Javascript must be enabled to continue!
EPILEPTIC SEIZURE PREDICTION USING WAVELET TRANSFORM, FRACTAL DIMENSION, SUPPORT VECTOR MACHINE, AND EEG SIGNALS
View through CrossRef
Epilepsy, a neurological disorder, affects millions of persons worldwide. It is distinguished by causing recurrent seizures in patients, which can conduct to severe health problems. Consequently, it is essential to offer a method capable of timely predicting a seizure before its appearance, so patients can avoid possible injuries by taking preventive action. In this sense, a method based on the integration of discrete wavelet transform (DWT), fractal dimension, and support vector machine (SVM) is presented for the prediction of an epileptic seizure up to 30[Formula: see text]min before its onset through the analysis of electroencephalogram (EEG) signals. DWT is initially applied to the EEG signals to obtain their main neurological bands; then, five fractal dimension indices (e.g. Sevcik, Petrosian, Box, Higuchi, and Katz) are explored as potential seizure indicators. Finally, an SVM is developed to predict the epileptic seizure automatically. The effectiveness of the proposal to predict an epileptic crisis is validated by employing a database of 14 subjects with 42 epileptic seizures provided by the Massachusetts Institute of Technology and the Children’s Hospital Boston. The results demonstrate that the proposal can predict an epileptic seizure up to 30[Formula: see text]min before its onset with a high accuracy of 93.33%.
World Scientific Pub Co Pte Ltd
Title: EPILEPTIC SEIZURE PREDICTION USING WAVELET TRANSFORM, FRACTAL DIMENSION, SUPPORT VECTOR MACHINE, AND EEG SIGNALS
Description:
Epilepsy, a neurological disorder, affects millions of persons worldwide.
It is distinguished by causing recurrent seizures in patients, which can conduct to severe health problems.
Consequently, it is essential to offer a method capable of timely predicting a seizure before its appearance, so patients can avoid possible injuries by taking preventive action.
In this sense, a method based on the integration of discrete wavelet transform (DWT), fractal dimension, and support vector machine (SVM) is presented for the prediction of an epileptic seizure up to 30[Formula: see text]min before its onset through the analysis of electroencephalogram (EEG) signals.
DWT is initially applied to the EEG signals to obtain their main neurological bands; then, five fractal dimension indices (e.
g.
Sevcik, Petrosian, Box, Higuchi, and Katz) are explored as potential seizure indicators.
Finally, an SVM is developed to predict the epileptic seizure automatically.
The effectiveness of the proposal to predict an epileptic crisis is validated by employing a database of 14 subjects with 42 epileptic seizures provided by the Massachusetts Institute of Technology and the Children’s Hospital Boston.
The results demonstrate that the proposal can predict an epileptic seizure up to 30[Formula: see text]min before its onset with a high accuracy of 93.
33%.
Related Results
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct
Introduction
Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Diagnostic role of serum prolactin level in different kinds of seizure and seizure-like episode in children: A hospital-based study
Diagnostic role of serum prolactin level in different kinds of seizure and seizure-like episode in children: A hospital-based study
Background: Serum prolactin level has been previously used in distinguishing epileptic seizure from non-epileptic seizure, as prolactin level usually rises following an epileptic s...
Performance Comparison of Hartley Transform with Hartley Wavelet and Hybrid Hartley Wavelet Transforms for Image Data Compression
Performance Comparison of Hartley Transform with Hartley Wavelet and Hybrid Hartley Wavelet Transforms for Image Data Compression
This paper proposes image compression using Hybrid Hartley wavelet transform. The paper compares the results of Hybrid Hartley wavelet transform with that of orthogonal Hartley tra...
THE EFFECT OF PETHIDINE ON THE NEONATAL EEG
THE EFFECT OF PETHIDINE ON THE NEONATAL EEG
SUMMARYThirty‐two preterm infants were monitored with an on‐line cotside EEG system for periods of up to nine days. Changes in the normal pattern of discontinuity of the EEG were s...
Dynamic Rigid Fractal Spacetime Manifold Theory
Dynamic Rigid Fractal Spacetime Manifold Theory
This paper proposes an innovative framework, the Dynamic Rigid Fractal Spacetime Manifold Theory (DRFSMT), which integrates fractal and noncommutative algebra to provide a unified ...
The Diagnostic Value of the Sleep EEG With and Without Sleep Deprivation in Patients With Atypical Absences
The Diagnostic Value of the Sleep EEG With and Without Sleep Deprivation in Patients With Atypical Absences
Summary: Hitherto it has not been known whether or not the sleep EEG after sleep deprivation is more effective than the simple or drug‐induced sleep EEG. To investigate this, we r...
Variation Trends of Fractal Dimension in Epileptic EEG Signals
Variation Trends of Fractal Dimension in Epileptic EEG Signals
Epileptic diseases take EEG as an important basis for clinical judgment, and fractal algorithms were often used to analyze electroencephalography (EEG) signals. However, the variat...
Automated Deep Neural Network Approach for Detection of Epileptic Seizures
Automated Deep Neural Network Approach for Detection of Epileptic Seizures
In this thesis, I focus on exploiting electroencephalography (EEG) signals for early seizure diagnosis in patients. This process is based on a powerful deep learning algorithm for ...

