4.7 Article

DiCyc: GAN-based deformation invariant cross-domain information fusion for medical image synthesis

Journal

INFORMATION FUSION
Volume 67, Issue -, Pages 147-160

Publisher

ELSEVIER
DOI: 10.1016/j.inffus.2020.10.015

Keywords

Information fusion; GAN; Image synthesis

Funding

  1. British Heart Foundation, UK [RG/16/10/32375]
  2. British Heart Foundation [RG/16/10/32375, CH/09/002, RE/18/5/34216, PG/16/78/32402]
  3. Wellcome Trust Senior Investigator Award [WT103782AIA]
  4. IIAT Hangzhou
  5. European Research Council Innovative Medicines Initiative on Development of Therapeutics and Diagnostics Combatting Coronavirus Infections Award [H2020-JTI-IMI2 101005122]
  6. AI for Health Imaging Award [H2020-SC1-FADTS-2019-1 952172]
  7. EPSRC, UK [EP/P022928/1]
  8. Royal Academy of Engineering, UK
  9. Research Chairs and Senior Research Fellowships scheme
  10. EPSRC [EP/P022928/1] Funding Source: UKRI

Ask authors/readers for more resources

This paper presents a deformation invariant Cycle consistency model that filters out domain-specific deformations, achieving better alignment between synthesized images and source domain data. Experimental results demonstrate that this method achieves superior alignment between source and target data while maintaining high image quality compared to several state-of-the-art CycleGAN-based methods.
Cycle-consistent generative adversarial network (CycleGAN) has been widely used for cross-domain medical image synthesis tasks particularly due to its ability to deal with unpaired data. However, most CycleGANbased synthesis methods cannot achieve good alignment between the synthesized images and data from the source domain, even with additional image alignment losses. This is because the CycleGAN generator network can encode the relative deformations and noises associated to different domains. This can be detrimental for the downstream applications that rely on the synthesized images, such as generating pseudo-CT for PET-MR attenuation correction. In this paper, we present a deformation invariant cycle-consistency model that can filter out these domain-specific deformation. The deformation is globally parameterized by thin-plate-spline (TPS), and locally learned by modified deformable convolutional layers. Robustness to domain-specific deformations has been evaluated through experiments on multi-sequence brain MR data and multi-modality abdominal CT and MR data. Experiment results demonstrated that our method can achieve better alignment between the source and target data while maintaining superior image quality of signal compared to several state-of-the-art CycleGAN-based methods.

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