We propose an integrated approach based on uniform quantization over a small number of levels for the evaluation and characterization of complexity of a process. This approach integrates information-domain analysis based on entropy rate, local nonlinear prediction, and pattern classification based on symbolic analysis. Normalized and non-normalized indexes quantifying complexity over short data sequences ( ∼ 300 samples) are derived. This approach provides a rule for deciding the optimal length of the patterns that may be worth considering and some suggestions about possible strategies to group patterns into a smaller number of families. The approach is applied to 24 h Holter recordings of heart period variability derived from 12 normal (NO...
Complexity in time series is an intriguing feature of living dynamical systems, with potential use f...
The study compares permutation and coarse-grained entropy approaches for the assessment of short-ter...
The dynamical fluctuations of biological signals provide a unique window to construe the underlying ...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
An integrated approach to the complexity analysis of short heart period variability series (approxim...
We propose a multiscale complexity (MSC) method assessing irregularity in assigned frequency bands a...
We compare different estimators of a popular en-tropy-based nonlinear dynamic measure, i.e. the cond...
Background: Several methods have been proposed to estimate complexity in physiological time series o...
This paper evaluates the paradigm that proposes to quantify short-term complexity and detect nonline...
The complexity of short-term heart period (HP) variability was quantified exploiting the paradigm th...
We assess the complexity of Heart Rate Variability (HRV) time series by computing Approximate Entrop...
This study proposes an application of symbolic analysis to beat-to-beat heart rate variability data ...
The study compares permutation-based and coarse-grained entropy approaches for the assessment of com...
This study proposes an application of symbolic analysis to beat-to-beat heart rate variability data ...
Entropy-based complexity of cardiovascular variability at short time scales is largely dependent on ...
Complexity in time series is an intriguing feature of living dynamical systems, with potential use f...
The study compares permutation and coarse-grained entropy approaches for the assessment of short-ter...
The dynamical fluctuations of biological signals provide a unique window to construe the underlying ...
We propose an integrated approach based on uniform quantization over a small number of levels for th...
An integrated approach to the complexity analysis of short heart period variability series (approxim...
We propose a multiscale complexity (MSC) method assessing irregularity in assigned frequency bands a...
We compare different estimators of a popular en-tropy-based nonlinear dynamic measure, i.e. the cond...
Background: Several methods have been proposed to estimate complexity in physiological time series o...
This paper evaluates the paradigm that proposes to quantify short-term complexity and detect nonline...
The complexity of short-term heart period (HP) variability was quantified exploiting the paradigm th...
We assess the complexity of Heart Rate Variability (HRV) time series by computing Approximate Entrop...
This study proposes an application of symbolic analysis to beat-to-beat heart rate variability data ...
The study compares permutation-based and coarse-grained entropy approaches for the assessment of com...
This study proposes an application of symbolic analysis to beat-to-beat heart rate variability data ...
Entropy-based complexity of cardiovascular variability at short time scales is largely dependent on ...
Complexity in time series is an intriguing feature of living dynamical systems, with potential use f...
The study compares permutation and coarse-grained entropy approaches for the assessment of short-ter...
The dynamical fluctuations of biological signals provide a unique window to construe the underlying ...