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Multiple correspondence analysis in predictive logistic modelling: application to a living-donor kidney transplantation data.

机译:预测逻辑模型中的多重对应分析:应用于活体供体肾脏移植数据。

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摘要

This work deals with the use of multiple correspondence analysis (MCA) and a weighted Euclidean distance (the tolerance distance) as an exploratory tool in developing predictive logistic models. The method was applied to a living-donor kidney transplant data set with 109 cases and 13 predictors. This approach, followed by backward and forward selection procedures, yielded two models, one with four and another with two predictors. These models were compared to two other models, ordinarily built by backward and forward stepwise selection, which yielded, respectively, five and two predictors. After internal validation, the models performance statistics showed similar results. Likelihood ratio tests suggested that backward approach achieved a better fit than the forward modelling in both methods and the Vuong's non-nested test between backward-built models suggested that these were undistinguishable. We conclude that the tolerance distance, in combination with MCA, could be a feasible method for variable selection in logistic modelling, when there are several categorical predictors.
机译:这项工作涉及使用多重对应分析(MCA)和加权欧几里得距离(公差距离)作为开发预测逻辑模型的探索工具。该方法已应用于有109例病例和13个预测因子的活体供肾肾脏移植数据集。这种方法以及后向和前向选择过程产生了两个模型,一个具有四个模型,另一个具有两个预测变量。将这些模型与通常通过后退和前进逐步选择构建的其他两个模型进行比较,分别得出五个和两个预测变量。在内部验证之后,模型性能统计数据显示出相似的结果。在两种方法中,似然比测试均表明,后向方法比正向建模更适合,而反向构建模型之间的Vuong的非嵌套测试则表明它们是无法区分的。我们得出的结论是,当存在多个分类预测变量时,公差距离与MCA结合可能是在Logistic建模中进行变量选择的可行方法。

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