基于多通道 SGM 的稀疏视图光谱 CT 重建和材料分解。

Yuedong Liu, Xuan Zhou, Cunfeng Wei, Qiong Xu
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引用次数: 0

摘要

在医学应用中,造影剂在组织中的扩散可以反映生物体的生理功能,因此量化造影剂在体内一段时间内的分布和含量非常有价值。光谱 CT 具有多能量投影采集和物质分解的优点,可以量化 K 边造影剂。然而,多次重复光谱 CT 扫描会导致辐射剂量超标。稀疏视图扫描常用于减少剂量和扫描时间,但其重建图像通常伴有条纹伪影,导致造影剂定量不准确。为解决这一问题,本文提出了一种基于多通道评分生成模型(SGM)的无监督稀疏视图光谱 CT 重建和物质分解算法。首先,将多能量图像和组织图像作为 SGM 训练的多通道输入数据。其次,对生物体进行稀疏视图多重扫描,利用训练好的 SGM 生成由稀疏视图投影驱动的多能量图像和组织图像。然后,建立一种材料分解算法,将 SGM 生成的组织图像作为求解造影剂图像的先验图像。最后,得到造影剂的分布和含量。本文对该方法进行了比较和评估,并通过一系列小鼠扫描实验验证了该方法的有效性。
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Sparse-view Spectral CT Reconstruction and Material Decomposition based on Multi-channel SGM.

In medical applications, the diffusion of contrast agents in tissue can reflect the physiological function of organisms, so it is valuable to quantify the distribution and content of contrast agents in the body over a period. Spectral CT has the advantages of multi-energy projection acquisition and material decomposition, which can quantify K-edge contrast agents. However, multiple repetitive spectral CT scans can cause excessive radiation doses. Sparse-view scanning is commonly used to reduce dose and scan time, but its reconstructed images are usually accompanied by streaking artifacts, which leads to inaccurate quantification of the contrast agents. To solve this problem, an unsupervised sparse-view spectral CT reconstruction and material decomposition algorithm based on the multi-channel score-based generative model (SGM) is proposed in this paper. First, multi-energy images and tissue images are used as multi-channel input data for SGM training. Secondly, the organism is multiply scanned in sparse views, and the trained SGM is utilized to generate multi-energy images and tissue images driven by sparse-view projections. After that, a material decomposition algorithm using tissue images generated by SGM as prior images for solving contrast agent images is established. Finally, the distribution and content of the contrast agents are obtained. The comparison and evaluation of this method are given in this paper, and a series of mouse scanning experiments are carried out to verify the effectiveness of the method.

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