Conditional Generation of Medical Images via Disentangled Adversarial Inference
Mohammad Havaei, Ximeng Mao, Yiping Wang, Qicheng Lao

TL;DR
This paper introduces a novel method for medical image generation that disentangles style and content, providing enhanced control and quality in synthetic images through unsupervised and supervised learning techniques.
Contribution
It proposes a new framework that learns disentangled style and content representations in medical images, improving control and quality of generated images compared to existing cGAN approaches.
Findings
Achieves superior disentanglement scores.
Outperforms existing models in image quality.
Provides better control over generated images.
Abstract
Synthetic medical image generation has a huge potential for improving healthcare through many applications, from data augmentation for training machine learning systems to preserving patient privacy. Conditional Adversarial Generative Networks (cGANs) use a conditioning factor to generate images and have shown great success in recent years. Intuitively, the information in an image can be divided into two parts: 1) content which is presented through the conditioning vector and 2) style which is the undiscovered information missing from the conditioning vector. Current practices in using cGANs for medical image generation, only use a single variable for image generation (i.e., content) and therefore, do not provide much flexibility nor control over the generated image. In this work we propose a methodology to learn from the image itself, disentangled representations of style and content,…
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