LaTIM, INSERM, UMR 1101, Université de Bretagne Occidentale, F-29238 Brest, France.
School of Science and Engineering, University of Dundee, Scotland DD1 4HN, United Kingdom.
Phys Med Biol. 2022 Jul 19;67(15). doi: 10.1088/1361-6560/ac7bce.
. Sparse-view computed tomography (CT) reconstruction has been at the forefront of research in medical imaging. Reducing the total x-ray radiation dose to the patient while preserving the reconstruction accuracy is a big challenge. The sparse-view approach is based on reducing the number of rotation angles, which leads to poor quality reconstructed images as it introduces several artifacts. These artifacts are more clearly visible in traditional reconstruction methods like the filtered-backprojection (FBP) algorithm.. Over the years, several model-based iterative and more recently deep learning-based methods have been proposed to improve sparse-view CT reconstruction. Many deep learning-based methods improve FBP-reconstructed images as a post-processing step. In this work, we propose a direct deep learning-based reconstruction that exploits the information from low-dimensional scout images, to learn the projection-to-image mapping. This is done by concatenating FBP scout images at multiple resolutions in the decoder part of a convolutional encoder-decoder (CED).. This approach is investigated on two different networks, based on Dense Blocks and U-Net to show that a direct mapping can be learned from a sinogram to an image. The results are compared to two post-processing deep learning methods (FBP-ConvNet and DD-Net) and an iterative method that uses a total variation (TV) regularization.. This work presents a novel method that uses information from both sinogram and low-resolution scout images for sparse-view CT image reconstruction. We also generalize this idea by demonstrating results with two different neural networks. This work is in the direction of exploring deep learning across the various stages of the image reconstruction pipeline involving data correction, domain transfer and image improvement.
. 稀疏视角计算机断层扫描(CT)重建一直是医学成像研究的前沿。在保持重建准确性的同时,降低患者的总 X 射线辐射剂量是一个巨大的挑战。稀疏视角方法基于减少旋转角度的数量,这会导致重建图像质量较差,因为它会引入几种伪影。这些伪影在传统的重建方法(如滤波反投影(FBP)算法)中更为明显。. 多年来,已经提出了几种基于模型的迭代和最近基于深度学习的方法来改进稀疏视角 CT 重建。许多基于深度学习的方法作为后处理步骤来改善 FBP 重建的图像。在这项工作中,我们提出了一种直接基于深度学习的重建方法,利用来自低维 scout 图像的信息来学习投影到图像的映射。这是通过在解码器部分的卷积编码器-解码器(CED)中串联 FBP scout 图像来实现的,在多个分辨率下进行。. 该方法在两个不同的网络上进行了研究,基于密集块和 U-Net 来证明可以从正弦图直接学习到图像。结果与两种后处理深度学习方法(FBP-ConvNet 和 DD-Net)和一种使用全变差(TV)正则化的迭代方法进行了比较。. 这项工作提出了一种新的方法,该方法使用正弦图和低分辨率 scout 图像的信息来进行稀疏视角 CT 图像重建。我们还通过使用两个不同的神经网络展示结果来推广这个想法。这项工作是在探索深度学习在涉及数据校正、域转换和图像改进的图像重建管道的各个阶段中的应用。