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Bayesian dose-response analysis for epidemiological studies with complex uncertainty in dose estimation

机译:贝叶斯剂量反应分析用于剂量估计复杂不确定性的流行病学研究

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Most conventional risk analysis methods rely on a single best estimate of exposure per person, which does not allow for adjustment for exposure-related uncertainty. Here, we propose a Bayesian model averaging method to properly quantify the relationship between radiation dose and disease outcomes by accounting for shared and unshared uncertainty in estimated dose. Our Bayesian risk analysis method utilizes multiple realizations of sets (vectors) of doses generated by a two-dimensional Monte Carlo simulation method that properly separates shared and unshared errors in dose estimation. The exposure model used in this work is taken from a study of the risk of thyroid nodules among a cohort of 2376 subjects who were exposed to fallout from nuclear testing in Kazakhstan. We assessed the performance of our method through an extensive series of simulations and comparisons against conventional regression risk analysis methods. When the estimated doses contain relatively small amounts of uncertainty, the Bayesian method using multiple a priori plausible draws of dose vectors gave similar results to the conventional regression-based methods of dose-response analysis. However, when large and complex mixtures of shared and unshared uncertainties are present, the Bayesian method using multiple dose vectors had significantly lower relative bias than conventional regression-based risk analysis methods and better coverage, that is, a markedly increased capability to include the true risk coefficient within the 95% credible interval of the Bayesian-based risk estimate. An evaluation of the dose-response using our method is presented for an epidemiological study of thyroid disease following radiation exposure. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:大多数传统的风险分析方法都依赖于对人均暴露量的最佳估计,而这无法针对与暴露量有关的不确定性进行调整。在这里,我们提出了一种贝叶斯模型平均方法,通过考虑估计剂量中的共享和非共享不确定性来适当地量化辐射剂量与疾病结果之间的关系。我们的贝叶斯风险分析方法利用了由二维蒙特卡洛模拟方法生成的剂量集(向量)的多种实现,该方法可以正确地区分剂量估算中共享和非共享的误差。这项工作中使用的暴露模型来自一项对2376名在哈萨克斯坦进行核试验后尘暴露的受试者中甲状腺结节风险的研究。我们通过广泛的模拟和与传统回归风险分析方法的比较,评估了该方法的性能。当估计的剂量包含相对较少的不确定性时,使用多次先验合理剂量矢量抽取的贝叶斯方法得出的结果与基于传统回归的剂量反应分析方法相似。但是,当存在共享和非共享不确定性的大而复杂的混合物时,使用多剂量向量的贝叶斯方法的相对偏差要比传统的基于回归的风险分析方法低得多,而且覆盖范围也更广,也就是说,包含真实值的能力显着提高。贝叶斯风险估计的95%可信区间内的风险系数。使用我们的方法对剂量反应进行了评估,用于放射线照射后甲状腺疾病的流行病学研究。版权所有(c)2015 John Wiley&Sons,Ltd.

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