Mukherjee Shubhabrata, Gibbons Laura E, Kristjansson Elizabeth, Crane Paul K
University of Washington, USA.
University of Ottawa, Canada.
Psychol Test Assess Model. 2013 Apr 1;55(2):127-147.
Many constructs are measured using multi-item data collection instruments. Differential item functioning (DIF) occurs when construct-irrelevant covariates interfere with the relationship between construct levels and item responses. DIF assessment is an active area of research, and several techniques are available to identify and account for DIF in cross-sectional settings. Many studies include data collected from individuals over time; yet appropriate methods for identifying and accounting for items with DIF in these settings are not widely available. We present an approach to this problem and apply it to longitudinal Modified Mini-Mental State Examination (3MS) data from English speakers in the Canadian Study of Health and Aging. We analyzed 3MS items for DIF with respect to sex, birth cohort and education. First, we focused on cross-sectional data from a subset of Canadian Study of Health and Aging participants who had complete data at all three data collection periods. We performed cross-sectional DIF analyses at each time point using an iterative hybrid ordinal logistic regression/item response theory (OLR/IRT) framework. We found that item-level findings differed at the three time points. We then developed and applied an approach to detecting and accounting for DIF using longitudinal data in which covariation within individuals over time is accounted for by clustering on person. We applied this approach to data for the "entire" dataset of English speaking participants including people who later dropped out or died. Accounting for longitudinal DIF modestly attenuated differences between groups defined by educational attainment. We conclude with a discussion of further directions for this line of research.
许多构念是通过多项目数据收集工具来测量的。当与构念无关的协变量干扰构念水平与项目反应之间的关系时,就会出现项目功能差异(DIF)。DIF评估是一个活跃的研究领域,有几种技术可用于识别横截面数据中的DIF并对其进行处理。许多研究包括随时间从个体收集的数据;然而,在这些情况下识别和处理存在DIF的项目的适当方法并不广泛可用。我们提出了一种解决这个问题的方法,并将其应用于加拿大健康与老龄化研究中说英语者的纵向改良简易精神状态检查表(3MS)数据。我们分析了3MS项目在性别、出生队列和教育方面的DIF。首先,我们关注加拿大健康与老龄化研究参与者子集中在所有三个数据收集期都有完整数据的横截面数据。我们使用迭代混合有序逻辑回归/项目反应理论(OLR/IRT)框架在每个时间点进行横截面DIF分析。我们发现项目层面的结果在三个时间点有所不同。然后,我们开发并应用了一种使用纵向数据检测和处理DIF的方法,其中个体随时间的协变量通过按人聚类来考虑。我们将这种方法应用于说英语参与者“整个”数据集的数据,包括后来退出或死亡的人。考虑纵向DIF适度减弱了由教育程度定义的组之间的差异。我们最后讨论了这一研究方向的进一步发展。