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Correction of confidence intervals in excess relative risk models using Monte Carlo dosimetry systems with shared errors

机译:使用共享误差的蒙特卡洛剂量测定系统校正过量相对风险模型中的置信区间

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摘要

In epidemiological studies, exposures of interest are often measured with uncertainties, which may be independent or correlated. Independent errors can often be characterized relatively easily while correlated measurement errors have shared and hierarchical components that complicate the description of their structure. For some important studies, Monte Carlo dosimetry systems that provide multiple realizations of exposure estimates have been used to represent such complex error structures. While the effects of independent measurement errors on parameter estimation and methods to correct these effects have been studied comprehensively in the epidemiological literature, the literature on the effects of correlated errors, and associated correction methods is much more sparse. In this paper, we implement a novel method that calculates corrected confidence intervals based on the approximate asymptotic distribution of parameter estimates in linear excess relative risk (ERR) models. These models are widely used in survival analysis, particularly in radiation epidemiology. Specifically, for the dose effect estimate of interest (increase in relative risk per unit dose), a mixture distribution consisting of a normal and a lognormal component is applied. This choice of asymptotic approximation guarantees that corrected confidence intervals will always be bounded, a result which does not hold under a normal approximation. A simulation study was conducted to evaluate the proposed method in survival analysis using a realistic ERR model. We used both simulated Monte Carlo dosimetry systems (MCDS) and actual dose histories from the Mayak Worker Dosimetry System 2013, a MCDS for plutonium exposures in the Mayak Worker Cohort. Results show our proposed methods provide much improved coverage probabilities for the dose effect parameter, and noticeable improvements for other model parameters.
机译:在流行病学研究中,通常以不确定性来衡量目标暴露,这些不确定性可以是独立的或相关的。独立错误通常可以相对容易地加以表征,而相关的测量错误具有共享的和层次化的组件,这使得对其结构的描述变得复杂。对于一些重要的研究,提供了多种暴露估计值的蒙特卡洛剂量学系统已被用来代表这种复杂的误差结构。尽管流行病学文献对独立测量误差对参数估计的影响以及纠正这些影响的方法进行了全面的研究,但有关误差和相关校正方法影响的文献却很少。在本文中,我们实现了一种新方法,该方法基于线性超额相对风险(ERR)模型中参数估计值的近似渐近分布来计算校正后的置信区间。这些模型被广泛用于生存分析,尤其是在辐射流行病学中。具体而言,对于感兴趣的剂量效应估计(每单位剂量的相对风险增加),应用了由正态和对数正态组成的混合分布。渐近逼近的这种选择保证了校正后的置信区间将始终是有界的,该结果在正常逼近下不成立。进行了仿真研究,以评估使用现实的ERR模型进行生存分析的方法。我们使用了模拟的蒙特卡洛剂量测定系统(MCDS)和Mayak Worker剂量测定系统2013的实际剂量历史记录,该系统是Mayak Worker Cohort中MC暴露的MCDS。结果表明,我们提出的方法为剂量效应参数提供了大大改善的覆盖率,并为其他模型参数带来了明显的改善。

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