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本文引用的文献

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Self-calibration of cone-beam CT geometry using 3D-2D image registration.使用3D-2D图像配准进行锥束CT几何结构的自校准。
Phys Med Biol. 2016 Apr 7;61(7):2613-32. doi: 10.1088/0031-9155/61/7/2613. Epub 2016 Mar 10.
2
Marker-free motion correction in weight-bearing cone-beam CT of the knee joint.膝关节负重锥形束CT中的无标记运动校正
Med Phys. 2016 Mar;43(3):1235-48. doi: 10.1118/1.4941012.
3
Data consistency conditions for truncated fanbeam and parallel projections.截断扇形束和平行投影的数据一致性条件。
Med Phys. 2015 Feb;42(2):831-45. doi: 10.1118/1.4905161.
4
Fiducial marker-based correction for involuntary motion in weight-bearing C-arm CT scanning of knees. II. Experiment.基于基准标记的膝关节负重C型臂CT扫描中不自主运动校正。II. 实验。
Med Phys. 2014 Jun;41(6):061902. doi: 10.1118/1.4873675.
5
Interventional heart wall motion analysis with cardiac C-arm CT systems.心脏 C 臂 CT 系统的介入性心脏壁运动分析。
Phys Med Biol. 2014 May 7;59(9):2265-84. doi: 10.1088/0031-9155/59/9/2265. Epub 2014 Apr 15.
6
Full data consistency conditions for cone-beam projections with sources on a plane.平面源锥束投影的完全数据一致性条件。
Phys Med Biol. 2013 Dec 7;58(23):8437-56. doi: 10.1088/0031-9155/58/23/8437. Epub 2013 Nov 15.
7
Fiducial marker-based correction for involuntary motion in weight-bearing C-arm CT scanning of knees. Part I. Numerical model-based optimization.基于基准标记的膝关节负重 C 臂 CT 扫描中无意识运动校正。第一部分。基于数值模型的优化。
Med Phys. 2013 Sep;40(9):091905. doi: 10.1118/1.4817476.
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Residual motion compensation in ECG-gated interventional cardiac vasculature reconstruction.心电图门控介入心脏血管重建中的残余运动补偿。
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Improving best-phase image quality in cardiac CT by motion correction with MAM optimization.利用 MAM 优化进行运动校正,提高心脏 CT 最佳相位图像质量。
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10
Fast simulation of x-ray projections of spline-based surfaces using an append buffer.基于样条曲面的射线投影的快速模拟使用附加缓冲区。
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基于傅里叶一致性条件的锥束CT运动补偿

Motion compensation for cone-beam CT using Fourier consistency conditions.

作者信息

Berger M, Xia Y, Aichinger W, Mentl K, Unberath M, Aichert A, Riess C, Hornegger J, Fahrig R, Maier A

机构信息

Pattern Recognition Lab, Friedrich-Alexander-Universtät Erlangen-Nürnberg, 91058 Erlangen, Germany. Graduate School 1773, Heterogeneous Image Systems, 91058 Erlangen, Germany.

出版信息

Phys Med Biol. 2017 Aug 21;62(17):7181-7215. doi: 10.1088/1361-6560/aa8129.

DOI:10.1088/1361-6560/aa8129
PMID:28741597
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5748518/
Abstract

In cone-beam CT, involuntary patient motion and inaccurate or irreproducible scanner motion substantially degrades image quality. To avoid artifacts this motion needs to be estimated and compensated during image reconstruction. In previous work we showed that Fourier consistency conditions (FCC) can be used in fan-beam CT to estimate motion in the sinogram domain. This work extends the FCC to [Formula: see text] cone-beam CT. We derive an efficient cost function to compensate for [Formula: see text] motion using [Formula: see text] detector translations. The extended FCC method have been tested with five translational motion patterns, using a challenging numerical phantom. We evaluated the root-mean-square-error and the structural-similarity-index between motion corrected and motion-free reconstructions. Additionally, we computed the mean-absolute-difference (MAD) between the estimated and the ground-truth motion. The practical applicability of the method is demonstrated by application to respiratory motion estimation in rotational angiography, but also to motion correction for weight-bearing imaging of knees. Where the latter makes use of a specifically modified FCC version which is robust to axial truncation. The results show a great reduction of motion artifacts. Accurate estimation results were achieved with a maximum MAD value of 708 μm and 1184 μm for motion along the vertical and horizontal detector direction, respectively. The image quality of reconstructions obtained with the proposed method is close to that of motion corrected reconstructions based on the ground-truth motion. Simulations using noise-free and noisy data demonstrate that FCC are robust to noise. Even high-frequency motion was accurately estimated leading to a considerable reduction of streaking artifacts. The method is purely image-based and therefore independent of any auxiliary data.

摘要

在锥束CT中,患者的不自主运动以及扫描仪运动不准确或不可重复会严重降低图像质量。为避免伪影,需要在图像重建过程中对这种运动进行估计和补偿。在之前的工作中,我们表明傅里叶一致性条件(FCC)可用于扇束CT中在正弦图域估计运动。这项工作将FCC扩展到锥束CT。我们推导了一个有效的代价函数,使用探测器平移来补偿运动。扩展的FCC方法已使用具有挑战性的数值体模,针对五种平移运动模式进行了测试。我们评估了运动校正重建与无运动重建之间的均方根误差和结构相似性指数。此外,我们计算了估计运动与真实运动之间的平均绝对差(MAD)。该方法在旋转血管造影中的呼吸运动估计以及膝关节负重成像的运动校正中的应用证明了其实际适用性,其中后者使用了对轴向截断具有鲁棒性的经过特殊修改的FCC版本。结果表明运动伪影大幅减少。对于沿垂直和水平探测器方向的运动,分别实现了最大MAD值为708μm和1184μm的准确估计结果。用所提出方法获得的重建图像质量接近基于真实运动的运动校正重建图像质量。使用无噪声和有噪声数据的模拟表明FCC对噪声具有鲁棒性。即使是高频运动也能被准确估计,从而使条纹伪影大幅减少。该方法完全基于图像,因此独立于任何辅助数据。