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The Applicability of Standard Error of Measurement and Minimal Detectable Change to Motor Learning Research—A Behavioral Study

机译:测量标准误差和最小可检测变化对运动学习研究的适用性-行为研究

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摘要

Motor learning studies face the challenge of differentiating between real changes in performance and random measurement error. While the traditional p-value-based analyses of difference (e.g., t-tests, ANOVAs) provide information on the statistical significance of a reported change in performance scores, they do not inform as to the likely cause or origin of that change, that is, the contribution of both real modifications in performance and random measurement error to the reported change. One way of differentiating between real change and random measurement error is through the utilization of the statistics of standard error of measurement (SEM) and minimal detectable change (MDC). SEM is estimated from the standard deviation of a sample of scores at baseline and a test–retest reliability index of the measurement instrument or test employed. MDC, in turn, is estimated from SEM and a degree of confidence, usually 95%. The MDC value might be regarded as the minimum amount of change that needs to be observed for it to be considered a real change, or a change to which the contribution of real modifications in performance is likely to be greater than that of random measurement error. A computer-based motor task was designed to illustrate the applicability of SEM and MDC to motor learning research. Two studies were conducted with healthy participants. Study 1 assessed the test–retest reliability of the task and Study 2 consisted in a typical motor learning study, where participants practiced the task for five consecutive days. In Study 2, the data were analyzed with a traditional p-value-based analysis of difference (ANOVA) and also with SEM and MDC. The findings showed good test–retest reliability for the task and that the p-value-based analysis alone identified statistically significant improvements in performance over time even when the observed changes could in fact have been smaller than the MDC and thereby caused mostly by random measurement error, as opposed to by learning. We suggest therefore that motor learning studies could complement their p-value-based analyses of difference with statistics such as SEM and MDC in order to inform as to the likely cause or origin of any reported changes in performance.
机译:运动学习研究面临着区分实际性能变化和随机测量误差的挑战。传统的基于p值的差异分析(例如t检验,方差分析)提供了有关所报告的绩效得分变化的统计显着性的信息,但它们并未告知这种变化的可能原因或起因,是,性能的实际修改和随机测量误差对所报告的更改的贡献。区分真实变化和随机测量误差的一种方法是利用测量的标准误差(SEM)和最小可检测变化(MDC)的统计数据。 SEM是根据基线的分数样本的标准偏差以及所使用的测量仪器或测试的重测信度指数来估计的。而MDC是根据SEM和置信度(通常为95%)估算的。 MDC值可能被视为需要观察到的最小变化量,才能将其视为真实变化,或者对实际性能变化的贡献可能大于随机测量误差的变化。设计了基于计算机的运动任务,以说明SEM和MDC在运动学习研究中的适用性。对健康的参与者进行了两项研究。研究1评估了任务的重测可靠性,研究2包含在典型的运动学习研究中,参与者连续五天练习了任务。在研究2中,使用传统的基于p值的差异分析(ANOVA)以及SEM和MDC对数据进行了分析。这些发现表明该任务具有很好的重测可靠性,并且即使基于观察到的变化实际上可能小于MDC,并且因此主要是由随机测量引起的,仅基于p值的分析就可以确定一段时间内性能的统计显着改善。错误,而不是学习。因此,我们建议,运动学习研究可以用诸如SEM和MDC之类的统计数据来补充其基于p值的差异分析,以便告知所报告的性能变化的可能原因或起源。

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