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Statistical significant change versus relevant or important change in (quasi) experimental design: some conceptual and methodological problems in estimating magnitude of intervention-related change in health services research

机译:统计上的显着变化与(准)实验设计中的相关或重要变化:估算卫生服务研究中与干预相关的变化的幅度时的一些概念和方法问题

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This paper aims to identify problems in estimating and the interpretation of the magnitude of intervention-related change over time or responsiveness assessed with health outcome measures. Responsiveness is a problematic construct and there is no consensus on how to quantify the appropriate index to estimate change over time between baseline and post-test designs. This paper gives an overview of several responsiveness indices. Thresholds for effect size (or responsiveness index) interpretation were introduced some thirty years ago by Cohen who standardised the difference-scores (d) with the pooled standard deviation (d/SDpooled). However, many effect sizes (ES) have been introduced since Cohen's original work and in the formula of one of these ES, the mean change scores are standardised with the SD of those change scores (d/SDchange). When health outcome questionnaires are used, this effect size is applied on a wide scale and is represented as the Standardized Response Mean (SRM). However, its interpretation is problematic when it is used as an estimate of magnitude of change over time and interpreted with the thresholds, set by Cohen for effect size (ES) which is based on SDpooled. Thus, in the case of using the SRM, application of these well-known cut-off points for pooled standard deviation units namely: ‘trivial’ (ES Consequently, taking Cohen's thresholds for granted for every version of effect size indices as estimates of intervention-related magnitude of change, may lead to over- or underestimation of this magnitude of intervention-related change over time. For those researchers who use Cohen's thresholds for SRM interpretation, this paper demonstrates a simple method to avoid over-or underestimation.
机译:本文旨在确定估计和解释随时间变化的干预措施相关变化幅度或使用健康结果测量评估的反应性方面的问题。响应性是一个有问题的结构,在如何量化适当的指标以估计基线和测试后设计之间随时间的变化方面尚无共识。本文概述了几个响应度指标。大约30年前,科恩(Cohen)提出了影响大小(或反应性指数)解释的阈值,他用合并的标准差(d / SDpooled)标准化了差异分数(d)。但是,自科恩(Cohen)的原始工作以来,已经引入了许多效应大小(ES),并且在这些ES之一的公式中,平均变化得分已通过这些变化得分的SD(d / SDchange)进行了标准化。当使用健康结果调查表时,该效应量被广泛应用,并表示为标准化响应平均值(SRM)。但是,当将其用作随时间变化幅度的估计并使用由Cohen为基于SDpooled的效果大小(ES)设置的阈值进行解释时,其解释会出现问题。因此,在使用SRM的情况下,将这些众所周知的分界点应用于合并的标准偏差单位:'平凡'(ES因此,将针对每种版本的效应大小指数的Cohen阈值视为干预的估计值与变化有关的变化幅度可能会导致随时间推移而导致与干预有关的变化变化幅度的过高或过低估计对于使用Cohen阈值进行SRM解释的研究人员,本文演示了一种避免过高或过低估计的简单方法。

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