Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness

Longitudinal models have become increasingly popular in recent years because of their power to test theoretically derived hypotheses by modeling within-person processes with repeated measures. Growth models constitute a flexible framework for modeling a range of complex trajectories across time in o...

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Main Author: Ethan M. McCormick
Format: Article
Language:English
Published: Elsevier 2021-10-01
Series:Developmental Cognitive Neuroscience
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1878929321000918
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spelling doaj-51d5b24abc444237badf2a0c841aa3412021-08-12T04:33:34ZengElsevierDevelopmental Cognitive Neuroscience1878-92932021-10-0151101001Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingnessEthan M. McCormick0Department of Psychology and Neuroscience, University of North Carolina, Chapel Hill, NC, 27599, United States; Cognitive Neuroscience Department, Donders Institute for Brain, Cognition and Behavior, Radboud University Medical Center, Nijmegen, the Netherlands; Correspondence to: 235 E. Cameron Avenue, Chapel Hill, NC, 27514, United States.Longitudinal models have become increasingly popular in recent years because of their power to test theoretically derived hypotheses by modeling within-person processes with repeated measures. Growth models constitute a flexible framework for modeling a range of complex trajectories across time in outcomes of interest, including non-linearities and time-varying covariates. However, these models can be expanded to include the effects of multiple growth processes at once on a single outcome. Here, I outline such an extension, showing how multiple growth processes can be modeled as a specific case of the general ability to include time-varying covariates in growth models. I show that this extension of growth models cannot be accomplished by statistical models alone, and that study design plays a crucial role in allowing for proper parameter recovery. I demonstrate these principles through simulations to mimic important theoretical conditions where modeling the effects of multiple growth processes can address developmental theory including, disaggregating the effects of age and practice or treatment in repeated assessments and modeling age- and puberty-related effects during adolescence. I compare how these models behave in two common longitudinal designs, cohort and accelerated, and how planned missingness in observations is key to parameter recovery. I conclude with directions for future substantive research using the method outlined here.http://www.sciencedirect.com/science/article/pii/S1878929321000918Multi-level modelsLongitudinal methodsDevelopment and learningQuantitative methodsExperiencePuberty
collection DOAJ
language English
format Article
sources DOAJ
author Ethan M. McCormick
spellingShingle Ethan M. McCormick
Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness
Developmental Cognitive Neuroscience
Multi-level models
Longitudinal methods
Development and learning
Quantitative methods
Experience
Puberty
author_facet Ethan M. McCormick
author_sort Ethan M. McCormick
title Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness
title_short Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness
title_full Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness
title_fullStr Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness
title_full_unstemmed Multi-Level Multi-Growth Models: New opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness
title_sort multi-level multi-growth models: new opportunities for addressing developmental theory using advanced longitudinal designs with planned missingness
publisher Elsevier
series Developmental Cognitive Neuroscience
issn 1878-9293
publishDate 2021-10-01
description Longitudinal models have become increasingly popular in recent years because of their power to test theoretically derived hypotheses by modeling within-person processes with repeated measures. Growth models constitute a flexible framework for modeling a range of complex trajectories across time in outcomes of interest, including non-linearities and time-varying covariates. However, these models can be expanded to include the effects of multiple growth processes at once on a single outcome. Here, I outline such an extension, showing how multiple growth processes can be modeled as a specific case of the general ability to include time-varying covariates in growth models. I show that this extension of growth models cannot be accomplished by statistical models alone, and that study design plays a crucial role in allowing for proper parameter recovery. I demonstrate these principles through simulations to mimic important theoretical conditions where modeling the effects of multiple growth processes can address developmental theory including, disaggregating the effects of age and practice or treatment in repeated assessments and modeling age- and puberty-related effects during adolescence. I compare how these models behave in two common longitudinal designs, cohort and accelerated, and how planned missingness in observations is key to parameter recovery. I conclude with directions for future substantive research using the method outlined here.
topic Multi-level models
Longitudinal methods
Development and learning
Quantitative methods
Experience
Puberty
url http://www.sciencedirect.com/science/article/pii/S1878929321000918
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