首页> 外文期刊>Journal of Advances in Medical and Pharmaceutical Sciences >Detection of and Adjustment for Multiple Unmeasured Confounding Variables in Logistic Regression by Bayesian Structural Equation Modeling
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Detection of and Adjustment for Multiple Unmeasured Confounding Variables in Logistic Regression by Bayesian Structural Equation Modeling

机译:贝叶斯结构方程模型在Logistic回归中多个不可​​测混杂变量的检测和调整

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Aim: To compare the bias magnitude between logistic regression and Bayesian structural equation modeling (SEM) in a small sample with strong unmeasured confounding from two correlated latent variables. Study Design: Statistical analysis of artificial data. Methodology: Artificial binary data with above characteristics were generated and analyzed by logistic regression and Bayesian SEM over a plausible range of model parameters deduced by comparing the parameter bounds for two extreme scenarios of no versus maximum confounding. Results: Bayesian SEM with flat priors achieved almost fourfold absolute bias reduction for the effects of observed independent variables on binary outcome in the presence of two correlated unmeasured confounders in comparison with standard logistic regression which ignored the confounding. The reduction was achieved despite a relatively small sample (N=100) and large bias and variance of the factor loadings for the latent confounding variables. However, the magnitude of residual confounding was still high. Conclusion: Logistic regression bias due to unmeasured confounding may be considerably reduced with Bayesian SEM even in small samples with multiple confounders. The assumptions for Bayesian SEM are far less restrictive than those for the instrumental variable method aimed at correcting the effect size bias due to unmeasured confounders.
机译:目的:比较小样本中逻辑回归与贝叶斯结构方程模型(SEM)之间的偏差幅度,该样本具有来自两个相关潜在变量的强烈不可测混杂。研究设计:人工数据的统计分析。方法:在比较合理的模型参数范围内,通过比较两个无和最大混淆极端情况下的参数界限,通过逻辑回归和贝叶斯SEM生成并分析了具有上述特征的人工二进制数据。结果:与两个标准的逻辑回归分析相比,在没有两个相关的未测混杂因素的情况下,先验条件平坦的贝叶斯SEM在观察到的独立变量对二元结果的影响上实现了几乎四倍的绝对偏差降低,而标准logistic回归则忽略了混杂因素。尽管样本相对较小(N = 100),并且潜在混淆变量的因子加载偏差和方差较大,但仍实现了降低。但是,残留混杂的程度仍然很高。结论:即使在具有多个混杂因素的小样本中,贝叶斯SEM也可以显着降低由于不可测混杂因素导致的逻辑回归偏差。贝叶斯SEM的假设远没有工具变量法的假设那么严格,后者旨在纠正由于无法测量的混杂因素而导致的效应大小偏差。

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