Unpaired image denoising using a generative adversarial network in X-ray CT

HS Park, J Baek, SK You, JK Choi, JK Seo - IEEE Access, 2019 - ieeexplore.ieee.org
HS Park, J Baek, SK You, JK Choi, JK Seo
IEEE Access, 2019ieeexplore.ieee.org
This paper proposes a deep learning-based denoising method for noisy low-dose
computerized tomography (CT) images in the absence of paired training data. The proposed
method uses a fidelity-embedded generative adversarial network (GAN) to learn a denoising
function from unpaired training data of low-dose CT (LDCT) and standard-dose CT (SDCT)
images, where the denoising function is the optimal generator in the GAN framework. This
paper analyzes the f-GAN objective to derive a suitable generator that is optimized by …
This paper proposes a deep learning-based denoising method for noisy low-dose computerized tomography (CT) images in the absence of paired training data. The proposed method uses a fidelity-embedded generative adversarial network (GAN) to learn a denoising function from unpaired training data of low-dose CT (LDCT) and standard-dose CT (SDCT) images, where the denoising function is the optimal generator in the GAN framework. This paper analyzes the f-GAN objective to derive a suitable generator that is optimized by minimizing a weighted sum of two losses: the Kullback-Leibler divergence between an SDCT data distribution and a generated distribution, and the 12 loss between the LDCT image and the corresponding generated images (or denoised image). The computed generator reflects the prior belief about SDCT data distribution through training. We observed that the proposed method allows the preservation of fine anomalous features while eliminating noise. The experimental results show that the proposed deep-learning method with unpaired datasets performs comparably to a method using paired datasets. A clinical experiment was also performed to show the validity of the proposed method for noise arising in the low-dose X-ray CT.
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