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Heart rate asymmetry by Poincaré plots of RR intervals

  • Przemyslaw Guzik , Jaroslaw Piskorski , Tomasz Krauze , Andrzej Wykretowicz and Henryk Wysocki
Published/Copyright: October 25, 2006
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Biomedical Engineering / Biomedizinische Technik
From the journal Volume 51 Issue 4

Abstract

The Poincaré plot is a widely used method for visualizing and calculating heart rate variability and for investigating the oscillatory nature of heart action. We show that the Poincaré plot produced using physiological data for RR intervals is asymmetric. This suggests that the processes of heart rate acceleration (shortening of consecutive RR intervals) and deceleration (prolongation of successive RR intervals) might be asymmetric. To investigate this phenomenon, we define descriptors quantifying the heart rate asymmetry and present the results of a study involving 5-min ECG recordings of 50 healthy subjects in which, despite of the shortness of the recordings, the asymmetry is clearly visible.


Corresponding author: Przemyslaw Guzik, Department of Cardiology – Intensive Therapy, University School of Medicine in Poznan, 49 Przybyszewskiego Str., 60-355 Poznan, Poland Phone: +48-61-8691391 Fax: +48-61-8691689

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Published Online: 2006-10-25
Published in Print: 2006-10-01

©2006 by Walter de Gruyter Berlin New York

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  3. Circadian and ultradian rhythms in heart rate variability
  4. Influence of age, body mass index, and blood pressure on the carotid intima-media thickness in normotensive and hypertensive patients
  5. Multivariate and multidimensional analysis of cardiovascular oscillations in patients with heart failure
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  7. Role of the autonomic nervous system in generating non-linear dynamics in short-term heart period variability
  8. Non-linear dynamic analysis of the cardiac rhythm during transient myocardial ischemia
  9. Complex autonomic dysfunction in cardiovascular, intensive care, and schizophrenic patients assessed by autonomic information flow
  10. Low HRV entropy is strongly associated with myocardial infarction
  11. Revisiting the potential of time-domain indexes in short-term HRV analysis
  12. Fractal dimension in health and heart failure
  13. Spatiotemporal correlation analyses: a new procedure for standardisation of DC magnetocardiograms
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  15. The missing link between cardiovascular rhythm control and myocardial cell modeling
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  17. Modelling long-term heart rate variability: an ARFIMA approach
  18. Clinical correlates of non-linear indices of heart rate variability in chronic heart failure patients
  19. Recurrence analysis of nocturnal heart rate in sleep apnea patients
  20. Normalized correlation dimension for heart rate variability analysis
  21. Complexity of heart rate fluctuations in near-term sheep and human fetuses during sleep
  22. Differences between heart rate and blood pressure variability in schizophrenia
  23. Influence of sympathetic vascular regulation on heart-rate scaling structure: spinal cord lesion as a model of progressively impaired autonomic control
  24. Increase in regularity of fetal heart rate variability with age
  25. Fetal heart rate variability in growth restricted fetuses
  26. Frequency modulation between low- and high-frequency components of the heart rate variability spectrum
  27. Mixed predictability and cross-validation to assess non-linear Granger causality in short cardiovascular variability series
  28. Assessment of spatial organization in the atria during paroxysmal atrial fibrillation and adrenergic stimulation
  29. Attenuated autonomic function in multiple organ dysfunction syndrome across three age groups
  30. Central vasopressin V1a and V1b receptors modulate the cardiovascular response to air-jet stress in conscious rats
  31. Heart rate asymmetry by Poincaré plots of RR intervals
  32. Analyses of cardiovascular oscillations for enhanced diagnosis and risk stratification in cardiac diseases and disorders
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