Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process Model
Background: A seizure is the physical findings or changes in behavior occur after an episode of abnormal electrical activity in the brain. Seizures may interfere with cardiorespiratory function and with nutrition and may have detrimental long-term effects on cerebral development. Electroencephalogra...
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doaj-6c2b98b9cc094a9983402c7630a7c4b32020-11-24T20:52:17ZfasVesnu Publications مجله دانشکده پزشکی اصفهان1027-75951735-854X2013-08-01312439859961369Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process ModelZahra Amini0Hossein Rabbani1PhD Student, Department of Bioelectric and Biomedical Engineering, School of Advanced Medical Technology, Isfahan University of Medical Sciences, Isfahan, IranAssociate Professor, The Medical Image and Signal Processing Research Center AND Department of Bioelectric and Biomedical Engineering, School of Advanced Medical Technology, Isfahan University of Medical Sciences, Isfahan, IranBackground: A seizure is the physical findings or changes in behavior occur after an episode of abnormal electrical activity in the brain. Seizures may interfere with cardiorespiratory function and with nutrition and may have detrimental long-term effects on cerebral development. Electroencephalogram (EEG) is essential in diagnosis and management of seizures. Automatic seizure detection is very important in clinical practice and has to be achieved by analyzing the EEG. Methods: For automatic seizure detection, we used Gaussian process (GP) model and train it on the EEG signals recorded from some children between the ages of 1.5 to 16 years. After modeling EEG signal by GP model, two measures of output signal were derived: the variance of the predicted signal and the hyperparameter ratio. It was based on the hypotheses that because the EEG signal during seizure events is more deterministic and rhythmic, we can use the changing of these two criteria for seizure detection. Findings: During seizure events, the variance of the model output signal reduced and the hayperparameter ratio increased. The second measure was less successful but it had other advantages like robustness to model order selection. Conclusion: The GP modeling is a good method for seizure detection. Important objectives are to perform this detection as quickly, efficiently and accurately as possible. In this method, decisions are made accurate and with negligible delay.http://jims.mui.ac.ir/index.php/jims/article/view/2617Seizure detectionGaussian process (GP) modelElectroencephalogram (EEG) signal |
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DOAJ |
language |
fas |
format |
Article |
sources |
DOAJ |
author |
Zahra Amini Hossein Rabbani |
spellingShingle |
Zahra Amini Hossein Rabbani Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process Model مجله دانشکده پزشکی اصفهان Seizure detection Gaussian process (GP) model Electroencephalogram (EEG) signal |
author_facet |
Zahra Amini Hossein Rabbani |
author_sort |
Zahra Amini |
title |
Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process Model |
title_short |
Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process Model |
title_full |
Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process Model |
title_fullStr |
Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process Model |
title_full_unstemmed |
Seizure Diagnosis in Children based on the Electroencephalogram Modellind by Gaussian Process Model |
title_sort |
seizure diagnosis in children based on the electroencephalogram modellind by gaussian process model |
publisher |
Vesnu Publications |
series |
مجله دانشکده پزشکی اصفهان |
issn |
1027-7595 1735-854X |
publishDate |
2013-08-01 |
description |
Background: A seizure is the physical findings or changes in behavior occur after an episode of abnormal electrical activity in the brain. Seizures may interfere with cardiorespiratory function and with nutrition and may have detrimental long-term effects on cerebral development. Electroencephalogram (EEG) is essential in diagnosis and management of seizures. Automatic seizure detection is very important in clinical practice and has to be achieved by analyzing the EEG.
Methods: For automatic seizure detection, we used Gaussian process (GP) model and train it on the EEG signals recorded from some children between the ages of 1.5 to 16 years. After modeling EEG signal by GP model, two measures of output signal were derived: the variance of the predicted signal and the hyperparameter ratio. It was based on the hypotheses that because the EEG signal during seizure events is more deterministic and rhythmic, we can use the changing of these two criteria for seizure detection.
Findings: During seizure events, the variance of the model output signal reduced and the hayperparameter ratio increased. The second measure was less successful but it had other advantages like robustness to model order selection.
Conclusion: The GP modeling is a good method for seizure detection. Important objectives are to perform this detection as quickly, efficiently and accurately as possible. In this method, decisions are made accurate and with negligible delay. |
topic |
Seizure detection Gaussian process (GP) model Electroencephalogram (EEG) signal |
url |
http://jims.mui.ac.ir/index.php/jims/article/view/2617 |
work_keys_str_mv |
AT zahraamini seizurediagnosisinchildrenbasedontheelectroencephalogrammodellindbygaussianprocessmodel AT hosseinrabbani seizurediagnosisinchildrenbasedontheelectroencephalogrammodellindbygaussianprocessmodel |
_version_ |
1716800248455626752 |