Functional Random Effects Modeling of Brain Shape and Connectivity
ANNALS OF APPLIED STATISTICS(2022)
Univ Washington
Abstract
We present a statistical framework that jointly models brain shape and functional connectivity, which are two complex aspects of the brain that have been classically studied independently. We adopt a Riemannian modeling approach to account for the non-Euclidean geometry of the space of shapes and the space of connectivity that constrains trajectories of co-variation to be valid statistical estimates. In order to disentangle genetic sources of variability from those driven by unique environmental factors, we embed a functional random effects model in the Riemannian framework. We apply the proposed model to the Human Connectome Project dataset to explore spontaneous co-variation between brain shape and connectivity in young healthy individuals.
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Key words
 ,Functional data analysis,variance component models,mixed effects models,neu-roimaging
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