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Regression Calibration with Heteroscedastic Error Variance

机译:具有异方差误差方差的回归校准

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摘要

The problem of covariate measurement error with heteroscedastic measurement error variance is considered. Standard regression calibration assumes that the measurement error has a homoscedastic measurement error variance. An estimator is proposed to correct regression coefficients for covariate measurement error with heteroscedastic variance. Point and interval estimates are derived. Validation data containing the gold standard must be available. This estimator is a closed-form correction of the uncorrected primary regression coefficients, which may be of logistic or Cox proportional hazards model form, and is closely related to the version of regression calibration developed by . The primary regression model can include multiple covariates measured without error. The use of these estimators is illustrated in two data sets, one taken from occupational epidemiology (the ACE study) and one taken from nutritional epidemiology (the Nurses’ Health Study). In both cases, although there was evidence of moderate heteroscedasticity, there was little difference in estimation or inference using this new procedure compared to standard regression calibration. It is shown theoretically that unless the relative risk is large or measurement error severe, standard regression calibration approximations will typically be adequate, even with moderate heteroscedasticity in the measurement error model variance. In a detailed simulation study, standard regression calibration performed either as well as or better than the new estimator. When the disease is rare and the errors normally distributed, or when measurement error is moderate, standard regression calibration remains the method of choice.
机译:考虑了具有异方差测量误差方差的协变量测量误差问题。标准回归校准假设测量误差具有均等的测量误差方差。提出了一种估计器,用于校正带有异方差方差的协变量测量误差的回归系数。得出点和间隔估计。包含黄金标准的验证数据必须可用。此估算器是未校正的初级回归系数的闭式校正,可能是logistic或Cox比例风险模型形式,并且与所开发的回归校准版本密切相关。初级回归模型可以包括多个无误差测量的协变量。在两个数据集中说明了这些估计量的用法,一个来自职业流行病学(ACE研究),另一个来自营养流行病学(护士健康研究)。在这两种情况下,尽管有证据表明存在中等程度的异方差性,但与标准回归校准相比,使用这种新方法进行估计或推断的差异很小。从理论上证明,除非相对风险很大或测量误差严重,否则即使在测量误差模型方差中等的情况下,标准回归校准近似值通常也已足够。在详细的模拟研究中,标准回归校准的执行效果与新估算器一样好或更好。当疾病罕见且误差呈正态分布时,或当测量误差适中时,标准回归校准仍是首选方法。

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