[1]洪启帆,玄祖兴,李雅馨.基于全卷积神经网络的低剂量CT去噪算法[J].中国医学物理学杂志,2023,40(6):695-700.[doi:DOI:10.3969/j.issn.1005-202X.2023.06.005]
 HONG Qifan,XUAN Zuxing,LI Yaxin.Fully convolutional neural network based algorithm for low-dose CT image denoising[J].Chinese Journal of Medical Physics,2023,40(6):695-700.[doi:DOI:10.3969/j.issn.1005-202X.2023.06.005]
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基于全卷积神经网络的低剂量CT去噪算法()
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《中国医学物理学杂志》[ISSN:1005-202X/CN:44-1351/R]

卷:
40卷
期数:
2023年第6期
页码:
695-700
栏目:
医学影像物理
出版日期:
2023-06-27

文章信息/Info

Title:
Fully convolutional neural network based algorithm for low-dose CT image denoising
文章编号:
1005-202X(2023)06-0695-06
作者:
洪启帆1玄祖兴2李雅馨1
1.北京联合大学智慧城市学院, 北京 100101; 2.北京联合大学数理与交叉科学研究院, 北京 100101
Author(s):
HONG Qifan1 XUAN Zuxing2 LI Yaxin1
1. Smart City College, Beijing Union University, Beijing 100101, China 2. Institute of Fundamental and Interdisciplinary Sciences, Beijing Union University, Beijing 100101, China
关键词:
低剂量CT全卷积神经网络噪声注意力机制特征融合
Keywords:
Keywords: low-dose computed tomography full convolutional neural network noise attention mechanism feature fusion
分类号:
R318;TP391.4
DOI:
DOI:10.3969/j.issn.1005-202X.2023.06.005
文献标志码:
A
摘要:
针对低剂量医学CT图像因减少辐射剂量而引入大量噪声,导致图像质量显著下降的问题,提出一种基于残差注意力机制和自适应特征融合的低剂量CT图像去噪算法,该算法使用全卷积神经网络来完成低剂量CT图像去噪。在网络框架中引入残差注意力机制和选择性内核特征融合模块,以过滤噪声信息,提取有效特征并自适应地融合图像特征,避免重建过程中的细节损失,提高图像质量,使去噪后的图像在感知上更接近原始图像。定性和定量实验表明,与现有的算法相比,在真实的临床数据集上,所提出的算法能够有效地抑制噪声,并恢复低剂量CT图像中更详细的纹理。与低剂量CT图像相比,所提出的算法将峰值信噪比提高14.94%,结构相似度提高4.68%,均方根误差降低40.11%,可以满足医学成像的诊断要求。
Abstract:
Abstract: A low-dose CT image denoising algorithm based on a residual attention mechanism and adaptive feature fusion is proposed to address the problem of the decline of image quality caused by a large amount of noise introduced by low-dose CT images due to reduced radiation dose. The algorithm uses a fully convolutional neural network to accomplish low-dose CT image denoising. A residual attention mechanism and a selective kernel feature fusion module are introduced into the network framework to remove noise, extract effective features and adaptively fuse image features to avoid detail loss during reconstruction, thereby improving image quality and making the denoised images perceptually closer to the original images. The qualitative and quantitative experiments show that the proposed algorithm can effectively suppress noise and recover more detailed textures in low-dose CT images as compared with existing algorithms on real clinical datasets. Compared with low-dose CT images, the proposed algorithm increases the peak signal-to-noise ratio by 14.94%, improves the structural similarity by 4.68%, and reduces the root mean square error by 40.11%, meeting the diagnostic requirements.

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备注/Memo

备注/Memo:
【收稿日期】2022-12-23 【基金项目】北京市优秀人才培养资助青年拔尖个人项目(2018000026833ZK57);北京联合大学人才强校优选计划(BPHR2020EZ01);北京联合大学学科团队一体化建设计划项目(ZB10202001) 【作者简介】洪启帆,硕士,研究方向:图像处理、深度学习等,E-mail: 18810536635@163.com 【通信作者】玄祖兴,博士,教授,研究方向:深度学习、应用数学,E-mail: zuxingxuan@163.com
更新日期/Last Update: 2023-06-28