Badea Cristian, Gordon Richard
Center for In Vivo Microscopy, Box 3302, Duke Medical Center, Durham, NC 27710, USA.
Phys Med Biol. 2004 Apr 21;49(8):1455-74. doi: 10.1088/0031-9155/49/8/006.
Among the iterative reconstruction algorithms for tomography, the multiplicative algebraic reconstruction technique (MART) has two advantages that make it stand out from other algorithms: it confines the image (and therefore the projection data) to the convex hull of the patient, and it maximizes entropy. In this paper, we have undertaken a series of experiments to determine the importance of MART nonlinearity to image quality. Variants of MART were implemented aiming to exploit and exaggerate the nonlinear properties of the algorithm. We introduce the Power MART, Boxcar Averaging MART and Bouncing MART algorithms. Power MART is linked to the relaxation concept. Its behaviour is similar to that of the chaos of a logistic equation. There appears to be an antagonism between increasing nonlinearity and noise in the projection data. The experiments confirm our general observation that regularization as a means of solving simultaneous linear equations that are underdetermined is suboptimal: it does not necessarily select the correct image from the hyperplane of solutions, and so does not maximize the image quality:x-ray dose ratio. Our investigations prove that there is scope to optimize CT algorithms and thereby achieve greater dose reduction.
在断层扫描的迭代重建算法中,乘法代数重建技术(MART)有两个使其从其他算法中脱颖而出的优点:它将图像(进而将投影数据)限制在患者的凸包内,并且它使熵最大化。在本文中,我们进行了一系列实验以确定MART非线性对图像质量的重要性。实现了MART的变体,旨在利用和夸大该算法的非线性特性。我们引入了幂MART、盒式平均MART和跳跃MART算法。幂MART与松弛概念相关联。其行为类似于逻辑方程的混沌行为。在投影数据中,增加非线性与噪声之间似乎存在对抗关系。实验证实了我们的一般观察结果,即作为求解欠定联立线性方程手段的正则化是次优的:它不一定能从解的超平面中选择正确的图像,因此不能使图像质量与X射线剂量比最大化。我们的研究证明,有优化CT算法的空间,从而实现更大程度的剂量降低。