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Modeling the Risk of Secondary Malignancies after Radiotherapy

机译:模拟放疗后继发恶性肿瘤的风险

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In developed countries, more than half of all cancer patients receive radiotherapy at some stage in the management of their disease. However, a radiation-induced secondary malignancy can be the price of success if the primary cancer is cured or at least controlled. Therefore, there is increasing concern regarding radiation-related second cancer risks in long-term radiotherapy survivors and a corresponding need to be able to predict cancer risks at high radiation doses. Of particular interest are second cancer risk estimates for new radiation treatment modalities such as intensity modulated radiotherapy, intensity modulated arc-therapy, proton and heavy ion radiotherapy. The long term risks from such modern radiotherapy treatment techniques have not yet been determined and are unlikely to become apparent for many years, due to the long latency time for solid tumor induction. Most information on the dose-response of radiation-induced cancer is derived from data on the A-bomb survivors who were exposed to γ-rays and neutrons. Since, for radiation protection purposes, the dose span of main interest is between zero and one Gy, the analysis of the A-bomb survivors is usually focused on this range. With increasing cure rates, estimates of cancer risk for doses larger than one Gy are becoming more important for radiotherapy patients. Therefore in this review, emphasis was placed on doses relevant for radiotherapy with respect to radiation induced solid cancer. Simple radiation protection models should be used only with extreme care for risk estimates in radiotherapy, since they are developed exclusively for low dose. When applied to scatter radiation, such models can predict only a fraction of observed second malignancies. Better semi-empirical models include the effect of dose fractionation and represent the dose-response relationships more accurately. The involved uncertainties are still huge for most of the organs and tissues. A major reason for this is that the underlying processes of the induction of carcinoma and sarcoma are not well known. Most uncertainties are related to the time patterns of cancer induction, the population specific dependencies and to the organ specific cancer induction rates. For radiotherapy treatment plan optimization these factors are irrelevant, as a treatment plan comparison is performed for a patient of specific age, sex, etc. If a treatment plan is compared relative to another one only the shape of the dose-response curve (the so called risk-equivalent dose) is of importance and errors can be minimized.
机译:在发达国家,超过一半的癌症患者在疾病控制的某个阶段接受放射治疗。但是,如果原发癌得到治愈或至少得到控制,则辐射诱发的继发性恶性肿瘤可能是成功的代价。因此,人们越来越关注长期放疗幸存者中与辐射有关的第二种癌症的风险,并且相应地需要能够在高辐射剂量下预测癌症的风险。特别令人感兴趣的是新的放射治疗方式的第二次癌症风险估计,例如强度调制放射疗法,强度调制电弧疗法,质子和重离子放射疗法。由于实体肿瘤诱导的潜伏时间长,因此尚未确定这种现代放射疗法治疗技术的长期风险,并且多年以来不太可能变得明显。关于辐射诱发癌症剂量反应的大多数信息来自暴露于γ射线和中子的原子弹幸存者的数据。由于出于辐射防护目的,主要关注的剂量范围在0至1 Gy之间,因此对A炸弹幸存者的分析通常集中在该范围内。随着治愈率的提高,对于大于1 Gy的剂量,对放射治疗患者的癌症风险估计变得越来越重要。因此,在这篇综述中,重点放在了与放射诱发的实体癌放疗有关的剂量。由于仅针对低剂量开发了简单的辐射防护模型,因此仅应格外小心地进行放射治疗的风险评估。当应用于散射辐射时,此类模型只能预测观察到的第二恶性肿瘤的一小部分。更好的半经验模型包括剂量分割的影响,并能更准确地表示剂量-反应关系。对于大多数器官和组织而言,所涉及的不确定性仍然很大。造成这种情况的主要原因是,尚不了解诱发癌症和肉瘤的潜在过程。大多数不确定性与癌症诱导的时间模式,人群特异性依赖性以及器官特异性癌症诱导率有关。对于放疗治疗计划的优化,这些因素无关紧要,因为针对特定年龄,性别等的患者进行了治疗计划的比较。如果将治疗计划与另一个患者进行比较,则仅是剂量反应曲线的形状(因此风险等效剂量)非常重要,可以最大程度地减少错误。

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