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Selective discrete Fourier transform algorithm for time-frequency analysis: method and application on simulated and cardiovascular signals

机译:时频分析的选择性离散傅里叶变换算法:在模拟和心血管信号上的方法和应用

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摘要

The Selective Discrete Fourier transform (DFT) Algorithm [SDA] method for the calculation and display of time-frequency distribution has been developed and validated. For each time and frequency, the algorithm selects the shortest required trace length and calculates the corresponding spectral component by means of DFT. This approach can be extended to any cardiovascular related signal and provides time-dependent power spectra which are intuitively easy to consider, due to their close relation to the classical spectral analysis approach. The optimal parameters of the SDA for cardiovascular-like signals were chosen. The SDA perform standard spectral analysis on stationary simulated signals as well as reliably detect abrupt changes in the frequency content of nonstationary signals. The SDA applied during a stimulated respiration experiment, accurately; detected the changes in the frequency location and amplitude of the respiratory peak in the heart rate (HR) spectrum. It also detected and quantified the expected increase in vagal tone during vagal stimuli. Furthermore, the HR time-dependent power spectrum displayed the increase in sympathetic activity and the vagal withdrawal on standing. Such transient changes in HR control would have been smeared out by standard heart rate variability (HRV), which requires consideration of long trace lengths. The SDA provides a reliable tool for the evaluation and quantification of the control exerted by the Central Nervous System, during clinical and experimental procedures resulting in nonstationary signals.
机译:已经开发并验证了用于时间-频率分布的计算和显示的选择性离散傅里叶变换(DFT)算法[SDA]方法。对于每个时间和频率,该算法都会选择最短的所需走线长度,并通过DFT计算相应的频谱分量。这种方法可以扩展到任何与心血管有关的信号,并提供随时间变化的功率谱,由于它们与经典的频谱分析方法密切相关,因此直观上易于考虑。为心血管样信号选择了SDA的最佳参数。 SDA对平稳的模拟信号执行标准频谱分析,并可靠地检测非平稳信号的频率成分的突然变化。在呼吸刺激实验中准确地应用了SDA;检测到心率(HR)频谱中呼吸峰的频率位置和幅度的变化。它还检测并量化了迷走神经刺激期间迷走神经张力的预期增加。此外,HR时间相关的功率谱显示出交感活动的增加和站立时迷走神经的撤退。标准心率变异性(HRV)可能会抹去这种HR控制的短暂变化,这需要考虑较长的走线长度。 SDA为临床和实验过程中产生不稳定信号提供了可靠的工具,用于评估和量化中枢神经系统施加的控制。

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