Barragán A M, Differding S, Janssens G, Lee J A, Sterpin E
Center of Molecular Imaging, Radiotherapy and Oncology, Institut de Recherche Expérimentale et Clinique, Université catholique de Louvain, Brussels B-1200, Belgium.
Ion Beam Applications S.A., Louvain-la-Neuve 1348, Belgium.
Med Phys. 2015 Apr;42(4):2006-17. doi: 10.1118/1.4915082.
To prove the ability of protons to reproduce a dose gradient that matches a dose painting by numbers (DPBN) prescription in the presence of setup and range errors, by using contours and structure-based optimization in a commercial treatment planning system.
For two patients with head and neck cancer, voxel-by-voxel prescription to the target volume (GTVPET) was calculated from (18)FDG-PET images and approximated with several discrete prescription subcontours. Treatments were planned with proton pencil beam scanning. In order to determine the optimal plan parameters to approach the DPBN prescription, the effects of the scanning pattern, number of fields, number of subcontours, and use of range shifter were separately tested on each patient. Different constant scanning grids (i.e., spot spacing = Δx = Δy = 3.5, 4, and 5 mm) and uniform energy layer separation [4 and 5 mm WED (water equivalent distance)] were analyzed versus a dynamic and automatic selection of the spots grid. The number of subcontours was increased from 3 to 11 while the number of beams was set to 3, 5, or 7. Conventional PTV-based and robust clinical target volumes (CTV)-based optimization strategies were considered and their robustness against range and setup errors assessed. Because of the nonuniform prescription, ensuring robustness for coverage of GTVPET inevitably leads to overdosing, which was compared for both optimization schemes.
The optimal number of subcontours ranged from 5 to 7 for both patients. All considered scanning grids achieved accurate dose painting (1% average difference between the prescribed and planned doses). PTV-based plans led to nonrobust target coverage while robust-optimized plans improved it considerably (differences between worst-case CTV dose and the clinical constraint was up to 3 Gy for PTV-based plans and did not exceed 1 Gy for robust CTV-based plans). Also, only 15% of the points in the GTVPET (worst case) were above 5% of DPBN prescription for robust-optimized plans, while they were more than 50% for PTV plans. Low dose to organs at risk (OARs) could be achieved for both PTV and robust-optimized plans.
DPBN in proton therapy is feasible with the use of a sufficient number subcontours, automatically generated scanning patterns, and no more than three beams are needed. Robust optimization ensured the required target coverage and minimal overdosing, while PTV-approach led to nonrobust plans with excessive overdose. Low dose to OARs can be achieved even in the presence of a high-dose escalation as in DPBN.
通过在商业治疗计划系统中使用轮廓和基于结构的优化方法,证明在存在摆位和射程误差的情况下,质子能够再现与数字剂量描绘(DPBN)处方相匹配的剂量梯度。
对于两名头颈部癌患者,根据(18)FDG-PET图像计算靶区体积(GTVPET)的逐体素处方,并通过几个离散的处方子轮廓进行近似。采用质子笔形束扫描进行治疗计划。为了确定接近DPBN处方的最佳计划参数,分别在每名患者身上测试扫描模式、射野数量、子轮廓数量以及射程移位器的使用效果。分析了不同的固定扫描网格(即光斑间距=Δx=Δy=3.5、4和5mm)和均匀能量层间距[4和5mm水等效距离(WED)]与光斑网格的动态自动选择情况。子轮廓数量从3增加到11,同时射野数量设置为3、5或7。考虑了基于传统PTV和稳健临床靶区体积(CTV) 的优化策略,并评估了它们对射程和摆位误差的稳健性。由于处方不均匀,确保GTVPET覆盖的稳健性不可避免地会导致剂量过量,对两种优化方案的这种情况进行了比较。
两名患者的最佳子轮廓数量均在范围5至7之间。所有考虑的扫描网格均实现了精确的剂量描绘(处方剂量与计划剂量之间的平均差异为1%)。基于PTV的计划导致靶区覆盖不稳健,而稳健优化计划则显著改善了这一点(基于PTV的计划中,最坏情况下CTV剂量与临床约束之间的差异高达3Gy,而基于稳健CTV的计划不超过1Gy)。此外,对于稳健优化计划,GTVPET中只有15%的点(最坏情况)超过DPBN处方的5%,而对于PTV计划,这一比例超过50%。对于PTV和稳健优化计划,均可实现对危及器官(OAR)的低剂量照射。
在质子治疗中,使用足够数量的子轮廓、自动生成的扫描模式且所需射野不超过三个时,DPBN是可行的。稳健优化确保了所需的靶区覆盖和最小剂量过量,而基于PTV的方法导致计划不稳健且过量剂量过高。即使在如DPBN中存在高剂量递增的情况下,也可实现对OAR的低剂量照射。