首页 | 本学科首页   官方微博 | 高级检索  
   检索      


Estimating Age-Based Developmental Trajectories Using Latent Change Score Models Based on Measurement Occasion
Authors:Eduardo Estrada  Fumiaki Hamagami  Emilio Ferrer
Institution:1. University of California, Davis;2. eduardo.estrada.rs@gmail.com;4. Longitudinal Research Institutes
Abstract:Abstract

Accelerated longitudinal designs (ALDs) are designs in which participants from different cohorts provide repeated measures covering a fraction of the time range of the study. ALDs allow researchers to study developmental processes spanning long periods within a relatively shorter time framework. The common trajectory is studied by aggregating the information provided by the different cohorts. Latent change score (LCS) models provide a powerful analytical framework to analyze data from ALDs. With developmental data, LCS models can be specified using measurement occasion as the time metric. This provides a number of benefits, but has an important limitation: It makes it not possible to characterize the longitudinal changes as a function of a developmental process such as age or biological maturation. To overcome this limitation, we propose an extension of an occasion-based LCS model that includes age differences at the first measurement occasion. We conducted a Monte Carlo study and compared the results of including different transformations of the age variable. Our results indicate that some of the proposed transformations resulted in accurate expectations for the studied process across all the ages in the study, and excellent model fit. We discuss these results and provide the R code for our analysis.
Keywords:Accelerated longitudinal designs  latent change score models  developmental processes  longitudinal data analysis  dynamic modeling
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号