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Spectral Analysis of Heart Rate Variability: Time Window Matters

机译:心率变异性的频谱分析:时间窗口问题

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摘要

Spectral analysis of heart rate variability (HRV) is a valuable tool for the assessment of cardiovascular autonomic function. Fast Fourier transform and autoregressive based spectral analysis are two most commonly used approaches for HRV analysis, while new techniques such as trigonometric regressive spectral (TRS) and wavelet transform have been developed. Short-term (on ECG of several minutes) and long-term (typically on ECG of 1–24 h) HRV analyses have different advantages and disadvantages. This article reviews the characteristics of spectral HRV studies using different lengths of time windows. Short-term HRV analysis is a convenient method for the estimation of autonomic status, and can track dynamic changes of cardiac autonomic function within minutes. Long-term HRV analysis is a stable tool for assessing autonomic function, describe the autonomic function change over hours or even longer time spans, and can reliably predict prognosis. The choice of appropriate time window is essential for research of autonomic function using spectral HRV analysis.
机译:心率变异性(HRV)的频谱分析是评估心血管自主功能的宝贵工具。快速傅里叶变换和基于自回归的光谱分析是HRV分析的两种最常用的方法,同时已经开发了诸如三角回归光谱(TRS)和小波变换等新技术。短期(在几分钟的心电图上)和长期(通常在1-24小时的心电图上)HRV分析具有不同的优点和缺点。本文回顾了使用不同时间窗长度的频谱HRV研究的特征。短期HRV分析是一种评估自主神经状态的便捷方法,可以在几分钟内跟踪心脏自主神经功能的动态变化。长期HRV分析是评估自主功能的稳定工具,可描述自主功能在数小时甚至更长时间内的变化,并且可以可靠地预测预后。选择合适的时间窗口对于使用光谱HRV分析研究自主功能至关重要。

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