Fagard R H, Pardaens K, Staessen J A, Thijs L
Department of Molecular and Cardiovascular Research, Faculty of Medicine, University of Leuven, Belgium.
Acta Cardiol. 1998;53(4):211-8.
To compare the results from autoregressive modelling (ARM) and from fast Fourier transform (FFT), the most commonly used methods for the analysis of short-term heart rate variability in the frequency domain.
METHODS & RESULTS: RR interval and respiratory activity were recorded in the supine and standing positions under standardized laboratory conditions in a population-based sample of 614 subjects. The low-(LF) and high-frequency (HF) components of heart rate variability were identified by power spectral analysis, by use of FFT, with application of two sets of frequency ranges, and by ARM; LF and HF power were expressed in both normalized (%) and absolute units (ms2). The RR interval, its variance and the HF power decreased from the supine to the standing position (P < 0.001). The LF power increased on standing when expressed in normalized units, but decreased in absolute units, whereas the LF-to-HF ratio increased (P < 0.001). On the low side of the spectrum, FFT slightly overestimated the LF component obtained with ARM, when the predefined frequency range was 0.05-0.15 Hz (P < 0.001); the underestimation of LF in the frequency range 0.07-0.14 Hz was more pronounced, particularly in the erect position (P < 0.001). Both FFT methods overestimated (P < 0.001) the ARM HF component, more so for the 0.15-0.50 Hz range than for the 0.14-0.35 Hz range. Finally, we observed considerable within-subject differences between methods, which were estimated by calculation of the limits of agreement.
Different methods for spectral decomposition of short-term heart rate variability yield similar qualitative results, but the quantitative results differ between ARM and FFT, and within the FFT method according to the selected frequency range.
比较自回归建模(ARM)和快速傅里叶变换(FFT)这两种频域中分析短期心率变异性最常用方法的结果。
在标准化实验室条件下,对基于人群的614名受试者样本记录其仰卧位和站立位的RR间期及呼吸活动。通过功率谱分析,使用FFT并应用两组频率范围以及通过ARM来识别心率变异性的低频(LF)和高频(HF)成分;LF和HF功率以归一化(%)和绝对单位(ms²)表示。RR间期、其方差和HF功率从仰卧位到站立位降低(P<0.001)。以归一化单位表示时,站立时LF功率增加,但以绝对单位表示时降低,而LF与HF比值增加(P<0.001)。在频谱低端,当预定义频率范围为0.05 - 0.15Hz时,FFT略微高估了通过ARM获得的LF成分(P<0.001);在0.07 - 0.14Hz频率范围内LF的低估更明显,尤其是在直立位(P<0.001)。两种FFT方法都高估了(P<0.001)ARM的HF成分,对于0.15 - 0.50Hz范围比0.14 - 0.35Hz范围更明显。最后,我们观察到不同方法之间受试者内差异很大,通过计算一致性界限来估计。
短期心率变异性频谱分解的不同方法产生相似的定性结果,但ARM和FFT之间以及FFT方法内根据所选频率范围定量结果不同。