Content area

Abstract

This paper presents a latent variable approach for the estimation of treatment effects within a pooled interrupted time series (ITS) design. Although considered quasi-experimental, the ITS design has been noted as representing one of the strongest alternatives to the randomized experiment, making it highly appropriate for use in documenting the presence of effects that might warrant further evaluation in a large-scale randomized study. Results suggest that the latent variable growth modeling (LGM) is capable of detecting simultaneous differences in both level and slope, and provides tests of significance for these two necessary indicators of an ITS intervention effect. As shown in the analyses, the LGM framework provides a comprehensive and flexible approach to research design and data analysis, making available to a wide audience of researchers an analytical framework for a variety of analyses of growth and developmental processes.[PUBLICATION ABSTRACT]

Details

Title
A Latent Growth Curve Modeling Approach to Pooled Interrupted Time Series Analyses
Author
Duncan, Terry E; Duncan, Susan C
Pages
271-278
Publication year
2004
Publication date
Dec 2004
Publisher
Springer Nature B.V.
ISSN
08822689
e-ISSN
15733505
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
756980183
Copyright
Springer Science+Business Media, Inc. 2004