Suh Yelin, Murray Walter, Keall Paul J
Department of Radiation Physics, The University of Texas M.D. Anderson Cancer Center, Houston, TX, USA.
Technol Cancer Res Treat. 2014 Dec;13(6):505-15. doi: 10.7785/tcrtexpress.2013.600276. Epub 2013 Dec 17.
The problem addressed here was to obtain optimal and deliverable dynamic multileaf collimator (MLC) leaf sequences from four-dimensional (4D) geometries for dynamic MLC tracking delivery. The envisaged scenario was where respiratory phase and position information of the target was available during treatment, from which the optimal treatment plan could be further adapted in real time. A tool for 4D treatment plan optimization was developed that integrates a commercially available treatment planning system and a general-purpose optimization system. The 4D planning method was applied to the 4D computed tomography planning scans of three lung cancer patients. The optimization variables were MLC leaf positions as a function of monitor units and respiratory phase. The objective function was the deformable dose-summed 4D treatment plan score. MLC leaf motion was constrained by the maximum leaf velocity between control points in terms of monitor units for tumor motion parallel to the leaf travel direction and between phases for tumor motion parallel to the leaf travel direction. For comparison and a starting point for the 4D optimization, three-dimensional (3D) optimization was performed on each of the phases. The output of the 4D IMRT planning process is a leaf sequence which is a function of both monitor unit and phase, which can be delivered to a patient whose breathing may vary between the imaging and treatment sessions. The 4D treatment plan score improved during 4D optimization by 34%, 4%, and 50% for Patients A, B, and C, respectively, indicating 4D optimization generated a better 4D treatment plan than the deformable sum of individually optimized phase plans. The dose-volume histograms for each phase remained similar, indicating robustness of the 4D treatment plan to respiratory variations expected during treatment delivery. In summary, 4D optimization for respiratory phase-dependent treatment planning with dynamic MLC motion tracking improved the 4D treatment plan score by 4-50% compared with 3D optimization. The 4D treatment plans had leaf sequences that varied from phase to phase to account for anatomic motion, but showed similar target dose distributions in each phase. The current method could in principle be generalized for use in offline replanning between fractions or for online 4D treatment planning based on 4D cone-beam CT images. Computation time remains a challenge.
本文所解决的问题是从四维(4D)几何结构中获取最优且可交付的动态多叶准直器(MLC)叶片序列,用于动态MLC跟踪放疗。设想的场景是在治疗期间可获取靶区的呼吸相位和位置信息,据此可进一步实时调整最优治疗计划。开发了一种用于4D治疗计划优化的工具,该工具集成了商用治疗计划系统和通用优化系统。将4D计划方法应用于三名肺癌患者的4D计算机断层扫描计划扫描。优化变量为作为监测单位和呼吸相位函数的MLC叶片位置。目标函数是可变形剂量求和的4D治疗计划评分。对于与叶片行进方向平行的肿瘤运动,MLC叶片运动在控制点之间的最大叶片速度方面受到监测单位的限制;对于与叶片行进方向平行的肿瘤运动,在各相位之间也受到限制。为了进行比较并作为4D优化的起点,对每个相位进行了三维(3D)优化。4D调强放疗计划过程的输出是一个叶片序列,它是监测单位和相位的函数,可交付给在成像和治疗期间呼吸可能不同的患者。在4D优化过程中,患者A、B和C的4D治疗计划评分分别提高了34%、4%和50%,表明4D优化生成的4D治疗计划比单独优化的相位计划的可变形总和更好。每个相位的剂量体积直方图保持相似,表明4D治疗计划对治疗交付期间预期的呼吸变化具有鲁棒性。总之,与3D优化相比,用于依赖呼吸相位的治疗计划并具有动态MLC运动跟踪的4D优化使4D治疗计划评分提高了4%-50%。4D治疗计划的叶片序列因相位而异,以考虑解剖运动,但在每个相位中显示出相似的靶区剂量分布。当前方法原则上可推广用于分次间的离线重新计划或基于4D锥形束CT图像的在线4D治疗计划。计算时间仍然是一个挑战。