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Migraine disease diagnosis from EEG signals using Non-linear Feature Extraction Technique

机译:使用非线性特征提取技术从脑电信号诊断偏头痛

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Migraine is a prolonged neurovascular illness, which causes outbreaks of severe pain and autonomic nervous system disturbance. The clinical analysis of Electroencephalogram signals helps in management and prognosis of migraine disease. Recent advancement in biomedical signal processing field led to generation of various techniques for multi-resolution analysis of Electroencephalogram signals and diagnosis of diseased condition. In present work, a nonlinear parametric approach of Electroencephalogram feature extraction is proposed and analysed for automated diagnosis of migraine disease. The Electroencephalogram database studied in present study was prepared in SMS Hospital, Jaipur, India. The database contains Electroencephalogram activity record of 26 healthy and migraineurs subjects. The Permutation Entropy, Higuchi's Fractal Dimension and Katz Fractal Diemension based features are extracted from processed Electroencephalogram signals. The extracted Electroencephalogram activity is classified using SVM, ANN and RF classifiers. It is illustrated from the classification results that the classification accuracy of 88% is achieved in migraine disease diagnosis task in present work.
机译:偏头痛是一种长期的神经血管疾病,会引起剧烈疼痛和自主神经系统疾病的爆发。脑电图信号的临床分析有助于偏头痛疾病的治疗和预后。生物医学信号处理领域的最新进展导致产生了多种技术,用于脑电图信号的多分辨率分析和疾病状况的诊断。在目前的工作中,提出了一种脑电图特征提取的非线性参数方法,并对其进行了分析,以用于偏头痛疾病的自动诊断。本研究中研究的脑电图数据库是在印度斋浦尔的SMS医院准备的。该数据库包含26位健康和偏头痛患者的脑电图活动记录。从处理后的脑电图信号中提取基于置换熵,Higuchi分形维数和Katz分形维数的特征。使用SVM,ANN和RF分类器对提取的脑电图活动进行分类。从分类结果可以看出,在目前的工作中,偏头痛的诊断任务可以达到88%的分类准确率。

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