Institut de Génie Biomédical, Ecole Polytechnique de Montréal, Montréal, Québec H3T 1J4, Canada.
Med Phys. 2010 Sep;37(9):4577-89. doi: 10.1118/1.3447722.
An iterative edge-preserving CT reconstruction algorithm for high-resolution imaging of small regions of the field of view is investigated. It belongs to a family of region-of-interest reconstruction techniques in which a low-cost pilot reconstruction of the whole field of view is first performed and then used to deduce the contribution of the region of interest to the projection data. These projections are used for a high-resolution reconstruction of the region of interest (ROI) using a regularized iterative algorithm, resulting in significant computational savings. This paper examines how the technique by which the pilot reconstruction of the full field of view is obtained affects the total runtime and the image quality in the region of interest.
Previous contributions to the literature have each focused on a single approach for the pilot reconstruction. In this paper, two such approaches are compared: the filtered backprojection and a low-resolution regularized iterative reconstruction method. ROI reconstructions are compared in terms of image quality and computational cost over simulated and physical phantom (Catphan600) studies, in order to assess the compromises that most impact the quality of the ROI reconstruction.
With the simulated phantom, new artifacts that appear in the ROI images are caused by significant errors in the pilot reconstruction. These errors include excessive coarseness of the pilot image grid and beam-hardening artifacts. With the Catphan600 phantom, differences in the imaging model of the scanner and that of the iterative reconstruction algorithm cause dark border artifacts in the ROI images.
Inexpensive pilot reconstruction techniques (analytical algorithms, very-coarse-grid penalized likelihood) are practical choices in many common cases. However, they may yield background images altered by edge degradation or beam hardening, inducing projection inconsistency in the data used for ROI reconstruction. The ROI images thus have significant streak and speckle artifacts, which adversely affect the resolution-to-noise compromise. In these cases, edge-preserving penalized-likelihood methods on not-too-coarse image grids prove to be more robust and provide the best ROI image quality.
研究了一种用于高分辨率成像小视野区域的迭代边缘保持 CT 重建算法。它属于感兴趣区域重建技术的一种,其中首先进行整个视野的低成本初步重建,然后用于推断感兴趣区域对投影数据的贡献。这些投影用于使用正则化迭代算法对感兴趣区域(ROI)进行高分辨率重建,从而显著节省计算资源。本文研究了获得整个视野初步重建的技术如何影响总运行时间和 ROI 中的图像质量。
以前的文献贡献都集中在初步重建的单一方法上。在本文中,比较了两种方法:滤波反投影和低分辨率正则化迭代重建方法。通过模拟和物理体模(Catphan600)研究比较 ROI 重建的图像质量和计算成本,以评估对 ROI 重建质量影响最大的折衷方案。
在模拟体模中,ROI 图像中出现的新伪影是由于初步重建中的严重误差引起的。这些误差包括初步图像网格的过度粗糙和束硬化伪影。在 Catphan600 体模中,扫描仪的成像模型和迭代重建算法的成像模型之间的差异导致 ROI 图像中的暗边框伪影。
在许多常见情况下,廉价的初步重建技术(解析算法、非常粗网格惩罚似然)是实用的选择。然而,它们可能会导致背景图像受到边缘降级或束硬化的影响,从而在用于 ROI 重建的数据中引入投影不一致性。因此,ROI 图像具有明显的条纹和斑点伪影,这会对分辨率-噪声折衷产生不利影响。在这些情况下,保边惩罚似然方法在不太粗的图像网格上证明更稳健,并提供最佳的 ROI 图像质量。