Can Generative Adversarial Networks help to overcome the limited data problem in segmentation?

Z Med Phys. 2022 Aug;32(3):361-368. doi: 10.1016/j.zemedi.2021.11.006. Epub 2021 Dec 18.

Abstract

Purpose: For image translational tasks, the application of deep learning methods showed that Generative Adversarial Network (GAN) architectures outperform the traditional U-Net networks, when using the same training data size. This study investigates whether this performance boost can also be expected for segmentation tasks with small training dataset size.

Materials/methods: Two models were trained on varying training dataset sizes ranging from 1-100 patients: a) U-Net and b) U-Net with patch discriminator (conditional GAN). The performance of both models to segment the male pelvis on CT-data was evaluated (Dice similarity coefficient, Hausdorff) with respect to training data size.

Results: No significant differences were observed between the U-Net and cGAN when the models were trained with the same training sizes up to 100 patients. The training dataset size had a significant impact on the models' performances, with vast improvements when increasing dataset sizes from 1 to 20 patients.

Conclusion: When introducing GANs for the segmentation task no significant performance boost was observed in our experiments, even in segmentation models developed on small datasets.

Keywords: Automatic segmentation; Deep learning; Generative adversarial networks; Prostate cancer.

MeSH terms

  • Humans
  • Image Processing, Computer-Assisted* / methods
  • Male
  • Pelvis / diagnostic imaging
  • Tomography, X-Ray Computed