TL;DR
This paper introduces InBrainSyn, a generative framework that synthesizes personalized, high-resolution longitudinal MRI scans to simulate individual aging and neurodegeneration, advancing personalized brain aging modeling.
Contribution
InBrainSyn uniquely combines population-level aging trajectories with individual brain data using parallel transport, enabling personalized MRI synthesis for aging and disease progression.
Findings
Accurately models neurodegeneration in AD and normal aging.
Synthesizes realistic 3D MRI scans with a single baseline.
Demonstrates generalizability across datasets.
Abstract
Simulating prospective magnetic resonance imaging (MRI) scans from a given individual brain image is challenging, as it requires accounting for canonical changes in aging and/or disease progression while also considering the individual brain's current status and unique characteristics. While current deep generative models can produce high-resolution anatomically accurate templates for population-wide studies, their ability to predict future aging trajectories for individuals remains limited, particularly in capturing subject-specific neuroanatomical variations over time. In this study, we introduce Individualized Brain Synthesis (InBrainSyn), a framework for synthesizing high-resolution subject-specific longitudinal MRI scans that simulate neurodegeneration in both Alzheimer's disease (AD) and normal aging. InBrainSyn uses a parallel transport algorithm to adapt the population-level…
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Taxonomy
MethodsSparse Evolutionary Training
