Am J Epidemiol. 2021 Apr 6;190(4):621-629. doi: 10.1093/aje/kwaa208.
Suppose that an investigator wants to estimate an association between a continuous exposure variable and an outcome, adjusting for a set of confounders. If the exposure variable suffers classical measurement error, in which the measured exposures are distributed with independent error around the true exposure, then an estimate of the covariate-adjusted exposure-outcome association may be biased. We propose an approach to estimate a marginal exposure-outcome association in the setting of classical exposure measurement error using a disease score-based approach to standardization to the exposed sample. First, we show that the proposed marginal estimate of the exposure-outcome association will suffer less bias due to classical measurement error than the covariate-conditional estimate of association when the covariates are predictors of exposure. Second, we show that if an exposure validation study is available with which to assess exposure measurement error, then the proposed marginal estimate of the exposure-outcome association can be corrected for measurement error more efficiently than the covariate-conditional estimate of association. We illustrate both of these points using simulations and an empirical example using data from the Orinda Longitudinal Study of Myopia (California, 1989-2001).
假设研究人员希望在调整一组混杂因素的情况下,估计连续暴露变量与结局之间的关联。如果暴露变量存在经典测量误差,即测量的暴露值在真实暴露值周围独立分布,则调整协变量后的暴露-结局关联的估计可能会有偏倚。我们提出了一种在经典暴露测量误差背景下使用基于疾病评分的标准化方法估计边缘暴露-结局关联的方法,以标准化暴露样本。首先,我们证明当协变量是暴露的预测因子时,与协变量条件关联的估计相比,所提出的暴露-结局关联的边缘估计由于经典测量误差而导致的偏倚较小。其次,我们证明如果有可用的暴露验证研究来评估暴露测量误差,则可以更有效地纠正暴露-结局关联的边缘估计的测量误差,而不是协变量条件关联的估计。我们使用模拟和来自奥兰达近视纵向研究(加利福尼亚州,1989-2001 年)的数据的实证示例说明了这两点。