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对照临床试验中重复测量的单变量和多变量分析的效能

Power of univariate and multivariate analyses of repeated measurements in controlled clinical trials.

作者信息

Overall J E, Atlas R S

机构信息

Department of Psychiatry and Behavioral Science, The University of Texas Medical School at Houston, 77225, USA.

出版信息

J Clin Psychol. 1999 Apr;55(4):465-85. doi: 10.1002/(sici)1097-4679(199904)55:4<465::aid-jclp10>3.0.co;2-x.

Abstract

The power of univariate and multivariate tests of significance is compared in relation to linear and nonlinear patterns of treatment effects in a repeated measurement design. Bonferroni correction was used to control the experiment-wise error rate in combining results from univariate tests of significance accomplished separately on average level, linear, quadratic, and cubic trend components. Multivariate tests on these same components of the overall treatment effect, as well as a multivariate test for between-groups difference on the original repeated measurements, were also evaluated for power against the same representative patterns of treatment effects. Results emphasize the advantage of parsimony that is achieved by transforming multiple repeated measurements into a reduced set of mean ngful composite variables representing average levels and rates of change. The Bonferroni correction applied to the separate univariate tests provided experiment-wise protection against Type I error, produced slightly greater experiment-wise power than a multivariate test applied to the same components of the data patterns, and provided substantially greater power than a multivariate test on the complete set of original repeated measurements. The separate univariate tests provide interpretive advantage regarding locus of the treatment effects.

摘要

在重复测量设计中,针对治疗效果的线性和非线性模式,比较了单变量和多变量显著性检验的功效。在分别对平均水平、线性、二次和三次趋势成分进行单变量显著性检验并合并结果时,使用了Bonferroni校正来控制实验性错误率。还评估了对总体治疗效果的这些相同成分进行多变量检验,以及对原始重复测量的组间差异进行多变量检验时,针对相同代表性治疗效果模式的功效。结果强调了简约性的优势,即通过将多个重复测量转换为一组简化的有意义的复合变量来实现,这些变量代表平均水平和变化率。应用于单独单变量检验的Bonferroni校正提供了针对I型错误的实验性保护,产生的实验性功效略高于应用于数据模式相同成分的多变量检验,并且比在完整的原始重复测量集上进行的多变量检验具有更高的功效。单独的单变量检验在治疗效果的定位方面提供了解释优势。

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