Rühm Werner, Eidemüller Markus, Kaiser Jan Christian
a Department of Radiation Sciences , Helmholtz Center München, Institute of Radiation Protection , Neuherberg , Germany.
Int J Radiat Biol. 2017 Oct;93(10):1093-1117. doi: 10.1080/09553002.2017.1310405. Epub 2017 Apr 25.
Biologically-based mechanistic models that are used in combining current understanding of human carcinogenesis with epidemiological studies were reviewed. Assessment was made of how well they fit the data, whether they account for non-linear radiobiological low-dose effects, and whether they suggest any implications for the dose response at low doses and dose rates. However, the present paper does not make an attempt to provide a complete review of the existing literature on biologically-based models and their application to epidemiological data.
In most studies the two-stage clonal expansion (TSCE) model of carcinogenesis was used. The model provided robust estimates of identifiable parameters and radiation risk. While relatively simple, it is flexible, so that more stages can easily be added, and tests made of various types of radiation action. In general, the model performed similarly or better than descriptive excess absolute and excess relative risk models, in terms of quality of fit and number of parameters. Only very rarely the shape of dose-response predicted by the models was investigated. For some tumors, when more detailed biological information was known, additional pathways were included in the model. The future development of these models will benefit from growing knowledge on carcinogenesis processes, and in particular from use of biobank tissue samples and advances in omics technologies. Their use appears a promising approach to investigate the radiation risk at low doses and low dose rates. However, the uncertainties involved are still considerable, and the models provide only a simplified description of the underlying complexity of carcinogenesis. Current assumptions in radiation protection including the linear-non-threshold (LNT) model are not in contradiction to what is presently known on the process of cancer development.
对用于将当前对人类致癌作用的理解与流行病学研究相结合的基于生物学的机制模型进行了综述。评估了它们与数据的拟合程度、是否考虑了非线性放射生物学低剂量效应,以及是否对低剂量和低剂量率下的剂量反应有任何启示。然而,本文并未试图对现有的关于基于生物学的模型及其在流行病学数据中的应用的文献进行全面综述。
在大多数研究中使用了致癌作用的两阶段克隆扩增(TSCE)模型。该模型对可识别参数和辐射风险提供了可靠的估计。虽然相对简单,但它具有灵活性,因此可以轻松添加更多阶段,并对各种类型的辐射作用进行测试。总体而言,就拟合质量和参数数量而言,该模型的表现与描述性超额绝对风险和超额相对风险模型相似或更好。仅极少数情况下会研究模型预测的剂量反应形状。对于某些肿瘤,当了解到更详细的生物学信息时,会在模型中纳入额外的途径。这些模型的未来发展将受益于对致癌过程认识的不断增加,特别是生物样本库组织样本的使用和组学技术的进步。它们的使用似乎是研究低剂量和低剂量率下辐射风险的一种有前景的方法。然而所涉及的不确定性仍然相当大,并且这些模型仅对致癌作用潜在的复杂性提供了简化描述。当前辐射防护中的假设,包括线性无阈(LNT)模型,与目前已知的癌症发展过程并不矛盾。