Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural Network

None of the current epileptic seizure prediction methods can widely be accepted, due to their poor consistency in performance. In this work, we have developed a novel approach to analyze intracranial EEG data. The energy of the frequency band of 4–12 Hz is obtained by wavelet tr...

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Main Authors: Derong Liu, Zhongyu Pang, Zhuo Wang
Format: Article
Language:English
Published: SpringerOpen 2009-01-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://dx.doi.org/10.1155/2009/638534
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spelling doaj-8c2523f5c2b04335a89f8082e6f21eee2020-11-25T00:09:33ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61721687-61802009-01-01200910.1155/2009/638534Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural NetworkDerong LiuZhongyu PangZhuo WangNone of the current epileptic seizure prediction methods can widely be accepted, due to their poor consistency in performance. In this work, we have developed a novel approach to analyze intracranial EEG data. The energy of the frequency band of 4–12 Hz is obtained by wavelet transform. A dynamic model is introduced to describe the process and a hidden variable is included. The hidden variable can be considered as indicator of seizure activities. The method of particle filter associated with a neural network is used to calculate the hidden variable. Six patients' intracranial EEG data are used to test our algorithm including 39 hours of ictal EEG with 22 seizures and 70 hours of normal EEG recordings. The minimum least square error algorithm is applied to determine optimal parameters in the model adaptively. The results show that our algorithm can successfully predict 15 out of 16 seizures and the average prediction time is 38.5 minutes before seizure onset. The sensitivity is about 93.75% and the specificity (false prediction rate) is approximately 0.09 FP/h. A random predictor is used to calculate the sensitivity under significance level of 5%. Compared to the random predictor, our method achieved much better performance. http://dx.doi.org/10.1155/2009/638534
collection DOAJ
language English
format Article
sources DOAJ
author Derong Liu
Zhongyu Pang
Zhuo Wang
spellingShingle Derong Liu
Zhongyu Pang
Zhuo Wang
Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural Network
EURASIP Journal on Advances in Signal Processing
author_facet Derong Liu
Zhongyu Pang
Zhuo Wang
author_sort Derong Liu
title Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural Network
title_short Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural Network
title_full Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural Network
title_fullStr Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural Network
title_full_unstemmed Epileptic Seizure Prediction by a System of Particle Filter Associated with a Neural Network
title_sort epileptic seizure prediction by a system of particle filter associated with a neural network
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
1687-6180
publishDate 2009-01-01
description None of the current epileptic seizure prediction methods can widely be accepted, due to their poor consistency in performance. In this work, we have developed a novel approach to analyze intracranial EEG data. The energy of the frequency band of 4–12 Hz is obtained by wavelet transform. A dynamic model is introduced to describe the process and a hidden variable is included. The hidden variable can be considered as indicator of seizure activities. The method of particle filter associated with a neural network is used to calculate the hidden variable. Six patients' intracranial EEG data are used to test our algorithm including 39 hours of ictal EEG with 22 seizures and 70 hours of normal EEG recordings. The minimum least square error algorithm is applied to determine optimal parameters in the model adaptively. The results show that our algorithm can successfully predict 15 out of 16 seizures and the average prediction time is 38.5 minutes before seizure onset. The sensitivity is about 93.75% and the specificity (false prediction rate) is approximately 0.09 FP/h. A random predictor is used to calculate the sensitivity under significance level of 5%. Compared to the random predictor, our method achieved much better performance.
url http://dx.doi.org/10.1155/2009/638534
work_keys_str_mv AT derongliu epilepticseizurepredictionbyasystemofparticlefilterassociatedwithaneuralnetwork
AT zhongyupang epilepticseizurepredictionbyasystemofparticlefilterassociatedwithaneuralnetwork
AT zhuowang epilepticseizurepredictionbyasystemofparticlefilterassociatedwithaneuralnetwork
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