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HEART RATE VARIABILITY (HRV) SIGNAL PROCESSING BY USING WAVELET BASED MULTIFRACTAL ANALYSIS

机译:基于小波的多分形分析的心率变异性(HRV)信号处理

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摘要

Fractal geometry and wavelets are a new and promising approach to analyze and characterize non-stationary signals such as ECG, EEG and stock price etc. Heart Rate Variability Signals, derived from an ECG signal, arc strongly related to the activity of the autonomous nervous system(ANS). HRV is usually investigated as RR variability since the R wave is far easier to detect due to its peaked shape. The classical methods based on autocorrelation, thresholds or derivatives, time domain methods and frequency domain methods give a coarse quantification of the variability, without distinguishing between short-term and long-term fluctuations. In this paper, we propose a new wavelet based method to analyze Heart Rate Variability (HRV) signals. The fractal dimension of the RR series can be calculated by using wavelets, time being here irrelevant. Another measure, Multifractal Spectrum is computed with the help of a scaling exponent. Using this strategy, we found that the peak of the multifractal spectrum shifted to higher dimensions and demonstrated increased complexity and an increasing amount of "noise" for ANS regulations of HRV signals during the tilt interval.
机译:分形几何和小波是一种新的有前途的方法,用于分析和表征非平稳信号,例如心电图,脑电图和股价等。源自心电图信号的心率变异性信号与自主神经系统的活动密切相关(ANS)。通常将HRV作为RR变异性进行研究,因为R波由于其峰形而更易于检测。基于自相关,阈值或导数,时域方法和频域方法的经典方法可以对可变性进行粗略的量化,而无需区分短期和长期波动。在本文中,我们提出了一种基于小波的新方法来分析心率变异性(HRV)信号。 RR系列的分形维数可以通过使用小波来计算,时间在这里无关紧要。另一种测量方法是在定标指数的帮助下计算多重分形谱。使用这种策略,我们发现,在倾斜间隔期间,HRV信号的ANS规定,多重分形谱的峰移至更高的维度,并证明了复杂性的增加和“噪声”的增加。

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