Wiersma Rodney D, Liu Xinmin
Department of Radiation and Cellular Oncology, The University of Chicago, Chicago, IL 60637-1470, United States of America.
Biomed Phys Eng Express. 2019 Aug;5(5). doi: 10.1088/2057-1976/ab3ba9. Epub 2019 Aug 30.
A central problem in the field of radiation therapy (RT) is how to optimally deliver dose to a patient in a way that fully accounts for anatomical position changes over time. As current RT is a static process, where beam intensities are calculated before the start of treatment, anatomical deviations can result in poor dose conformity. To overcome these limitations, we present a simulation study on a fully dynamic real-time adaptive radiation therapy (RT-ART) optimization approach that uses ultra-fast beamlet control to dynamically adapt to patient motion in real-time. A virtual RT-ART machine was simulated with a rapidly rotating linear accelerator (LINAC) source (60 RPM) and a binary 1D multi-leaf collimator (MLC) operating at 100 Hz. If the real-time tracked target motion exceeded a predefined threshold, a time dependent objective function was solved using fast optimization methods to calculate new beamlet intensities that were then delivered to the patient. To evaluate the approach, system response was analyzed for patient derived continuous drift, step-like, and periodic intra-fractional motion. For each motion type investigated, the RT-ART method was compared against the ideal case with no patient motion (static case) as well as to the case without the use RT-ART. In all cases, isodose lines and dose-volume-histograms (DVH) showed that RT-ART plan quality was approximately the same as the static case, and considerably better than the no RT-ART case. Based on tests using several different motion types, RT-ART was able to recover dose conformity to the level that it was similar to an ideal RT delivery with no anatomical changes. With continued advances in real-time patient motion tracking and fast computational processes, there is significant potential for the RT-ART optimization process to be realized on next generation RT machines.
放射治疗(RT)领域的一个核心问题是如何以一种充分考虑解剖位置随时间变化的方式,将剂量最佳地传递给患者。由于当前的放射治疗是一个静态过程,即在治疗开始前计算束流强度,解剖偏差可能导致剂量适形性不佳。为了克服这些限制,我们提出了一项关于全动态实时自适应放射治疗(RT-ART)优化方法的模拟研究,该方法使用超快速子束控制实时动态适应患者运动。使用快速旋转的直线加速器(LINAC)源(60转/分钟)和以100赫兹运行的二进制一维多叶准直器(MLC)模拟了一台虚拟RT-ART机器。如果实时跟踪的靶区运动超过预定义阈值,则使用快速优化方法求解时间相关的目标函数,以计算新的子束强度,然后将其传递给患者。为了评估该方法,分析了系统对患者衍生的连续漂移、阶梯状和分次内周期性运动的响应。对于所研究的每种运动类型,将RT-ART方法与无患者运动的理想情况(静态情况)以及不使用RT-ART的情况进行了比较。在所有情况下,等剂量线和剂量体积直方图(DVH)表明,RT-ART计划质量与静态情况大致相同,并且明显优于不使用RT-ART的情况。基于使用几种不同运动类型的测试,RT-ART能够将剂量适形性恢复到与无解剖变化的理想RT传递相似的水平。随着实时患者运动跟踪和快速计算过程的不断进步,RT-ART优化过程在下一代RT机器上实现具有巨大潜力。