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使用加权全变差和黑塞惩罚项的结构自适应锥形束CT重建

Structure-adaptive CBCT reconstruction using weighted total variation and Hessian penalties.

作者信息

Shi Qi, Sun Nanbo, Sun Tao, Wang Jing, Tan Shan

机构信息

Key Laboratory of Image Processing and Intelligent Control of Ministry of Education of China, School of Automation, Huazhong University of Science and Technology, Wuhan 430074, China.

Department of Radiation Oncology, The University of Texas Southwestern Medical Center at Dallas, Dallas, TX 75390, USA;

出版信息

Biomed Opt Express. 2016 Aug 9;7(9):3299-3322. doi: 10.1364/BOE.7.003299. eCollection 2016 Sep 1.

Abstract

The exposure of normal tissues to high radiation during cone-beam CT (CBCT) imaging increases the risk of cancer and genetic defects. Statistical iterative algorithms with the total variation (TV) penalty have been widely used for low dose CBCT reconstruction, with state-of-the-art performance in suppressing noise and preserving edges. However, TV is a first-order penalty and sometimes leads to the so-called staircase effect, particularly over regions with smooth intensity transition in the reconstruction images. A second-order penalty known as the Hessian penalty was recently used to replace TV to suppress the staircase effect in CBCT reconstruction at the cost of slightly blurring object edges. In this study, we proposed a new penalty, the TV-H, which combines TV and Hessian penalties for CBCT reconstruction in a structure-adaptive way. The TV-H penalty automatically differentiates the edges, gradual transition and uniform local regions within an image using the voxel gradient, and adaptively weights TV and Hessian according to the local image structures in the reconstruction process. Our proposed penalty retains the benefits of TV, including noise suppression and edge preservation. It also maintains the structures in regions with gradual intensity transition more successfully. A majorization-minimization (MM) approach was designed to optimize the objective energy function constructed with the TV-H penalty. The MM approach employed a quadratic upper bound of the original objective function, and the original optimization problem was changed to a series of quadratic optimization problems, which could be efficiently solved using the Gauss-Seidel update strategy. We tested the reconstruction algorithm on two simulated digital phantoms and two physical phantoms. Our experiments indicated that the TV-H penalty visually and quantitatively outperformed both TV and Hessian penalties.

摘要

在锥形束CT(CBCT)成像过程中,正常组织暴露于高辐射下会增加患癌症和出现基因缺陷的风险。带有总变差(TV)惩罚项的统计迭代算法已被广泛用于低剂量CBCT重建,在抑制噪声和保留边缘方面具有先进的性能。然而,TV是一阶惩罚项,有时会导致所谓的阶梯效应,特别是在重建图像中强度过渡平滑的区域。一种称为黑塞惩罚项的二阶惩罚项最近被用于替代TV,以抑制CBCT重建中的阶梯效应,但代价是物体边缘会稍有模糊。在本研究中,我们提出了一种新的惩罚项TV-H,它以结构自适应的方式将TV和黑塞惩罚项结合用于CBCT重建。TV-H惩罚项利用体素梯度自动区分图像中的边缘、渐变过渡区域和均匀局部区域,并在重建过程中根据局部图像结构自适应地权衡TV和黑塞惩罚项。我们提出的惩罚项保留了TV的优点,包括噪声抑制和边缘保留。它还更成功地保持了强度渐变区域的结构。设计了一种最大化-最小化(MM)方法来优化用TV-H惩罚项构建的目标能量函数。MM方法采用原始目标函数的二次上界,将原始优化问题转化为一系列二次优化问题,这些问题可以使用高斯-赛德尔更新策略有效地求解。我们在两个模拟数字体模和两个物理体模上测试了重建算法。我们实验表明,TV-H惩罚项在视觉和定量方面均优于TV和黑塞惩罚项。

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本文引用的文献

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Hessian Schatten-norm regularization for linear inverse problems.海森暗范数正则化用于线性反问题。
IEEE Trans Image Process. 2013 May;22(5):1873-88. doi: 10.1109/TIP.2013.2237919. Epub 2013 Jan 4.
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Higher degree total variation (HDTV) regularization for image recovery.基于高阶全变差(HDTV)正则化的图像恢复。
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