Noise Entangled GAN For Low-Dose CT Simulation

We propose a Noise Entangled GAN (NE-GAN) for simulating low-dose computed tomography (CT) images from a higher dose CT image. First, we present two schemes to generate a clean CT image and a noise image from the high-dose CT image. Then an NE-GAN is proposed to simulate different levels of low-dose CT images, where the level of generated noise can be continuously controlled by a noise factor. NE-GAN consists of a generator and a set of discriminators, the number of discriminators is determined by the number of noise levels during training. Compared with traditional methods based on projection data that are usually unavailable in real applications, NE-GAN can directly learn from real and/or simulated CT images and may create low-dose CT images quickly without the need of raw data or other proprietary CT scanner information. The experimental results show that the proposed method has the potential to simulate realistic low-dose CT images.

Reference

C. Niu, G. Wang, P. Yan, J. Hahn, Y. Lai, X. Jia, A. Krishna, K. Mueller, A. Badal, K.J. Myers, R. Zeng. "Noise Entangled GAN For Low-Dose CT Simulation"

Proc. 16th Int. Meeting on Fully 3D Image Recon. in Rad. and Nuclear Med., Leuven, Belgium (2021)