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首页> 外文期刊>Methods of information in medicine >Long-term correlations and complexity analysis of the heart rate variability signal during sleep. Comparing normal and pathologic subjects.
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Long-term correlations and complexity analysis of the heart rate variability signal during sleep. Comparing normal and pathologic subjects.

机译:睡眠期间心率变异性信号的长期相关性和复杂性分析。比较正常受试者和病理受试者。

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摘要

BACKGROUND: Physiological sleep is characterized by different cyclic phenomena, such as REM, nonREM phases and the Cyclic Alternating Pattern (CAP), that are associated to characteristic patterns in the heart rate variability (HRV) signal. Disruption of such rhythms due to sleep disorders, for example insomnia or apnea syndrome, alters the normal sleep patterns and the dynamics of the HRV recorded during the night. OBJECTIVES: In this paper we analyze long-term and complexity dynamics of the HRV signal recorded during sleep in different groups of subjects. The aim is to investigate whether the calculated indices are able to capture the different characteristics and to discriminate among the groups of subjects, classified according sleep disorders or cardiovascular pathologies. METHODS: Parameters, able to detect the fractal-like behavior of a signal and to measure the regularity and complexity of a time series, are calculated on the HRV signal acquired during the night. Different groups of subjects were analyzed: healthy subjects with high sleep efficiency, healthy subjects with low sleep efficiency, subjects affected by insomnia, heart failure patients, subjects affected by obstructive sleep apnea. RESULTS: The evaluated parameters show significant differences in the groups of subjects considered in this work. In particular heart failure patients have significant lower entropy and complexity values, whereas apnea patients show an increased irregularity when compared with normal subjects with high sleep efficiency. CONCLUSIONS: This work proposes indices that can be used as global descriptors of the dynamics of the whole night and can discriminate among different groups of subjects.
机译:背景:生理睡眠的特征在于不同的循环现象,例如REM,非REM阶段和循环交替模式(CAP),这些现象与心率变异性(HRV)信号的特征模式相关。由于睡眠障碍(例如失眠或呼吸暂停综合症)导致的此类节律紊乱,会改变正常的睡眠模式和夜间记录的HRV动态。目的:在本文中,我们分析了不同组受试者睡眠期间记录的HRV信号的长期和复杂性动态。目的是研究所计算的指标是否能够捕获不同的特征并区分根据睡眠障碍或心血管疾病分类的受试者组。方法:在夜间获取的HRV信号上计算出能够检测信号的分形行为并测量时间序列的规律性和复杂性的参数。分析了不同组的受试者:睡眠效率高的健康受试者,睡眠效率低的健康受试者,失眠症患者,心力衰竭患者,阻塞性睡眠呼吸暂停症患者。结果:评估的参数显示在这项工作中考虑的对象组中的显着差异。特别是心力衰竭患者的熵值和复杂度值明显较低,而呼吸暂停患者与睡眠效率高的正常受试者相比则显示出增加的不规则性。结论:这项工作提出了可以用作整个夜晚动态的全局描述符的指标,并且可以区分不同组的主题。

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