Sparse optimization for estimating the cross-power spectrum in linear inverse models : from theory to the application in brain connectivity
Laura Carini, Isabella Furci, Sara Sommariva

TL;DR
This paper introduces a computationally efficient sparse optimization method using FISTA for estimating the cross-power spectrum in linear inverse models, with applications to brain connectivity analysis.
Contribution
It develops a novel FISTA-based approach with proper initialization and structural exploitation for large-scale brain connectivity problems.
Findings
Improved specificity over classical two-step methods.
Effective in large-scale brain connectivity scenarios.
Validated on electromagnetic brain recordings.
Abstract
In this work we present a computationally efficient linear optimization approach for estimating the cross--power spectrum of an hidden multivariate stochastic process from that of another observed process. Sparsity in the resulting estimator of the cross--power is induced through regularization and the Fast Iterative Shrinkage-Thresholding Algorithm (FISTA) is used for computing such an estimator. With respect to a standard implementation, we prove that a proper initialization step is sufficient to guarantee the required symmetric and antisymmetric properties of the involved quantities. Further, we show how structural properties of the forward operator can be exploited within the FISTA update in order to make our approach adequate also for large--scale problems such as those arising in context of brain functional connectivity. The effectiveness of the proposed approach is…
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Taxonomy
TopicsFunctional Brain Connectivity Studies
