Modeling State-Dependent Communication Between Brain Regions with Switching Nonlinear Dynamical Systems

Abstract

Understanding how multiple brain regions interact to produce behavior is a major challenge in systems neuroscience, with many regions causally implicated in common tasks such as sensory processing and decision making. A precise description of interactions between regions remains an open problem. Moreover, neural dynamics are nonlinear and non-stationary. Here, we propose MR-SDS, a multiregion, switching nonlinear state space model that decomposes global dynamics into local and cross-communication components in the latent space. MR-SDS includes directed interactions between brain regions, allowing for estimation of state-dependent communication signals, and accounts for sensory inputs effects. We show that our model accurately recovers latent trajectories, vector fields underlying switching nonlinear dynamics, and cross-region communication profiles in three simulations. We then apply our method to two large-scale, multi-region neural datasets involving mouse decision making. The first includes hundreds of neurons per region, recorded simultaneously at single-cell-resolution across 3 distant cortical regions. The second is a mesoscale widefield dataset of 8 adjacent cortical regions imaged across both hemispheres. On these multi-region datasets, our model outperforms existing piece-wise linear multi-region models and reveals multiple distinct dynamical states and a rich set of cross-region communication profiles.

Cite

Text

Karniol-Tambour et al. "Modeling State-Dependent Communication Between Brain Regions with Switching Nonlinear Dynamical Systems." International Conference on Learning Representations, 2024.

Markdown

[Karniol-Tambour et al. "Modeling State-Dependent Communication Between Brain Regions with Switching Nonlinear Dynamical Systems." International Conference on Learning Representations, 2024.](https://mlanthology.org/iclr/2024/karnioltambour2024iclr-modeling/)

BibTeX

@inproceedings{karnioltambour2024iclr-modeling,
  title     = {{Modeling State-Dependent Communication Between Brain Regions with Switching Nonlinear Dynamical Systems}},
  author    = {Karniol-Tambour, Orren and Zoltowski, David M. and Diamanti, E. Mika and Pinto, Lucas and Brody, Carlos D and Tank, David W. and Pillow, Jonathan W.},
  booktitle = {International Conference on Learning Representations},
  year      = {2024},
  url       = {https://mlanthology.org/iclr/2024/karnioltambour2024iclr-modeling/}
}