Nonlinear digital signal processing methods that address system complexity have provided useful computational tools for helping in the diagnosis and treatment of a wide range of pathologies. More specifically, nonlinear measures have been successful in characterizing patients with mental disorders such as Major Depression (MD). In this study, we propose the use of instantaneous measures of entropy, namely the inhomogeneous point-process approximate entropy (ipApEn) and the inhomogeneous point-process sample entropy (ipSampEn), to describe a novel characterization of MD patients undergoing affective elicitation. Because these measures are built within a nonlinear point-process model, they allow for the assessment of complexity in cardiovascu...
This study reports on a Multiscale Entropy (MSE) analysis on Heart Rate Variability (HRV) series gat...
Complexity measures from Multiscale Entropy (MSE) analysis of cardiovascular variability may provide...
Objective: A defining feature of physiological systems under the neuroautonomic regulation is their ...
Nonlinear digital signal processing methods that address system complexity have provided useful comp...
Nonlinear digital signal processing methods that address system complexity have provided useful comp...
Nonlinear digital signal processing methods addressing system complexity have provided useful comput...
Complexity measures have been widely used to characterize the nonlinear nature of cardiovascular con...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
Nonlinear digital signal processing in mental health: characterization of major depression using ins...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
This study reports on a Multiscale Entropy (MSE) analysis on Heart Rate Variability (HRV) series gat...
Complexity measures from Multiscale Entropy (MSE) analysis of cardiovascular variability may provide...
Objective: A defining feature of physiological systems under the neuroautonomic regulation is their ...
Nonlinear digital signal processing methods that address system complexity have provided useful comp...
Nonlinear digital signal processing methods that address system complexity have provided useful comp...
Nonlinear digital signal processing methods addressing system complexity have provided useful comput...
Complexity measures have been widely used to characterize the nonlinear nature of cardiovascular con...
Measures of entropy have been proved as powerful quantifiers of complex nonlinear systems, particula...
Nonlinear digital signal processing in mental health: characterization of major depression using ins...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
Measures of entropy have been widely used to characterize complexity, particularly in physiological ...
This study reports on a Multiscale Entropy (MSE) analysis on Heart Rate Variability (HRV) series gat...
Complexity measures from Multiscale Entropy (MSE) analysis of cardiovascular variability may provide...
Objective: A defining feature of physiological systems under the neuroautonomic regulation is their ...