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Extracting the normal lung dose–response curve from clinical DVH data: a possible role for low dose hyper-radiosensitivity increased radioresistance

机译:从临床DVH数据中提取正常的肺部剂量-反应曲线:低剂量超放射敏感性增加的放射抵抗性的可能作用

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摘要

In conventionally fractionated radiation therapy for lung cancer, radiation pneumonitis’ (RP) dependence on the normal lung dose-volume histogram (DVH) is not well understood. Complication models alternatively make RP a function of a summary statistic, such as mean lung dose (MLD). This work searches over damage profiles, which quantify sub-volume damage as a function of dose. Profiles that achieve best RP predictive accuracy on a clinical dataset are hypothesized to approximate DVH dependence.Step function damage rate profiles R(D) are generated, having discrete steps at several dose points. A range of profiles is sampled by varying the step heights and dose point locations. Normal lung damage is the integral of R(D) with the cumulative DVH. Each profile is used in conjunction with a damage cutoff to predict grade 2 plus (G2+) RP for DVHs from a University of Michigan clinical trial dataset consisting of 89 CFRT patients, of which 17 were diagnosed with G2+ RP.Optimal profiles achieve a modest increase in predictive accuracy— erroneous RP predictions are reduced from 11 (using MLD) to 8. A novel result is that optimal profiles have a similar distinctive shape: enhanced damage contribution from low doses (<20 Gy), a flat contribution from doses in the range ~20–40 Gy, then a further enhanced contribution from doses above 40 Gy. These features resemble the hyper-radiosensitivity / increased radioresistance (HRS/IRR) observed in some cell survival curves, which can be modeled using Joiner’s induced repair model.A novel search strategy is employed, which has the potential to estimate RP dependence on the normal lung DVH. When applied to a clinical dataset, identified profiles share a characteristic shape, which resembles HRS/IRR. This suggests that normal lung may have enhanced sensitivity to low doses, and that this sensitivity can affect RP risk.
机译:在传统的肺癌分级放射治疗中,对放射性肺炎(RP)对正常肺剂量-体积直方图(DVH)的依赖性尚不十分清楚。并发症模型还可以使RP成为汇总统计信息(例如平均肺部剂量(MLD))的函数。这项工作搜索了损伤概况,该损伤概况量化了作为剂量函数的子体积损伤。假设在临床数据集上获得最佳RP预测精度的曲线近似于DVH依赖性。生成阶跃函数损伤率曲线R(D),在几个剂量点具有离散的台阶。通过改变步高和剂量点位置来采样一系列轮廓。正常肺损伤是R(D)与累积DVH的积分。每个配置文件都与损伤截止值结合使用,以预测密歇根大学临床试验数据集中DVH的2级(G2 +)RP,该数据由89位CFRT患者组成,其中17位被诊断为G2 + RP。在预测准确性上—错误的RP预测从11(使用MLD)减少到8。一个新的结果是,最佳配置文件具有相似的独特形状:低剂量(<20 Gy)增加了损伤贡献,而低剂量下则保持不变。范围从约20–40 Gy,然后高于40 Gy的剂量会进一步增强贡献。这些特征类似于在某些细胞存活曲线中观察到的超放射敏感性/放射抗性(HRS / IRR),可以使用Joiner诱导修复模型进行建模。采用了一种新颖的搜索策略,它有可能估算RP对正常细胞的依赖性肺DVH。当应用于临床数据集时,已识别的轮廓将具有类似于HRS / IRR的特征形状。这表明正常肺对低剂量的敏感性可能增强,并且这种敏感性会影响RP风险。

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