Abstract

Epilepsy is a common nervous system disease that is characterized by recurrent seizures. An electroencephalogram (EEG) records neural activity, and it is commonly used for the diagnosis of epilepsy. To achieve accurate detection of epileptic seizures, an automatic detection approach of epileptic seizures, integrating complementary ensemble empirical mode decomposition (CEEMD) and extreme gradient boosting (XGBoost), named CEEMD-XGBoost, is proposed. Firstly, the decomposition method, CEEMD, which is capable of effectively reducing the influence of mode mixing and end effects, was utilized to divide raw EEG signals into a set of intrinsic mode functions (IMFs) and residues. Secondly, the multi-domain features were extracted from raw signals and the decomposed components, and they were further selected according to the importance scores of the extracted features. Finally, XGBoost was applied to develop the epileptic seizure detection model. Experiments were conducted on two benchmark epilepsy EEG datasets, named the Bonn dataset and the CHB-MIT (Children’s Hospital Boston and Massachusetts Institute of Technology) dataset, to evaluate the performance of our proposed CEEMD-XGBoost. The extensive experimental results indicated that, compared with some previous EEG classification models, CEEMD-XGBoost can significantly enhance the detection performance of epileptic seizures in terms of sensitivity, specificity, and accuracy.

Highlights

  • IntroductionIt is reported that a prevalence of 0.6%–0.8% of the global population suffers from this disease [1]

  • Because the original CHB-MIT signals are not directly segmented into sub-series of non-seizure or seizure states, we manually divided them into a collection of overlapped fragments with a fixed length

  • On the basis of the same feature extraction, feature selection, and classification method (XGBoost), we evaluated the impact of complementary ensemble empirical mode decomposition (CEEMD) on the detection performance

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Summary

Introduction

It is reported that a prevalence of 0.6%–0.8% of the global population suffers from this disease [1]. Epilepsy is generally characterized by a transient disorder of the nervous system and unpredictable occurrence [2]. Epileptic seizures generally fall into two main categories: partial and generalized [3]. The main difference between these two types of epileptic seizures lies in the occurrence region of the brain. Both epileptic seizures can occur for all races, ages, and ethnic back-grounds, but they are more common in younger and older demographics [4]

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