RSS-Feed abonnieren
DOI: 10.1055/s-0038-1634981
Non-Linear Dynamics of Cardiovascular Variability Signals
Publikationsverlauf
Publikationsdatum:
08. Februar 2018 (online)

Abstract:
Long-term regulation of beat-to-beat variability involves several different kinds of controls. A linear approach performed by parametric models enhances the short-term regulation of the autonomic nervous system. Some non-linear long-term regulation can be assessed by the chaotic deterministic approach applied to the beat-to-beat variability of the discrete RR-interval series, extracted from the ECG. For chaotic deterministic systems, trajectories of the state vector describe a strange attractor characterized by a fractal of dimension D. Signals are supposed to be generated by a deterministic and finite dimensional but non-linear dynamic system with trajectories in a multi-dimensional space-state. We estimated the fractal dimension through the Grassberger and Procaccia algorithm and Self-Similarity approaches of the 24-h heart-rate variability (HRV) signal in different physiological and pathological conditions such as severe heart failure, or after heart transplantation. State-space representations through Return Maps are also obtained. Differences between physiological and pathological cases have been assessed and generally a decrease in the system complexity is correlated to pathological conditions.
-
REFERENCES
- 1 Akselrod S, Gordon D, Ubel FA, Shannon DC, Cohen RJ. Power spectrum analysis of heart rate fluctuations: a quantitative probe of beat-to-beat cardiovascular control. Science 1981; 213: 20.
- 2 Pagani M, Lombardi F, Guzzetti S, Rimoldi O, Furlan R, Pizzinelli P. et al. Power spectral analysis of a beat-to-beat heart rate and blood pressure variability as a possible marker of sympatho vagal interaction in man and conscious dog. Circ Res 1986; 59: 178-93.
- 3 Guevara MR, Glass L, Shrier A. Phase locking, period doubling bifurcations, and irregular dynamics in periodically stimulated cardiac cells. Science 1981; 214: 1350-53.
- 4 Babloyantz A, Destexhe A. Is a normal heart a periodic oscillator?. Biol Cybern 1988; 58: 203-11.
- 5 Kaplan KT, Cohen RJ. Is Fibrillation Chaos?. Circ Res 1990; 67: 886-92.
- 6 Goldberger AL, Barghava V, West BJ, Man-dell AJ. On a mechanism of cardiac electrical stability: the fractal hypotesis. Biophys Journ 1985; 48: 525-8.
- 7 Saul JP, Albrecht P, Berger RD, Cohen RJ. Analysis of long term heart rate variability: methods, 1/f scaling and implications. In: Proc. IEEE Computers in Cardiology. . Washington: IEEE Computer Society Press; 1988
- 8 Grassberger P, Procaccia I. Measuring the strangeness of strange attractors. Physica 1983; 9D: 189-208.
- 9 Osborne AR, Provenzale A. Finite correlation dimension for stochastic systems with power law spectra. Physica D 1989; 35: 357-81.
- 10 Packard NH, Crutchfield JP, Farmer JD, Shaw RS. Geometry from a time series. Physical Review Letters 1980; 45: 712-6.
- 11 Ruelle D. Chaotic evolution and strange attractors. . Cambridge: Cambridge University Press; 1989: 96.
- 12 Takens F. Detecting strange attractors in turbulence. In: Rand DA, Young LS. eds. Dynamical systems and turbulence. Lecture notes in Mathematics. Berlin: Springer; 1981. 898: 366-81.
- 13 Dvorak I, Klaschka J. Modification of the Grassberger Procaccia Algorithm for estimating the correlation exponent of chaotic systems with high embedding dimensions. Phys Lett A 1990; 143: 225-31.
- 14 Mandelbrot B. The fractal geometry of the nature. . New York: W.H. Freeman; 1983. I.
- 15 Cerutti S, Baselli G, Bianchi A, Signorini MG, Lissandrello F, Solari S. et al. Chaotic characteristics of heart rate and arterial blood pressure variability signals in 24 hours. In: Proc. IEEE Computers in Cardiology. . Washington: IEEE Computer Society Press; 1991
- 16 Signorini MG, Saliani V, Lucini D, Pagani M, Cerutti S. Parameters from deterministic chaos in the processing of respiration signal during mental stress. J Amb Monitoring 1993; 05: 139-52.