Zhu Hongqing, Shu Huazhong, Zhou Jian, Dai Xiubin, Luo Limin
Laboratory of Image Science and Technology, Department of Computer Science and Engineering, Southeast University, 210096 Nanjing, People's Republic of China.
Comput Med Imaging Graph. 2007 Apr;31(3):166-77. doi: 10.1016/j.compmedimag.2007.01.001.
Iterative image reconstruction algorithms have been widely used in the field of positron emission tomography (PET). However, such algorithms are sensitive to noise artifacts so that the reconstruction begins to degrade when the number of iterations is high. In this paper, we propose a new algorithm to reconstruct an image from the PET emission projection data by using the conditional entropy maximization and the adaptive mesh model. In a traditional tomography reconstruction method, the reconstructed image is directly computed in the pixel domain. Unlike this kind of methods, the proposed approach is performed by estimating the nodal values from the observed projection data in a mesh domain. In our method, the initial Delaunay triangulation mesh is generated from a set of randomly selected pixel points, and it is then modified according to the pixel intensity value of the estimated image at each iteration step in which the conditional entropy maximization is used. The advantage of using the adaptive mesh model for image reconstruction is that it provides a natural spatially adaptive smoothness mechanism. In experiments using the synthetic and clinical data, it is found that the proposed algorithm is more robust to noise compared to the common pixel-based MLEM algorithm and mesh-based MLEM with a fixed mesh structure.
迭代图像重建算法已在正电子发射断层扫描(PET)领域中广泛应用。然而,此类算法对噪声伪影敏感,以至于当迭代次数较多时重建效果开始变差。在本文中,我们提出一种新算法,通过使用条件熵最大化和自适应网格模型从PET发射投影数据重建图像。在传统的断层扫描重建方法中,重建图像是在像素域中直接计算的。与这类方法不同,所提出的方法是通过在网格域中从观测到的投影数据估计节点值来执行的。在我们的方法中,初始的德劳内三角剖分网格是从一组随机选择的像素点生成的,然后在每次使用条件熵最大化的迭代步骤中根据估计图像的像素强度值对其进行修改。使用自适应网格模型进行图像重建的优点在于它提供了一种自然的空间自适应平滑机制。在使用合成数据和临床数据的实验中,发现与基于普通像素的最大似然期望最大化(MLEM)算法以及具有固定网格结构的基于网格的MLEM相比,所提出的算法对噪声更具鲁棒性。