当其中一个预测因子受附加测量误差影响时,逻辑回归中回归校准和SIMEX方法的评价。

K Y Fung, D Krewski
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引用次数: 0

摘要

背景:本文基于最近开发的计算机程序(RCAL和SIMEX)在逻辑回归模型下评估两种测量误差调整方法,当两个预测因子中的一个受到附加测量误差或Berkson误差的影响。方法:采用计算机模拟生成各种条件下的数据,并对回归估计的偏差、均方误差和置信区间覆盖率进行比较。结果:根据我们的调查,RCAL在所有考虑的情况下都表现得很好,除了当预测变量高度相关时存在Berkson误差。结论:由于测量误差会导致误导性的推断,因此在应用逻辑回归时对测量误差进行调整是很重要的。在更好的测量误差调整方法出现之前,根据我们的模拟结果,我们推荐使用RCAL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Evaluation of regression calibration and SIMEX methods in logistic regression when one of the predictors is subject to additive measurement error.

Background: This paper presents an evaluation of two methods of measurement error adjustment based on recently-developed computer routines (RCAL and SIMEX) under logistic regression models, when one of the two predictors is subject to additive measurement error or Berkson error.

Methods: Computer simulations were used to generate data under a variety of conditions and the methods compared in terms of bias, mean squared error and confidence interval coverage of the regression estimates.

Results: Based on our investigations, RCAL was shown to perform very well in all situations considered, except in the presence of Berkson error when the predictor variables were highly correlated.

Conclusions: Since measurement error can lead to misleading inference, it is important to adjust for measurement error in the application of logistic regression. Until better measurement error adjustment methods become available, we recommend RCAL on the basis of our simulation results.

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