Schizophrenia diagnosis based on diverse epoch size resting-state EEG using machine learning

被引:0
作者
Alazzawı, Athar [1 ]
Aljumaili, Saif [1 ]
Duru, Adil Deniz [2 ]
Uçan, Osman Nuri [1 ]
Bayat, Oğuz [1 ]
Coelho, Paulo Jorge [3 ,4 ]
Pires, Ivan Miguel [5 ]
机构
[1] Electrical and Computer Engineering, School of Engineering and Natural Sciences, Altinbaş University, Istanbul
[2] Neuroscience and Psychology Research in Sports Lab, Faculty of Sport Science, Marmara University Istanbul, Istanbul
[3] Polytechnic Institute of Leiria, Leiria
[4] Institute for Systems Engineering and Computers at Coimbra (INESC Coimbra), Coimbra
[5] Instituto de Telecomunicações, Escola Superior de Tecnologia e Gestão de Águeda, Universidade de Aveiro, Águeda
关键词
Electroencephalogram; KNN; QDA; Schizophrenia; SVM;
D O I
10.7717/PEERJ-CS.2170
中图分类号
学科分类号
摘要
Schizophrenia is a severe mental disorder that impairs a person’s mental, social, and emotional faculties gradually. Detection in the early stages with an accurate diagnosis is crucial to remedying the patients. This study proposed a new method to classify schizophrenia disease in the rest state based on neurologic signals achieved from the brain by electroencephalography (EEG). The datasets used consisted of 28 subjects, 14 for each group, which are schizophrenia and healthy control. The data was collected from the scalps with 19 EEG channels using a 250 Hz frequency. Due to the brain signal variation, we have decomposed the EEG signals into five sub-bands using a band-pass filter, ensuring the best signal clarity and eliminating artifacts. This work was performed with several scenarios: First, traditional techniques were applied. Secondly, augmented data (additive white Gaussian noise and stretched signals) were utilized. Additionally, we assessed Minimum Redundancy Maximum Relevance (MRMR) as the features reduction method. All these data scenarios are applied with three different window sizes (epochs): 1, 2, and 5 s, utilizing six algorithms to extract features: Fast Fourier Transform (FFT), Approximate Entropy (ApEn), Log Energy entropy (LogEn), Shannon Entropy (ShnEn), and kurtosis. The L2-normalization method was applied to the derived features, positively affecting the results. In terms of classification, we applied four algorithms: K-nearest neighbor (KNN), support vector machine (SVM), quadratic discriminant analysis (QDA), and ensemble classifier (EC). From all the scenarios, our evaluation showed that SVM had remarkable results in all evaluation metrics with LogEn features utilizing a 1-s window size, impacting the diagnosis of Schizophrenia disease. This indicates that an accurate diagnosis of schizophrenia can be achieved through the right features and classification model selection. Finally, we contrasted our results to recently published works using the same and a different dataset, where our method showed a notable improvement. Copyright 2024 Alazzawı et al.
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