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Toward a web-based real-time radiation treatment planning system in a cloud computing environment

机译:迈向云计算环境中基于Web的实时放射治疗计划系统

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To exploit the potential dosimetric advantages of intensity modulated radiation therapy (IMRT) and volumetric modulated arc therapy (VMAT), an in-depth approach is required to provide efficient computing methods. This needs to incorporate clinically related organ specific constraints, Monte Carlo (MC) dose calculations, and large-scale plan optimization. This paper describes our first steps toward a web-based real-time radiation treatment planning system in a cloud computing environment (CCE). The Amazon Elastic Compute Cloud (EC2) with a master node (named m2.xlarge containing 17.1 GB of memory, two virtual cores with 3.25 EC2 Compute Units each, 420 GB of instance storage, 64-bit platform) is used as the backbone of cloud computing for dose calculation and plan optimization. The master node is able to scale the workers on an 'on-demand' basis. MC dose calculation is employed to generate accurate beamlet dose kernels by parallel tasks. The intensity modulation optimization uses total-variation regularization (TVR) and generates piecewise constant fluence maps for each initial beam direction in a distributed manner over the CCE. The optimized fluence maps are segmented into deliverable apertures. The shape of each aperture is iteratively rectified to be a sequence of arcs using the manufacture's constraints. The output plan file from the EC2 is sent to the simple storage service. Three de-identified clinical cancer treatment plans have been studied for evaluating the performance of the new planning platform with 6 MV flattening filter free beams (40 × 40 cm2) from the Varian TrueBeamTM STx linear accelerator. A CCE leads to speed-ups of up to 14-fold for both dose kernel calculations and plan optimizations in the head and neck, lung, and prostate cancer cases considered in this study. The proposed system relies on a CCE that is able to provide an infrastructure for parallel and distributed computing. The resultant plans from the cloud computing are identical to PC-based IMRT and VMAT plans, confirming the reliability of the cloud computing platform. This cloud computing infrastructure has been established for a radiation treatment planning. It substantially improves the speed of inverse planning and makes future on-treatment adaptive re-planning possible.
机译:为了利用强度调制放射疗法(IMRT)和体积调制弧光疗法(VMAT)的潜在剂量优势,需要一种深入的方法来提供有效的计算方法。这需要结合临床相关器官的特定限制,蒙特卡洛(MC)剂量计算和大规模计划优化。本文介绍了我们在云计算环境(CCE)中向基于Web的实时放射治疗计划系统迈出的第一步。具有主节点(名为m2.xlarge,包含17.1 GB内存,两个虚拟内核,每个虚拟内核分别具有3.25 EC2计算单元,420 GB实例存储,64位平台)的Amazon Elastic Compute Cloud(EC2)被用作以下各项的主干:云计算,用于剂量计算和计划优化。主节点能够“按需”扩展工作人员。 MC剂量计算用于通过并行任务生成准确的子束剂量核心。强度调制优化使用总变化正则化(TVR),并在CCE上以分布式方式为每个初始光束方向生成分段恒定注量图。优化的注量图被分成可交付的孔径。使用制造商的约束条件,将每个孔的形状迭代校正为一系列弧线。 EC2的输出计划文件被发送到简单存储服务。已研究了三种不确定的临床癌症治疗计划,以评估使用Varian TrueBeamTM STx线性加速器的6 MV平坦滤波器无光束(40×40 cm2)评估新规划平台的性能。对于本研究中考虑的头颈部,肺部和前列腺癌病例的剂量仁计算和计划优化,CCE可使速度提高多达14倍。所提出的系统依赖于CCE,该CCE能够为并行和分布式计算提供基础架构。云计算所产生的计划与基于PC的IMRT和VMAT计划相同,从而确认了云计算平台的可靠性。已建立此云计算基础架构用于放射治疗计划。它大大提高了逆向计划的速度,并使将来的治疗中适应性重新计划成为可能。

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