ADP-DiT: Text-Guided Diffusion Transformer for Brain Image Generation in Alzheimer's Disease Progression
Juneyong Lee, Geonwoo Baek, and Ikbeom Jang

TL;DR
ADP-DiT is a novel text-conditioned diffusion transformer that synthesizes longitudinal Alzheimer's MRI scans with controllable follow-up intervals and clinical metadata, improving image fidelity and disease progression modeling.
Contribution
The paper introduces ADP-DiT, a new model that combines dual text encoders and diffusion transformers for clinically guided, high-resolution longitudinal MRI synthesis in Alzheimer's disease.
Findings
Achieved SSIM of 0.8739 and PSNR of 29.32 dB on longitudinal MRI data.
Improved over baseline by +0.1087 SSIM and +6.08 dB PSNR.
Captured disease progression features like ventricular enlargement.
Abstract
Alzheimer's disease (AD) progresses heterogeneously across individuals, motivating subject-specific synthesis of follow-up magnetic resonance imaging (MRI) to support progression assessment. While Diffusion Transformers (DiT), an emerging transformer-based diffusion model, offer a scalable backbone for image synthesis, longitudinal AD MRI generation with clinically interpretable control over follow-up time and participant metadata remains underexplored. We present ADP-DiT, an interval-aware, clinically text-conditioned diffusion transformer for longitudinal AD MRI synthesis. ADP-DiT encodes follow-up interval together with multi-domain demographic, diagnostic (CN/MCI/AD), and neuropsychological information as a natural-language prompt, enabling time-specific control beyond coarse diagnostic stages. To inject this conditioning effectively, we use dual text encoders-OpenCLIP for…
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