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Published in: European Journal of Epidemiology 3/2020

Open Access 01-03-2020 | METHODS

Identifying typical trajectories in longitudinal data: modelling strategies and interpretations

Authors: Moritz Herle, Nadia Micali, Mohamed Abdulkadir, Ruth Loos, Rachel Bryant-Waugh, Christopher Hübel, Cynthia M. Bulik, Bianca L. De Stavola

Published in: European Journal of Epidemiology | Issue 3/2020

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Abstract

Individual-level longitudinal data on biological, behavioural, and social dimensions are becoming increasingly available. Typically, these data are analysed using mixed effects models, with the result summarised in terms of an average trajectory plus measures of the individual variations around this average. However, public health investigations would benefit from finer modelling of these individual variations which identify not just one average trajectory, but several typical trajectories. If evidence of heterogeneity in the development of these variables is found, the role played by temporally preceding (explanatory) variables as well as the potential impact of differential trajectories may have on later outcomes is often of interest. A wide choice of methods for uncovering typical trajectories and relating them to precursors and later outcomes exists. However, despite their increasing use, no practical overview of these methods targeted at epidemiological applications exists. Hence we provide: (a) a review of the three most commonly used methods for the identification of latent trajectories (growth mixture models, latent class growth analysis, and longitudinal latent class analysis); and (b) recommendations for the identification and interpretation of these trajectories and of their relationship with other variables. For illustration, we use longitudinal data on childhood body mass index and parental reports of fussy eating, collected in the Avon Longitudinal Study of Parents and Children.
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Metadata
Title
Identifying typical trajectories in longitudinal data: modelling strategies and interpretations
Authors
Moritz Herle
Nadia Micali
Mohamed Abdulkadir
Ruth Loos
Rachel Bryant-Waugh
Christopher Hübel
Cynthia M. Bulik
Bianca L. De Stavola
Publication date
01-03-2020
Publisher
Springer Netherlands
Published in
European Journal of Epidemiology / Issue 3/2020
Print ISSN: 0393-2990
Electronic ISSN: 1573-7284
DOI
https://doi.org/10.1007/s10654-020-00615-6

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