EEG-Based Demarcation of Yogic and Non-Yogic Sleep Patterns Using Power Spectral Analysis

B. Hiremath, N. Sriraam, B. Purnima, S. NithinN., Suresh Babu Venkatasamy, Megha Narayanan
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Abstract

Electroencephalogram (EEG) signals resulting from recordings of polysomnography play a significant role in determining the changes in physiology and behavior during sleep. This study aims at demarcating the sleep patterns of yogic and non-yogic subjects. Frequency domain features based on power spectral density methods were explored in this study. The EEG recordings were segmented into 1s and 0.5s. EEG patterns with four windowing scheme overlaps (0%, 50%, 60%, and 75%) to ensure stationarity of the signal in order to investigate the effect of the pre-processing stage. In order to recognize the yoga and non-yoga group through N3 sleep stage, non-linear KNN classifier was introduced and performance was evaluated in terms of sensitivity and specificity. The experimental results show that modified covariance PSD estimate is the best method in classifying the sleep stage N3 of yogic and non-yogic subjects with 95% confidence interval, sensitivity, specificity, and accuracy of 97.3%, 98%, and 97%, respectively.
基于脑电图的瑜伽和非瑜伽睡眠模式的功率谱分析
多导睡眠图记录的脑电图(EEG)信号在确定睡眠期间的生理和行为变化方面起着重要作用。这项研究旨在区分瑜伽和非瑜伽受试者的睡眠模式。本研究探讨了基于功率谱密度方法的频域特征。脑电记录分为1s和0.5s。四种加窗方案的脑电图模式重叠(0%、50%、60%和75%),以确保信号的平稳性,从而研究预处理阶段的效果。为了通过N3睡眠阶段识别瑜伽组和非瑜伽组,引入非线性KNN分类器,并从灵敏度和特异性两方面评价其性能。实验结果表明,修正协方差PSD估计是划分瑜伽和非瑜伽受试者睡眠阶段N3的最佳方法,置信区间为95%,灵敏度、特异性和准确性分别为97.3%、98%和97%。
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