Synchronization in Functional Networks of the Human Brain

Philipp Hövel (Corresponding Author), Aline Viol, Philipp Loske, Leon Merfort, Vesna Vuksanović

Research output: Contribution to journalArticle

1 Citation (Scopus)

Abstract

Understanding the relationship between structural and functional organization represents one of the most important challenges in neuroscience. An increasing amount of studies show that this organization can be better understood by considering the brain as an interactive complex network. This approach has inspired a large number of computational models that combine experimental data with numerical simulations of brain interactions. In this paper, we present a summary of a data-driven computational model of synchronization between distant cortical areas that share a large number of overlapping neighboring (anatomical) connections. Such connections are derived from in vivo measures of brain connectivity using diffusion-weighted magnetic resonance imaging and are additionally informed by the presence of significant resting-state functionally correlated links between the areas involved. The dynamical processes of brain regions are simulated by a combination of coupled oscillator systems and a hemodynamic response model. The coupled oscillatory systems are represented by the Kuramoto phase oscillators, thus modeling phase synchrony between regional activities. The focus of this modeling approach is to characterize topological properties of functional brain correlation related to synchronization of the regional neural activity. The proposed model is able to reproduce remote synchronization between brain regions reaching reasonable agreement with the experimental functional connectivities. We show that the best agreement between model and experimental data is reached for dynamical states that exhibit a balance of synchrony and variations in synchrony providing the integration of activity between distant brain regions.
Original languageEnglish
JournalJournal of Nonlinear Science
Early online date25 Oct 2018
DOIs
Publication statusE-pub ahead of print - 25 Oct 2018

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Brain
Synchronization
Complex networks
Hemodynamics
Magnetic resonance
Imaging techniques
Computer simulation

Keywords

  • nonlinear dynamics
  • synchronization
  • brain connectivity
  • Kuramoto phase oscillator
  • neural activity

Cite this

Synchronization in Functional Networks of the Human Brain. / Hövel, Philipp (Corresponding Author); Viol, Aline; Loske, Philipp; Merfort, Leon; Vuksanović, Vesna.

In: Journal of Nonlinear Science, 25.10.2018.

Research output: Contribution to journalArticle

Hövel, Philipp ; Viol, Aline ; Loske, Philipp ; Merfort, Leon ; Vuksanović, Vesna. / Synchronization in Functional Networks of the Human Brain. In: Journal of Nonlinear Science. 2018.
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