The complexity of short-term heart period (HP) variability was quantified exploiting the paradigm that associates the degree of unpredictability of a time series to its dynamical complexity. Complexity was assessed through k-nearest neighbor local linear prediction. A proper selection of the parameter k allowed us to perform either linear or nonlinear prediction, and the comparison of the two approaches to infer the presence of nonlinear dynamics. The method was validated on simulations reproducing linear and nonlinear time series with varying levels of predictability. It was then applied to HP variability series measured from healthy subjects during head-up tilt test, showing that short-term HP complexity increases significantly from the s...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
We compare different estimators of a popular en-tropy-based nonlinear dynamic measure, i.e. the cond...
The complexity of short-term heart period (HP) variability was quantified exploiting the paradigm th...
The complexity of short-term heart period (HP) variability was quantified exploiting the paradigm th...
This paper evaluates the paradigm that proposes to quantify short-term complexity and detect nonline...
A nonlinear prediction method for investigating the dynamic interdependence between short length tim...
Two diverse complexity metrics quantifying time irreversibility and local prediction, in connection ...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
Despite the widespread diffusion of nonlinear methods for heart rate variability (HRV) analysis, the...
A new approach measuring the predictability of a process is proposed. The predictor is defined as th...
We propose a multiscale complexity (MSC) method assessing irregularity in assigned frequency bands a...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
We compare different estimators of a popular en-tropy-based nonlinear dynamic measure, i.e. the cond...
The complexity of short-term heart period (HP) variability was quantified exploiting the paradigm th...
The complexity of short-term heart period (HP) variability was quantified exploiting the paradigm th...
This paper evaluates the paradigm that proposes to quantify short-term complexity and detect nonline...
A nonlinear prediction method for investigating the dynamic interdependence between short length tim...
Two diverse complexity metrics quantifying time irreversibility and local prediction, in connection ...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
Despite the widespread diffusion of nonlinear methods for heart rate variability (HRV) analysis, the...
A new approach measuring the predictability of a process is proposed. The predictor is defined as th...
We propose a multiscale complexity (MSC) method assessing irregularity in assigned frequency bands a...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
We compare different estimators of a popular en-tropy-based nonlinear dynamic measure, i.e. the cond...