Considerable interest has been devoted for developing a deeper understanding of the dynamics of healthy biological systems and how these dynamics are affected due to aging and disease. Entropy based complexity measures have widely been used for quantifying the dynamics of physical and biological systems. These techniques have provided valuable information leading to a fuller understanding of the dynamics of these systems and underlying stimuli that are responsible for anomalous behavior. The single scale based traditional entropy measures yielded contradictory results about the dynamics of real world time series data of healthy and pathological subjects. Recently the multiscale entropy (MSE) algorithm was introduced for precise description ...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
Analysis of biomedical signals can yield invaluable information for prognosis, diagnosis, therapy ev...
Quantifying the complexity of physiologic time series has been of considerable interest. Several ent...
Healthy systems exhibit complex dynamics on the changing of information embedded in physiologic sign...
Healthy systems exhibit complex dynamics on the changing of information embedded in physiologic sign...
We assess the complexity of Heart Rate Variability (HRV) time series by computing Approximate Entrop...
We introduce a generalization of multiscale entropy (MSE) analysis. The method is termed MSEn, where...
We introduce a generalization of multiscale entropy (MSE) analysis. The method is termed MSEn, where...
The dynamical fluctuations of biological signals provide a unique window to construe the underlying ...
<p>(a) RR interval time series from healthy subject (b) Time series obtained by excluding artifacts ...
In the analysis of signal regularity from a physiological system such as the human heart, Approximat...
Background: Several methods have been proposed to estimate complexity in physiological time series o...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
Analysis of biomedical signals can yield invaluable information for prognosis, diagnosis, therapy ev...
Quantifying the complexity of physiologic time series has been of considerable interest. Several ent...
Healthy systems exhibit complex dynamics on the changing of information embedded in physiologic sign...
Healthy systems exhibit complex dynamics on the changing of information embedded in physiologic sign...
We assess the complexity of Heart Rate Variability (HRV) time series by computing Approximate Entrop...
We introduce a generalization of multiscale entropy (MSE) analysis. The method is termed MSEn, where...
We introduce a generalization of multiscale entropy (MSE) analysis. The method is termed MSEn, where...
The dynamical fluctuations of biological signals provide a unique window to construe the underlying ...
<p>(a) RR interval time series from healthy subject (b) Time series obtained by excluding artifacts ...
In the analysis of signal regularity from a physiological system such as the human heart, Approximat...
Background: Several methods have been proposed to estimate complexity in physiological time series o...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
The entropy of heart rate variability is one of the main features characterizing the complexity of t...
Analysis of biomedical signals can yield invaluable information for prognosis, diagnosis, therapy ev...