Ma Jiasen, Beltran Chris, Seum Wan Chan Tseung Hok, Herman Michael G
Department of Radiation Oncology, Division of Medical Physics, Mayo Clinic, 200 First Street Southwest, Rochester, Minnesota 55905.
Med Phys. 2014 Dec;41(12):121707. doi: 10.1118/1.4901522.
Conventional spot scanning intensity modulated proton therapy (IMPT) treatment planning systems (TPSs) optimize proton spot weights based on analytical dose calculations. These analytical dose calculations have been shown to have severe limitations in heterogeneous materials. Monte Carlo (MC) methods do not have these limitations; however, MC-based systems have been of limited clinical use due to the large number of beam spots in IMPT and the extremely long calculation time of traditional MC techniques. In this work, the authors present a clinically applicable IMPT TPS that utilizes a very fast MC calculation.
An in-house graphics processing unit (GPU)-based MC dose calculation engine was employed to generate the dose influence map for each proton spot. With the MC generated influence map, a modified least-squares optimization method was used to achieve the desired dose volume histograms (DVHs). The intrinsic CT image resolution was adopted for voxelization in simulation and optimization to preserve spatial resolution. The optimizations were computed on a multi-GPU framework to mitigate the memory limitation issues for the large dose influence maps that resulted from maintaining the intrinsic CT resolution. The effects of tail cutoff and starting condition were studied and minimized in this work.
For relatively large and complex three-field head and neck cases, i.e., >100,000 spots with a target volume of ∼ 1000 cm(3) and multiple surrounding critical structures, the optimization together with the initial MC dose influence map calculation was done in a clinically viable time frame (less than 30 min) on a GPU cluster consisting of 24 Nvidia GeForce GTX Titan cards. The in-house MC TPS plans were comparable to a commercial TPS plans based on DVH comparisons.
A MC-based treatment planning system was developed. The treatment planning can be performed in a clinically viable time frame on a hardware system costing around 45,000 dollars. The fast calculation and optimization make the system easily expandable to robust and multicriteria optimization.
传统的点扫描调强质子治疗(IMPT)治疗计划系统(TPS)基于解析剂量计算来优化质子点权重。这些解析剂量计算在异质材料中已显示出严重局限性。蒙特卡罗(MC)方法不存在这些局限性;然而,基于MC的系统由于IMPT中大量的射束点以及传统MC技术极长的计算时间,临床应用有限。在这项工作中,作者提出了一种临床适用的IMPT TPS,它采用了非常快速的MC计算。
采用基于内部图形处理单元(GPU)的MC剂量计算引擎来生成每个质子点的剂量影响图。利用MC生成的影响图,采用改进的最小二乘优化方法来实现所需的剂量体积直方图(DVH)。在模拟和优化中采用固有CT图像分辨率进行体素化,以保持空间分辨率。在多GPU框架上进行优化计算,以缓解因保持固有CT分辨率而导致的大剂量影响图的内存限制问题。在这项工作中研究并最小化了尾部截断和起始条件的影响。
对于相对较大且复杂的三野头颈部病例,即超过100,000个点,靶体积约为1000 cm³且有多个周围关键结构,在由24块英伟达GeForce GTX Titan卡组成的GPU集群上,优化以及初始MC剂量影响图计算在临床可行的时间框架内(少于30分钟)完成。基于DVH比较,内部MC TPS计划与商业TPS计划相当。
开发了一种基于MC的治疗计划系统。该治疗计划可在成本约45,000美元的硬件系统上在临床可行的时间框架内完成。快速的计算和优化使该系统易于扩展到稳健的多标准优化。