论文标题

基于深度学习的光谱CT成像

Deep Learning based Spectral CT Imaging

论文作者

Wu, Weiwen, Hu, Dianlin, Niu, Chuang, Broeke, Lieza Vanden, Butler, Anthony P. H., Cao, Peng, Atlas, James, Chernoglazov, Alexander, Vardhanabhuti, Varut, Wang, Ge

论文摘要

光谱计算机断层扫描(CT)引起了人们对辐射剂量减少,金属伪像的去除,组织定量和材料歧视的极大关注。 X射线能量光谱分为几个垃圾箱,每个能量键特异性投影都比当前的集成型对应物具有低信号噪声(SNR),这使图像重建成为独特的挑战。传统智慧是使用基于知识的迭代方法。但是,这种方法需要巨大的计算成本。受深度学习的启发,我们首先开发了一种基于深度学习的重建方法。即,具有L_P^p-norm的U-NET,总变化,残留学习和各向异性适应性(Ultra)。具体而言,我们强调了各种多尺度特征融合和多通道过滤增强功能,并使用密度的连接编码架构来进行残留学习和特征融合。 To address the image deblurring problem associated with the $L_2^2$-loss, we propose a general $L_p^p$-loss, $p>0$ Furthermore, the images from different energy bins share similar structures of the same object, the regularization characterizing correlations of different energy bins is incorporated into the $L_p^p$-loss function, which helps unify the deep learning based methods with traditional compressed sensing based methods.最后,采用各向异性加权的总变异来表征空间谱域中的稀疏性来正规化所提出的网络。特别是,我们在三个大规模光谱CT数据集上验证了我们的超网络,并获得了相对于竞争算法的出色结果。总之,我们在数值模拟和临床前实验中的定量和定性结果表明,我们所提出的方法对于高质量的光谱CT图像重建是准确,有效且健壮的。

Spectral computed tomography (CT) has attracted much attention in radiation dose reduction, metal artifacts removal, tissue quantification and material discrimination. The x-ray energy spectrum is divided into several bins, each energy-bin-specific projection has a low signal-noise-ratio (SNR) than the current-integrating counterpart, which makes image reconstruction a unique challenge. Traditional wisdom is to use prior knowledge based iterative methods. However, this kind of methods demands a great computational cost. Inspired by deep learning, here we first develop a deep learning based reconstruction method; i.e., U-net with L_p^p-norm, Total variation, Residual learning, and Anisotropic adaption (ULTRA). Specifically, we emphasize the Various Multi-scale Feature Fusion and Multichannel Filtering Enhancement with a denser connection encoding architecture for residual learning and feature fusion. To address the image deblurring problem associated with the $L_2^2$-loss, we propose a general $L_p^p$-loss, $p>0$ Furthermore, the images from different energy bins share similar structures of the same object, the regularization characterizing correlations of different energy bins is incorporated into the $L_p^p$-loss function, which helps unify the deep learning based methods with traditional compressed sensing based methods. Finally, the anisotropically weighted total variation is employed to characterize the sparsity in the spatial-spectral domain to regularize the proposed network. In particular, we validate our ULTRA networks on three large-scale spectral CT datasets, and obtain excellent results relative to the competing algorithms. In conclusion, our quantitative and qualitative results in numerical simulation and preclinical experiments demonstrate that our proposed approach is accurate, efficient and robust for high-quality spectral CT image reconstruction.

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