Epilepsy Detection by Using Scalogram Based Convolutional Neural Network from EEG Signals

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Date

2019

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI

Open Access Color

GOLD

Green Open Access

Yes

OpenAIRE Downloads

21

OpenAIRE Views

27

Publicly Funded

No
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Top 1%
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Top 1%
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Top 1%

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Abstract

The studies implemented with Electroencephalogram (EEG) signals are progressing very rapidly and brain computer interfaces (BCI) and disease determinations are carried out at certain success rates thanks to new methods developed in this field. The effective use of these signals, especially in disease detection, is very important in terms of both time and cost. Currently, in general, EEG studies are used in addition to conventional methods as well as deep learning networks that have recently achieved great success. The most important reason for this is that in conventional methods, increasing classification accuracy is based on too many human efforts as EEG is being processed, obtaining the features is the most important step. This stage is based on both the time-consuming and the investigation of many feature methods. Therefore, there is a need for methods that do not require human effort in this area and can learn the features themselves. Based on that, two-dimensional (2D) frequency-time scalograms were obtained in this study by applying Continuous Wavelet Transform to EEG records containing five different classes. Convolutional Neural Network structure was used to learn the properties of these scalogram images and the classification performance of the structure was compared with the studies in the literature. In order to compare the performance of the proposed method, the data set of the University of Bonn was used. The data set consists of five EEG records containing healthy and epilepsy disease which are labeled as A, B, C, D, and E. In the study, A-E and B-E data sets were classified as 99.50%, A-D and B-D data sets were classified as 100% in binary classifications, A-D-E data sets were 99.00% in triple classification, A-C-D-E data sets were 90.50%, B-C-D-E data sets were 91.50% in quaternary classification, and A-B-C-D-E data sets were in the fifth class classification with an accuracy of 93.60%.

Description

Keywords

Epilepsy, EEG, scalogram, Convolutional Neural Network, Continuous Wavelet Transform, Epilepsy, scalogram, Convolutional neural network, Convolutional Neural Network, Continuous Wavelet Transform, Neurosciences. Biological psychiatry. Neuropsychiatry, EEG, Scalogram, Article, Continuous wavelet transform, RC321-571

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

Citation

Türk Ö, Özerdem MS. Epilepsy Detection by Using Scalogram Based Convolutional Neural Network from EEG Signals. Brain Sci. 2019 May 17;9(5):115. doi: 10.3390/brainsci9050115. PMID: 31109020; PMCID: PMC6562774.

WoS Q

Q3

Scopus Q

Q2
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OpenCitations Citation Count
149

Source

BRAIN SCIENCES

Volume

9

Issue

5

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End Page

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Citations

CrossRef : 171

Scopus : 186

PubMed : 38

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Mendeley Readers : 168

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