用于稀疏视图计算机断层扫描成像的包含多级小波变换和循环卷积的双域重建网络

IF 2.2 4区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Tomography Pub Date : 2024-01-16 DOI:10.3390/tomography10010011
Juncheng Lin, Jialin Li, Jiazhen Dou, Liyun Zhong, Jianglei Di, Yuwen Qin
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引用次数: 0

摘要

稀疏视图计算机断层扫描(SVCT)旨在减少重建物体横截面图像所需的 X 射线投影视图数量。虽然 SVCT 大大降低了 X 射线辐射剂量并加快了扫描速度,但投影数据不足会导致重建图像出现严重的条纹伪影和模糊等问题,从而影响 CT 检测的诊断准确性。为解决这一难题,本文提出了一种结合多级小波变换和递归卷积的双域重建网络。双域网络由正弦图域网络(SDN)和图像域网络(IDN)组成。IDN 和 SDN 均采用多级小波变换,将正弦波图和 CT 图像分解为不同的频率成分,然后通过不同的网络分支进行处理,以恢复各自频段内的详细信息。为了捕捉窦状图和 CT 图像中的全局纹理、伪影和浅层特征,设计了基于卷积长短期记忆(Conv-LSTM)的递归卷积单元(RCU),通过递归计算模拟它们的长程依赖关系。此外,还提出了一个基于自注意的多级频率特性归一化融合(MFNF)模块,通过聚合低频成分来帮助恢复高频成分。最后,设计了一个基于高斯拉普拉斯(LoG)的边缘损失函数作为正则项,以增强对高频边缘结构的恢复。实验结果表明,我们的方法能有效减少伪影,并在各种稀疏视图和噪声水平下增强对复杂结构细节的重建。我们的方法在性能和鲁棒性方面都非常出色,这体现在它在众多定性和定量评估中取得的优异成绩上,超越了当代最先进的 CNN 或基于变换器的重建方法。
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Dual-Domain Reconstruction Network Incorporating Multi-Level Wavelet Transform and Recurrent Convolution for Sparse View Computed Tomography Imaging.

Sparse view computed tomography (SVCT) aims to reduce the number of X-ray projection views required for reconstructing the cross-sectional image of an object. While SVCT significantly reduces X-ray radiation dose and speeds up scanning, insufficient projection data give rise to issues such as severe streak artifacts and blurring in reconstructed images, thereby impacting the diagnostic accuracy of CT detection. To address this challenge, a dual-domain reconstruction network incorporating multi-level wavelet transform and recurrent convolution is proposed in this paper. The dual-domain network is composed of a sinogram domain network (SDN) and an image domain network (IDN). Multi-level wavelet transform is employed in both IDN and SDN to decompose sinograms and CT images into distinct frequency components, which are then processed through separate network branches to recover detailed information within their respective frequency bands. To capture global textures, artifacts, and shallow features in sinograms and CT images, a recurrent convolution unit (RCU) based on convolutional long and short-term memory (Conv-LSTM) is designed, which can model their long-range dependencies through recurrent calculation. Additionally, a self-attention-based multi-level frequency feature normalization fusion (MFNF) block is proposed to assist in recovering high-frequency components by aggregating low-frequency components. Finally, an edge loss function based on the Laplacian of Gaussian (LoG) is designed as the regularization term for enhancing the recovery of high-frequency edge structures. The experimental results demonstrate the effectiveness of our approach in reducing artifacts and enhancing the reconstruction of intricate structural details across various sparse views and noise levels. Our method excels in both performance and robustness, as evidenced by its superior outcomes in numerous qualitative and quantitative assessments, surpassing contemporary state-of-the-art CNNs or Transformer-based reconstruction methods.

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来源期刊
Tomography
Tomography Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
2.70
自引率
10.50%
发文量
222
期刊介绍: TomographyTM publishes basic (technical and pre-clinical) and clinical scientific articles which involve the advancement of imaging technologies. Tomography encompasses studies that use single or multiple imaging modalities including for example CT, US, PET, SPECT, MR and hyperpolarization technologies, as well as optical modalities (i.e. bioluminescence, photoacoustic, endomicroscopy, fiber optic imaging and optical computed tomography) in basic sciences, engineering, preclinical and clinical medicine. Tomography also welcomes studies involving exploration and refinement of contrast mechanisms and image-derived metrics within and across modalities toward the development of novel imaging probes for image-based feedback and intervention. The use of imaging in biology and medicine provides unparalleled opportunities to noninvasively interrogate tissues to obtain real-time dynamic and quantitative information required for diagnosis and response to interventions and to follow evolving pathological conditions. As multi-modal studies and the complexities of imaging technologies themselves are ever increasing to provide advanced information to scientists and clinicians. Tomography provides a unique publication venue allowing investigators the opportunity to more precisely communicate integrated findings related to the diverse and heterogeneous features associated with underlying anatomical, physiological, functional, metabolic and molecular genetic activities of normal and diseased tissue. Thus Tomography publishes peer-reviewed articles which involve the broad use of imaging of any tissue and disease type including both preclinical and clinical investigations. In addition, hardware/software along with chemical and molecular probe advances are welcome as they are deemed to significantly contribute towards the long-term goal of improving the overall impact of imaging on scientific and clinical discovery.
期刊最新文献
A Comparison of the Sensitivity and Cellular Detection Capabilities of Magnetic Particle Imaging and Bioluminescence Imaging. Tumor Morphology for Prediction of Poor Responses Early in Neoadjuvant Chemotherapy for Breast Cancer: A Multicenter Retrospective Study. Evolving and Novel Applications of Artificial Intelligence in Abdominal Imaging. Conference Report: Review of Clinical Implementation of Advanced Quantitative Imaging Techniques for Personalized Radiotherapy. Head and Neck Squamous Cell Carcinoma: Insights from Dual-Energy Computed Tomography (DECT).
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