GAMER-MRIL identifies Disability-Related Brain Changes in Multiple Sclerosis
Po-Jui Lu, Benjamin Odry, Muhamed Barakovic, Matthias Weigel, Robin, Sandk\"uhler, Reza Rahmanzadeh, Xinjie Chen, Mario Ocampo-Pineda, Jens Kuhle,, Ludwig Kappos, Philippe Cattin, Cristina Granziera

TL;DR
GAMER-MRIL is a novel approach that combines whole-brain quantitative MRI, CNN, and interpretability methods to identify brain changes associated with disability in multiple sclerosis patients.
Contribution
It introduces GAMER-MRIL, a comprehensive method integrating qMRI, CNN, and modified interpretability techniques to detect disability-related brain regions in MS.
Findings
qT1 is the most sensitive qMRI measure related to disability
The method achieved an AUC of 0.885 in classifying severe disability
Identified regions include the corticospinal tract with significant correlations to disability scores
Abstract
Objective: Identifying disability-related brain changes is important for multiple sclerosis (MS) patients. Currently, there is no clear understanding about which pathological features drive disability in single MS patients. In this work, we propose a novel comprehensive approach, GAMER-MRIL, leveraging whole-brain quantitative MRI (qMRI), convolutional neural network (CNN), and an interpretability method from classifying MS patients with severe disability to investigating relevant pathological brain changes. Methods: One-hundred-sixty-six MS patients underwent 3T MRI acquisitions. qMRI informative of microstructural brain properties was reconstructed, including quantitative T1 (qT1), myelin water fraction (MWF), and neurite density index (NDI). To fully utilize the qMRI, GAMER-MRIL extended a gated-attention-based CNN (GAMER-MRI), which was developed to select patch-based qMRI important…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Cell Image Analysis Techniques · Image Processing Techniques and Applications
