is played by the manifestations of nonspecific modulating brain structures.https://www.epilepsia.su/jour/article/view/366epilepsycluster analysisdisease prognosislogit regression analysisartificial neural networks
collection DOAJ
language Russian
format Article
sources DOAJ
author R. A. Zorin
V. A. Zhadnov
M. M. Lapkin
spellingShingle R. A. Zorin
V. A. Zhadnov
M. M. Lapkin
PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERS
Эпилепсия и пароксизмальные состояния
epilepsy
cluster analysis
disease prognosis
logit regression analysis
artificial neural networks
author_facet R. A. Zorin
V. A. Zhadnov
M. M. Lapkin
author_sort R. A. Zorin
title PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERS
title_short PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERS
title_full PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERS
title_fullStr PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERS
title_full_unstemmed PREDICTING THE COURSE OF EPILEPSY USING A SET OF PHYSIOLOGICAL PARAMETERS
title_sort predicting the course of epilepsy using a set of physiological parameters
publisher IRBIS LLC
series Эпилепсия и пароксизмальные состояния
issn 2077-8333
2311-4088
publishDate 2018-02-01
description Aim. To predict the course of epilepsy using a set of physiological parameters.Materials and methods. We examined 72 healthy individuals (control group) and 163 patients with epilepsy by monitoring the EEG, the evoked potentials, and the parameters of the motor and vegetative systems. Based on the cluster approach, the patients were subdivided into subgroups according to their clinical and psychological characteristics, as well as the quality of life. These subgroups were quantitatively described using the logit regression models and the artificial neural networks technology.Results. We were able to discern between the subgroups of patients with a favorable and unfavorable course of the disease. The patients with an unfavorable course of epilepsy had an increased latency of cognitive evoked potentials, a decreased activation of the associative and the motor cerebral mechanisms, as well as a prevalence of the sympathetic activity. We have found reasonably good correlations between the patients’ clinical characteristics and the physiological parameters based on the logit regression analysis and artificial neural networks models.Conclusion. The clinical and psychosocial heterogeneity of patients with epilepsy is associated with the prevalence of symptomatic forms in the group with an unfavorable course of the disease. The crucial role in dividing the patients into clinical groups is played by the manifestations of nonspecific modulating brain structures.
topic epilepsy
cluster analysis
disease prognosis
logit regression analysis
artificial neural networks
url https://www.epilepsia.su/jour/article/view/366
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