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首页> 外文期刊>Radiotherapy and oncology: Journal of the European Society for Therapeutic Radiology and Oncology >The modelled benefits of individualizing radiotherapy patients' dose using cellular radiosensitivity assays with inherent variability.
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The modelled benefits of individualizing radiotherapy patients' dose using cellular radiosensitivity assays with inherent variability.

机译:使用具有固有可变性的细胞放射敏感性测定来个性化放射治疗患者剂量的模型化收益。

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OBJECTIVE: To model the increases in local tumour control that may be achieved, without increasing normal tissue complications, by prescribing a patient's dose based on cellular radiosensitivity measured using an assay possessing inherent variability. METHOD: Patient populations with varying radiosensitivity were simulated, based on measured distributions among cancer patients of the surviving fraction of their fibroblasts given a dose of 2 Gy in vitro (SF2). The dose-response curve for complications in the population was assessed using a formula relating SF2 to normal tissue complication probability (NTCP), by summing the data for the individuals. This curve was similar to clinically-derived dose-response curves. The effect of individualizing the patients' doses was explored, based on individual radiosensitivities measured by SF2, so that every patient had the same low (5%) value of NTCP. RESULTS: It was found that a significant gain (up to around 30%) in tumour control probability (TCP) was predicted for the population when the doses were individualized using a predictive assay result strongly correlated with NTCP. A greater gain in TCP was predicted when each of the individuals were assumed to have a higher sensitivity and the distribution of radiosensitivity in the population was widened to compensate. The gain in TCP was less (around 20%) when considering less-sensitive patients and a narrower distribution of radiosensitivities. The effect of assay variability and other factors that could affect the predictive power of the assay was simulated. Assay variability and an imperfect correlation between in vitro cell survival and tissue complications, rapidly increased the NTCP for the population when treated with individualized doses. However the individualized doses could be reduced so that NTCP declined to an acceptable level, but in this case the TCP for the population also declined. For example, when the assay variability was half the true variability in SF2, the gain in TCP was reduced to around 6%. Also, the predicted gains in population TCP were higher if tumour and normal tissue radiosensitivity were assumed to be correlated. In this case, and in the absence of assay variability, increases in population TCP of about 50% and 30% were predicted, depending on the assumed relative sensitivities of the individual patients compared with that of the population average. For practical application, the division of the patient population simply into three groups of high, average and low radiosensitivity was also examined. The three groups were treated with different doses and the NTCP for the population was kept below 5%. Although the gain in population TCP was less than that predicted with the full individualization, considerable gains of up to 20% were still predicted. This method of dividing the population was more resilient to assay variability and other factors that may affect complications in patients. The modelling suggests that small improvements in TCP (5-10%) may still be achievable even if the correlation between SF2 and late complications is lower at around - 0.4 to - 0.6, as reported in some clinical series. CONCLUSION: Modelling based on measured distributions of fibroblast radiosensitivity shows that improvements in tumour control rates may be achievable through the individualization of radiotherapy dose prescriptions of cancer patients, when assay variability is less than about 50% of the true variability in radiosensitivity, and with greater benefits if tumour and normal tissue radiosensitivity are correlated. Tripartite stratification of the population proved to be less sensitive to assay uncertainty, and can provide most of the benefits of the full individualization.
机译:目的:通过基于具有固有变异性的测定方法测量的细胞放射敏感性来规定患者的剂量,从而在不增加正常组织并发症的情况下模拟可实现的局部肿瘤控制的增加。方法:根据在体外给予2 Gy剂量(SF2)的成纤维细胞存活分数的癌症患者中测得的分布,模拟了具有不同放射敏感性的患者人群。通过将个体的数据相加,使用将SF2与正常组织并发症发生率(NTCP)相关的公式来评估人群中并发症的剂量反应曲线。该曲线类似于临床来源的剂量反应曲线。基于SF2测量的个体放射敏感性,探索了个性化患者剂量的效果,从而使每个患者的NTCP值均保持相同(低5%)。结果:发现使用与NTCP密切相关的预测性分析结果对剂量进行个体化后,可预测该人群的肿瘤控制概率(TCP)显着提高(最高30%)。当假定每个个体具有更高的敏感性并且人群中放射敏感性的分布被扩大以补偿时,可以预测TCP会有更大的收益。考虑敏感性较低的患者和放射敏感性分布较窄的患者,TCP的获益较少(约20%)。模拟了测定变异性和其他可能影响测定预测能力的因素的影响。当用个体化剂量治疗时,测定变异性和体外细胞存活与组织并发症之间的不完美关联迅速增加了人群的NTCP。但是,可以降低个体化剂量,以使NTCP下降到可接受的水平,但是在这种情况下,人群的TCP也下降了。例如,当测定变异性是SF2真实变异性的一半时,TCP的增益降低到6%左右。此外,如果假定肿瘤与正常组织的放射敏感性相关,则预测的种群TCP收益会更高。在这种情况下,并且在没有测定变异性的情况下,预计人群TCP的增加约50%和30%,这取决于各个患者与总体平均值相比的相对敏感性。对于实际应用,还检查了将患者人群简单分为高,中,低放射敏感性三类。三组患者接受了不同剂量的治疗,人群的NTCP保持在5%以下。尽管人口TCP的增长少于完全个体化所预测的增长,但仍可预测高达20%的可观增长。这种划分人群的方法对测定变异性和其他可能影响患者并发症的因素更具弹性。该模型表明,即使某些临床系列报道,即使SF2和晚期并发症之间的相关性较低,在-0.4至-0.6左右,TCP仍可实现少量改善(5-10%)。结论:基于测得的成纤维细胞放射敏感性分布的模型表明,当分析变异性小于放射敏感性真实变异性的大约50%且更大时,通过个体化癌症患者的放射治疗剂量处方可以实现肿瘤控制率的改善。如果肿瘤与正常组织的放射敏感性相关,则有益。人口的三方分层被证明对测定不确定性不那么敏感,并且可以提供完全个性化的大部分好处。

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