Practical computation of the diffusion MRI signal of realistic neurons based on Laplace eigenfunctions
Jing-Rebecca Li, Try Nguyen Tran, Van-Dang Nguyen

TL;DR
This paper introduces a practical framework for computing the diffusion MRI signal of realistic neuron geometries using Laplace eigenfunctions, enabling efficient and accurate modeling of complex tissue micro-structures.
Contribution
It presents a MATLAB-based simulation method that efficiently computes the Matrix Formalism for realistic neurons, facilitating practical diffusion MRI signal modeling.
Findings
A few hundred eigenmodes suffice to match the reference signal.
The number of eigenmodes needed increases with smaller diffusion times and higher b-values.
The framework links Laplace eigenfunctions to Bloch-Torrey eigenfunctions for accurate modeling.
Abstract
The complex transverse water proton magnetization subject to diffusion-encoding magnetic field gradient pulses in a heterogeneous medium such as brain tissue can be modeled by the Bloch-Torrey partial differential equation. The spatial integral of the solution of this equation in realistic geometry provides a gold-standard reference model for the diffusion MRI signal arising from different tissue micro-structures of interest. A closed form representation of this reference diffusion MRI signal has been derived twenty years ago, called Matrix Formalism that makes explicit the link between the Laplace eigenvalues and eigenfunctions of the biological cell and its diffusion MRI signal. In addition, once the Laplace eigendecomposition has been computed and saved, the diffusion MRI signal can be calculated for arbitrary diffusion-encoding sequences and b-values at negligible additional cost.…
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