Structure-Preserving Medical Image Generation from a Latent Graph Representation
Kevin Arias, Edwin Vargas, Kumar Vijay Mishra, Antonio Ortega, Henry Arguello

TL;DR
This paper introduces a novel generative model that learns a latent graph representation to generate structure-preserving synthetic X-ray images, improving data augmentation for medical imaging tasks.
Contribution
The paper proposes a new generative model that learns a latent graph to capture intrinsic image structure and uses it to generate realistic, structure-preserving X-ray images, enhancing data augmentation.
Findings
Improved classification accuracy by up to 3%.
Enhanced segmentation performance by up to 2%.
Effective structure-preserving image generation demonstrated.
Abstract
Supervised learning techniques have proven their efficacy in many applications with abundant data. However, applying these methods to medical imaging is challenging due to the scarcity of data, given the high acquisition costs and intricate data characteristics of those images, thereby limiting the full potential of deep neural networks. To address the lack of data, augmentation techniques leverage geometry, color, and the synthesis ability of generative models (GMs). Despite previous efforts, gaps in the generation process limit the impact of data augmentation to improve understanding of medical images, e.g., the highly structured nature of some domains, such as X-ray images, is ignored. Current GMs rely solely on the network's capacity to blindly synthesize augmentations that preserve semantic relationships of chest X-ray images, such as anatomical restrictions, representative…
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