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Detrended Fluctuation Analysis: A Suitable Long-term Measure of HRV Signals in Children with Sleep Disordered Breathing

机译:受损的波动分析:睡眠无序呼吸患儿HRV信号的合适长期测量

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On the body surface the electric field generated by the cardiac muscles consists of electric potential maxima and minima that increase and decrease during each cardiac cycle. The recording of these electric potentials as a function of time is called electrocardiography, and the resulting signal is called the electrocardiogram (ECG). The ECG signal is used extensively as a low cost diagnostic tool to provide information concerning the heart's state of health. Reliable and accurate detection of the QRS complex and R wave peak in ECG signals is essential in computer-based ECG analysis. In this paper we evaluate the significance of Detrended Fluctuation Analysis (DFA) for studying heart rate variability in children with sleep disordered breathing. An Enhanced Hilbert Transform (EHT) algorithm was used to derive the Heart Rate Variability (HRV) signal. We compare the DFA values with Approximate Entropy and Poincare Plots of HRV signals as these are very useful in characterization and visualization of HRV data. Our data demon-strated differences in DFA parameters between periods of normal and abnormal breathing and also between sleep stages. These results suggest that DFA is suitable for the long-term analysis of non-stationary time series such as HRV signals and may also be applied in the detection of sleep disordered breathing.
机译:在体表上,心肌产生的电场由电势最大值和最小值组成,在每个心动周期期间增加和减少。作为时间函数的这些电位的记录称为心电图,并且所得到的信号称为心电图(ECG)。 ECG信号广泛使用,作为低成本诊断工具,以提供有关心脏健康状况的信息。在基于计算机的ECG分析中,ECG信号中的QRS复合物和R波峰的可靠性和精确检测是必不可少的。本文中,我们评估了对睡眠无序呼吸患儿的心率变异性进行了减去波动分析(DFA)的重要性。增强的Hilbert变换(EHT)算法用于导出心率变异性(HRV)信号。我们将DFA值与HRV信​​号的近似熵和POINCARE图进行比较,因为它们在HRV数据的表征和可视化方面非常有用。我们的数据在正常和异常呼吸时期之间的DFA参数中的数据差异,也是在睡眠阶段之间。这些结果表明,DFA适用于非静止时间序列如HRV信号的长期分析,也可以应用于睡眠无序呼吸的检测。

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