InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography
Low-dose Computed Tomography (LDCT) has gained a great deal of attention in clinical procedures due to its ability to reduce the patient's risk of exposure to the X-ray radiation. However, reducing the X-ray dose increases the quantum noise and artifacts in the acquired LDCT images. As a result...
Saved in:
Main Authors: | , , , |
---|---|
Format: | Article |
Published: |
Hindawi Publishing Corporation
2021
|
Subjects: | |
Online Access: | http://eprints.um.edu.my/26518/ |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Universiti Malaya |
id |
my.um.eprints.26518 |
---|---|
record_format |
eprints |
spelling |
my.um.eprints.265182022-03-10T02:30:15Z http://eprints.um.edu.my/26518/ InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography Kulathilake, K. A. Saneera Hemantha Abdullah, Nor Aniza Bandara, A. M. Randitha Ravimal Lai, Khin Wee QA75 Electronic computers. Computer science Low-dose Computed Tomography (LDCT) has gained a great deal of attention in clinical procedures due to its ability to reduce the patient's risk of exposure to the X-ray radiation. However, reducing the X-ray dose increases the quantum noise and artifacts in the acquired LDCT images. As a result, it produces visually low-quality LDCT images that adversely affect the disease diagnosing and treatment planning in clinical procedures. Deep Learning (DL) has recently become the cutting-edge technology of LDCT denoising due to its high performance and data-driven execution compared to conventional denoising approaches. Although the DL-based models perform fairly well in LDCT noise reduction, some noise components are still retained in denoised LDCT images. One reason for this noise retention is the direct transmission of feature maps through the skip connections of contraction and extraction path-based DL modes. Therefore, in this study, we propose a Generative Adversarial Network with Inception network modules (InNetGAN) as a solution for filtering the noise transmission through skip connections and preserving the texture and fine structure of LDCT images. The proposed Generator is modeled based on the U-net architecture. The skip connections in the U-net architecture are modified with three different inception network modules to filter out the noise in the feature maps passing over them. The quantitative and qualitative experimental results have shown the performance of the InNetGAN model in reducing noise and preserving the subtle structures and texture details in LDCT images compared to the other state-of-the-art denoising algorithms. Hindawi Publishing Corporation 2021-09-13 Article PeerReviewed Kulathilake, K. A. Saneera Hemantha and Abdullah, Nor Aniza and Bandara, A. M. Randitha Ravimal and Lai, Khin Wee (2021) InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography. Journal of Healthcare Engineering, 2021. ISSN 2040-2295, DOI https://doi.org/10.1155/2021/9975762 <https://doi.org/10.1155/2021/9975762>. 10.1155/2021/9975762 |
institution |
Universiti Malaya |
building |
UM Library |
collection |
Institutional Repository |
continent |
Asia |
country |
Malaysia |
content_provider |
Universiti Malaya |
content_source |
UM Research Repository |
url_provider |
http://eprints.um.edu.my/ |
topic |
QA75 Electronic computers. Computer science |
spellingShingle |
QA75 Electronic computers. Computer science Kulathilake, K. A. Saneera Hemantha Abdullah, Nor Aniza Bandara, A. M. Randitha Ravimal Lai, Khin Wee InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography |
description |
Low-dose Computed Tomography (LDCT) has gained a great deal of attention in clinical procedures due to its ability to reduce the patient's risk of exposure to the X-ray radiation. However, reducing the X-ray dose increases the quantum noise and artifacts in the acquired LDCT images. As a result, it produces visually low-quality LDCT images that adversely affect the disease diagnosing and treatment planning in clinical procedures. Deep Learning (DL) has recently become the cutting-edge technology of LDCT denoising due to its high performance and data-driven execution compared to conventional denoising approaches. Although the DL-based models perform fairly well in LDCT noise reduction, some noise components are still retained in denoised LDCT images. One reason for this noise retention is the direct transmission of feature maps through the skip connections of contraction and extraction path-based DL modes. Therefore, in this study, we propose a Generative Adversarial Network with Inception network modules (InNetGAN) as a solution for filtering the noise transmission through skip connections and preserving the texture and fine structure of LDCT images. The proposed Generator is modeled based on the U-net architecture. The skip connections in the U-net architecture are modified with three different inception network modules to filter out the noise in the feature maps passing over them. The quantitative and qualitative experimental results have shown the performance of the InNetGAN model in reducing noise and preserving the subtle structures and texture details in LDCT images compared to the other state-of-the-art denoising algorithms. |
format |
Article |
author |
Kulathilake, K. A. Saneera Hemantha Abdullah, Nor Aniza Bandara, A. M. Randitha Ravimal Lai, Khin Wee |
author_facet |
Kulathilake, K. A. Saneera Hemantha Abdullah, Nor Aniza Bandara, A. M. Randitha Ravimal Lai, Khin Wee |
author_sort |
Kulathilake, K. A. Saneera Hemantha |
title |
InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography |
title_short |
InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography |
title_full |
InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography |
title_fullStr |
InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography |
title_full_unstemmed |
InNetGAN: Inception network-based generative adversarial network for denoising low-dose computed tomography |
title_sort |
innetgan: inception network-based generative adversarial network for denoising low-dose computed tomography |
publisher |
Hindawi Publishing Corporation |
publishDate |
2021 |
url |
http://eprints.um.edu.my/26518/ |
_version_ |
1735409422940766208 |