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Methods for significance testing of categorical covariates in logistic regression models after multiple imputation: power and applicability analysis

机译:多重插补后的逻辑回归模型中分类协变量的显着性检验方法:功效和适用性分析

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摘要

BackgroundMultiple imputation is a recommended method to handle missing data. For significance testing after multiple imputation, Rubin’s Rules (RR) are easily applied to pool parameter estimates. In a logistic regression model, to consider whether a categorical covariate with more than two levels significantly contributes to the model, different methods are available. For example pooling chi-square tests with multiple degrees of freedom, pooling likelihood ratio test statistics, and pooling based on the covariance matrix of the regression model. These methods are more complex than RR and are not available in all mainstream statistical software packages. In addition, they do not always obtain optimal power levels. We argue that the median of the p-values from the overall significance tests from the analyses on the imputed datasets can be used as an alternative pooling rule for categorical variables. The aim of the current study is to compare different methods to test a categorical variable for significance after multiple imputation on applicability and power.
机译:建议使用BackgroundMultiple插补来处理丢失的数据。对于多次插补后的显着性测试,鲁宾规则(RR)可以轻松地应用于合并参数估计。在逻辑回归模型中,要考虑具有两个以上级别的分类协变量是否对模型有重大贡献,可以使用不同的方法。例如,合并具有多个自由度的卡方检验,合并似然比检验统计量,并基于回归模型的协方差矩阵进行合并。这些方法比RR更复杂,并且并非在所有主流统计软件包中都可用。另外,它们并不总是获得最佳功率水平。我们认为,归因于数据集分析的总体显着性检验得出的p值的中位数可以用作分类变量的替代合并规则。本研究的目的是在对适用性和功效进行多次估算后,比较不同的方法来测试分类变量的显着性。

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