IVCVLGMar 25, 2024

Diff-Def: Diffusion-Generated Deformation Fields for Conditional Atlases

arXiv:2403.16776v38 citationsh-index: 18IEEE Transactions on Medical Imaging
Originality Highly original
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This work addresses the need for accurate and interpretable conditional atlases in medical imaging for population studies, offering a solution to handle large anatomical variations and avoid training instabilities seen in prior methods.

The paper tackled the problem of generating conditional anatomical atlases for specific sub-populations by proposing a method that uses latent diffusion models to generate deformation fields, which transform a general population atlas into a targeted one, resulting in highly realistic atlases with smooth transformations and high anatomical fidelity that outperform existing baselines.

Anatomical atlases are widely used for population studies and analysis. Conditional atlases target a specific sub-population defined via certain conditions, such as demographics or pathologies, and allow for the investigation of fine-grained anatomical differences like morphological changes associated with ageing or disease. Existing approaches use either registration-based methods that are often unable to handle large anatomical variations or generative adversarial models, which are challenging to train since they can suffer from training instabilities. Instead of generating atlases directly in as intensities, we propose using latent diffusion models to generate deformation fields, which transform a general population atlas into one representing a specific sub-population. Our approach ensures structural integrity, enhances interpretability and avoids hallucinations that may arise during direct image synthesis by generating this deformation field and regularising it using a neighbourhood of images. We compare our method to several state-of-the-art atlas generation methods using brain MR images from the UK Biobank. Our method generates highly realistic atlases with smooth transformations and high anatomical fidelity, outperforming existing baselines. We demonstrate the quality of these atlases through comprehensive evaluations, including quantitative metrics for anatomical accuracy, perceptual similarity, and qualitative analyses displaying the consistency and realism of the generated atlases.

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