Learning Myelin Content in Multiple Sclerosis from Multimodal MRI through Adversarial Training
Wen Wei, Emilie Poirion, Benedetta Bodini, Stanley Durrleman, and Nicholas Ayache, Bruno Stankoff, Olivier Colliot

TL;DR
This paper introduces a novel GAN-based method to estimate myelin content in MS patients using MRI data, aiming to replace costly PET scans and improve clinical assessment.
Contribution
The study presents a new adversarial training approach that predicts PET-derived myelin maps from MRI, enabling non-invasive, accurate myelin content estimation.
Findings
Accurately predicts demyelination in lesion regions
Effectively estimates myelin in normal-appearing white matter
Potential for clinical application in MS management
Abstract
Multiple sclerosis (MS) is a demyelinating disease of the central nervous system (CNS). A reliable measure of the tissue myelin content is therefore essential for the understanding of the physiopathology of MS, tracking progression and assessing treatment efficacy. Positron emission tomography (PET) with has been proposed as a promising biomarker for measuring myelin content changes in-vivo in MS. However, PET imaging is expensive and invasive due to the injection of a radioactive tracer. On the contrary, magnetic resonance imaging (MRI) is a non-invasive, widely available technique, but existing MRI sequences do not provide, to date, a reliable, specific, or direct marker of either demyelination or remyelination. In this work, we therefore propose Sketcher-Refiner Generative Adversarial Networks (GANs) with specifically designed adversarial loss functions…
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