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Comparison of Statistical Methods for Pretest-Posttest Designs in Terms of Type I Error Probability and Statistical Power

机译:根据I类错误概率和统计功效比较前测-后测设计的统计方法

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The pretest-posttest design is widely used to investigate the effect of an experimental treatment in biomedical research. The treatment effect may be assessed using analysis of variance (ANOVA) or analysis of covariance (ANCOVA). The normality assumption for parametric ANOVA and ANCOVA may be violated due to outliers and skewness of data. Nonparametric methods, robust statistics, and data transformation may be used to address the nonnormality issue. However, there is no simultaneous comparison for the four statistical approaches in terms of empirical type I error probability and statistical power. We studied 13 ANOVA and ANCOVA models based on parametric approach, rank and normal score-based nonparametric approach, Huber M-estimation, and Box-Cox transformation using normal data with and without outliers and lognormal data. We found that ANCOVA models preserve the nominal significance level better and are more powerful than their ANOVA counterparts when the dependent variable and covariate are correlated. Huber M-estimation is the most liberal method. Nonparametric ANCOVA, especially ANCOVA based on normal score transformation, preserves the nominal significance level, has good statistical power, and is robust for data distribution.
机译:测试前-测试后设计被广泛用于研究生物医学研究中实验治疗的效果。可以使用方差分析(ANOVA)或协方差分析(ANCOVA)评估治疗效果。由于数据的离群值和偏度,可能会违反参数ANOVA和ANCOVA的正态性假设。非参数方法,可靠的统计信息和数据转换可用于解决非正态性问题。但是,在经验类型I错误概率和统计功效方面,没有四种方法的同时比较。我们研究了13种基于参数方法,基于秩和正态分数的非参数方法,Huber M估计和Box-Cox变换的ANOVA和ANCOVA模型,这些模型使用具有和不具有离群值和对数正态数据的正态数据。我们发现,当因变量和协变量相关时,ANCOVA模型可以更好地保留名义显着性水平,并且比ANOVA模型更强大。 Huber M估计是最自由的方法。非参数ANCOVA,尤其是基于正态分数转换的ANCOVA,可以保留名义上的显着性水平,具有良好的统计能力,并且对于数据分发具有鲁棒性。

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