TL;DR
This paper introduces a deep learning method that synthesizes brain images at different ages and disease states without needing longitudinal data, aiding neurodegenerative disease research.
Contribution
It presents a novel adversarial model that learns to generate subject-specific brain aging trajectories from cross-sectional data, separating age, disease, and anatomy factors.
Findings
Successfully models gray matter atrophy patterns in Alzheimer's disease
Generates realistic brain images conditioned on age and disease status
Demonstrates good generalization across datasets
Abstract
How will my face look when I get older? Or, for a more challenging question: How will my brain look when I get older? To answer this question one must devise (and learn from data) a multivariate auto-regressive function which given an image and a desired target age generates an output image. While collecting data for faces may be easier, collecting longitudinal brain data is not trivial. We propose a deep learning-based method that learns to simulate subject-specific brain ageing trajectories without relying on longitudinal data. Our method synthesises images conditioned on two factors: age (a continuous variable), and status of Alzheimer's Disease (AD, an ordinal variable). With an adversarial formulation we learn the joint distribution of brain appearance, age and AD status, and define reconstruction losses to address the challenging problem of preserving subject identity. We compare…
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