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Correcting for measurement error in fractional polynomial models using Bayesian modelling and regression calibration with an application to alcohol and mortality

机译:使用贝叶斯模型和回归校准校正分数多项式模型中的测量误差并应用于酒精和死亡率

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摘要

Exposure measurement error can result in a biased estimate of the association between an exposure and outcome. When the exposure–outcome relationship is linear on the appropriate scale (e.g. linear, logistic) and the measurement error is classical, that is the result of random noise, the result is attenuation of the effect. When the relationship is non-linear, measurement error distorts the true shape of the association. Regression calibration is a commonly used method for correcting for measurement error, in which each individual’s unknown true exposure in the outcome regression model is replaced by its expectation conditional on the error-prone measure and any fully measured covariates. Regression calibration is simple to execute when the exposure is untransformed in the linear predictor of the outcome regression model, but less straightforward when non-linear transformations of the exposure are used. We describe a method for applying regression calibration in models in which a non-linear association is modelled by transforming the exposure using a fractional polynomial model. It is shown that taking a Bayesian estimation approach is advantageous. By use of Markov chain Monte Carlo algorithms, one can sample from the distribution of the true exposure for each individual. Transformations of the sampled values can then be performed directly and used to find the expectation of the transformed exposure required for regression calibration. A simulation study shows that the proposed approach performs well. We apply the method to investigate the relationship between usual alcohol intake and subsequent all-cause mortality using an error model that adjusts for the episodic nature of alcohol consumption.
机译:曝光量度误差可能会导致对曝光量和结果之间关联的估计有偏差。当曝光-结果关系在适当的范围内呈线性关系(例如,线性,对数关系)并且测量误差为经典误差时,即随机噪声的结果,结果就是效果的衰减。当关系为非线性时,测量误差会使关联的真实形状失真。回归校准是一种校正测量误差的常用方法,其中,将每个个体在结果回归模型中未知的真实暴露程度替换为在容易出错的度量和任何完全度量的协变量的条件下的期望值。当在结果回归模型的线性预测变量中未对曝光进行转换时,回归校准很容易执行,但是当使用曝光的非线性转换时,回归校准不那么简单。我们描述了一种在模型中应用回归校准的方法,其中非线性关联通过使用分数多项式模型转换曝光来建模。结果表明,采用贝叶斯估计方法是有利的。通过使用马尔可夫链蒙特卡罗算法,可以从每个人的真实暴露分布中进行采样。然后可以直接执行采样值的转换,并用于找到回归校准所需的转换曝光的期望值。仿真研究表明,提出的方法效果良好。我们使用一种误差模型来调整平常饮酒量的发作性,应用该方法调查平常饮酒量与随后的全因死亡率之间的关系。

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