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首页> 外文期刊>IEEE Transactions on Radiation and Plasma Medical Sciences >Deep-Neural-Network-Based Sinogram Synthesis for Sparse-View CT Image Reconstruction
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Deep-Neural-Network-Based Sinogram Synthesis for Sparse-View CT Image Reconstruction

机译:基于深度神经网络的Singram合成,用于稀疏CT图像重建

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摘要

Recently, a number of approaches to low-dose computed tomography (CT) have been developed and deployed in commercialized CT scanners. Tube current reduction is perhaps the most actively explored technology with advanced image reconstruction algorithms. Sparse data sampling is another viable option to the low-dose CT, and sparse-view CT has been particularly of interest among the researchers in CT community. Since analytic image reconstruction algorithms would lead to severe image artifacts, various iterative algorithms have been developed for reconstructing images from sparsely view-sampled projection data. However, iterative algorithms take much longer computation time than the analytic algorithms, and images are usually prone to different types of image artifacts that heavily depend on the reconstruction parameters. Interpolation methods have also been utilized to fill the missing data in the sinogram of sparse-view CT thus providing synthetically full data for analytic image reconstruction. In this paper, we introduce a deep-neural-network-enabled sinogram synthesis method for sparse-view CT, and show its outperformance to the existing interpolation methods and also to the iterative image reconstruction approach.
机译:近来,已开发出许多用于低剂量计算机断层摄影(CT)的方法并将其部署在商业化CT扫描仪中。降低管电流也许是最先进的图像重建算法,是最积极探索的技术。稀疏数据采样是低剂量CT的另一个可行选择,而稀疏视图CT在CT社区的研究人员中尤其引起关注。由于解析图像重建算法会导致严重的图像伪影,因此已经开发了各种迭代算法,用于从稀疏视图采样的投影数据中重建图像。然而,迭代算法比解析算法需要更长的计算时间,并且图像通常倾向于严重依赖于重建参数的不同类型的图像伪像。内插方法也已被用来填充稀疏视图CT的正弦图中的缺失数据,从而为分析图像重建提供了合成的完整数据。在本文中,我们介绍了一种适用于稀疏视图CT的启用深度神经网络的正弦图合成方法,并显示了其在现有插值方法和迭代图像重建方法方面的出色表现。

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