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首页> 外文期刊>American Journal of Epidemiology >Regression calibration for classical exposure measurement error in environmental epidemiology studies using multiple local surrogate exposures.
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Regression calibration for classical exposure measurement error in environmental epidemiology studies using multiple local surrogate exposures.

机译:在环境流行病学研究中使用多个局部替代暴露进行经典暴露测量误差的回归校准。

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Environmental epidemiologic studies are often hierarchical in nature if they estimate individuals' personal exposures using ambient metrics. Local samples are indirect surrogate measures of true local pollutant concentrations which estimate true personal exposures. These ambient metrics include classical-type nondifferential measurement error. The authors simulated subjects' true exposures and their corresponding surrogate exposures as the mean of local samples and assessed the amount of bias attributable to classical and Berkson measurement error on odds ratios, assuming that the logit of risk depends on true individual-level exposure. The authors calibrated surrogate exposures using scalar transformation functions based on observed within- and between-locality variances and compared regression-calibrated results with naive results using surrogate exposures. The authors further assessed the performance of regression calibration in the presence of Berkson-type error. Following calibration, bias due to classical-type measurement error, resulting in as much as 50% attenuation in naive regression estimates, was eliminated. Berkson-type error appeared to attenuate logistic regression results less than 1%. This regression calibration method reduces effects of classical measurement error that are typical of epidemiologic studies using multiple local surrogate exposures as indirect surrogate exposures for unobserved individual exposures. Berkson-type error did not alter the performance of regression calibration. This regression calibration method does not require a supplemental validation study to compute an attenuation factor.
机译:如果环境流行病学研究使用环境指标估算个人的个人暴露水平,则其本质上通常是分层的。本地样本是对本地真实污染物浓度的间接替代度量,可估算真实个人暴露量。这些环境指标包括经典类型的非差分测量误差。作者将受试者的真实暴露及其相应的替代暴露作为本地样本的平均值进行了模拟,并假设风险的对数取决于真正的个人水平暴露,评估了比值比对经典和Berkson测量误差的偏倚量。作者使用标量转换函数基于观察到的局部内和局部之间的方差来校准替代暴露,并使用替代暴露将回归校准的结果与原始结果进行比较。作者进一步评估了存在伯克森型误差时回归校准的性能。校准后,消除了由于经典类型的测量误差而导致的偏差,该偏差导致天真回归估计中的衰减多达50%。伯克森型误差似乎使逻辑回归结果减弱了不足1%。这种回归校准方法减少了流行病学研究中典型的经典测量误差的影响,该研究使用多个局部替代暴露作为未观察到的个体暴露的间接替代暴露。 Berkson型错误不会改变回归校准的性能。此回归校准方法不需要进行补充验证研究即可计算衰减因子。

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