Feature Guided Motion Artifact Reduction with Structure-Awareness in 4D CT Images.

Dongfeng Han, John Bayouth, Qi Song, Sudershan Bhatia, Milan Sonka, Xiaodong Wu
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引用次数: 8

Abstract

In this paper, we propose a novel method to reduce the magnitude of 4D CT artifacts by stitching two images with a data-driven regularization constrain, which helps preserve the local anatomy structures. Our method first computes an interface seam for the stitching in the overlapping region of the first image, which passes through the "smoothest" region, to reduce the structure complexity along the stitching interface. Then, we compute the displacements of the seam by matching the corresponding interface seam in the second image. We use sparse 3D features as the structure cues to guide the seam matching, in which a regularization term is incorporated to keep the structure consistency. The energy function is minimized by solving a multiple-label problem in Markov Random Fields with an anatomical structure preserving regularization term. The displacements are propagated to the rest of second image and the two image are stitched along the interface seams based on the computed displacement field. The method was tested on both simulated data and clinical 4D CT images. The experiments on simulated data demonstrated that the proposed method was able to reduce the landmark distance error on average from 2.9 mm to 1.3 mm, outperforming the registration-based method by about 55%. For clinical 4D CT image data, the image quality was evaluated by three medical experts, and all identified much fewer artifacts from the resulting images by our method than from those by the compared method.

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基于结构感知的4D CT图像特征引导运动伪影还原。
在本文中,我们提出了一种新的方法,通过数据驱动的正则化约束拼接两幅图像来降低4D CT伪影的大小,这有助于保留局部解剖结构。我们的方法首先在第一幅图像的重叠区域计算一个接口缝用于拼接,该图像通过“最平滑”区域,以降低沿拼接界面的结构复杂性。然后,通过在第二幅图像中匹配相应的界面接缝来计算接缝的位移。我们使用稀疏的3D特征作为结构线索来指导接缝匹配,并在其中加入正则化项来保持结构的一致性。通过求解具有解剖结构保持正则化项的马尔可夫随机场的多标签问题来最小化能量函数。将位移传播到第二图像的其余部分,并根据计算的位移场沿界面接缝缝合两图像。在模拟数据和临床4D CT图像上对该方法进行了验证。仿真数据实验表明,该方法能够将地标距离误差从2.9 mm平均降低到1.3 mm,优于基于配准的方法约55%。对于临床4D CT图像数据,图像质量由三位医学专家进行了评估,通过我们的方法从结果图像中识别出的伪影都比通过比较方法识别出的伪影少得多。
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