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Penalized Weighted Least-Squares Approach to Sinogram Noise Reduction and Image Reconstruction for Low-Dose X-Ray Computed Tomography

机译:低剂量X射线计算机断层扫描的惩罚加权最小二乘法降噪和图像重建

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摘要

Reconstructing low-dose X-ray CT (computed tomography) images is a noise problem. This work investigated a penalized weighted least-squares (PWLS) approach to address this problem in two dimensions, where the WLS considers first- and second-order noise moments and the penalty models signal spatial correlations. Three different implementations were studied for the PWLS minimization. One utilizes a MRF (Markov random field) Gibbs functional to consider spatial correlations among nearby detector bins and projection views in sinogram space and minimizes the PWLS cost function by iterative Gauss-Seidel algorithm. Another employs Karhunen-Loève (KL) transform to de-correlate data signals among nearby views and minimizes the PWLS adaptively to each KL component by analytical calculation, where the spatial correlation among nearby bins is modeled by the same Gibbs functional. The third one models the spatial correlations among image pixels in image domain also by a MRF Gibbs functional and minimizes the PWLS by iterative successive over-relaxation algorithm. In these three implementations, a quadratic functional regularization was chosen for the MRF model. Phantom experiments showed a comparable performance of these three PWLS-based methods in terms of suppressing noise-induced streak artifacts and preserving resolution in the reconstructed images. Computer simulations concurred with the phantom experiments in terms of noise-resolution tradeoff and detectability in low contrast environment. The KL-PWLS implementation may have the advantage in terms of computation for high-resolution dynamic low-dose CT imaging.
机译:重建低剂量X射线CT(计算机断层扫描)图像是一个噪声问题。这项工作研究了一种惩罚加权最小二乘(PWLS)方法来二维解决该问题,其中WLS考虑一阶和二阶噪声矩,惩罚模型表示空间相关性。为了最小化PWLS,研究了三种不同的实现。一种利用MRF(马尔可夫随机场)Gibbs函数来考虑正弦图空间中附近检测器箱与投影视图之间的空间相关性,并通过迭代的高斯-塞德尔算法最小化PWLS成本函数。另一个采用Karhunen-Loève(KL)变换对附近视图之间的数据信号进行解相关,并通过分析计算将PWLS自适应地最小化到每个KL分量,其中附近仓之间的空间相关性由相同的Gibbs函数建模。第三个模型还通过MRF Gibbs函数对图像域中图像像素之间的空间相关性进行建模,并通过迭代连续过度松弛算法将PWLS最小化。在这三个实现中,为MRF模型选择了二次函数正则化。幻影实验表明,在抑制噪声引起的条纹伪影和保留重建图像的分辨率方面,这三种基于PWLS的方法具有相当的性能。在低分辨率环境下,噪声分辨率的权衡和可检测性方面,计算机仿真与幻像实验相吻合。 KL-PWLS实现在高分辨率动态低剂量CT成像的计算方面可能具有优势。

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