论文标题

基于相关噪声特性的迭代质子CT图像重建的停止标准

A stopping criterion for iterative proton CT image reconstruction based on correlated noise properties

论文作者

DeJongh, Ethan A., Pryanichnikov, Alexander A., DeJongh, Don F., Schulte, Reinhard W.

论文摘要

背景:尽管基于体素的CT图像重建的过滤后的投影算法具有过滤器定义的噪声属性,但迭代算法必须在其收敛的某个点停止,并且不一定会为具有不同程度异质性的图像产生一致的噪声性能。目的:PCT图像重建的最小二乘迭代算法会收敛于最佳适合质子的RSP的独特解决方案。我们提出了一个停止标准,该标准可提供与体素之间RSP噪声相关的属性相对较低的解决方案。这提供了一种可生产具有一致噪声特性的PCT图像的方法,该特性可用于质子治疗治疗计划,这依赖于沿体素线的RSP求和。方法:通过原型临床质子成像系统的模拟和真实图像具有不同的异质性,我们计算了均匀息区与体素之间距离与距离之间的体素对之间的平均RSP相关性。我们定义一个参数r,相对于估计的RSP噪声,与唯一解决方案的剩余距离,我们的停止标准基于r降至选定的值以下。结果:我们发现,较大的R值的体素之间的较大相关性与较小值的反相关性。对于0.5至1的R范围内,体素是相对不相关的,并且与较小的R值相比,噪声较低,而空间分辨率仅略有损失。结论:迭代算法不使用特定的度量或理由来停止迭代,可能会产生具有未知和任意融合或平滑水平的图像。当R达到0.5至1的范围时,我们通过停止迭代来解决此问题。这定义了PCT图像重建方法,具有一致的统计特性,最适合临床使用,包括用于PCT图像的治疗计划。

Background: Whereas filtered back projection algorithms for voxel-based CT image reconstruction have noise properties defined by the filter, iterative algorithms must stop at some point in their convergence and do not necessarily produce consistent noise properties for images with different degrees of heterogeneity. Purpose: A least-squares iterative algorithm for pCT image reconstruction converges toward a unique solution for RSP that optimally fits the protons. We present a stopping criterion that delivers solutions with the property that correlations of RSP noise between voxels are relatively low. This provides a method to produce pCT images with consistent noise properties useful for proton therapy treatment planning, which relies on summing RSP along lines of voxels. Methods: With simulated and real images with varying heterogeneity from a prototype clinical proton imaging system, we calculate average RSP correlations between voxel pairs in uniform regions-of-interest versus distance between voxels. We define a parameter r, the remaining distance to the unique solution relative to estimated RSP noise, and our stopping criterion is based on r falling below a chosen value. Results: We find large correlations between voxels for larger values of r, and anticorrelations for smaller values. For r in the range of 0.5 to 1, voxels are relatively uncorrelated, and compared to smaller values of r have lower noise with only slight loss of spatial resolution. Conclusions: Iterative algorithms not using a specific metric or rationale for stopping iterations may produce images with an unknown and arbitrary level of convergence or smoothing. We resolve this issue by stopping iterations when r reaches the range of 0.5 to 1. This defines a pCT image reconstruction method with consistent statistical properties optimal for clinical use, including for treatment planning with pCT images.

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