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On the Use of Wavelet Domain and Machine Learning for the Analysis of Epileptic Seizure Detection from EEG Signals

K. KavithaDepartment of Communication Engineering, School of Electronics Engineering, Vellore Institute of Technology, Vellore, Tamil Nadu, IndiaA. SharmilaDepartment of Control and Automation, School of Electrical Engineering, Vellore Institute of Technology, Vellore, Tamil Nadu, IndiaAgbotiname Lucky ImoizeDepartment of Electrical Engineering and Information Technology, Institute of Digital Communication Ruhr University, 44801 Bochum, GermanyStephen OjoK. Senthamil SelvanPrince Shri Venkateshwara Padmavathy Engineering College, Chennai, Tamil Nadu, IndiaTariq Ahamed AhangerCollege of Computer Engineering and Sciences, Prince Sattam Bin Abdulaziz University, Al-Kharj, Saudi ArabiaMusah AlhassanElectrical Engineering Department, School of Engineering, University of Development Studies, Nyankpala Campus, Nyankpala, Ghana
2022en
ABI

Аннотация

Epileptic patients suffer from an epileptic brain seizure caused by the temporary and unpredicted electrical interruption. Conventionally, the electroencephalogram (EEG) signals are manually studied by medical practitioners as it records the electrical activities from the brain. This technique consumes a lot of time, and the outputs are unreliable. In a bid to address this problem, a new structure for detecting an epileptic seizure is proposed in this study. The EEG signals obtained from the University of Bonn, Germany, and real-time medical records from the Senthil Multispecialty Hospital, India, were used. These signals were disintegrated into six frequency subbands that employed discrete wavelet transform (DWT) and extracted twelve statistical functions. In particular, seven best features were identified and further fed into k-Nearest Neighbor (kNN), naïve Bayes, Support Vector Machine (SVM), and Decision Tree classifiers for two-type and three-type classifications. Six statistical parameters were employed to measure the performance of these classifications. It has been found that different combinations of features and classifiers produce different results. Overall, the study is a first attempt to find the best combination feature set and classifier for 16 different 2-class and 3-class classification challenges of the Bonn and Senthil real-time clinical dataset.

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