TADM: Temporally-Aware Diffusion Model for Neurodegenerative Progression on Brain MRI
Mattia Litrico, Francesco Guarnera, Valerio Giuffirda, Daniele Rav\`i,, Sebastiano Battiato

TL;DR
This paper introduces TADM, a novel diffusion model that predicts brain MRI changes over time by learning structural differences and leveraging a pre-trained brain age estimator, significantly improving accuracy over existing methods.
Contribution
The paper presents TADM, a temporally-aware diffusion model that explicitly models brain MRI progression and incorporates a brain age estimator to enhance prediction accuracy.
Findings
24% reduction in region size error
4% improvement in similarity metrics
Better mimicry of neurodegenerative progression
Abstract
Generating realistic images to accurately predict changes in the structure of brain MRI is a crucial tool for clinicians. Such applications help assess patients' outcomes and analyze how diseases progress at the individual level. However, existing methods for this task present some limitations. Some approaches attempt to model the distribution of MRI scans directly by conditioning the model on patients' ages, but they fail to explicitly capture the relationship between structural changes in the brain and time intervals, especially on age-unbalanced datasets. Other approaches simply rely on interpolation between scans, which limits their clinical application as they do not predict future MRIs. To address these challenges, we propose a Temporally-Aware Diffusion Model (TADM), which introduces a novel approach to accurately infer progression in brain MRIs. TADM learns the distribution of…
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Taxonomy
TopicsMachine Learning in Materials Science · Functional Brain Connectivity Studies · Radiomics and Machine Learning in Medical Imaging
MethodsDiffusion
