Nonparametric distributions of tensor-valued Lorentzian diffusion spectra for model-free data inversion in multidimensional diffusion MRI
Journal article, 2024

Magnetic resonance imaging (MRI) is the method of choice for noninvasive studies of micrometer-scale structures in biological tissues via their effects on the time- and frequency-dependent (restricted) and anisotropic self-diffusion of water. While new designs of time-dependent magnetic field gradient waveforms have enabled disambiguation between different aspects of translational motion that are convolved in traditional MRI methods relying on single pairs of field gradient pulses, data analysis for complex heterogeneous materials remains a challenge. Here, we propose and demonstrate nonparametric distributions of tensor-valued Lorentzian diffusion spectra, or “D(ω) distributions,” as a general representation with sufficient flexibility to describe the MRI signal response from a wide range of model systems and biological tissues investigated with modulated gradient waveforms separating and correlating the effects of restricted and anisotropic diffusion.

Author

Omar Narvaez

University of Eastern Finland

Maxime Yon

Lund University

Hong Jiang

Lund University

Diana Bernin

Chalmers, Chemistry and Chemical Engineering, Chemical Technology

Eva Forssell-Aronsson

University of Gothenburg

Sahlgrenska University Hospital

Alejandra Sierra

University of Eastern Finland

D. Topgaard

Lund University

Journal of Chemical Physics

0021-9606 (ISSN) 1089-7690 (eISSN)

Vol. 161 8 084201

Subject Categories

Astronomy, Astrophysics and Cosmology

Other Physics Topics

Probability Theory and Statistics

Radiology, Nuclear Medicine and Medical Imaging

Medical Image Processing

DOI

10.1063/5.0213252

PubMed

39171708

More information

Latest update

9/3/2024 1