Abstract

Classification of brain abnormalities as a pathological cue of epilepsy based on magnetic resonance (MR) images is essential for diagnosis. There are some types of brain structural abnormalities as a pathological cue of epilepsy. To identify it, a neurologist can involve some sequence of MR images at a time. Existing algorithms for abnormalities classification usually involve only one or two sequences of MR images. In this paper, we proposed ensemble convolutional neural networks with a support vector machine (SVM) scheme to classify brain abnormalities (epilepsy) vs. non-epilepsy based on the axial multi-sequence of MR images. The convolutional neural network (CNN) models on the proposed method are base-learner models with different architectures and have low parameters. The performance improvement on the proposed method is made by combining the output of the base-learner models and the combination of predictions from these models. The combination of predictions uses majority voting, weighted majority voting, and weighted average. Henceforth, the combined output becomes input in the meta-learning process with SVM for the final classification. The dataset for evaluation is the axial multi-sequences of MR images that include abnormal brain structures causing epilepsy and non-epilepsy with various subjects’ histories. The experimental results show the proposed method can obtain an accuracy average and F <sub xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">1</sub> -score of 86.37% and 90.75%, respectively, and an improvement of accuracy of 6.7%-18.19% against the CNN models on the base-learner and 2.54%-2.65% against the combination of predictions. With these results, the proposed architecture also provides better performance compared to the two existing CNN architectures.

Highlights

  • Epilepsy is a chronic disease of the brain characterized by repeated seizures and is an unconscious movement that involves part of the body or the whole body [1]

  • DISCUSSION we investigated the performance of convolutional neural network (CNN) models on base-learner, the ensemble of the base-learner model with a combination of predictions (MV, weighted average (WA), and weighted majority voting (WMV)) and meta-learner

  • At the meta-learner stage, we investigated the ensemble of the CNN models on base-learner by meta-training using support vector machine (SVM) to classify the dichotomous axial sequence of magnetic resonance (MR) images of the brain as epilepsy vs. nonepilepsy

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Summary

Introduction

Epilepsy is a chronic disease of the brain characterized by repeated seizures and is an unconscious movement that involves part of the body or the whole body [1]. Efforts to detect the disease early will help determine the cause of epilepsy. EEG (electroencephalogram) is generally used to check whether a patient is having an epileptic seizure, determine the type of seizure, or even a trigger factor for epilepsy. This diagnosis has not been able to understand the etiology and has the low spatial resolution to detect the brain abnormality as the cause of epilepsy [2].

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