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高质量的初始图像引导 4D CBCT 重建。

High-quality initial image-guided 4D CBCT reconstruction.

机构信息

Institute of Image Processing and Pattern Recognition, Xi'an Jiaotong University, Xi'an, Shaanxi, China.

German Cancer Research Center (DKFZ), Im Neuenheimer Feld 280, 69120, Heidelberg, Germany.

出版信息

Med Phys. 2020 Jun;47(5):2099-2115. doi: 10.1002/mp.14060. Epub 2020 Mar 13.

Abstract

PURPOSE

Four-dimensional cone-beam computed tomography (4D CBCT) has been developed to provide a sequence of phase-resolved reconstructions in image-guided radiation therapy. However, 4D CBCT images are degraded by severe streaking artifacts because the 4D CBCT reconstruction process is an extreme sparse-view CT procedure wherein only under-sampled projections are used for the reconstruction of each phase. To obtain a set of 4D CBCT images achieving both high spatial and temporal resolution, we propose an algorithm by providing a high-quality initial image at the beginning of the iterative reconstruction process for each phase to guide the final reconstructed result toward its optimal solution.

METHODS

The proposed method consists of three steps to generate the initial image. First, a prior image is obtained by an iterative reconstruction method using the measured projections of the entire set of 4D CBCT images. The prior image clearly shows the appearance of structures in static regions, although it contains blurring artifacts in motion regions. Second, the robust principal component analysis (RPCA) model is adopted to extract the motion components corresponding to each phase-resolved image. Third, a set of initial images are produced by the proposed linear estimation model that combines the prior image and the RPCA-decomposed motion components. The final 4D CBCT images are derived from the simultaneous algebraic reconstruction technique (SART) equipped with the initial images. Qualitative and quantitative evaluations were performed by using two extended cardiac-torso (XCAT) phantoms and two sets of patient data. Several state-of-the-art 4D CBCT algorithms were performed for comparison to validate the performance of the proposed method.

RESULTS

The image quality of phase-resolved images is greatly improved by the proposed method in both phantom and patient studies. The results show an outstanding spatial resolution, in which streaking artifacts are suppressed to a large extent, while detailed structures such as tumors and blood vessels are well restored. Meanwhile, the proposed method depicts a high temporal resolution with a distinct respiratory motion change at different phases. For simulation phantom, quantitative evaluations of the simulation data indicate that an average of 36.72% decrease at EI phase and 42% decrease at EE phase in terms of root-mean-square error (RMSE) are achieved by our method when comparing with PICCS algorithm in Phantom 1 and Phantom 2. In addition, the proposed method has the lowest entropy and the highest normalized mutual information compared with the existing methods in simulation experiments, such as PRI, RPCA-4DCT, SMART, and PICCS. And for real patient cases, the proposed method also achieves the lowest entropy value compared with the competitive method.

CONCLUSIONS

The proposed algorithm can generate an optimal initial image to improve iterative reconstruction performance. The final sequence of phase-resolved volumes guided by the initial image achieves high spatiotemporal resolution by eliminating motion-induced artifacts. This study presents a practical 4D CBCT reconstruction method with leading image quality.

摘要

目的

四维锥形束 CT(4D CBCT)的发展旨在提供图像引导放射治疗中相位分辨重建的序列。然而,4D CBCT 图像受到严重条纹伪影的影响,因为 4D CBCT 重建过程是一种极端稀疏视图 CT 过程,其中仅对每个相位的重建使用欠采样投影。为了获得一组同时具有高空间和时间分辨率的 4D CBCT 图像,我们提出了一种算法,即在每个相位的迭代重建过程开始时提供高质量的初始图像,以引导最终重建结果向其最优解。

方法

该方法包括三个步骤来生成初始图像。首先,通过使用整个 4D CBCT 图像集的测量投影的迭代重建方法获得先验图像。尽管在先验图像中运动区域存在模糊伪影,但它清楚地显示了静态区域结构的外观。其次,采用稳健主成分分析(RPCA)模型提取与每个相位分辨图像对应的运动分量。第三,通过结合先验图像和 RPCA 分解的运动分量的提出的线性估计模型来生成一组初始图像。最终的 4D CBCT 图像由配备初始图像的同时代数重建技术(SART)导出。使用两个扩展的心脏 - 胸(XCAT)体模和两组患者数据进行定性和定量评估。为了验证所提出方法的性能,对几种最先进的 4D CBCT 算法进行了比较。

结果

该方法在体模和患者研究中极大地改善了相位分辨图像的图像质量。结果表明,空间分辨率很高,条纹伪影得到了很大程度的抑制,同时很好地恢复了肿瘤和血管等详细结构。同时,该方法在不同相位以明显的呼吸运动变化描绘了高时间分辨率。对于模拟体模,模拟数据的定量评估表明,与 Phantom 1 和 Phantom 2 中的 PICCS 算法相比,我们的方法在 EI 相位平均减少 36.72%,在 EE 相位减少 42%。此外,与 PRI、RPCA-4DCT、SMART 和 PICCS 等现有方法相比,该方法在模拟实验中具有最低的熵和最高的归一化互信息。并且对于真实的患者病例,与竞争方法相比,该方法也具有最低的熵值。

结论

所提出的算法可以生成最佳初始图像,以提高迭代重建性能。由初始图像引导的最终相位分辨体积序列通过消除运动引起的伪影来实现高时空分辨率。这项研究提出了一种具有领先图像质量的实用 4D CBCT 重建方法。

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