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Related Concept Videos

Seizures: Classification01:13

Seizures: Classification

520
Epilepsy is primarily characterized by unpredictable seizures, either provoked by an identifiable factor, such as injury or illness, or unprovoked, occurring spontaneously without apparent cause.
Seizures are typically classified into two main categories: focal and generalized seizures.
Focal Seizures
Focal seizures originate from specific regions of the brain. These seizures are further sub-classified into two types:
520
Epilepsy and Seizures: Overview01:24

Epilepsy and Seizures: Overview

240
Epilepsy is a chronic neurological disease marked by recurrent, unpredictable seizures. These seizures are caused by abnormal electrical discharges in the brain, leading to behavior, sensation, or consciousness alterations. They can also cause transient impairment of awareness, interfering with daily activities.
Various factors can trigger epilepsy, including genetic factors, brain damage, metabolic causes, and unknown etiology. Diagnosis of epilepsy involves electroencephalography (EEG), which...
240

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Stereo-Electro-Encephalo-Graphy SEEG With Robotic Assistance in the Presurgical Evaluation of Medical Refractory Epilepsy: A Technical Note
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Epileptic Seizure Prediction Based on Hybrid Seek Optimization Tuned Ensemble Classifier Using EEG Signals.

Bhaskar Kapoor1, Bharti Nagpal2, Praphula Kumar Jain3

  • 1Ambedkar Institute of Advanced Communication Technologies & Research (AIACT&R), Guru Gobind Singh Indraprastha University, New Delhi 110078, India.

Sensors (Basel, Switzerland)
|January 8, 2023
PubMed
Summary

This study introduces a novel hybrid optimization ensemble classifier for automated epileptic seizure prediction from electroencephalogram (EEG) data, achieving high accuracy and enabling early detection.

Keywords:
corvid and gregarious search agentselectroencephalograph (EEG)ensemble classifierepileptic seizure predictionhybrid seek optimization

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Area of Science:

  • * Neuroscience and Biomedical Engineering
  • * Computational Intelligence and Machine Learning

Background:

  • * Manual analysis of electroencephalogram (EEG) for seizure detection is time-intensive and complex.
  • * Automated methods combining signal processing and machine learning are crucial for efficient epilepsy management.

Purpose of the Study:

  • * To develop a hybrid optimization-controlled ensemble classifier for automated epileptic seizure prediction.
  • * To enhance the accuracy and efficiency of EEG-based seizure detection.

Main Methods:

  • * Pre-processing of EEG signals followed by feature extraction (statistical, wavelet, entropy-based) using a hybrid seek optimization algorithm.
  • * An ensemble classifier integrating AdaBoost, Random Forest (RF), and Decision Tree (DT) classifiers, optimized by the hybrid seek optimization technique.
  • * Utilizing corvid and gregarious search agent characteristics in the optimization algorithm for parameter evaluation.

Main Results:

  • * Achieved 96.61% accuracy, 94.67% sensitivity, and 91.37% specificity on the CHB-MIT database.
  • * Demonstrated 95.31% accuracy, 93.18% sensitivity, and 90.07% specificity on the Siena Scalp database.
  • * The proposed method shows significant efficacy for early seizure prediction.

Conclusions:

  • * The hybrid optimization-controlled ensemble classifier is effective for automated EEG analysis and seizure prediction.
  • * The developed technique offers a promising solution for improving early epilepsy detection.
  • * The study highlights the potential of advanced machine learning in neurological disorder diagnostics.