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Hauptverfasser: Jallais, Maëliss, Uhl, Quentin, Pavan, Tommaso, Molendowska, Malwina, Jones, Derek K., Jelescu, Ileana, Palombo, Marco
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2508.19478
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author Jallais, Maëliss
Uhl, Quentin
Pavan, Tommaso
Molendowska, Malwina
Jones, Derek K.
Jelescu, Ileana
Palombo, Marco
author_facet Jallais, Maëliss
Uhl, Quentin
Pavan, Tommaso
Molendowska, Malwina
Jones, Derek K.
Jelescu, Ileana
Palombo, Marco
contents Biophysical models in diffusion MRI (dMRI) hold promise for characterizing gray matter tissue microstructure. Yet, the reliability of their parameter estimates remains largely under-studied, especially in models that incorporate water exchange. In this study, we investigate the accuracy, precision, and presence of degeneracy of two recently proposed gray matter models, NEXI and SANDIX, using established acquisition protocols, on both simulated and \textit{in vivo} data. We employ $μ$GUIDE, a Bayesian inference framework based on deep learning, to quantify parameter uncertainty and detect degeneracies, enabling a more interpretable assessment of model fits. Our results show that while some microstructural parameters, such as extra-cellular diffusivity and neurite signal fraction, are robustly estimated, others, including exchange time and soma radius, are often associated with high uncertainty and estimation bias, particularly under realistic noise conditions and reduced acquisition protocols. Comparison with non-linear least squares fitting highlights the critical advantage of uncertainty-aware methods: the ability to flag and filter out unreliable estimates. Together, these findings emphasize the need to report uncertainty and account for model degeneracies when interpreting model-based estimates. Our study advocates for the integration of probabilistic fitting approaches into imaging pipelines to improve reproducibility and biological interpretability.
format Preprint
id arxiv_https___arxiv_org_abs_2508_19478
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bayesian Insights into Exchange and Restriction in Gray Matter Diffusion MRI
Jallais, Maëliss
Uhl, Quentin
Pavan, Tommaso
Molendowska, Malwina
Jones, Derek K.
Jelescu, Ileana
Palombo, Marco
Medical Physics
Image and Video Processing
Biophysical models in diffusion MRI (dMRI) hold promise for characterizing gray matter tissue microstructure. Yet, the reliability of their parameter estimates remains largely under-studied, especially in models that incorporate water exchange. In this study, we investigate the accuracy, precision, and presence of degeneracy of two recently proposed gray matter models, NEXI and SANDIX, using established acquisition protocols, on both simulated and \textit{in vivo} data. We employ $μ$GUIDE, a Bayesian inference framework based on deep learning, to quantify parameter uncertainty and detect degeneracies, enabling a more interpretable assessment of model fits. Our results show that while some microstructural parameters, such as extra-cellular diffusivity and neurite signal fraction, are robustly estimated, others, including exchange time and soma radius, are often associated with high uncertainty and estimation bias, particularly under realistic noise conditions and reduced acquisition protocols. Comparison with non-linear least squares fitting highlights the critical advantage of uncertainty-aware methods: the ability to flag and filter out unreliable estimates. Together, these findings emphasize the need to report uncertainty and account for model degeneracies when interpreting model-based estimates. Our study advocates for the integration of probabilistic fitting approaches into imaging pipelines to improve reproducibility and biological interpretability.
title Bayesian Insights into Exchange and Restriction in Gray Matter Diffusion MRI
topic Medical Physics
Image and Video Processing
url https://arxiv.org/abs/2508.19478