Objective: A defining feature of physiological systems under the neuroautonomic regulation is their dynamical complexity. The most common approach to assess physiological complexity from short-term recordings, i.e. to compute the rate of entropy generation of an individual system by means of measures of conditional entropy (CE), does not consider that complexity may change when the investigated system is part of a network of physiological interactions. This study aims at extending the concept of short-term complexity towards the perspective of network physiology, defining multivariate CE measures whereby multiple physiological processes are accounted for in the computation of entropy rates. Approach: Univariate and multivariate CE measures ...
An integrated approach to the complexity analysis of short heart period variability series (approxim...
Self-entropy (SE) and transfer entropy (TE) are widely utilized in biomedical signal processing to a...
Self-entropy (SE) and transfer entropy (TE) are widely utilized in biomedical signal processing to a...
Objective: A defining feature of physiological systems under the neuroautonomic regulation is their ...
Objective: A defining feature of physiological systems under the neuroautonomic regulation is their ...
We compare different estimators of a popular en-tropy-based nonlinear dynamic measure, i.e. the cond...
The idea that most physiological systems are complex has become increasingly popular in recent decad...
Assessing the dynamical complexity of biological time series represents an important topic with pote...
The idea that most physiological systems are complex has become increasingly popular in recent decad...
Assessing the dynamical complexity of biological time series represents an important topic with pote...
In this work, we study ultra-short term (UST) complexity of Heart Rate Variability (HRV) and its agr...
Assessing the dynamical complexity of biological time series represents an important topic with pote...
In this work, we study ultra-short term (UST) complexity of Heart Rate Variability (HRV) and its agr...
The aim of this study is to characterize cardiovascular and respiratory signals during orthostatic a...
The aim of this study is to characterize cardiovascular and respiratory signals during orthostatic a...
An integrated approach to the complexity analysis of short heart period variability series (approxim...
Self-entropy (SE) and transfer entropy (TE) are widely utilized in biomedical signal processing to a...
Self-entropy (SE) and transfer entropy (TE) are widely utilized in biomedical signal processing to a...
Objective: A defining feature of physiological systems under the neuroautonomic regulation is their ...
Objective: A defining feature of physiological systems under the neuroautonomic regulation is their ...
We compare different estimators of a popular en-tropy-based nonlinear dynamic measure, i.e. the cond...
The idea that most physiological systems are complex has become increasingly popular in recent decad...
Assessing the dynamical complexity of biological time series represents an important topic with pote...
The idea that most physiological systems are complex has become increasingly popular in recent decad...
Assessing the dynamical complexity of biological time series represents an important topic with pote...
In this work, we study ultra-short term (UST) complexity of Heart Rate Variability (HRV) and its agr...
Assessing the dynamical complexity of biological time series represents an important topic with pote...
In this work, we study ultra-short term (UST) complexity of Heart Rate Variability (HRV) and its agr...
The aim of this study is to characterize cardiovascular and respiratory signals during orthostatic a...
The aim of this study is to characterize cardiovascular and respiratory signals during orthostatic a...
An integrated approach to the complexity analysis of short heart period variability series (approxim...
Self-entropy (SE) and transfer entropy (TE) are widely utilized in biomedical signal processing to a...
Self-entropy (SE) and transfer entropy (TE) are widely utilized in biomedical signal processing to a...