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Classification of healthy and insomnia subjects based on wake-to-sleep transition

机译:基于从睡眠到睡眠过渡的健康和失眠受试者分类

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This study is carried out with the aim of classifying healthy and insomniac subjects based on their wake-to-sleep transition (sleep onset process) features. The features were extracted from those signals using non-parametric and parametric methods in frequency domain. Wavelet transform was used to calculate non-parametric features: relative power of EEG sub bands (delta, theta, alpha, beta and gamma). After that Sleep onset reference epochs were determined using first and last intersection of delta and alpha respectively. The statistical analysis was applied on the features obtained. The data was divided into two groups: training data and testing data. Classification tree model was executed on training data to predict the healthy and insomniac groups in test data. K-fold cross-validation method was used for this estimation.
机译:进行这项研究的目的是根据健康和失眠者的苏醒至睡眠过渡(睡眠发作过程)特征对其进行分类。使用频域中的非参数和参数方法从这些信号中提取特征。小波变换用于计算非参数特征:EEG子带的相对功率(δ,θ,α,β和γ)。之后,分别使用delta和alpha的第一个和最后一个交点确定睡眠开始的参考时期。对获得的特征进行统计分析。数据分为两组:训练数据和测试数据。对训练数据执行分类树模型,以预测测试数据中的健康和失眠人群。 K折交叉验证方法用于此估计。

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