Automatic diagnosis of epileptic seizures using entropy-based features and multimodel deep learning approaches.

Journal: Medical engineering & physics
PMID:

Abstract

Epilepsy is one of the most common brain diseases, characterised by repeated seizures that occur on a regular basis. During a seizure, a patient's muscles flex uncontrollably, causing a loss of mobility and balance, which can be harmful or even fatal. Developing an automatic approach for warning patients of oncoming seizures necessitates substantial research. Analyzing the electroencephalogram (EEG) output from the human brain's scalp region can help predict seizures. EEG data were analyzed to extract time domain features such as Hurst exponent (Hur), Tsallis entropy (TsEn), enhanced permutation entropy (impe), and amplitude-aware permutation entropy (AAPE). In order to automatically diagnose epileptic seizure in children from normal children, this study conducted two sessions. In the first session, the extracted features from the EEG dataset were classified using three machine learning (ML)-based models, including support vector machine (SVM), K nearest neighbor (KNN), or decision tree (DT), and in the second session, the dataset was classified using three deep learning (DL)-based recurrent neural network (RNN) classifiers in The EEG dataset was obtained from the Neurology Clinic of the Ibn Rushd Training Hospital. In this regard, extensive explanations and research from the time domain and entropy characteristics demonstrate that employing GRU, LSTM, and BiLSTM RNN deep learning classifiers on the All-time-entropy fusion feature improves the final classification results.

Authors

  • Noor Kamal Al-Qazzaz
  • Maher Alrahhal
    Department of Computer Science and Engineering, Jawaharlal Nehru Technological University Hyderabad, University College of Engineering, Science and Technology Hyderabad, Telangana, India. Electronic address: maherrahal92@gmail.com.
  • Sumai Hamad Jaafer
    Medical Laboratory Department, Erbil Medical Institute, Erbil Polytechnic University, Kirkuk Road, Hadi Chawshli Street, Kurdistan Region, Erbil, Iraq. Electronic address: sumaya.hamad@epu.edu.iq.
  • Sawal Hamid Bin Mohd Ali
  • Siti Anom Ahmad
    Department of Electrical and Electronics Engineering, Faculty of Engineering, Universiti Putra Malaysia, Serdang, Seri Kembangan, Selangor 43400, Malaysia.