Department of Radiology, Mayo Clinic, Rochester, MN, United States of America.
Phys Med Biol. 2018 Sep 21;63(19):195003. doi: 10.1088/1361-6560/aadc90.
Dual- or multi-energy CT, also known as spectral CT, obtains x-ray attenuation measurements at two or more energy spectra, allowing quantification of materials with different compositions. This process is known as material decomposition, which is the basis for a number of spectral CT applications. The conventional image-domain basis material decomposition is based on a least-squares fitting between the underlying material-specific images and the measured source spectral CT images (i.e. energy-bin or energy-threshold CT images), and a non-iterative solution based on matrix inversion can be derived for this process. However, due to its ill-conditioned nature, the material decomposition process is intrinsically susceptible to noise amplification. Hence, material-specific images can be contaminated by the presence of strong noise, which compromises the conspicuity of small objects, and hinders the delineation of anatomical regions of interest and associated pathology. In this work, we describe an image domain material decomposition framework with prior knowledge aware iterative denoising (MD-PKAID). The proposed framework exploits the structural redundancy between the individual material-specific images and the source spectral CT images to retain structural details in denoised material-specific images. It directly treats material decomposition as a regularized optimization problem with spectral CT images measured with different energy spectra as inputs. Phantom, in vivo animal and human data were acquired on a research whole-body photon-counting-detector-based CT system and a dual-source, dual-energy CT system to test the proposed method. The phantom results show that the proposed MD-PKAID can reduce the root-mean-square-error of basis material quantification by 75% compared to the standard material decomposition based on matrix inversion, while preserving structural details and image resolution in the material-specific images. The initial in vivo results demonstrate that the proposed method can improve delineation of small vasculature features in iodine-specific images while reducing image noise.
双能或多能 CT,也称为能谱 CT,在两个或多个能谱上获得 X 射线衰减测量值,从而实现具有不同成分的物质的定量分析。这个过程称为物质分解,是许多光谱 CT 应用的基础。传统的图像域基础物质分解是基于潜在的物质特异性图像与测量的源光谱 CT 图像(即能量-bin 或能量阈值 CT 图像)之间的最小二乘拟合,并且可以为该过程推导出基于矩阵求逆的非迭代解决方案。然而,由于其病态性质,物质分解过程本质上容易受到噪声放大的影响。因此,物质特异性图像可能会受到强噪声的污染,从而影响小物体的显著性,并阻碍感兴趣的解剖区域和相关病理学的描绘。在这项工作中,我们描述了一种具有先验知识感知迭代去噪的图像域物质分解框架(MD-PKAID)。所提出的框架利用各个物质特异性图像和源光谱 CT 图像之间的结构冗余性,在去噪的物质特异性图像中保留结构细节。它直接将物质分解视为具有不同能谱测量的光谱 CT 图像作为输入的正则化优化问题。使用基于研究全身光子计数探测器的 CT 系统和双源、双能 CT 系统采集了体模、体内动物和人体数据,以测试所提出的方法。体模结果表明,与基于矩阵求逆的标准物质分解相比,所提出的 MD-PKAID 可以将基础物质定量的均方根误差降低 75%,同时保留物质特异性图像中的结构细节和图像分辨率。初步的体内结果表明,该方法可以改善碘特异性图像中小血管特征的描绘,同时降低图像噪声。