Laura Sparacino Sparacino Spectral Information Dynamics in Network Neuroscience and Physiology

Spectral Information Dynamics in Network Neuroscience and Physiology

von Laura Sparacino

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Beschreibung

This book introduces a unified framework that integrates various data-driven information dynamics approaches to quantify node-specific, pairwise, and high-order interactions within complex systems in the contexts of network neuroscience and network physiology. Using measures of information rate, a hierarchical organization of interactions is established to describe the dynamics of individual nodes, connections between pairs, and redundant or synergistic relationships among groups of nodes. Initially defined in the time domain, these measures are extended to the spectral domain, enabling frequency-specific analysis under the Gaussian assumption and linear parametric models. The framework is validated on simulated network systems and applied to real-world multivariate time series in neuroscience and physiology. The spectral high-order information measures successfully reveal respiratory-driven redundancy in cardiovascular, cardiorespiratory, and cerebrovascular systems, and uncover a predominance of redundancy in high-order brain interactions, alongside the emergence of synergistic circuits not captured by pairwise analysis. These results emphasize the importance of high-order, frequency-resolved information measures in characterizing complex network dynamics and provide new insights into the coordinated functioning of physiological and neural systems.


This book introduces a unified framework that integrates various data-driven information dynamics approaches to quantify node-specific, pairwise, and high-order interactions within complex systems in the contexts of network neuroscience and network physiology. Using measures of information rate, a hierarchical organization of interactions is established to describe the dynamics of individual nodes, connections between pairs, and redundant or synergistic relationships among groups of nodes. Initially defined in the time domain, these measures are extended to the spectral domain, enabling frequency-specific analysis under the Gaussian assumption and linear parametric models. The framework is validated on simulated network systems and applied to real-world multivariate time series in neuroscience and physiology. The spectral high-order information measures successfully reveal respiratory-driven redundancy in cardiovascular, cardiorespiratory, and cerebrovascular systems, and uncover a predominance of redundancy in high-order brain interactions, alongside the emergence of synergistic circuits not captured by pairwise analysis. These results emphasize the importance of high-order, frequency-resolved information measures in characterizing complex network dynamics and provide new insights into the coordinated functioning of physiological and neural systems.


Demonstrates that signal processing offers powerful tools for data-driven modeling of complex network systems Examines in a coherent framework different approaches for the analysis of multi-order interactions in network systems Highlights cutting-edge research in the field of network science, and showcases a multitude of applications

Autor*in

Laura Sparacino

Themen in »Spectral Information Dynamics in Network Neuroscience and Physiology«

complex network systems network neuroscience network physiology neural systems complex network dynamics signal processing Brain Networks Random Processes Static Networks Stochastic Interactions Random Variables

Stimmen zu »Spectral Information Dynamics in Network Neuroscience and Physiology«

Details

ISBN: 9783032054159
Verlag: Springer International Publishing
Erscheinung: 03.01.2026

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