Curran Patrick J, Hussong Andrea M, Cai Li, Huang Wenjing, Chassin Laurie, Sher Kenneth J, Zucker Robert A
Department of Psychology, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599-3270, USA.
Dev Psychol. 2008 Mar;44(2):365-80. doi: 10.1037/0012-1649.44.2.365.
There are a number of significant challenges researchers encounter when studying development over an extended period of time, including subject attrition, the changing of measurement structures across groups and developmental periods, and the need to invest substantial time and money. Integrative data analysis is an emerging set of methodologies that allows researchers to overcome many of the challenges of single-sample designs through the pooling of data drawn from multiple existing developmental studies. This approach is characterized by a host of advantages, but this also introduces several new complexities that must be addressed prior to broad adoption by developmental researchers. In this article, the authors focus on methods for fitting measurement models and creating scale scores using data drawn from multiple longitudinal studies. The authors present findings from the analysis of repeated measures of internalizing symptomatology that were pooled from three existing developmental studies. The authors describe and demonstrate each step in the analysis and conclude with a discussion of potential limitations and directions for future research.
研究人员在长时间研究发展过程中会遇到许多重大挑战,包括研究对象流失、不同群体和发展阶段测量结构的变化,以及需要投入大量时间和资金。整合数据分析是一组新兴的方法,它使研究人员能够通过汇集来自多个现有发展研究的数据,克服单样本设计的许多挑战。这种方法具有诸多优点,但也带来了一些新的复杂性,在发展研究人员广泛采用之前必须加以解决。在本文中,作者重点关注使用来自多个纵向研究的数据拟合测量模型和创建量表分数的方法。作者展示了对从三项现有发展研究中汇总的内化症状重复测量分析的结果。作者描述并演示了分析中的每一步,并在结尾讨论了潜在的局限性和未来研究的方向。