Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memory

Stroke often causes disability, so patients need rehabilitation for recovery. Therefore, it is necessary to measure its effectiveness. An Electroencephalogram (EEG) can capture the improvement of activity in the brain in stroke rehabilitation. Therefore, the focus is on the identification of several...

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Main Authors: Wanodya Sansiagi, Esmeralda Contessa Djamal, Daswara Djajasasmita, Arlisa Wulandari
Format: Article
Language:English
Published: Universitas Ahmad Dahlan 2021-07-01
Series:IJAIN (International Journal of Advances in Intelligent Informatics)
Subjects:
Online Access:http://ijain.org/index.php/IJAIN/article/view/512
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spelling doaj-6c710cea0a7b43989c62e29aacbf5f5a2021-08-08T17:13:59ZengUniversitas Ahmad DahlanIJAIN (International Journal of Advances in Intelligent Informatics)2442-65712548-31612021-07-017213715010.26555/ijain.v7i2.512176Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memoryWanodya Sansiagi0Esmeralda Contessa Djamal1Daswara Djajasasmita2Arlisa Wulandari3Universitas Jenderal Achmad YaniUniversitas Jenderal Achmad YaniUniversitas Jenderal Achmad YaniUniversitas Jenderal Achmad YaniStroke often causes disability, so patients need rehabilitation for recovery. Therefore, it is necessary to measure its effectiveness. An Electroencephalogram (EEG) can capture the improvement of activity in the brain in stroke rehabilitation. Therefore, the focus is on the identification of several post-rehabilitation conditions. This paper proposed identifying post-stroke EEG signals using Recurrent Neural Networks (RNN) to process sequential data. Memory control in the use of RNN adopted Long Short-Term Memory. Identification was provided out on two classes based on patient condition, particularly "No Stroke" and "Stroke". EEG signals are filtered using Wavelet to get the waves that characterize a stroke. The four waves and the average amplitude are features of the identification model. The experiment also varied the weight correction, i.e., Adaptive Moment Optimization (Adam) and Stochastic Gradient Descent (SGD). This research showed the highest accuracy using Wavelet without amplitude features of 94.80% for new data with Adam optimization model. Meanwhile, the feature configuration tested effect shows that the use of the amplitude feature slightly reduces the accuracy to 91.38%. The results also show that the effect of the optimization model, namely Adam has a higher accuracy of 94.8% compared to SGD, only 74.14%. The number of hidden layers showed that three hidden layers could slightly increase the accuracy from 93.10% to 94.8%. Therefore, wavelets as extraction are more significant than other configurations, which slightly differ in performance. Adam's model achieved convergence in earlier times, but the speed of each iteration is slower than the SGD model. Experiments also showed that the optimization model, number of epochs, configuration, and duration of the EEG signal provide the best accuracy settings.http://ijain.org/index.php/IJAIN/article/view/512post-strokeeeg signalwaveletrecurrent neural networkslong short-term memory
collection DOAJ
language English
format Article
sources DOAJ
author Wanodya Sansiagi
Esmeralda Contessa Djamal
Daswara Djajasasmita
Arlisa Wulandari
spellingShingle Wanodya Sansiagi
Esmeralda Contessa Djamal
Daswara Djajasasmita
Arlisa Wulandari
Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memory
IJAIN (International Journal of Advances in Intelligent Informatics)
post-stroke
eeg signal
wavelet
recurrent neural networks
long short-term memory
author_facet Wanodya Sansiagi
Esmeralda Contessa Djamal
Daswara Djajasasmita
Arlisa Wulandari
author_sort Wanodya Sansiagi
title Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memory
title_short Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memory
title_full Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memory
title_fullStr Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memory
title_full_unstemmed Post-Stroke identification of EEG signals using recurrent neural networks and long short-term memory
title_sort post-stroke identification of eeg signals using recurrent neural networks and long short-term memory
publisher Universitas Ahmad Dahlan
series IJAIN (International Journal of Advances in Intelligent Informatics)
issn 2442-6571
2548-3161
publishDate 2021-07-01
description Stroke often causes disability, so patients need rehabilitation for recovery. Therefore, it is necessary to measure its effectiveness. An Electroencephalogram (EEG) can capture the improvement of activity in the brain in stroke rehabilitation. Therefore, the focus is on the identification of several post-rehabilitation conditions. This paper proposed identifying post-stroke EEG signals using Recurrent Neural Networks (RNN) to process sequential data. Memory control in the use of RNN adopted Long Short-Term Memory. Identification was provided out on two classes based on patient condition, particularly "No Stroke" and "Stroke". EEG signals are filtered using Wavelet to get the waves that characterize a stroke. The four waves and the average amplitude are features of the identification model. The experiment also varied the weight correction, i.e., Adaptive Moment Optimization (Adam) and Stochastic Gradient Descent (SGD). This research showed the highest accuracy using Wavelet without amplitude features of 94.80% for new data with Adam optimization model. Meanwhile, the feature configuration tested effect shows that the use of the amplitude feature slightly reduces the accuracy to 91.38%. The results also show that the effect of the optimization model, namely Adam has a higher accuracy of 94.8% compared to SGD, only 74.14%. The number of hidden layers showed that three hidden layers could slightly increase the accuracy from 93.10% to 94.8%. Therefore, wavelets as extraction are more significant than other configurations, which slightly differ in performance. Adam's model achieved convergence in earlier times, but the speed of each iteration is slower than the SGD model. Experiments also showed that the optimization model, number of epochs, configuration, and duration of the EEG signal provide the best accuracy settings.
topic post-stroke
eeg signal
wavelet
recurrent neural networks
long short-term memory
url http://ijain.org/index.php/IJAIN/article/view/512
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