Department of Radiation Oncology, Moffitt Cancer Center, Tampa, Florida, USA.
RaySearch Laboratories AB, Stockholm, Sweden.
J Appl Clin Med Phys. 2022 May;23(5):e13572. doi: 10.1002/acm2.13572. Epub 2022 Feb 25.
Head and neck cancers present challenges in radiation treatment planning due to the large number of critical structures near the target(s) and highly heterogeneous tissue composition. While Monte Carlo (MC) dose calculations currently offer the most accurate approximation of dose deposition in tissue, the switch to MC presents challenges in preserving the parameters of care. The differences in dose-to-tissue were widely discussed in the literature, but mostly in the context of recalculating the existing plans rather than reoptimizing with the MC dose engine. Also, the target dose homogeneity received less attention. We adhere to strict dose homogeneity objectives in clinical practice. In this study, we started with 21 clinical volumetric-modulated arc therapy (VMAT) plans previously developed in Pinnacle treatment planning system. Those plans were recalculated "as is" with RayStation (RS) MC algorithm and then reoptimized in RS with both collapsed cone (CC) and MC algorithms. MC statistical uncertainty (0.3%) was selected carefully to balance the dose computation time (1-2 min) with the planning target volume (PTV) dose-volume histogram (DVH) shape approaching that of a "noise-free" calculation. When the hot spot in head and neck MC-based treatment planning is defined as dose to 0.03 cc, it is exceedingly difficult to limit it to 105% of the prescription dose, as we were used to with the CC algorithm. The average hot spot after optimization and calculation with RS MC was statistically significantly higher compared to Pinnacle and RS CC algorithms by 1.2 and 1.0 %, respectively. The 95% confidence interval (CI) observed in this study suggests that in most cases a hot spot of ≤107% is achievable. Compared to the 95% CI for the previous clinical plans recalculated with RS MC "as is" (upper limit 108%), in real terms this result is at least as good or better than the historic plans.
头颈部癌症在放射治疗计划中存在挑战,因为靶区(多个)附近有大量关键结构,且组织组成高度不均匀。虽然蒙特卡罗(Monte Carlo,MC)剂量计算目前提供了组织内剂量沉积的最准确近似值,但向 MC 转换在保持治疗参数方面存在挑战。文献中广泛讨论了剂量与组织之间的差异,但主要是在重新计算现有计划的背景下,而不是使用 MC 剂量引擎重新优化。此外,目标剂量均匀性受到的关注较少。在临床实践中,我们坚持严格的剂量均匀性目标。在这项研究中,我们从之前在 Pinnacle 治疗计划系统中开发的 21 个临床容积调制弧形治疗(volumetric-modulated arc therapy,VMAT)计划开始。这些计划使用 RayStation(RS)MC 算法“原样”重新计算,然后使用 collapsed cone(CC)和 MC 算法在 RS 中重新优化。MC 统计不确定性(0.3%)经过精心选择,以平衡剂量计算时间(1-2 分钟)与计划靶区(planning target volume,PTV)剂量-体积直方图(dose-volume histogram,DVH)形状,使其接近“无噪声”计算。当将头颈部 MC 治疗计划中的热点定义为 0.03 cc 的剂量时,将其限制在处方剂量的 105%以内非常困难,这与我们习惯使用 CC 算法的情况一样。与 Pinnacle 和 RS CC 算法相比,优化后和使用 RS MC 计算后的平均热点分别高出统计学显著的 1.2%和 1.0%。本研究观察到的 95%置信区间(confidence interval,CI)表明,在大多数情况下,热点可以达到≤107%。与之前使用 RS MC“原样”重新计算的 95%CI 相比(上限为 108%),实际上,这一结果至少与历史计划一样好或更好。