Suppr超能文献

剂量体积直方图的分析概率建模。

Analytical probabilistic modeling of dose-volume histograms.

作者信息

Wahl Niklas, Hennig Philipp, Wieser Hans-Peter, Bangert Mark

机构信息

German Cancer Research Center - DKFZ, Im Neuenheimer Feld 280, Heidelberg, 69120, Germany.

Heidelberg Institute for Radiation Oncology - HIRO, Im Neuenheimer Feld 280, Heidelberg, 69120, Germany.

出版信息

Med Phys. 2020 Oct;47(10):5260-5273. doi: 10.1002/mp.14414. Epub 2020 Sep 9.

Abstract

PURPOSE

Radiotherapy, especially with charged particles, is sensitive to executional and preparational uncertainties that propagate to uncertainty in dose and plan quality indicators, for example, dose-volume histograms (DVHs). Current approaches to quantify and mitigate such uncertainties rely on explicitly computed error scenarios and are thus subject to statistical uncertainty and limitations regarding the underlying uncertainty model. Here we present an alternative, analytical method to approximate moments, in particular expectation value and (co)variance, of the probability distribution of DVH-points, and evaluate its accuracy on patient data.

METHODS

We use Analytical Probabilistic Modeling (APM) to derive moments of the probability distribution over individual DVH-points based on the probability distribution over dose. By using the computed moments to parameterize distinct probability distributions over DVH-points (here normal or beta distributions), not only the moments but also percentiles, that is, α - DVHs, are computed. The model is subsequently evaluated on three patient cases (intracranial, paraspinal, prostate) in 30- and single-fraction scenarios by assuming the dose to follow a multivariate normal distribution, whose moments are computed in closed-form with APM. The results are compared to a benchmark based on discrete random sampling.

RESULTS

The evaluation of the new probabilistic model on the three patient cases against a sampling benchmark proves its correctness under perfect assumptions as well as good agreement in realistic conditions. More precisely, ca. 90% of all computed expected DVH-points and their standard deviations agree within 1% volume with their empirical counterpart from sampling computations, for both fractionated and single fraction treatments. When computing α - DVH, the assumption of a beta distribution achieved better agreement with empirical percentiles than the assumption of a normal distribution: While in both cases probabilities locally showed large deviations (up to ±0.2), the respective - DVHs for α={0.05,0.5,0.95} only showed small deviations in respective volume (up to ±5% volume for a normal distribution, and up to 2% for a beta distribution). A previously published model from literature, which was included for comparison, exhibited substantially larger deviations.

CONCLUSIONS

With APM we could derive a mathematically exact description of moments of probability distributions over DVH-points given a probability distribution over dose. The model generalizes previous attempts and performs well for both choices of probability distributions, that is, normal or beta distributions, over DVH-points.

摘要

目的

放射治疗,尤其是带电粒子放疗,对执行和准备过程中的不确定性很敏感,这些不确定性会传播到剂量和计划质量指标(如剂量体积直方图(DVH))的不确定性中。当前量化和减轻此类不确定性的方法依赖于明确计算的误差情景,因此受到统计不确定性以及潜在不确定性模型的限制。在此,我们提出一种替代的分析方法,用于近似DVH点概率分布的矩,特别是期望值和(协)方差,并在患者数据上评估其准确性。

方法

我们使用分析概率建模(APM),基于剂量的概率分布来推导各个DVH点概率分布的矩。通过使用计算出的矩来参数化DVH点上不同的概率分布(此处为正态分布或贝塔分布),不仅可以计算矩,还可以计算百分位数,即α - DVH。随后,通过假设剂量服从多元正态分布,在30分次和单次分割情况下,对三个患者病例(颅内、脊柱旁、前列腺)的模型进行评估,其矩通过APM以封闭形式计算。将结果与基于离散随机抽样的基准进行比较。

结果

在三个患者病例上针对抽样基准对新概率模型进行评估,证明了其在完美假设下的正确性以及在实际条件下的良好一致性。更确切地说,对于分次和单次分割治疗,所有计算出的预期DVH点及其标准差中约90%与抽样计算得出的经验值在体积上相差1%以内。在计算α - DVH时,与正态分布假设相比,贝塔分布假设与经验百分位数的一致性更好:虽然在两种情况下概率局部都有较大偏差(高达±0.

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验