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一种用于统计内部CT重建的特征细化方法。

A feature refinement approach for statistical interior CT reconstruction.

作者信息

Hu Zhanli, Zhang Yunwan, Liu Jianbo, Ma Jianhua, Zheng Hairong, Liang Dong

机构信息

Lauterbur Research Center for Biomedical Imaging, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, People's Republic of China. Department of Biomedical Engineering, University of California, Davis, CA 95616, USA. Beijing Center for Mathematics and Information Interdisciplinary Sciences, Beijing 100048, People's Republic of China.

出版信息

Phys Med Biol. 2016 Jul 21;61(14):5311-34. doi: 10.1088/0031-9155/61/14/5311. Epub 2016 Jun 30.

Abstract

Interior tomography is clinically desired to reduce the radiation dose rendered to patients. In this work, a new statistical interior tomography approach for computed tomography is proposed. The developed design focuses on taking into account the statistical nature of local projection data and recovering fine structures which are lost in the conventional total-variation (TV)-minimization reconstruction. The proposed method falls within the compressed sensing framework of TV minimization, which only assumes that the interior ROI is piecewise constant or polynomial and does not need any additional prior knowledge. To integrate the statistical distribution property of projection data, the objective function is built under the criteria of penalized weighed least-square (PWLS-TV). In the implementation of the proposed method, the interior projection extrapolation based FBP reconstruction is first used as the initial guess to mitigate truncation artifacts and also provide an extended field-of-view. Moreover, an interior feature refinement step, as an important processing operation is performed after each iteration of PWLS-TV to recover the desired structure information which is lost during the TV minimization. Here, a feature descriptor is specifically designed and employed to distinguish structure from noise and noise-like artifacts. A modified steepest descent algorithm is adopted to minimize the associated objective function. The proposed method is applied to both digital phantom and in vivo Micro-CT datasets, and compared to FBP, ART-TV and PWLS-TV. The reconstruction results demonstrate that the proposed method performs better than other conventional methods in suppressing noise, reducing truncated and streak artifacts, and preserving features. The proposed approach demonstrates its potential usefulness for feature preservation of interior tomography under truncated projection measurements.

摘要

临床上期望通过内部断层扫描来减少患者所接受的辐射剂量。在这项工作中,提出了一种用于计算机断层扫描的新的统计内部断层扫描方法。所开发的设计着重考虑局部投影数据的统计特性,并恢复在传统的总变差(TV)最小化重建中丢失的精细结构。所提出的方法属于TV最小化的压缩感知框架,该框架仅假设内部感兴趣区域(ROI)是分段常数或多项式,并且不需要任何额外的先验知识。为了整合投影数据的统计分布特性,在惩罚加权最小二乘(PWLS-TV)准则下构建目标函数。在所提出方法的实现中,首先使用基于内部投影外推的FBP重建作为初始猜测,以减轻截断伪影并提供扩展的视野。此外,在PWLS-TV的每次迭代之后执行内部特征细化步骤,作为一项重要的处理操作,以恢复在TV最小化过程中丢失的所需结构信息。在此,专门设计并采用了一种特征描述符来区分结构与噪声以及类似噪声的伪影。采用改进的最速下降算法来最小化相关的目标函数。所提出的方法应用于数字体模和体内微型CT数据集,并与FBP、ART-TV和PWLS-TV进行比较。重建结果表明,所提出的方法在抑制噪声、减少截断和条纹伪影以及保留特征方面比其他传统方法表现更好。所提出的方法展示了其在截断投影测量下对内部断层扫描特征保留的潜在有用性。

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