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一种用于图像引导放射治疗的、具有优化蒙特卡罗模拟的实用锥形束CT散射校正方法。

A practical cone-beam CT scatter correction method with optimized Monte Carlo simulations for image-guided radiation therapy.

作者信息

Xu Yuan, Bai Ti, Yan Hao, Ouyang Luo, Pompos Arnold, Wang Jing, Zhou Linghong, Jiang Steve B, Jia Xun

机构信息

Department of Radiation Oncology, University of Texas Southwestern Medical Center, Dallas, TX 75235, USA. Department of Biomedical Engineering, Southern Medical University, Guangzhou, Guangdong 510515, People's Republic of China.

出版信息

Phys Med Biol. 2015 May 7;60(9):3567-87. doi: 10.1088/0031-9155/60/9/3567. Epub 2015 Apr 10.

Abstract

Cone-beam CT (CBCT) has become the standard image guidance tool for patient setup in image-guided radiation therapy. However, due to its large illumination field, scattered photons severely degrade its image quality. While kernel-based scatter correction methods have been used routinely in the clinic, it is still desirable to develop Monte Carlo (MC) simulation-based methods due to their accuracy. However, the high computational burden of the MC method has prevented routine clinical application. This paper reports our recent development of a practical method of MC-based scatter estimation and removal for CBCT. In contrast with conventional MC approaches that estimate scatter signals using a scatter-contaminated CBCT image, our method used a planning CT image for MC simulation, which has the advantages of accurate image intensity and absence of image truncation. In our method, the planning CT was first rigidly registered with the CBCT. Scatter signals were then estimated via MC simulation. After scatter signals were removed from the raw CBCT projections, a corrected CBCT image was reconstructed. The entire workflow was implemented on a GPU platform for high computational efficiency. Strategies such as projection denoising, CT image downsampling, and interpolation along the angular direction were employed to further enhance the calculation speed. We studied the impact of key parameters in the workflow on the resulting accuracy and efficiency, based on which the optimal parameter values were determined. Our method was evaluated in numerical simulation, phantom, and real patient cases. In the simulation cases, our method reduced mean HU errors from 44 to 3 HU and from 78 to 9 HU in the full-fan and the half-fan cases, respectively. In both the phantom and the patient cases, image artifacts caused by scatter, such as ring artifacts around the bowtie area, were reduced. With all the techniques employed, we achieved computation time of less than 30 s including the time for both the scatter estimation and CBCT reconstruction steps. The efficacy of our method and its high computational efficiency make our method attractive for clinical use.

摘要

锥形束CT(CBCT)已成为图像引导放射治疗中患者摆位的标准图像引导工具。然而,由于其较大的照射野,散射光子严重降低了其图像质量。虽然基于核的散射校正方法已在临床上常规使用,但由于其准确性,仍需要开发基于蒙特卡罗(MC)模拟的方法。然而,MC方法的高计算负担阻碍了其在临床中的常规应用。本文报道了我们最近开发的一种基于MC的CBCT散射估计和去除的实用方法。与使用受散射污染的CBCT图像估计散射信号的传统MC方法不同,我们的方法使用计划CT图像进行MC模拟,具有图像强度准确且不存在图像截断的优点。在我们的方法中,首先将计划CT与CBCT进行刚性配准。然后通过MC模拟估计散射信号。从原始CBCT投影中去除散射信号后,重建校正后的CBCT图像。整个工作流程在GPU平台上实现,以提高计算效率。采用了投影去噪、CT图像下采样和沿角度方向插值等策略来进一步提高计算速度。我们研究了工作流程中关键参数对最终准确性和效率的影响,并据此确定了最佳参数值。我们的方法在数值模拟、体模和真实患者病例中进行了评估。在模拟病例中,我们的方法在全扇形和半扇形病例中分别将平均HU误差从44降低到3 HU和从78降低到9 HU。在体模和患者病例中,由散射引起的图像伪影,如蝴蝶结区域周围的环形伪影,都减少了。通过采用所有这些技术,我们实现了包括散射估计和CBCT重建步骤在内的计算时间少于30秒。我们方法的有效性及其高计算效率使其在临床应用中具有吸引力。

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本文引用的文献

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