CREIMBO: Cross-Regional Ensemble Interactions in Multi-view Brain Observations
Noga Mudrik, Ryan Ly, Oliver Ruebel, Adam S. Charles

TL;DR
CREIMBO is a novel model that uncovers non-stationary, interpretable neural ensemble interactions across brain regions and subjects from diverse, asynchronous neural recordings, revealing fundamental brain-wide dynamics.
Contribution
It introduces a unified framework leveraging diverse neural views to learn evolving neural ensembles and their interactions, addressing limitations of previous methods.
Findings
Successfully recovers true neural components in synthetic data.
Uncovers meaningful brain dynamics across subjects and regions.
Distinguishes session-specific from global neural processes.
Abstract
Modern recordings of neural activity provide diverse observations of neurons across brain areas, conditions, and subjects; presenting an exciting opportunity to reveal the fundamentals of brain-wide dynamics. Current analysis methods often fail to harness the richness of such data, as they provide either uninterpretable representations or oversimplify models (e.g., by assuming stationary dynamics). Here, instead of regarding asynchronous neural recordings that lack alignment in neural identity or brain areas as a limitation, we leverage these diverse views into the brain to learn a unified model of neural dynamics. We assume that brain activity is driven by multiple hidden global sub-circuits. These sub-circuits represent global basis interactions between neural ensembles -- functional groups of neurons -- such that the time-varying decomposition of these circuits defines how the…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Medical Imaging Techniques and Applications
MethodsSparse Evolutionary Training
