McArdle Jack, Hamagami Fumiaki, Chang Janice Y, Hishinuma Earl S
University of Southern California.
Hawaii State Hospital.
Struct Equ Modeling. 2014 Oct;21(4):608-629. doi: 10.1080/10705511.2014.919824.
The scientific literature consistently supports a negative relationship between adolescent depression and educational achievement, but we are certainly less sure on the causal determinants for this robust association. In this paper we present multivariate data from a longitudinal cohort-sequential study of high school students in Hawai'i (following McArdle, 2009; McArdle, Johnson, Hishinuma, Miyamoto, & Andrade, 2001). We first describe the full set of data on academic achievements and self-reported depression. We then carry out and present a progression of analyses in an effort to determine the accuracy, size, and direction of the dynamic relationships among depression and academic achievement, including gender and ethnic group differences. We three recently available forms of longitudinal data analysis: (1) -- We apply these methods to cohort-sequential data with relatively large blocks of data which are incomplete for a variety of reasons (Little & Rubin, 1987; McArdle & Hamagami, 1992). (2) (Muthén & Muthén, 2006) -- We use a variety of statistical and psychometric measurement models, including ordinal measurement models to help clarify the strongest patterns of influence. (3) (DSEMs; McArdle, 2009). We found the DSEM approach taken here was viable for a large amount of data, the assumption of an invariant metric over time was reasonable for ordinal estimates, and there were very few group differences in dynamic systems. We conclude that our dynamic evidence suggests that depression affects academic achievement, and not the other way around. We further discuss the methodological implications of the study.
科学文献一直支持青少年抑郁与学业成绩之间存在负相关关系,但我们对于这种紧密关联的因果决定因素确实不太确定。在本文中,我们展示了对夏威夷高中生进行的纵向队列序贯研究的多变量数据(遵循McArdle,2009;McArdle、Johnson、Hishinuma、Miyamoto和Andrade,2001)。我们首先描述了关于学业成绩和自我报告抑郁的全套数据。然后我们进行并展示了一系列分析,以确定抑郁与学业成绩之间动态关系的准确性、规模和方向,包括性别和种族差异。我们采用了三种最近可用的纵向数据分析形式:(1)——我们将这些方法应用于具有相对大量数据块的队列序贯数据,这些数据由于各种原因不完整(Little和Rubin,1987;McArdle和Hamagami,1992)。(2)(Muthén和Muthén,2006)——我们使用了各种统计和心理测量模型,包括序数测量模型,以帮助阐明最强的影响模式。(3)(动态结构方程模型;McArdle,2009)。我们发现这里采用的动态结构方程模型方法对于大量数据是可行的,随时间不变度量的假设对于序数估计是合理的,并且动态系统中的组间差异非常小。我们得出结论,我们的动态证据表明抑郁会影响学业成绩,而不是相反。我们进一步讨论了该研究的方法学意义。