Department of Radiation Physics, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Med Phys. 2012 Jun;39(6):3089-101. doi: 10.1118/1.4711909.
The distal edge tracking (DET) technique in intensity-modulated proton therapy (IMPT) allows for high energy efficiency, fast and simple delivery, and simple inverse treatment planning; however, it is highly sensitive to uncertainties. In this study, the authors explored the application of DET in IMPT (IMPT-DET) and conducted robust optimization of IMPT-DET to see if the planning technique's sensitivity to uncertainties was reduced. They also compared conventional and robust optimization of IMPT-DET with three-dimensional IMPT (IMPT-3D) to gain understanding about how plan robustness is achieved.
They compared the robustness of IMPT-DET and IMPT-3D plans to uncertainties by analyzing plans created for a typical prostate cancer case and a base of skull (BOS) cancer case (using data for patients who had undergone proton therapy at our institution). Spots with the highest and second highest energy layers were chosen so that the Bragg peak would be at the distal edge of the targets in IMPT-DET using 36 equally spaced angle beams; in IMPT-3D, 3 beams with angles chosen by a beam angle optimization algorithm were planned. Dose contributions for a number of range and setup uncertainties were calculated, and a worst-case robust optimization was performed. A robust quantification technique was used to evaluate the plans' sensitivity to uncertainties.
With no uncertainties considered, the DET is less robust to uncertainties than is the 3D method but offers better normal tissue protection. With robust optimization to account for range and setup uncertainties, robust optimization can improve the robustness of IMPT plans to uncertainties; however, our findings show the extent of improvement varies.
IMPT's sensitivity to uncertainties can be improved by using robust optimization. They found two possible mechanisms that made improvements possible: (1) a localized single-field uniform dose distribution (LSFUD) mechanism, in which the optimization algorithm attempts to produce a single-field uniform dose distribution while minimizing the patching field as much as possible; and (2) perturbed dose distribution, which follows the change in anatomical geometry. Multiple-instance optimization has more knowledge of the influence matrices; this greater knowledge improves IMPT plans' ability to retain robustness despite the presence of uncertainties.
调强质子治疗(IMPT)中的远边缘跟踪(DET)技术具有高能效、快速简单的输送和简单的逆治疗计划等优点;然而,它对不确定性非常敏感。在这项研究中,作者探索了 DET 在 IMPT(IMPT-DET)中的应用,并对 IMPT-DET 进行了稳健优化,以观察该计划技术对不确定性的敏感性是否降低。他们还将传统和稳健优化的 IMPT-DET 与三维 IMPT(IMPT-3D)进行了比较,以了解如何实现计划的稳健性。
通过分析在我们机构接受质子治疗的患者的数据为一个典型的前列腺癌病例和一个基底颅(BOS)癌症病例创建的计划,研究人员比较了 IMPT-DET 和 IMPT-3D 计划对不确定性的稳健性。选择能量最高和第二高的层的点,以便在 IMPT-DET 中使用 36 个等间隔角度束将布拉格峰放置在靶区的远边缘;在 IMPT-3D 中,使用束角优化算法选择 3 个束角进行计划。计算了许多射程和设置不确定性的剂量贡献,并进行了最坏情况的稳健优化。使用稳健量化技术评估了计划对不确定性的敏感性。
在不考虑不确定性的情况下,与 3D 方法相比,DET 对不确定性的稳健性较差,但能更好地保护正常组织。通过考虑范围和设置不确定性的稳健优化,可以提高 IMPT 计划对不确定性的稳健性;然而,我们的研究结果表明,改进的程度有所不同。
通过使用稳健优化,可以提高 IMPT 对不确定性的敏感性。他们发现了两种可能的机制,使改进成为可能:(1)局部单场均匀剂量分布(LSFUD)机制,其中优化算法试图在尽可能最小化补丁场的情况下产生单场均匀剂量分布;以及(2)受扰剂量分布,它遵循解剖几何形状的变化。多实例优化对影响矩阵有更多的了解;这种更多的了解提高了 IMPT 计划在存在不确定性的情况下保持稳健性的能力。