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利用结构主成分分析和加权自由形式变形,根据先验信息和极有限角度投影估计4D-锥形束CT用于肺部放疗。

Estimating 4D-CBCT from prior information and extremely limited angle projections using structural PCA and weighted free-form deformation for lung radiotherapy.

作者信息

Harris Wendy, Zhang You, Yin Fang-Fang, Ren Lei

机构信息

Medical Physics Graduate Program, Duke University, Durham, NC, 27705, USA.

Department of Radiation Oncology, Duke University Medical Center, Durham, NC, 27710, USA.

出版信息

Med Phys. 2017 Mar;44(3):1089-1104. doi: 10.1002/mp.12102.

DOI:10.1002/mp.12102
PMID:28079267
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5508535/
Abstract

PURPOSE

To investigate the feasibility of using structural-based principal component analysis (PCA) motion-modeling and weighted free-form deformation to estimate on-board 4D-CBCT using prior information and extremely limited angle projections for potential 4D target verification of lung radiotherapy.

METHODS

A technique for lung 4D-CBCT reconstruction has been previously developed using a deformation field map (DFM)-based strategy. In the previous method, each phase of the 4D-CBCT was generated by deforming a prior CT volume. The DFM was solved by a motion model extracted by a global PCA and free-form deformation (GMM-FD) technique, using a data fidelity constraint and deformation energy minimization. In this study, a new structural PCA method was developed to build a structural motion model (SMM) by accounting for potential relative motion pattern changes between different anatomical structures from simulation to treatment. The motion model extracted from planning 4DCT was divided into two structures: tumor and body excluding tumor, and the parameters of both structures were optimized together. Weighted free-form deformation (WFD) was employed afterwards to introduce flexibility in adjusting the weightings of different structures in the data fidelity constraint based on clinical interests. XCAT (computerized patient model) simulation with a 30 mm diameter lesion was simulated with various anatomical and respiratory changes from planning 4D-CT to on-board volume to evaluate the method. The estimation accuracy was evaluated by the volume percent difference (VPD)/center-of-mass-shift (COMS) between lesions in the estimated and "ground-truth" on-board 4D-CBCT. Different on-board projection acquisition scenarios and projection noise levels were simulated to investigate their effects on the estimation accuracy. The method was also evaluated against three lung patients.

RESULTS

The SMM-WFD method achieved substantially better accuracy than the GMM-FD method for CBCT estimation using extremely small scan angles or projections. Using orthogonal 15° scanning angles, the VPD/COMS were 3.47 ± 2.94% and 0.23 ± 0.22 mm for SMM-WFD and 25.23 ± 19.01% and 2.58 ± 2.54 mm for GMM-FD among all eight XCAT scenarios. Compared to GMM-FD, SMM-WFD was more robust against reduction of the scanning angles down to orthogonal 10° with VPD/COMS of 6.21 ± 5.61% and 0.39 ± 0.49 mm, and more robust against reduction of projection numbers down to only 8 projections in total for both orthogonal-view 30° and orthogonal-view 15° scan angles. SMM-WFD method was also more robust than the GMM-FD method against increasing levels of noise in the projection images. Additionally, the SMM-WFD technique provided better tumor estimation for all three lung patients compared to the GMM-FD technique.

CONCLUSION

Compared to the GMM-FD technique, the SMM-WFD technique can substantially improve the 4D-CBCT estimation accuracy using extremely small scan angles and low number of projections to provide fast low dose 4D target verification.

摘要

目的

研究使用基于结构的主成分分析(PCA)运动建模和加权自由形式变形,利用先验信息和极有限角度投影来估计机载4D-CBCT的可行性,用于肺部放疗的潜在4D靶区验证。

方法

先前已开发出一种基于变形场图(DFM)策略的肺部4D-CBCT重建技术。在先前的方法中,4D-CBCT的每个相位都是通过对先前的CT体积进行变形生成的。DFM通过全局PCA和自由形式变形(GMM-FD)技术提取的运动模型求解,使用数据保真度约束和变形能量最小化。在本研究中,开发了一种新的结构PCA方法,通过考虑从模拟到治疗不同解剖结构之间潜在的相对运动模式变化来构建结构运动模型(SMM)。从计划4DCT中提取的运动模型分为两个结构:肿瘤和排除肿瘤的身体,两个结构的参数一起优化。随后采用加权自由形式变形(WFD),以便根据临床兴趣在数据保真度约束中灵活调整不同结构的权重。对直径30mm的病变进行XCAT(计算机化患者模型)模拟,模拟从计划4D-CT到机载体积的各种解剖和呼吸变化,以评估该方法。通过估计的和“真实”机载4D-CBCT中病变之间的体积百分比差异(VPD)/质心偏移(COMS)来评估估计准确性。模拟不同的机载投影采集场景和投影噪声水平,以研究它们对估计准确性的影响。该方法也在三名肺部患者中进行了评估。

结果

对于使用极小扫描角度或投影的CBCT估计,SMM-WFD方法比GMM-FD方法具有显著更高的准确性。在所有八个XCAT场景中,使用正交15°扫描角度时,SMM-WFD的VPD/COMS分别为3.47±2.94%和0.23±0.22mm,GMM-FD的分别为25.23±19.01%和2.58±2.54mm。与GMM-FD相比,SMM-WFD在扫描角度减小到正交10°时更稳健,VPD/COMS为6.21±5.61%和0.39±0.49mm,并且在正交视图30°和正交视图15°扫描角度下投影数量减少到总共仅8个投影时也更稳健。SMM-WFD方法在投影图像噪声水平增加时也比GMM-FD方法更稳健。此外,与GMM-FD技术相比,SMM-WFD技术为所有三名肺部患者提供了更好的肿瘤估计。

结论

与GMM-FD技术相比,SMM-WFD技术可以使用极小扫描角度和少量投影显著提高4D-CBCT估计准确性,以提供快速低剂量4D靶区验证。

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