2018 JRNL PP Qingsong Yang - 1.pdf
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Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
Terbatas  Irwan Sofiyan
» Gedung UPT Perpustakaan
The continuous development and extensive
use of computed tomography (CT) in medical practice has
raised a public concern over the associated radiation dose
to the patient. Reducing the radiation dose may lead to
increased noise and artifacts,which can adversely affect the
radiologists’ judgment and confidence. Hence, advanced
image reconstruction from low-dose CT data is needed to
improve the diagnostic performance,which is a challenging
problem due to its ill-posed nature. Over the past years,
various low-dose CT methods have produced impressive
results. However, most of the algorithms developed for
this application, including the recently popularized deep
learning techniques, aim for minimizing the mean-squared
error (MSE) between a denoised CT image and the ground
truth under generic penalties. Although the peak signal-tonoise
ratio is improved,MSE- or weighted-MSE-basedmethods
can compromise the visibility of important structural
details after aggressive denoising. This paper introduces
a new CT image denoising method based on the generative
adversarial network (GAN) with Wasserstein distance
and perceptual similarity. The Wasserstein distance is a key concept of the optimal transport theory and promises
to improve the performance of GAN. The perceptual loss
suppresses noise by comparing the perceptual features of
a denoised output against those of the ground truth in an
established feature space, while the GAN focuses more on
migrating the data noise distribution from strong to weak
statistically. Therefore, our proposed method transfers our
knowledge of visual perception to the image denoising task
and is capable of not only reducing the image noise level but
also trying to keep the critical information at the same time.
Promising results have been obtained in our experiments
with clinical CT images.