Long-term spectral analysis of heart rate variability--an algorithm based on segmental frequency distributions of beat-to-beat intervals.

Reduced heart rate variability has been reported as a predictor of long-term mortality in recent myocardial infarction patients. However, it has not been systematically investigated whether the reduction in heart rate variability in those post myocardial infarction patients who later suffer death or severe arrhythmias is caused by a reduction of short-term variability of heart rate (such as respiratory arrhythmia) or whether the differences in long term variability (such as diurnal rhythm) are involved. In order to perform such an evaluation, a new algorithm has been developed which permits different wavelength components (including the long-term components due to diurnal rhythm) of heart rate variability to be approximated. In general, the method uses segmental frequency distributions of durations of intervals between successive normal cardiac beats. To assess the spectral components of heart rate variability, a scale of wavelength limits is used and for each limit of this scale, the algorithm excludes the rate changes of wavelength longer than the given bound. The method was applied to the analysis of electrocardiograms recorded in 14 post myocardial infarction patients who later suffered death or ventricular tachycardia, and in 14 other randomly selected patients with an uncomplicated course following acute myocardial infarction. The rate variability spectra obtained for both groups of patients were compared statistically and the results showed that the groups of positive and negative cases were most significantly distinguished when including both short- and long-term components of heart rate variability. Separate evaluation of different wavelength components showed that the very long-term components of heart rate variability were more powerful in distinguishing between positive and negative cases than the short term components.

[1]  M. Turiel,et al.  Power Spectral Analysis of Heart Rate and Arterial Pressure Variabilities as a Marker of Sympatho‐Vagal Interaction in Man and Conscious Dog , 1986, Circulation research.

[2]  R. Wicks,et al.  Spectral analysis of heart rate indicates reduced baroreceptor-related heart rate variability in elderly persons. , 1988, Journal of gerontology.

[3]  J. Zbilut,et al.  Decreased heart rate variability in significant cardiac events. , 1988, Critical care medicine.

[4]  M. Niemelä,et al.  Impaired vagal heart rate control in coronary artery disease. , 1987, British heart journal.

[5]  S Cerutti,et al.  Heart rate variability as an index of sympathovagal interaction after acute myocardial infarction. , 1987, The American journal of cardiology.

[6]  J. Parer,et al.  Validity of mathematical methods of quantitating fetal heart rate variability. , 1985, American journal of obstetrics and gynecology.

[7]  R J Cohen,et al.  Analysis of long term heart rate variability: methods, 1/f scaling and implications. , 1988, Computers in cardiology.

[8]  S Cerutti,et al.  Power spectral density of heart rate variability as an index of sympatho-vagal interaction in normal and hypertensive subjects. , 1984, Journal of hypertension. Supplement : official journal of the International Society of Hypertension.

[9]  G. Parati,et al.  Role of heart rate variability in the production of blood pressure variability in man. , 1987, Journal of hypertension.

[10]  A. Malliani,et al.  Heart rate variability signal processing: a quantitative approach as an aid to diagnosis in cardiovascular pathologies. , 1987, International journal of bio-medical computing.

[11]  F. Harris On the use of windows for harmonic analysis with the discrete Fourier transform , 1978, Proceedings of the IEEE.

[12]  G Pfurtscheller,et al.  Quantification of autonomic activity in the brainstem in normal, comatose and brain dead subjects using heart rate variability. , 1987, Functional neurology.

[13]  J. Miller,et al.  Decreased heart rate variability and its association with increased mortality after acute myocardial infarction. , 1987, The American journal of cardiology.

[14]  Martin Bland,et al.  An Introduction to Medical Statistics , 1987 .

[15]  D. Ewing,et al.  New method for assessing cardiac parasympathetic activity using 24 hour electrocardiograms. , 1984, British heart journal.

[16]  Glenn A. Myers,et al.  Power Spectral Analysis of Heart Rate Varability in Sudden Cardiac Death: Comparison to Other Methods , 1986, IEEE Transactions on Biomedical Engineering.

[17]  S.M. Kay,et al.  Spectrum analysis—A modern perspective , 1981, Proceedings of the IEEE.

[18]  J. Fleiss,et al.  Components of heart rate variability measured during healing of acute myocardial infarction. , 1988, The American journal of cardiology.

[19]  R. Cohen,et al.  An Efficient Algorithm for Spectral Analysis of Heart Rate Variability , 1986, IEEE Transactions on Biomedical Engineering.