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配对数据的效应大小应该使用变化分数的变异性,而不是预测试的变异性。

Effect Sizes for Paired Data Should Use the Change Score Variability Rather Than the Pre-test Variability.

机构信息

Kevser Ermin Applied Physiology Laboratory, Department of Health, Exercise Science, and Recreation Management, The University of Mississippi, University, Mississippi.

出版信息

J Strength Cond Res. 2021 Jun 1;35(6):1773-1778. doi: 10.1519/JSC.0000000000002946.

Abstract

Dankel, SJ and Loenneke, JP. Effect sizes for paired data should use the change score variability rather than the pre-test variability. J Strength Cond Res 35(6): 1773-1778, 2021-Effect sizes provide a universal statistic detailing the magnitude of an effect while removing the influence of the sample size. Effect sizes and statistical tests are closely related with the exception that the effect size illustrates the magnitude of an effect in SD units, whereas the test statistic illustrates the magnitude of effect in SE units. Avoiding statistical jargon, we illustrate why calculations of effect sizes on paired data within the sports and exercise science literature are repeatedly performed incorrectly using the variability of the study sample as opposed to the variability of the actual intervention. Statistics and examples are provided to illustrate why effect sizes are being calculated incorrectly. The calculation of effect sizes when examining paired data supports the results of the test statistic, but only when the effect size calculation is made relative to the variability of the intervention (i.e., the change score SD) because this is what is used for the calculation of the test statistic. Effect size calculations that are made on paired data should be made relative to the SD of the change score because this provides the information of the statistical test while removing the influence of the sample size. After all, we are interested in how variable the intervention is rather than how variable the sample population is. Effect size calculations that are made on pre-test/post-test designs should be calculated as the change score divided by the SD of the change score.

摘要

丹克尔,SJ 和洛内克,JP。配对数据的效应大小应该使用变化分数的变异性,而不是预测试的变异性。J 力量与调节研究 35(6):1773-1778,2021-效应大小提供了一个通用的统计数据,详细说明效应的大小,同时去除样本量的影响。效应大小和统计检验密切相关,除了效应大小以 SD 单位说明效应的大小,而检验统计量以 SE 单位说明效应的大小。为避免使用统计学行话,我们说明了为什么在运动和锻炼科学文献中,对于配对数据的效应大小计算会反复出现错误,使用研究样本的变异性而不是实际干预的变异性来计算效应大小。提供了统计数据和示例来说明为什么效应大小的计算是错误的。当检查配对数据时,效应大小的计算支持检验统计量的结果,但只有当效应大小的计算相对于干预的变异性(即变化分数的 SD)进行时才如此,因为这是计算检验统计量时使用的。对于配对数据的效应大小计算应该相对于变化分数的 SD 进行,因为这提供了统计检验的信息,同时去除了样本量的影响。毕竟,我们感兴趣的是干预的变异性有多大,而不是样本人口的变异性有多大。对于前测/后测设计的效应大小计算,应该将变化分数除以变化分数的 SD 来计算。

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