A Novel Network for Low-Dose CT Denoising Based on Dual-Branch Structure and Multi-Scale Residual Attention

IF 2.9 2区 工程技术 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Ju Zhang, Lieli Ye, Weiwei Gong, Mingyang Chen, Guangyu Liu, Yun Cheng
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引用次数: 0

Abstract

Deep learning-based denoising of low-dose medical CT images has received great attention both from academic researchers and physicians in recent years, and has shown important application value in clinical practice. In this work, a novel two-branch and multi-scale residual attention-based network for low-dose CT image denoising is proposed. It adopts a two-branch framework structure, to extract and fuse image features at shallow and deep levels respectively, to recover image texture and structure information as much as possible. We propose the adaptive dynamic convolution block (ADCB) in the local information extraction layer. It can effectively extract the detailed information of low-dose CT denoising and enables the network to better capture the local details and texture features of the image, thereby improving the denoising effect and image quality. Multi-scale edge enhancement attention block (MEAB) is proposed in the global information extraction layer, to perform feature fusion through dilated convolution and a multi-dimensional attention mechanism. A multi-scale residual convolution block (MRCB) is proposed to integrate feature information and improve the robustness and generalization of the network. To demonstrate the effectiveness of our method, extensive comparison experiments are conducted and the performances evaluated on two publicly available datasets. Our model achieves 29.3004 PSNR, 0.8659 SSIM, and 14.0284 RMSE on the AAPM-Mayo dataset. It is evaluated by adding four different noise levels σ = 15, 30, 45, and 60 on the Qin_LUNG_CT dataset and achieves the best results. Ablation studies show that the proposed ADCB, MEAB, and MRCB modules improve the denoising performances significantly. The source code is available at https://github.com/Ye111-cmd/LDMANet.

Abstract Image

基于双分支结构和多尺度残留注意力的低剂量 CT 去噪新型网络
近年来,基于深度学习的低剂量医学 CT 图像去噪受到了学术研究人员和医生的极大关注,并在临床实践中显示出了重要的应用价值。本研究提出了一种新颖的基于双分支和多尺度残差注意力的低剂量 CT 图像去噪网络。它采用双分支框架结构,分别从浅层和深层提取和融合图像特征,尽可能地恢复图像纹理和结构信息。我们在局部信息提取层中提出了自适应动态卷积块(ADCB)。它能有效提取低剂量 CT 去噪的细节信息,使网络更好地捕捉图像的局部细节和纹理特征,从而提高去噪效果和图像质量。在全局信息提取层提出了多尺度边缘增强注意块(MEAB),通过扩张卷积和多维注意机制进行特征融合。我们还提出了多尺度残差卷积块(MRCB)来整合特征信息,提高网络的鲁棒性和泛化能力。为了证明我们方法的有效性,我们在两个公开数据集上进行了广泛的对比实验和性能评估。我们的模型在 AAPM-Mayo 数据集上实现了 29.3004 PSNR、0.8659 SSIM 和 14.0284 RMSE。在 Qin_LUNG_CT 数据集上,通过添加四种不同的噪声水平 σ = 15、30、45 和 60 进行评估,结果最佳。消融研究表明,所提出的 ADCB、MEAB 和 MRCB 模块显著提高了去噪性能。源代码见 https://github.com/Ye111-cmd/LDMANet。
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来源期刊
Journal of Digital Imaging
Journal of Digital Imaging 医学-核医学
CiteScore
7.50
自引率
6.80%
发文量
192
审稿时长
6-12 weeks
期刊介绍: The Journal of Digital Imaging (JDI) is the official peer-reviewed journal of the Society for Imaging Informatics in Medicine (SIIM). JDI’s goal is to enhance the exchange of knowledge encompassed by the general topic of Imaging Informatics in Medicine such as research and practice in clinical, engineering, and information technologies and techniques in all medical imaging environments. JDI topics are of interest to researchers, developers, educators, physicians, and imaging informatics professionals. Suggested Topics PACS and component systems; imaging informatics for the enterprise; image-enabled electronic medical records; RIS and HIS; digital image acquisition; image processing; image data compression; 3D, visualization, and multimedia; speech recognition; computer-aided diagnosis; facilities design; imaging vocabularies and ontologies; Transforming the Radiological Interpretation Process (TRIP™); DICOM and other standards; workflow and process modeling and simulation; quality assurance; archive integrity and security; teleradiology; digital mammography; and radiological informatics education.
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