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The Hopf whole-brain model and its linear approximation.

Adrian Ponce-AlvarezGustavo Deco
Published in: Scientific reports (2024)
Whole-brain models have proven to be useful to understand the emergence of collective activity among neural populations or brain regions. These models combine connectivity matrices, or connectomes, with local node dynamics, noise, and, eventually, transmission delays. Multiple choices for the local dynamics have been proposed. Among them, nonlinear oscillators corresponding to a supercritical Hopf bifurcation have been used to link brain connectivity and collective phase and amplitude dynamics in different brain states. Here, we studied the linear fluctuations of this model to estimate its stationary statistics, i.e., the instantaneous and lagged covariances and the power spectral densities. This linear approximation-that holds in the case of heterogeneous parameters and time-delays-allows analytical estimation of the statistics and it can be used for fast parameter explorations to study changes in brain state, changes in brain activity due to alterations in structural connectivity, and modulations of parameter due to non-equilibrium dynamics.
Keyphrases
  • resting state
  • functional connectivity
  • white matter
  • cerebral ischemia
  • multiple sclerosis
  • magnetic resonance imaging
  • air pollution
  • brain injury
  • neural network
  • genetic diversity