POWDR: Pathology-preserving Outpainting with Wavelet Diffusion for 3D MRI
Fei Tan, Ashok Vardhan Addala, Bruno Astuto Arouche Nunes, Xucheng Zhu, Ravi Soni

TL;DR
POWDR is a novel wavelet diffusion-based outpainting method that generates diverse, pathology-preserving 3D MRI images to address data scarcity and class imbalance in medical imaging.
Contribution
It introduces a pathology-preserving outpainting framework using wavelet diffusion and a random mask training strategy for diverse, realistic synthetic MRI data.
Findings
Improved image realism confirmed by quantitative metrics.
Enhanced diversity with random-mask training.
Increased tumor segmentation accuracy using synthetic data.
Abstract
Medical imaging datasets often suffer from class imbalance and limited availability of pathology-rich cases, which constrains the performance of machine learning models for segmentation, classification, and vision-language tasks. To address this challenge, we propose POWDR, a pathology-preserving outpainting framework for 3D MRI based on a conditioned wavelet diffusion model. Unlike conventional augmentation or unconditional synthesis, POWDR retains real pathological regions while generating anatomically plausible surrounding tissue, enabling diversity without fabricating lesions. Our approach leverages wavelet-domain conditioning to enhance high-frequency detail and mitigate blurring common in latent diffusion models. We introduce a random connected mask training strategy to overcome conditioning-induced collapse and improve diversity outside the lesion. POWDR is evaluated on brain…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Advanced Neuroimaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging
