Inpainting Pathology in Lumbar Spine MRI with Latent Diffusion
Colin Hansen, Simas Glinskis, Ashwin Raju, Micha Kornreich, JinHyeong, Park, Jayashri Pawar, Richard Herzog, Li Zhang, Benjamin Odry

TL;DR
This paper introduces a novel latent diffusion inpainting technique to synthesize realistic pathological features in lumbar spine MRI, enhancing data augmentation for improved radiological diagnosis.
Contribution
It presents an efficient voxelwise noise scheduling method for inpainting complex spinal pathologies, addressing limitations of existing generative models.
Findings
Achieves superior Frechet Inception Distance compared to state-of-the-art methods.
Successfully inserts disc herniation and stenosis in MRI images.
Enhances data augmentation for medical imaging analysis.
Abstract
Data driven models for automated diagnosis in radiology suffer from insufficient and imbalanced datasets due to low representation of pathology in a population and the cost of expert annotations. Datasets can be bolstered through data augmentation. However, even when utilizing a full suite of transformations during model training, typical data augmentations do not address variations in human anatomy. An alternative direction is to synthesize data using generative models, which can potentially craft datasets with specific attributes. While this holds promise, commonly used generative models such as Generative Adversarial Networks may inadvertently produce anatomically inaccurate features. On the other hand, diffusion models, which offer greater stability, tend to memorize training data, raising concerns about privacy and generative diversity. Alternatively, inpainting has the potential…
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Taxonomy
TopicsMedical Imaging and Analysis · Radiomics and Machine Learning in Medical Imaging · Advanced Neuroimaging Techniques and Applications
MethodsInpainting · Diffusion
