2023
DOI: 10.1101/2023.10.27.564407
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Leveraging Julia’s automated differentiation and symbolic computation to increase spectral DCM flexibility and speed

David Hofmann,
Anthony G. Chesebro,
Chris Rackauckas
et al.

Abstract: Using neuroimaging and electrophysiological data to infer neural parameter estimations from theoretical circuits requires solving the inverse problem. Here, we provide a new Julia language package designed to i) compose complex dynamical models in a simple and modular way with ModelingToolkit.jl, ii) implement parameter fitting based on spectral dynamic causal modeling (sDCM) using the Laplace approximation, analogous to MATLAB implementation in SPM12, and iii) leverage Julia’s unique strengths to increase acc… Show more

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