Research article

NeuroWave-Net: Enhancing epileptic seizure detection from EEG brain signals via advanced convolutional and long short-term memory networks

  • Received: 03 January 2024 Revised: 25 March 2024 Accepted: 25 March 2024 Published: 15 April 2024
  • This study presented a new approach to seizure classification utilizing electroencephalogram (EEG) data. We introduced the NeuroWave-Net, an innovative hybrid model that seamlessly integrates convolutional neural networks (CNN) and long short-term memory (LSTM) architectures. Unlike conventional methods, our model capitalized on CNN's proficiency in feature extraction and LSTM's prowess in classifying seizure. The key strength of the NeuroWave-Net lies in its ability to combine these distinct architectures, synergizing their capabilities for enhanced accuracy in identifying seizure conditions within EEG data. Our proposed model exhibited outstanding performance, achieving a classification accuracy of 99.48%. This study contributed to the advancement of seizure classification models, providing a robust and streamlined approach for accurate categorization within EEG datasets. NeuroWave-Net stands as a testament to the potential of hybrid neural network architectures in neurological diagnostics.

    Citation: Md. Mehedi Hassan, Rezuana Haque, Sheikh Mohammed Shariful Islam, Hossam Meshref, Roobaea Alroobaea, Mehedi Masud, Anupam Kumar Bairagi. NeuroWave-Net: Enhancing epileptic seizure detection from EEG brain signals via advanced convolutional and long short-term memory networks[J]. AIMS Bioengineering, 2024, 11(1): 85-109. doi: 10.3934/bioeng.2024006

    Related Papers:

  • This study presented a new approach to seizure classification utilizing electroencephalogram (EEG) data. We introduced the NeuroWave-Net, an innovative hybrid model that seamlessly integrates convolutional neural networks (CNN) and long short-term memory (LSTM) architectures. Unlike conventional methods, our model capitalized on CNN's proficiency in feature extraction and LSTM's prowess in classifying seizure. The key strength of the NeuroWave-Net lies in its ability to combine these distinct architectures, synergizing their capabilities for enhanced accuracy in identifying seizure conditions within EEG data. Our proposed model exhibited outstanding performance, achieving a classification accuracy of 99.48%. This study contributed to the advancement of seizure classification models, providing a robust and streamlined approach for accurate categorization within EEG datasets. NeuroWave-Net stands as a testament to the potential of hybrid neural network architectures in neurological diagnostics.


    Abbreviations

    EEG

    Electroencephalogram

    CNN

    Convolutional neural network

    LSTM

    Long short-term memory

    RF

    Random forest

    SVM

    Support vector machine

    PSO

    Particle swarm optimization

    1D CNN

    1-Dimensional convolutional neural networks

    2D CNN

    2-Dimensional convolutional neural networks

    DCNN

    Deep neural network

    iEEG

    Intracranial electroencephalography

    C-LSTM

    Contextual long short-term memory

    BiLSTM

    Bidirectional long short-term memory

    ReLU

    Rectified linear unit

    Conv1D

    1D convolution layer

    加载中

    Acknowledgments



    The authors extend their appreciation to Taif University, Saudi Arabia, for supporting this work through project number (TU-DSPP-2024-04). Also we extend our sincere gratitude to the ICT Division, Ministry of Post, Telecommunication, and Information Technology, Government of Bangladesh for their support, enabling the research conducted under the ICT fellowship program.

    Conflict of interest



    The authors have no conflict of interest.

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