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首页> 外文期刊>Communications in Statistics. B, Simulation and Computation >Selecting the Optimal Transformation of a Continuous Covariate in Cox's Regression: Implications for Hypothesis Testing
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Selecting the Optimal Transformation of a Continuous Covariate in Cox's Regression: Implications for Hypothesis Testing

机译:在Cox回归中选择连续协变量的最佳变换:对假设检验的启示

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摘要

Background: Many exposures in epidemiological studies have nonlinear effects and the problem is to choose an appropriate functional relationship between such exposures and the outcome. One common approach is to investigate several parametric transformations of the covariate of interest, and to select a posteriori the function that fits the data the best. However, such approach may result in an inflated Type Ⅰ error. Methods: Through a simulation study, we generated data from Cox's models with different transformations of a single continuous covariate. We investigated the Type Ⅰ error rate and the power of the likelihood ratio test (LRT) corresponding to three different procedures that considered the same set of parametric dose-response functions. The first unconditional approach did not involve any model selection, while the second conditional approach was based on a posteriori selection of the parametric function. The proposed third approach was similar to the second except that it used a corrected critical value for the LRT to ensure a correct Type Ⅰ error. Results: The Type Ⅰ error rate of the second approach was two times higher than the nominal size. For simple monotone dose-response, the corrected test had similar power as the unconditional approach, while for non monotone, dose-response, it had a higher power. A real-life application that focused on the effect of body mass index on the risk of coronary heart disease death, illustrated the advantage of the proposed approach. Conclusion: Our results confirm that a posteriori selecting the functional form of the dose-response induces a Type Ⅰ error inflation. The corrected procedure, which can be applied in a wide range of situations, may provide a good trade-off between Type Ⅰ error and power.
机译:背景:流行病学研究中的许多暴露具有非线性效应,问题是要在此类暴露与结果之间选择适当的功能关系。一种常见的方法是研究感兴趣的协变量的几种参数转换,然后选择后验函数,使其最适合数据。但是,这种方法可能导致膨胀的Ⅰ型错误。方法:通过模拟研究,我们从Cox模型中获得了数据,这些数据具有单个连续协变量的不同变换。我们研究了Ⅰ型错误率和似然比检验(LRT)的功效,它们对应于考虑相同参数参量响应函数集的三个不同过程。第一种无条件方法不涉及任何模型选择,而第二种条件方法基于参数函数的后验选择。提议的第三种方法与第二种方法类似,不同之处在于它使用了LRT的修正临界值来确保正确的Ⅰ型误差。结果:第二种方法的Ⅰ型错误率是标称尺寸的两倍。对于简单的单调剂量响应,校正后的测试具有与无条件方法相似的功效,而对于非单调的剂量响应,则具有更高的功效。专注于体重指数对冠心病死亡风险的影响的现实应用说明了该方法的优势。结论:我们的结果证实,选择剂量反应的功能形式的后验可引起Ⅰ型误差膨胀。校正后的程序可以在多种情况下使用,可以在Ⅰ型误差和功率之间取得良好的平衡。

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