TL;DR
This paper introduces a novel 3-D PET image generation method using a temporal GAN conditioned on tumour masks, enabling realistic synthetic data creation for improved medical image analysis.
Contribution
Adapts video generation techniques for 3-D medical images and conditions generation on tumour masks, enhancing control and realism of synthetic PET images.
Findings
Synthetic images enable segmentation with similar accuracy to real data.
Radionomic features from synthetic data closely match real data distributions.
Strong statistical correlations are preserved in synthetic data.
Abstract
Training computer-vision related algorithms on medical images for disease diagnosis or image segmentation is difficult due to the lack of training data, labeled samples, and privacy concerns. For this reason, a robust generative method to create synthetic data is highly sought after. However, most three-dimensional image generators require additional image input or are extremely memory intensive. To address these issues we propose adapting video generation techniques for 3-D image generation. Using the temporal GAN (TGAN) architecture, we show we are able to generate realistic head and neck PET images. We also show that by conditioning the generator on tumour masks, we are able to control the geometry and location of the tumour in the generated images. To test the utility of the synthetic images, we train a segmentation model using the synthetic images. Synthetic images conditioned on…
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