Shen Chenyang, Lou Yifei, Chen Liyuan, Zeng Tieyong, Ng Michael K, Zhu Lei, Jia Xun
Innovative Technology of Radiotherapy Computations and Hardware (iTORCH) Laboratory, Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX, USA.
Department of Mathematical Sciences, University of Texas Dallas, Richardson, TX, USA.
Quant Imaging Med Surg. 2019 Jul;9(7):1229-1241. doi: 10.21037/qims.2019.07.07.
Projection data undersampling is an effective approach to reduce X-ray radiation dose in computed tomography (CT). In modern CT technologies, undersampling is also a favorable method to reduce projection data size to facilitate rapid CT scan and imaging. It is an intriguing question that given an undersampling ratio, what is the optimal undersampling approach that enables the best CT image reconstruction. While this is in general a challenging mathematical question, it is the motivation of this paper to compare three types of undersampling operations, which we hope to shed some light to this question.
We considered regular view undersampling that acquires X-ray projections at equiangular projection angles, regular ray undersampling that acquires projections at all angles but with X-ray lines blocked within each projection under a periodic pattern, and random ray undersampling that acquires each X-ray line with a certain probability. By representing the undersampling projection operators under the basis of singular vectors of full projection operator, we generated matrix representations of these undersampling operators and numerically perform singular value decomposition (SVD). Singular value spectra and singular vectors were compared.
For a given undersampling ratio, the random ray undersampling approach preserves the properties of the full projection operator better than the other two approaches. This translates to advantages of reconstructing a CT image at a lower error, which has also been demonstrated in the numerical experiments.
We compared three undersampling strategies and found that random undersampling preserves the most information and outperforms the other two in terms of reconstruction quality.
投影数据欠采样是在计算机断层扫描(CT)中降低X射线辐射剂量的有效方法。在现代CT技术中,欠采样也是一种减少投影数据大小以促进快速CT扫描和成像的有利方法。一个有趣的问题是,给定一个欠采样率,能实现最佳CT图像重建的最优欠采样方法是什么。虽然这总体上是一个具有挑战性的数学问题,但本文的动机是比较三种类型的欠采样操作,希望能为这个问题提供一些启示。
我们考虑了等角投影角度获取X射线投影的常规视图欠采样、在每个投影内以周期性模式遮挡X射线线但在所有角度获取投影的常规射线欠采样以及以一定概率获取每条X射线线的随机射线欠采样。通过在全投影算子的奇异向量基础上表示欠采样投影算子,我们生成了这些欠采样算子的矩阵表示并进行数值奇异值分解(SVD)。比较了奇异值谱和奇异向量。
对于给定的欠采样率,随机射线欠采样方法比其他两种方法更好地保留了全投影算子的特性。这转化为在较低误差下重建CT图像的优势,这也在数值实验中得到了证明。
我们比较了三种欠采样策略,发现随机欠采样保留的信息最多,在重建质量方面优于其他两种方法。