Medical image processing has been highlighted as an area where deep learning-based models have the greatest potential. However, in the medical field in particular, problems of data availability and privacy are hampering research progress and thus rapid implementation in clinical routine. The generation of synthetic data not only ensures privacy, but also allows to \textit{draw} new patients with specific characteristics, enabling the development of data-driven models on a much larger scale. This work demonstrates that three-dimensional generative adversarial networks (GANs) can be efficiently trained to generate high-resolution medical volumes with finely detailed voxel-based architectures. In addition, GAN inversion is successfully implemented for the three-dimensional setting and used for extensive research on model interpretability and applications such as image morphing, attribute editing and style mixing. The results are comprehensively validated on a database of three-dimensional HR-pQCT instances representing the bone micro-architecture of the distal radius.
@article{arxiv.2310.17216,
title = {Three-dimensional Bone Image Synthesis with Generative Adversarial Networks},
author = {Christoph Angermann and Johannes Bereiter-Payr and Kerstin Stock and Markus Haltmeier and Gerald Degenhart},
journal= {arXiv preprint arXiv:2310.17216},
year = {2023}
}
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Submitted to the journal Artificial Intelligence in Medicine