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Evaluating Intervention Programs with a Pretest-Posttest Design: A Structural Equation Modeling Approach

机译:用前测-后测设计评估干预计划:一种结构方程建模方法

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A common situation in the evaluation of intervention programs is the researcher's possibility to rely on two waves of data only (i.e., pretest and posttest), which profoundly impacts on his/her choice about the possible statistical analyses to be conducted. Indeed, the evaluation of intervention programs based on a pretest-posttest design has been usually carried out by using classic statistical tests, such as family-wise ANOVA analyses, which are strongly limited by exclusively analyzing the intervention effects at the group level. In this article, we showed how second order multiple group latent curve modeling (SO-MG-LCM) could represent a useful methodological tool to have a more realistic and informative assessment of intervention programs with two waves of data. We offered a practical step-by-step guide to properly implement this methodology, and we outlined the advantages of the LCM approach over classic ANOVA analyses. Furthermore, we also provided a real-data example by re-analyzing the implementation of the Young Prosocial Animation, a universal intervention program aimed at promoting prosociality among youth. In conclusion, albeit there are previous studies that pointed to the usefulness of MG-LCM to evaluate intervention programs (Muthén and Curran, 1997; Curran and Muthén, 1999), no previous study showed that it is possible to use this approach even in pretest-posttest (i.e., with only two time points) designs. Given the advantages of latent variable analyses in examining differences in interindividual and intraindividual changes (McArdle, 2009), the methodological and substantive implications of our proposed approach are discussed.
机译:干预计划评估中的一种常见情况是研究人员仅依赖两波数据的可能性(即前测和后测),这极大地影响了他/她对可能进行的统计分析的选择。实际上,基于测试前-测试后设计的干预计划的评估通常是通过使用经典的统计测试来进行的,例如家庭式方差分析,这在很大程度上仅限于在小组一级分析干预效果而受到限制。在本文中,我们展示了二阶多组潜伏曲线建模(SO-MG-LCM)如何代表一种有用的方法论工具,可以通过两波数据对干预计划进行更现实,更有益的评估。我们提供了实用的循序渐进指南,以正确实施该方法,并且概述了LCM方法优于经典ANOVA分析的优势。此外,我们还通过重新分析Young Prosocial Animation的实施情况提供了一个真实的数据示例,Young Prosocial Animation是旨在促进年轻人中的社会亲和力的一项普遍干预计划。总之,尽管有以前的研究指出了MG-LCM在评估干预计划方面的有用性(Muthén和Curran,1997; Curran和Muthen,1999),但没有以前的研究表明即使在预测试中也可以使用这种方法-posttest(即只有两个时间点)设计。鉴于潜在变量分析在检验个体间和个体间变化差异方面的优势(McArdle,2009),我们对所提出方法的方法学和实质意义进行了讨论。

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