Doi Kazutaka, Yoshinaga Shinji
Department of Radiation Regulatory Science Research, Institute for Radiological Science, National Institutes for Quantum Science and Technology, 4-9-1, Anagawa, Inage-Ku, Chiba City 263-8555, Japan.
Department of Environmetrics and Biometrics, Research Institute for Radiation Biology and Medicine, Hiroshima University, 1-2-3 Kasumi, Minami-Ku, Hiroshima City 732-8553, Japan.
J Radiat Res. 2025 Mar 24;66(2):115-128. doi: 10.1093/jrr/rraf012.
Previous studies on cohorts of radiation workers have provided valuable insights into the effects of low-dose-rate radiation; however, some concerns regarding the potential confounding effects of smoking have been expressed. Although some studies have collected smoking data and adjusted for this variable, their limited numbers and the presence of other confounders obscure the extent of the impact of smoking on their results. To address this, we conducted a simulation study to quantitatively evaluate the bias from confounding and modeling conditions, similar to actual epidemiological studies. Our analysis, based on data from Japanese radiation workers, indicated that not adjusting for smoking can lead to an overestimation of radiation effects by approximately 110%. This overestimation was relatively insensitive to sample size and dose distribution parameters, but varied with radiation and smoking risk, baseline smoking probability, and heterogeneity in baseline risk. Considering the simplified settings of this simulation study and the uncertainty of the estimates of Japanese radiation workers, our simulation results were consistent with those of the real-world epidemiological study. We also compared the results using Cox and Poisson regression models, ensuring that their modeling approaches were as similar as possible, and found minimal differences between them.
先前对辐射工作人员队列的研究为低剂量率辐射的影响提供了有价值的见解;然而,有人对吸烟的潜在混杂效应表示担忧。尽管一些研究收集了吸烟数据并对该变量进行了调整,但样本数量有限以及存在其他混杂因素掩盖了吸烟对其结果的影响程度。为解决这一问题,我们进行了一项模拟研究,以定量评估混杂和建模条件导致的偏差,类似于实际的流行病学研究。我们基于日本辐射工作人员的数据进行分析,结果表明不调整吸烟因素会导致对辐射效应的高估约110%。这种高估对样本量和剂量分布参数相对不敏感,但会因辐射和吸烟风险、基线吸烟概率以及基线风险的异质性而有所不同。考虑到本模拟研究的简化设置以及日本辐射工作人员估计值的不确定性,我们的模拟结果与实际流行病学研究结果一致。我们还比较了使用Cox模型和泊松回归模型的结果,确保它们的建模方法尽可能相似,发现两者之间差异极小。