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基于学习字典的稀疏约束PET图像重建

Sparsity-constrained PET image reconstruction with learned dictionaries.

作者信息

Tang Jing, Yang Bao, Wang Yanhua, Ying Leslie

机构信息

Department of Electrical and Computer Engineering, Oakland University, Rochester, MI, USA.

出版信息

Phys Med Biol. 2016 Sep 7;61(17):6347-68. doi: 10.1088/0031-9155/61/17/6347. Epub 2016 Aug 5.

Abstract

PET imaging plays an important role in scientific and clinical measurement of biochemical and physiological processes. Model-based PET image reconstruction such as the iterative expectation maximization algorithm seeking the maximum likelihood solution leads to increased noise. The maximum a posteriori (MAP) estimate removes divergence at higher iterations. However, a conventional smoothing prior or a total-variation (TV) prior in a MAP reconstruction algorithm causes over smoothing or blocky artifacts in the reconstructed images. We propose to use dictionary learning (DL) based sparse signal representation in the formation of the prior for MAP PET image reconstruction. The dictionary to sparsify the PET images in the reconstruction process is learned from various training images including the corresponding MR structural image and a self-created hollow sphere. Using simulated and patient brain PET data with corresponding MR images, we study the performance of the DL-MAP algorithm and compare it quantitatively with a conventional MAP algorithm, a TV-MAP algorithm, and a patch-based algorithm. The DL-MAP algorithm achieves improved bias and contrast (or regional mean values) at comparable noise to what the other MAP algorithms acquire. The dictionary learned from the hollow sphere leads to similar results as the dictionary learned from the corresponding MR image. Achieving robust performance in various noise-level simulation and patient studies, the DL-MAP algorithm with a general dictionary demonstrates its potential in quantitative PET imaging.

摘要

正电子发射断层扫描(PET)成像在生物化学和生理过程的科学与临床测量中发挥着重要作用。基于模型的PET图像重建,如寻求最大似然解的迭代期望最大化算法,会导致噪声增加。最大后验(MAP)估计可消除较高迭代次数时的发散现象。然而,MAP重建算法中的传统平滑先验或总变分(TV)先验会在重建图像中导致过度平滑或块状伪影。我们建议在MAP PET图像重建的先验形成中使用基于字典学习(DL)的稀疏信号表示。在重建过程中用于使PET图像稀疏化的字典是从各种训练图像中学习得到的,包括相应的磁共振(MR)结构图像和自行创建的空心球体。使用带有相应MR图像的模拟和患者脑部PET数据,我们研究了DL-MAP算法的性能,并将其与传统MAP算法、TV-MAP算法和基于补丁的算法进行了定量比较。DL-MAP算法在与其他MAP算法相当的噪声水平下,实现了更好的偏差和对比度(或区域平均值)。从空心球体学习得到的字典与从相应MR图像学习得到的字典产生的结果相似。通过在各种噪声水平模拟和患者研究中实现稳健性能,具有通用字典的DL-MAP算法在定量PET成像中展现出了其潜力。

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