CommsVAE: Learning the brain's macroscale communication dynamics using coupled sequential VAEs
Eloy Geenjaar, Noah Lewis, Amrit Kashyap, Robyn Miller, Vince Calhoun

TL;DR
CommsVAE introduces a novel non-linear generative model using coupled sequential VAEs to analyze dynamic brain communication, explicitly modeling directionality, sparsity, and temporal communication patterns from functional data.
Contribution
It presents a new approach that explicitly models the directionality and timing of brain region communication, addressing limitations of existing connectivity methods.
Findings
Successfully uncovers expected communication dynamics in simulated data
Models task-specific neural communication patterns
Potential to improve understanding of psychiatric disorders
Abstract
Communication within or between complex systems is commonplace in the natural sciences and fields such as graph neural networks. The brain is a perfect example of such a complex system, where communication between brain regions is constantly being orchestrated. To analyze communication, the brain is often split up into anatomical regions that each perform certain computations. These regions must interact and communicate with each other to perform tasks and support higher-level cognition. On a macroscale, these regions communicate through signal propagation along the cortex and along white matter tracts over longer distances. When and what types of signals are communicated over time is an unsolved problem and is often studied using either functional or structural data. In this paper, we propose a non-linear generative approach to communication from functional data. We address three…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Mental Health Research Topics · Opinion Dynamics and Social Influence
