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首页> 外文期刊>Physics in medicine and biology. >A technique for generating phase-space-based Monte Carlo beamlets in radiotherapy applications.
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A technique for generating phase-space-based Monte Carlo beamlets in radiotherapy applications.

机译:一种在放射治疗应用中生成基于相空间的蒙特卡洛子束的技术。

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摘要

As radiotherapy treatment planning moves toward Monte Carlo (MC) based dose calculation methods, the MC beamlet is becoming an increasingly common optimization entity. At present, methods used to produce MC beamlets have utilized a particle source model (PSM) approach. In this work we outline the implementation of a phase-space-based approach to MC beamlet generation that is expected to provide greater accuracy in beamlet dose distributions. In this approach a standard BEAMnrc phase space is sorted and divided into beamlets with particles labeled using the inheritable particle history variable. This is achieved with the use of an efficient sorting algorithm, capable of sorting a phase space of any size into the required number of beamlets in only two passes. Sorting a phase space of five million particles can be achieved in less than 8 s on a single-core 2.2 GHz CPU. The beamlets can then be transported separately into a patient CT dataset, producing separate dose distributions (doselets). Methods for doselet normalization and conversion of dose to absolute units of Gy for use in intensity modulated radiation therapy (IMRT) plan optimization are also described.
机译:随着放射治疗计划向基于蒙特卡洛(MC)的剂量计算方法发展,MC子束正成为越来越普遍的优化实体。当前,用于产生MC子束的方法已经利用了粒子源模型(PSM)方法。在这项工作中,我们概述了基于相空间的方法实现MC子束生成的方法,该方法有望在子束剂量分布中提供更高的准确性。在这种方法中,对标准BEAMnrc相空间进行分类,并将其分成带有使用可继承粒子历史变量标记的粒子的子束。这是通过使用有效的分类算法来实现的,该算法能够在仅两次通过的情况下将任意大小的相空间分类为所需数量的子束。在单核2.2 GHz CPU上,可以在不到8秒的时间内对500万个粒子的相空间进行排序。然后,可以将子束分别传输到患者CT数据集中,从而产生单独的剂量分布(子束)。还介绍了用于剂量标准化和将剂量转换为Gy的绝对单位以用于强度调制放射治疗(IMRT)计划优化的方法。

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