School of Biomedical Engineering, Hubei University of Science and Technology, Xianning 437100, People's Republic of China. Authors to whom any correspondence should be addressed.
Phys Med Biol. 2018 Nov 28;63(23):235016. doi: 10.1088/1361-6560/aaeea6.
Iterative reconstruction (IR) methods that can incorporate filtering or regularization techniques have received widespread attention in many situations. Total variation (TV) regularization has proven to be a powerful tool to suppress streak artifacts and noise for sparse-view computed tomography (CT) reconstruction over 360°. However, with under-sampled projection data from limited-view (e.g. half-view) CT scanning, where the projections are further reduced, the edge structures are partly blurred, and some artifacts (such as blocky artifacts) are not effectively suppressed in TV-based results. To further improve the quality of the reconstructed image, a sparsity-induced dynamic guided image filtering reconstruction (SIDGIFR) method is proposed. Intermediate reconstruction results constrained by total difference (TD) minimization are taken as the guidance image to filter the results of projection onto convex sets (POCS) by guided image filtering (GIF). In the SIDGIFR algorithm, the guidance image is dynamically updated, which can transfer the important features (such as edge and small details) to the filtered image during the iterative process. To confirm the efficiency and feasibility of the SIDGIFR algorithm, simulated experiments and real data studies are performed. The quantitative evaluation shows that the proposed SIDGIFR method has better performance than other classical IR methods. What's more, the proposed SIDGIFR algorithm can better preserve the edge structures, and suppress noise and artifacts, than the existing IR methods.
迭代重建 (IR) 方法可以结合滤波或正则化技术,在许多情况下受到广泛关注。全变差 (TV) 正则化已被证明是一种强大的工具,可以抑制稀疏视角 CT 重建中的条纹伪影和噪声,超过 360°。然而,对于来自有限视角(例如半视角) CT 扫描的欠采样投影数据,其中投影进一步减少,边缘结构部分模糊,并且在基于 TV 的结果中一些伪影(例如块状伪影)未被有效抑制。为了进一步提高重建图像的质量,提出了一种稀疏诱导动态引导图像滤波重建(SIDGIFR)方法。以总变差(TD)最小化为约束的中间重建结果作为引导图像,通过引导图像滤波(GIF)对凸集投影(POCS)的结果进行滤波。在 SIDGIFR 算法中,引导图像是动态更新的,这可以在迭代过程中将重要特征(如边缘和小细节)传递到滤波图像中。为了验证 SIDGIFR 算法的效率和可行性,进行了模拟实验和真实数据研究。定量评估表明,所提出的 SIDGIFR 方法比其他经典 IR 方法具有更好的性能。更重要的是,与现有的 IR 方法相比,所提出的 SIDGIFR 算法可以更好地保留边缘结构,抑制噪声和伪影。