We present an entropy decomposition strategy aimed at quantifying how the predictive information (PI) about heart rate (HR) variability is dynamically stored in HR and is transferred to HR from arterial pressure (AP) and respiration (RS) variability according to synergistic or redundant cooperation. The PI is expressed as the sum of the self entropy (SE) of HR plus the transfer entropy (TE) from RS,AP to HR, quantifying respectively the information stored in the cardiac system and transferred to the cardiac system to the vascular and respiratory systems. The information transfer is further decomposed as the sum of the (unconditioned) TE from RS to HR plus the TE from SP to HR conditioned to RS. Moreover a redundancy/synergy measure is defined as the difference between unconditioned and conditioned TE from RS to HR. We show that, under the linear Gaussian assumption for the underlying multiple processes, all the proposed information dynamical measures can be calculated analytically, and present a method for their computation from the parameters of a vector autoregressive model. The method is then evaluated on a simulated process reproducing realistic HR, AP and RS rhythms, showing how known cardiovascular and cardiorespiratory mechanisms can be characterized in terms of the proposed information decomposition measures. © 2013 CCAL.

Faes, L., Montalto, A., Nollo, G., Marinazzo, D. (2013). Information decomposition of short-term cardiovascular and cardiorespiratory variability. In Computing in Cardiology 2013 (pp.113-116).

Information decomposition of short-term cardiovascular and cardiorespiratory variability

Faes, Luca;
2013-01-01

Abstract

We present an entropy decomposition strategy aimed at quantifying how the predictive information (PI) about heart rate (HR) variability is dynamically stored in HR and is transferred to HR from arterial pressure (AP) and respiration (RS) variability according to synergistic or redundant cooperation. The PI is expressed as the sum of the self entropy (SE) of HR plus the transfer entropy (TE) from RS,AP to HR, quantifying respectively the information stored in the cardiac system and transferred to the cardiac system to the vascular and respiratory systems. The information transfer is further decomposed as the sum of the (unconditioned) TE from RS to HR plus the TE from SP to HR conditioned to RS. Moreover a redundancy/synergy measure is defined as the difference between unconditioned and conditioned TE from RS to HR. We show that, under the linear Gaussian assumption for the underlying multiple processes, all the proposed information dynamical measures can be calculated analytically, and present a method for their computation from the parameters of a vector autoregressive model. The method is then evaluated on a simulated process reproducing realistic HR, AP and RS rhythms, showing how known cardiovascular and cardiorespiratory mechanisms can be characterized in terms of the proposed information decomposition measures. © 2013 CCAL.
Settore ING-INF/06 - Bioingegneria Elettronica E Informatica
2013
Computing in Cardiology
2013
4
Faes, L., Montalto, A., Nollo, G., Marinazzo, D. (2013). Information decomposition of short-term cardiovascular and cardiorespiratory variability. In Computing in Cardiology 2013 (pp.113-116).
Proceedings (atti dei congressi)
Faes, Luca*; Montalto, Alessandro; Nollo, Giandomenico; Marinazzo, Daniele
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/276613
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