Identity-Consistent Diffusion Network for Grading Knee Osteoarthritis Progression in Radiographic Imaging
Wenhua Wu, Kun Hu, Wenxi Yue, Wei Li, Milena Simic, Changyang Li, Wei, Xiang, and Zhiyong Wang

TL;DR
This paper introduces a novel generative diffusion model that predicts future knee X-ray images conditioned on baseline scans, enabling multifaceted assessment of KOA progression with improved clinical nuance understanding.
Contribution
The study proposes the Identity-Consistent Radiographic Diffusion Network (IC-RDN), integrating identity priors and progression prediction modules for enhanced KOA prognosis from X-ray images.
Findings
Effective in predicting future knee X-ray images
Outperforms existing models on public dataset
Provides detailed severity progression insights
Abstract
Knee osteoarthritis (KOA), a common form of arthritis that causes physical disability, has become increasingly prevalent in society. Employing computer-aided techniques to automatically assess the severity and progression of KOA can greatly benefit KOA treatment and disease management. Particularly, the advancement of X-ray technology in KOA demonstrates its potential for this purpose. Yet, existing X-ray prognosis research generally yields a singular progression severity grade, overlooking the potential visual changes for understanding and explaining the progression outcome. Therefore, in this study, a novel generative model is proposed, namely Identity-Consistent Radiographic Diffusion Network (IC-RDN), for multifaceted KOA prognosis encompassing a predicted future knee X-ray scan conditioned on the baseline scan. Specifically, an identity prior module for the diffusion and a…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications · AI in cancer detection
MethodsDiffusion · Contrastive Learning · Focus
