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光子束建模差异可预测调强放疗剂量学审核中的误差。

Photon beam modeling variations predict errors in IMRT dosimetry audits.

作者信息

Glenn Mallory C, Brooks Fre'Etta, Peterson Christine B, Howell Rebecca M, Followill David S, Pollard-Larkin Julianne M, Kry Stephen F

机构信息

Department of Radiation Oncology, University of Washington, Seattle, United States.

Department of Radiation Physics, The University of Texas MD Anderson Cancer Center, Houston, United States; The University of Texas MD Anderson Cancer Center UTHealth Graduate School of Biomedical Sciences, Houston, United States.

出版信息

Radiother Oncol. 2022 Jan;166:8-14. doi: 10.1016/j.radonc.2021.10.021. Epub 2021 Nov 5.

Abstract

BACKGROUND & PURPOSE: To evaluate treatment planning system (TPS) beam modeling parameters as contributing factors to IMRT audit performance.

MATERIALS & METHODS: We retrospectively analyzed IROC Houston phantom audit performance and concurrent beam modeling survey responses from 337 irradiations performed between August 2017 and November 2019. Irradiation results were grouped based on the reporting of typical or atypical beam modeling parameter survey responses (<10th or >90th percentile values), and compared for passing versus failing (>7% error) or "poor" (>5% error) irradiation status. Additionally, we assessed the impact on the planned dose distribution from variations in modeling parameter value. Finally, we estimated the overall impact of beam modeling parameter variance on dose calculations, based on reported community variations.

RESULTS

Use of atypical modeling parameters were more frequently seen with failing phantom audit results (p = 0.01). Most pronounced was for Eclipse AAA users, where phantom irradiations with atypical values of dosimetric leaf gap (DLG) showed a greater incidence of both poor-performing (p = 0.048) and failing phantom audits (p = 0.014); and in general, DLG value was correlated with dose calculation accuracy (r = 0.397, p < 0.001). Manipulating TPS parameters induced systematic changes in planned dose distributions which were consistent with prior observations of how failures manifest. Dose change estimations based on these dose calculations agreed well with true dosimetric errors identified.

CONCLUSION

Atypical TPS beam modeling parameters are associated with failing phantom audits. This is identified as an important factor contributing to the observed failing phantom results, and highlights the need for accurate beam modeling.

摘要

背景与目的

评估治疗计划系统(TPS)射束建模参数作为影响调强放射治疗(IMRT)审核性能的因素。

材料与方法

我们回顾性分析了2017年8月至2019年11月期间进行的337次照射的国际放射肿瘤学研究组(IROC)休斯顿体模审核性能以及同期射束建模调查的回复。根据典型或非典型射束建模参数调查回复(<第10百分位数或>第90百分位数)的报告对照射结果进行分组,并比较通过与未通过(>7%误差)或“差”(>5%误差)的照射状态。此外,我们评估了建模参数值变化对计划剂量分布的影响。最后,我们根据报告的群体差异估计了射束建模参数差异对剂量计算的总体影响。

结果

在体模审核结果未通过的情况下,更频繁地出现非典型建模参数的使用(p = 0.01)。对于Eclipse AAA用户最为明显,剂量学叶片间距(DLG)非典型值的体模照射显示出性能差(p = 0.048)和体模审核未通过(p = 0.014)的发生率更高;总体而言,DLG值与剂量计算准确性相关(r = 0.397,p < 0.001)。操纵TPS参数会引起计划剂量分布的系统性变化,这与之前关于失败表现的观察结果一致。基于这些剂量计算的剂量变化估计与确定的真实剂量学误差吻合良好。

结论

非典型TPS射束建模参数与体模审核未通过相关。这被确定为导致观察到的体模结果未通过的一个重要因素,并突出了准确射束建模的必要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/40b4/8863621/24f76c4dac0d/nihms-1754324-f0001.jpg

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