Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of Epilepsy

Epilepsy can well be stated as a disorder of the central nervous systems (CNS) that brought about recurring seizures owing to chronic abnormal blasts of electrical discharge on the brain. Knowing if an individual is having a seizure and diagnosing the seizure type or epilepsy syndrome could be hard....

Full description

Bibliographic Details
Main Authors: K. G. Parthiban, S. Vijayachitra, R. Dhanapal
Format: Article
Language:English
Published: Springer 2019-11-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/125921856/view
_version_ 1811335795075710976
author K. G. Parthiban
S. Vijayachitra
R. Dhanapal
author_facet K. G. Parthiban
S. Vijayachitra
R. Dhanapal
author_sort K. G. Parthiban
collection DOAJ
description Epilepsy can well be stated as a disorder of the central nervous systems (CNS) that brought about recurring seizures owing to chronic abnormal blasts of electrical discharge on the brain. Knowing if an individual is having a seizure and diagnosing the seizure type or epilepsy syndrome could be hard. Many methods were developed to recognize this disease. But the existing techniques for detection of epilepsy are not satisfied with accuracy, and cannot identify the diseases effectively. To trounce these drawbacks, this paper proposes an approach for the recognition of Epilepsy as of the electroencephalography (EEG) signals. This is implemented as follows. Primarily, the Kalman filter (KF) is utilized for pre-processing to eradicate the impulse noise present in the EEG signals. This filtered signal is then decomposed utilizing variable modes decomposition (VMD). Feature extraction (FE) is performed by computing 7 features. The dimensionality of this signal is then lessened using Modified-Principal Components Analysis (M-PCA). Finally, classification is conducted utilizing the artificial neural networks (ANN) that is optimized using the hybrid dragonfly algorithm (HDA). Disparate performance metrics such as sensitivity, accuracy, and false discovery rates (FDR) are ascertained and as well weighted against with the existent works.
first_indexed 2024-04-13T17:30:19Z
format Article
id doaj.art-22baafe936774397be1b033fdbc1d09d
institution Directory Open Access Journal
issn 1875-6883
language English
last_indexed 2024-04-13T17:30:19Z
publishDate 2019-11-01
publisher Springer
record_format Article
series International Journal of Computational Intelligence Systems
spelling doaj.art-22baafe936774397be1b033fdbc1d09d2022-12-22T02:37:36ZengSpringerInternational Journal of Computational Intelligence Systems1875-68832019-11-0112210.2991/ijcis.d.191022.001Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of EpilepsyK. G. ParthibanS. VijayachitraR. DhanapalEpilepsy can well be stated as a disorder of the central nervous systems (CNS) that brought about recurring seizures owing to chronic abnormal blasts of electrical discharge on the brain. Knowing if an individual is having a seizure and diagnosing the seizure type or epilepsy syndrome could be hard. Many methods were developed to recognize this disease. But the existing techniques for detection of epilepsy are not satisfied with accuracy, and cannot identify the diseases effectively. To trounce these drawbacks, this paper proposes an approach for the recognition of Epilepsy as of the electroencephalography (EEG) signals. This is implemented as follows. Primarily, the Kalman filter (KF) is utilized for pre-processing to eradicate the impulse noise present in the EEG signals. This filtered signal is then decomposed utilizing variable modes decomposition (VMD). Feature extraction (FE) is performed by computing 7 features. The dimensionality of this signal is then lessened using Modified-Principal Components Analysis (M-PCA). Finally, classification is conducted utilizing the artificial neural networks (ANN) that is optimized using the hybrid dragonfly algorithm (HDA). Disparate performance metrics such as sensitivity, accuracy, and false discovery rates (FDR) are ascertained and as well weighted against with the existent works.https://www.atlantis-press.com/article/125921856/viewElectroencephalographyKalman filterVariable mode decompositionModified principal component analysisArtificial neural networkHybrid dragonfly algorithm
spellingShingle K. G. Parthiban
S. Vijayachitra
R. Dhanapal
Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of Epilepsy
International Journal of Computational Intelligence Systems
Electroencephalography
Kalman filter
Variable mode decomposition
Modified principal component analysis
Artificial neural network
Hybrid dragonfly algorithm
title Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of Epilepsy
title_full Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of Epilepsy
title_fullStr Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of Epilepsy
title_full_unstemmed Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of Epilepsy
title_short Hybrid Dragonfly Optimization-Based Artificial Neural Network for the Recognition of Epilepsy
title_sort hybrid dragonfly optimization based artificial neural network for the recognition of epilepsy
topic Electroencephalography
Kalman filter
Variable mode decomposition
Modified principal component analysis
Artificial neural network
Hybrid dragonfly algorithm
url https://www.atlantis-press.com/article/125921856/view
work_keys_str_mv AT kgparthiban hybriddragonflyoptimizationbasedartificialneuralnetworkfortherecognitionofepilepsy
AT svijayachitra hybriddragonflyoptimizationbasedartificialneuralnetworkfortherecognitionofepilepsy
AT rdhanapal hybriddragonflyoptimizationbasedartificialneuralnetworkfortherecognitionofepilepsy