Frontiers in Computational Neuroscience (Jan 2023)

A comprehensive neural simulation of slow-wave sleep and highly responsive wakefulness dynamics

  • Jennifer S. Goldman,
  • Lionel Kusch,
  • David Aquilue,
  • Bahar Hazal Yalçınkaya,
  • Bahar Hazal Yalçınkaya,
  • Damien Depannemaecker,
  • Kevin Ancourt,
  • Trang-Anh E. Nghiem,
  • Trang-Anh E. Nghiem,
  • Viktor Jirsa,
  • Alain Destexhe

DOI
https://doi.org/10.3389/fncom.2022.1058957
Journal volume & issue
Vol. 16

Abstract

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Hallmarks of neural dynamics during healthy human brain states span spatial scales from neuromodulators acting on microscopic ion channels to macroscopic changes in communication between brain regions. Developing a scale-integrated understanding of neural dynamics has therefore remained challenging. Here, we perform the integration across scales using mean-field modeling of Adaptive Exponential (AdEx) neurons, explicitly incorporating intrinsic properties of excitatory and inhibitory neurons. The model was run using The Virtual Brain (TVB) simulator, and is open-access in EBRAINS. We report that when AdEx mean-field neural populations are connected via structural tracts defined by the human connectome, macroscopic dynamics resembling human brain activity emerge. Importantly, the model can qualitatively and quantitatively account for properties of empirically observed spontaneous and stimulus-evoked dynamics in space, time, phase, and frequency domains. Large-scale properties of cortical dynamics are shown to emerge from both microscopic-scale adaptation that control transitions between wake-like to sleep-like activity, and the organization of the human structural connectome; together, they shape the spatial extent of synchrony and phase coherence across brain regions consistent with the propagation of sleep-like spontaneous traveling waves at intermediate scales. Remarkably, the model also reproduces brain-wide, enhanced responsiveness and capacity to encode information particularly during wake-like states, as quantified using the perturbational complexity index. The model was run using The Virtual Brain (TVB) simulator, and is open-access in EBRAINS. This approach not only provides a scale-integrated understanding of brain states and their underlying mechanisms, but also open access tools to investigate brain responsiveness, toward producing a more unified, formal understanding of experimental data from conscious and unconscious states, as well as their associated pathologies.

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