| Literature DB >> 33748562 |
Zeheng Li1, Shiwei Zhou2, Junzhou Huang1, Lifeng Yu3, Mingwu Jin2.
Abstract
Low-dose computed tomography (LDCT) is desired due to prevalence and ionizing radiation of CT, but suffers elevated noise. To improve LDCT image quality, an image-domain denoising method based on cycle-consistent generative adversarial network ("CycleGAN") is developed and compared with two other variants, IdentityGAN and GAN-CIRCLE. Different from supervised deep learning methods, these unpaired methods can effectively learn image translation from the low-dose domain to the full-dose (FD) domain without the need of aligning FDCT and LDCT images. The results on real and synthetic patient CT data show that these methods can achieve peak signal-to-noise ratio (PSNR) and structural similarity index (SSIM) comparable to, if not better than, the other state-of-the-art denoising methods. Among CycleGAN, IdentityGAN, and GAN-CIRCLE, the later achieves the best denoising performance with the shortest computation time. Subsequently, GAN-CIRCLE is used to demonstrate that the increasing number of training patches and of training patients can improve denoising performance. Finally, two non-overlapping experiments, i.e. no counterparts of FDCT and LDCT images in the training data, further demonstrate the effectiveness of unpaired learning methods. This work paves the way for applying unpaired deep learning methods to enhance LDCT images without requiring aligned full-dose and low-dose images from the same patient.Entities:
Keywords: Low dose CT; cycle consistency; deep-learning based denoising; generative adversarial network (GAN); unpaired learning
Year: 2020 PMID: 33748562 PMCID: PMC7978404 DOI: 10.1109/trpms.2020.3007583
Source DB: PubMed Journal: IEEE Trans Radiat Plasma Med Sci ISSN: 2469-7303