Human heartbeat intervals are known to have nonlinear and nonstationary dynamics. In this paper, we propose a model of R-R interval dynamics based on a nonlinear Volterra-Wiener expansion within a point process framework. Inclusion of second-order nonlinearities into the heartbeat model allows us to estimate instantaneous heart rate (HR) and heart rate variability (HRV) indexes, as well as the dynamic bispectrum characterizing higher order statistics of the nonstationary non-Gaussian time series. The proposed point process probability heartbeat interval model was tested with synthetic simulations and two experimental heartbeat interval datasets. Results show that our model is useful in characterizing and tracking the inherent nonlinearity o...
Restricted until 16 Dec. 2010.Heart dynamics and heart rate variability, as well as their characteri...
Complexity measures have been widely used to characterize the nonlinear nature of cardiovascular con...
We evaluated the role played by the autonomic nervous system in producing non-linear dynamics in sho...
Assessment of Heartbeat nonlinear dynamics is an important topic in the study of cardiovascular cont...
We present a unified probabilistic point process framework to estimate and monitor the instantaneous...
We report an exemplary study of instantaneous assessment of cardiovascular dynamics performed using ...
Modeling heartbeat variability remains a challenging signal-processing goal in the presence of highl...
In recent years, time-varying inhomogeneous point process models have been introduced for assessment...
The importance of cardiac repolarization dynamics in promoting arrhythmic events is widely recognize...
Recent modeling advances successfully derived time varying estimates of nonlinear heartbeat dynamics...
We propose the method to compute the nonlinear parameters of heart rhythm (correlation dimension D2 ...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
Restricted until 16 Dec. 2010.Heart dynamics and heart rate variability, as well as their characteri...
Complexity measures have been widely used to characterize the nonlinear nature of cardiovascular con...
We evaluated the role played by the autonomic nervous system in producing non-linear dynamics in sho...
Assessment of Heartbeat nonlinear dynamics is an important topic in the study of cardiovascular cont...
We present a unified probabilistic point process framework to estimate and monitor the instantaneous...
We report an exemplary study of instantaneous assessment of cardiovascular dynamics performed using ...
Modeling heartbeat variability remains a challenging signal-processing goal in the presence of highl...
In recent years, time-varying inhomogeneous point process models have been introduced for assessment...
The importance of cardiac repolarization dynamics in promoting arrhythmic events is widely recognize...
Recent modeling advances successfully derived time varying estimates of nonlinear heartbeat dynamics...
We propose the method to compute the nonlinear parameters of heart rhythm (correlation dimension D2 ...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
Restricted until 16 Dec. 2010.Heart dynamics and heart rate variability, as well as their characteri...
Complexity measures have been widely used to characterize the nonlinear nature of cardiovascular con...
We evaluated the role played by the autonomic nervous system in producing non-linear dynamics in sho...