Accurate and efficient Simulation of very high-dimensional Neural Mass Models with distributed-delay Connectome Tensors
A. Gonz\'alez-Mitjans, D. Paz-Linares, A. Areces-Gonzalez, M. Li, Y., Wang, ML. Bringas-Vega, and P.A Vald\'es-Sosa

TL;DR
This paper presents a new, efficient toolbox for simulating high-dimensional Neural Mass Models with complex, distributed delays in connectome tensors, enabling large-scale brain network simulations with high fidelity.
Contribution
The paper introduces a novel tensor-based simulation toolbox that efficiently integrates high-dimensional NMMs with distributed-delay connectome tensors using semi-analytical methods.
Findings
Efficient simulation of large-scale neural models with distributed delays.
High fidelity integration using Local Linearization scheme.
Open-source Matlab toolbox demonstrated on cortical column models.
Abstract
This paper introduces methods and a novel toolbox that efficiently integrates any high-dimensional Neural Mass Models (NMMs) specified by two essential components. The first is the set of nonlinear Random Differential Equations of the dynamics of each neural mass. The second is the highly sparse three-dimensional Connectome Tensor (CT) that encodes the strength of the connections and the delays of information transfer along the axons of each connection. Semi-analytical integration of the RDE is done with the Local Linearization scheme for each neural mass model, which is the only scheme guaranteeing dynamical fidelity to the original continuous-time nonlinear dynamic. It also seamlessly allows modeling distributed delays CT with any level of complexity or realism, as shown by the Moore-Penrose diagram of the algorithm. This ease of implementation includes models with distributed-delay…
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Taxonomy
TopicsTensor decomposition and applications · Functional Brain Connectivity Studies · Advanced Neuroimaging Techniques and Applications
