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Migraine detection from EEG signals using tunable Q?factor wavelet transform and ensemble learning techniques

机译:偏头痛从脑电图检测信号使用可调问吗?技术

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摘要

Migraine is one of the major neurovascular diseases that recur, can persist for a long time, cripple or weaken the brain. This study uses electroencephalogram (EEG) signals for the diagnosis of migraine, and a computer-aided diagnosis system is presented to support expert opinion. A tunable Q-factor wavelet transform (TQWT) based method is proposed for the analysis of the oscillatory structure of EEG signals. With TQWT, EEG signals are decomposed into sub bands. Then, the features are statistically calculated from these bands. The success of the obtained features in distinguishing between migraine patients and healthy control subjects was performed using the Kruskal Wallis test. Feature values obtained from each sub band were classified using well-known ensemble learning techniques and their classification performances were tested. Among the evaluated classifiers, the highest classification performance was achieved as 89.6% by using the Rotation Forest algorithm with the features obtained with Sub band 2. These results reveal the potential of the study as a tool that will support expert opinion in the diagnosis of migraine.
机译:偏头痛是一种重要的神经血管疾病复发,可以持续很长时间,削弱或削弱大脑。脑电图(EEG)信号的偏头痛的诊断,计算机辅助支持专家诊断系统提出了的意见。(基于TQWT)提出了分析方法EEG信号的振荡结构。TQWT,脑电图信号被分解成子带。然后,统计计算的特性从这些乐队。功能区分偏头痛患者和健康对照组使用Kruskal沃利斯测试执行。从每个子带获得的值使用知名乐团学习分类技术和分类性能进行了测试。最高的分类性能89.6%通过使用旋转森林算法与获得的特性子带2。结果揭示了研究的潜力工具,它将支持的专家意见偏头痛的诊断。

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