基于小波变换的睡眠呼吸暂停检测与分类

Beena G Pillai, Madhurya J A, V. J. Babu, A. S. Kumar Reddy, A. Siddiqua
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引用次数: 0

摘要

人的一生有三分之一是在睡眠中度过的,这种生理现象有几个目的,比如恢复和维持正常的大脑代谢,让心血管系统充电,恢复身体葡萄糖供应的代谢平衡。睡眠与身体恢复、激素调节和免疫系统维护密切相关。在睡眠期间,身体的代谢率从分解代谢(组织的分解)转变为合成代谢(组织的重建)。这种精神状态不是一种持续的睡眠,而是一种具有周期性时间进展的动态内部结构。人们通常认为睡眠是一种不活跃的状态,但现代研究表明,我们睡觉时大脑实际上非常忙碌。一种基于多变量小波变换的特征选择方法已经被使用,因为不同的作者在早期关于睡眠(SL)分期的工作中主张从时域、频域和非线性特征中使用不同的有用性。这提供了一个最佳的21个特征集合,导致比以前的方法更好的睡眠阶段分类性能。将时域信号变换到时频域后,通过计算小波相干系数来确定瞬时呼吸速率,并在相应的频率分量处检测单个信号的瞬时功率、共功率和相位差。实验证明,本文提出的方法在事件检测和分类方面都比以前的方法有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Wavelet Transform Algorithm based Detection and Classification of Sleep Apnea for Monitoring of Health
One-third of a person's life is spent sleeping, and this physiological phenomenon serves several purposes, such as restoring and maintaining normal brain metabolism, allowing the cardiovascular system to recharge, and restoring metabolic balance to the body's glucose supply. Sleep has intimate ties to physical restoration, hormone regulation, and immune system maintenance. During sleep, the body's metabolic rates shift from catabolism (the breakdown of tissues) to anabolism (the rebuilding of tissues). This state of mind is not a constant slumber but rather a dynamic internal structure with a periodic temporal progression. It was often believed that sleep was a non-active state, but modern research has shown that our brains are actually quite busy while we sleep. A multivariate Wavelet transform-based feature selection method has been used since different authors have advocated differing usefulness of different features from the time domain, the frequency domain, and nonlinear features in earlier work on sleep (SL) staging. This provided an optimal collection of 21 features that led to significantly better sleep stage classification performance than previous approaches. Once the signals in the time domain have been transformed into the time-frequency domain, the wavelet coherence coefficients can be calculated to determine the instantaneous respiration rate, and the instantaneous power of the individual signals, the common power, and the phase difference can be examined at the corresponding frequency component. The suggested method improves upon earlier approaches in terms of both event detection and categorization, as evidenced by the experiments.
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