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Regression analysis with covariates that have heteroscedastic measurement error.

机译:使用具有异方差测量误差的协变量进行回归分析。

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We consider the estimation of the regression of an outcome Y on a covariate X, where X is unobserved, but a variable W that measures X with error is observed. A calibration sample that measures pairs of values of X and W is also available; we consider calibration samples where Y is measured (internal calibration) and not measured (external calibration). One common approach for measurement error correction is Regression Calibration (RC), which substitutes the unknown values of X by predictions from the regression of X on W estimated from the calibration sample. An alternative approach is to multiply impute the missing values of X given Y and W based on an imputation model, and then use multiple imputation (MI) combining rules for inferences. Most of current work assumes that the measurement error of W has a constant variance, whereas in many situations, the variance varies as a function of X. We consider extensions of the RC and MI methods that allow for heteroscedastic measurement error, and compare them by simulation. The MI method is shown to provide better inferences in this setting. We also illustrate the proposed methods using a data set from the BioCycle study.
机译:我们考虑协变量X上结果Y的回归估计,其中X未被观察到,但是观察到变量W测量X的误差。还提供了一个测量X和W值对的校准样品。我们考虑在Y被测量(内部校准)和未测量(外部校准)的校准样品。一种用于测量误差校正的常见方法是回归校准(RC),该方法通过根据校准样本估计的X对W的回归来预测来替代X的未知值。一种替代方法是,根据插补模型将给定Y和W的X的缺失值相乘,然后使用多个插补(MI)组合规则进行推理。当前的大多数工作都假设W的测量误差具有恒定的方差,而在许多情况下,方差是X的函数。我们考虑了允许异方差测量误差的RC和MI方法的扩展,并通过模拟。在这种情况下,显示出MI方法可以提供更好的推断。我们还将使用BioCycle研究中的数据集说明拟议的方法。

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