Kuramoto Model-Based Analysis Reveals Oxytocin Effects on Brain Network Dynamics

Int J Neural Syst. 2022 Feb;32(2):2250002. doi: 10.1142/S0129065722500022. Epub 2021 Dec 2.

Abstract

The oxytocin effects on large-scale brain networks such as Default Mode Network (DMN) and Frontoparietal Network (FPN) have been largely studied using fMRI data. However, these studies are mainly based on the statistical correlation or Bayesian causality inference, lacking interpretability at the physical and neuroscience level. Here, we propose a physics-based framework of the Kuramoto model to investigate oxytocin effects on the phase dynamic neural coupling in DMN and FPN. Testing on fMRI data of 59 participants administrated with either oxytocin or placebo, we demonstrate that oxytocin changes the topology of brain communities in DMN and FPN, leading to higher synchronization in the FPN and lower synchronization in the DMN, as well as a higher variance of the coupling strength within the DMN and more flexible coupling patterns at group level. These results together indicate that oxytocin may increase the ability to overcome the corresponding internal oscillation dispersion and support the flexibility in neural synchrony in various social contexts, providing new evidence for explaining the oxytocin modulated social behaviors. Our proposed Kuramoto model-based framework can be a potential tool in network neuroscience and offers physical and neural insights into phase dynamics of the brain.

Keywords: Kuramoto model; Oxytocin effects; default mode network; fMRI; frontoparietal network.

MeSH terms

  • Bayes Theorem
  • Brain Mapping
  • Brain* / diagnostic imaging
  • Humans
  • Magnetic Resonance Imaging
  • Oxytocin*

Substances

  • Oxytocin