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Adjusting for overdispersion in piecewise exponential regression models to estimate excess mortality rate in population-based research

机译:在分段指数回归模型中对过度分散进行调整,以估计基于人口的研究中的过高死亡率

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Background In population-based cancer research, piecewise exponential regression models are used to derive adjusted estimates of excess mortality due to cancer using the Poisson generalized linear modelling framework. However, the assumption that the conditional mean and variance of the rate parameter given the set of covariates x i are equal is strong and may fail to account for overdispersion given the variability of the rate parameter (the variance exceeds the mean). Using an empirical example, we aimed to describe simple methods to test and correct for overdispersion. Methods We used a regression-based score test for overdispersion under the relative survival framework and proposed different approaches to correct for overdispersion including a quasi-likelihood, robust standard errors estimation, negative binomial regression and flexible piecewise modelling. Results All piecewise exponential regression models showed the presence of significant inherent overdispersion ( p -value Conclusion We showed that there were no major differences between methods. However, using a flexible piecewise regression modelling, with either a quasi-likelihood or robust standard errors, was the best approach as it deals with both, overdispersion due to model misspecification and true or inherent overdispersion.
机译:背景技术在基于人群的癌症研究中,使用Poisson广义线性建模框架,使用分段指数回归模型来得出因癌症引起的超额死亡率的调整后估计。但是,假设给定协变量x i 的集合的比率参数的条件均值和方差相等的假设很强,并且在比率参数具有可变性的情况下(方差超过均值)。我们使用一个经验示例,旨在描述测试和校正过度分散的简单方法。方法我们在相对生存框架下对过度分散使用了基于回归的评分测试,并提出了纠正过度分散的不同方法,包括准似然,稳健的标准误差估计,负二项式回归和灵活的分段建模。结果所有分段指数回归模型均显示出显着的固有超分散性(p值结论我们表明这两种方法之间没有重大差异。但是,使用具有似然性或稳健标准误差的灵活分段回归模型,处理模型的最佳方法是由于模型规格不正确导致的过度分散以及真实或固有的过度分散。

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