Abstract

Discovering the concealed patterns of Electroencephalogram (EEG) signals is a crucial part in efficient detection of epileptic seizures. This study develops a new scheme based on Douglas-Peucker algorithm (DP) and principal component analysis (PCA) for extraction of representative and discriminatory information from epileptic EEG data. As the multichannel EEG signals are highly correlated and are in large volumes, the DP algorithm is applied to extract the most representative samples from EEG data. The PCA is utilised to produce uncorrelated variables and to reduce the dimensionality of the DP samples for better recognition. To verify the robustness of the proposed method, four machine learning techniques, random forest classifier (RF), k-nearest neighbour algorithm (k-NN), support vector machine (SVM), and decision tree classifier (DT), are employed on the obtained features. Furthermore, we assess the performance of the proposed methods by comparing it with some recently reported algorithms. The experimental results show that the DP technique effectively extracts the representative samples from EEG signals compressing up to over 47% sample points of EEG signals. The results also indicate that the proposed feature method with the RF classifier achieves the best performance and yields 99.85% of the overall classification accuracy (OCA). The proposed method outperforms the most recently reported methods in terms of OCA in the same epileptic EEG database.

Highlights

  • Epilepsy is one of the most common neurological disorders of the human brain that affects approximately 65 million people of the world [1]

  • This study investigated which machine leaning model (e.g., random forest classifier (RF), k-nearest neighbour algorithm (k-NN), support vector machine (SVM) and decision tree classifier (DT)) is suitable for the proposed feature exaction method

  • The results show that the proposed RF classifier with the Douglas-Peucker algorithm (DP) principal component analysis (PCA) features yields the best overall performance as compared to the other classifiers

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Summary

Introduction

Epilepsy is one of the most common neurological disorders of the human brain that affects approximately 65 million people of the world [1]. It is characterised by unprovoked recurring seizures which are induced by abnormal and synchronous discharges of a group of neurons in the brain [2]. In the majority of cases, seizures occur unexpectedly, without a sign of warning to alert and prepare the person for an onset of a seizure Such abrupt and uncontrollable nature of the disease can cause physical injury due to loss of motor control, loss of consciousness, or delayed reactivity during seizures. There is an increasing need for developing automated epileptic seizure detection algorithms to alleviate the neurologist’s burden of analysing long-term EEG signals and to ensure a proper diagnosis and evaluation of neurological diseases

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