Recurrent learning with clique structures for prostate sparse‐view CT artifacts reduction

Abstract In recent years, convolutional neural networks have achieved great success in streak artifacts reduction. However, there is no special method designed for the artifacts reduction of the prostate. To solve the problem, the artifacts reduction CliqueNet (ARCliqueNet) to reconstruct dense‐view...

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Main Authors: Tiancheng Shen, Yibo Yang, Zhouchen Lin, Mingbin Zhang
Format: Article
Language:English
Published: Wiley 2021-02-01
Series:IET Image Processing
Online Access:https://doi.org/10.1049/ipr2.12048
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spelling doaj-d599f6bfa4cb41b38009e37aaf7660ea2021-07-14T13:20:38ZengWileyIET Image Processing1751-96591751-96672021-02-0115364865510.1049/ipr2.12048Recurrent learning with clique structures for prostate sparse‐view CT artifacts reductionTiancheng Shen0Yibo Yang1Zhouchen Lin2Mingbin Zhang3Center for Data Science Peking University Beijing ChinaCenter for Data Science Peking University Beijing ChinaKey Laboratory of Machine Perception (MOE), School of Electronics Engineering and Computer Science Peking University Beijing ChinaDepartment of Urology Affiliated Union Hospital of Fujian Medical University Fuzhou ChinaAbstract In recent years, convolutional neural networks have achieved great success in streak artifacts reduction. However, there is no special method designed for the artifacts reduction of the prostate. To solve the problem, the artifacts reduction CliqueNet (ARCliqueNet) to reconstruct dense‐view computed tomography images form sparse‐view computed tomography images is proposed. In detail, first, the proposed ARCliqueNet extracts a set of feature maps from the prostate sparse‐view CT image by Clique Block. Second, the feature maps are sent to ASPP with memory to be refined. Thenanother Clique Block is applied to the output of ASPP with memory and reconstruct the dense‐view CT images. Later on, reconstructed dense‐view CT images are used as new input of the original network. This process is repeated recurrently with memory delivering information between these recurrent stages. The final reconstructed dense‐view CT images are the output of the last recurrent stage. Our proposed ARCliqueNet outperforms the SOTA (state‐of‐the‐art) general artifacts reduction methods on the prostate dataset in terms of PSNR (peak signal‐to‐noise ratio) and SSIM (structural similarity). Therefore, we can draw the conclusion that Clique structures, ASPP with memory and recurrent learning are useful for prostate sparse‐view CT Artifacts here.https://doi.org/10.1049/ipr2.12048
collection DOAJ
language English
format Article
sources DOAJ
author Tiancheng Shen
Yibo Yang
Zhouchen Lin
Mingbin Zhang
spellingShingle Tiancheng Shen
Yibo Yang
Zhouchen Lin
Mingbin Zhang
Recurrent learning with clique structures for prostate sparse‐view CT artifacts reduction
IET Image Processing
author_facet Tiancheng Shen
Yibo Yang
Zhouchen Lin
Mingbin Zhang
author_sort Tiancheng Shen
title Recurrent learning with clique structures for prostate sparse‐view CT artifacts reduction
title_short Recurrent learning with clique structures for prostate sparse‐view CT artifacts reduction
title_full Recurrent learning with clique structures for prostate sparse‐view CT artifacts reduction
title_fullStr Recurrent learning with clique structures for prostate sparse‐view CT artifacts reduction
title_full_unstemmed Recurrent learning with clique structures for prostate sparse‐view CT artifacts reduction
title_sort recurrent learning with clique structures for prostate sparse‐view ct artifacts reduction
publisher Wiley
series IET Image Processing
issn 1751-9659
1751-9667
publishDate 2021-02-01
description Abstract In recent years, convolutional neural networks have achieved great success in streak artifacts reduction. However, there is no special method designed for the artifacts reduction of the prostate. To solve the problem, the artifacts reduction CliqueNet (ARCliqueNet) to reconstruct dense‐view computed tomography images form sparse‐view computed tomography images is proposed. In detail, first, the proposed ARCliqueNet extracts a set of feature maps from the prostate sparse‐view CT image by Clique Block. Second, the feature maps are sent to ASPP with memory to be refined. Thenanother Clique Block is applied to the output of ASPP with memory and reconstruct the dense‐view CT images. Later on, reconstructed dense‐view CT images are used as new input of the original network. This process is repeated recurrently with memory delivering information between these recurrent stages. The final reconstructed dense‐view CT images are the output of the last recurrent stage. Our proposed ARCliqueNet outperforms the SOTA (state‐of‐the‐art) general artifacts reduction methods on the prostate dataset in terms of PSNR (peak signal‐to‐noise ratio) and SSIM (structural similarity). Therefore, we can draw the conclusion that Clique structures, ASPP with memory and recurrent learning are useful for prostate sparse‐view CT Artifacts here.
url https://doi.org/10.1049/ipr2.12048
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AT zhouchenlin recurrentlearningwithcliquestructuresforprostatesparseviewctartifactsreduction
AT mingbinzhang recurrentlearningwithcliquestructuresforprostatesparseviewctartifactsreduction
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