Department of Radiology, Utah Center for Advanced Imaging Research (UCAIR), University of Utah, Salt Lake City, UT 84108, USA.
Phys Med Biol. 2013 May 21;58(10):3413-31. doi: 10.1088/0031-9155/58/10/3413. Epub 2013 Apr 26.
Iterative image reconstruction with the total-variation (TV) constraint has become an active research area in recent years, especially in x-ray CT and MRI. Based on Green's one-step-late algorithm, this paper develops a transmission noise weighted iterative algorithm with a TV prior. This paper compares the reconstructions from this iterative TV algorithm with reconstructions from our previously developed non-iterative reconstruction method that consists of a noise-weighted filtered backprojection (FBP) reconstruction algorithm and a nonlinear edge-preserving post filtering algorithm. This paper gives a mathematical proof that the noise-weighted FBP provides an optimal solution. The results from both methods are compared using clinical data and computer simulation data. The two methods give comparable image quality, while the non-iterative method has the advantage of requiring much shorter computation times.
基于 Green 的单步滞后算法,本文提出了一种基于全变差(TV)约束的传输噪声加权迭代算法。本文将该迭代 TV 算法的重建结果与我们之前开发的非迭代重建方法的重建结果进行了比较,该方法包括噪声加权滤波反投影(FBP)重建算法和非线性边缘保持后滤波算法。本文从数学上证明了噪声加权 FBP 提供了最优解。使用临床数据和计算机模拟数据对这两种方法进行了比较。这两种方法的图像质量相当,而非迭代方法的优点是计算时间更短。