Nonlinear mixed-effects growth models: A tutorial using 'saemix' in R
Author(s) / Creator(s)
Boedeker, Peter
Abstract / Description
Modeling growth across repeated measures of individuals and evaluating predictors of growth can reveal developmental patterns and factors that affect those patterns. When growth follows a sigmoidal shape, the Logistic, Gompertz, and Richards nonlinear growth curves are plausible. These functions have parameters that specifically control the starting point, total growth, overall rate of change, and point of greatest growth. Variability in growth parameters across individuals can be explained by covariates in a mixed model framework. The purpose of this tutorial is to provide analysts a brief introduction to these growth curves and demonstrate their application. The 'saemix' package in R is used to fit models to simulated data to answer specific research questions. Enough code is provided in-text to describe how to execute the analyses with the complete code and data provided in Supplementary Materials.
Keyword(s)
nonlinear growth Gompertz tutorial RPersistent Identifier
Date of first publication
2021-12-17
Journal title
Methodology
Volume
17
Issue
4
Page numbers
250–270
Publisher
PsychOpen GOLD
Publication status
publishedVersion
Review status
peerReviewed
Is version of
Citation
Boedeker, P. (2021). Nonlinear mixed-effects growth models: A tutorial using 'saemix' in R. Methodology, 17(4), 250-270. https://doi.org/10.5964/meth.7061
-
meth.v17i4.7061.pdfAdobe PDF - 1.07MBMD5: 64cb694419b58eca0ded0796515a9d46
-
There are no other versions of this object.
-
Author(s) / Creator(s)Boedeker, Peter
-
PsychArchives acquisition timestamp2022-04-14T11:24:58Z
-
Made available on2022-04-14T11:24:58Z
-
Date of first publication2021-12-17
-
Abstract / DescriptionModeling growth across repeated measures of individuals and evaluating predictors of growth can reveal developmental patterns and factors that affect those patterns. When growth follows a sigmoidal shape, the Logistic, Gompertz, and Richards nonlinear growth curves are plausible. These functions have parameters that specifically control the starting point, total growth, overall rate of change, and point of greatest growth. Variability in growth parameters across individuals can be explained by covariates in a mixed model framework. The purpose of this tutorial is to provide analysts a brief introduction to these growth curves and demonstrate their application. The 'saemix' package in R is used to fit models to simulated data to answer specific research questions. Enough code is provided in-text to describe how to execute the analyses with the complete code and data provided in Supplementary Materials.en_US
-
Publication statuspublishedVersion
-
Review statuspeerReviewed
-
CitationBoedeker, P. (2021). Nonlinear mixed-effects growth models: A tutorial using 'saemix' in R. Methodology, 17(4), 250-270. https://doi.org/10.5964/meth.7061en_US
-
ISSN1614-2241
-
Persistent Identifierhttps://hdl.handle.net/20.500.12034/5711
-
Persistent Identifierhttps://doi.org/10.23668/psycharchives.6315
-
Language of contenteng
-
PublisherPsychOpen GOLD
-
Is version ofhttps://doi.org/10.5964/meth.7061
-
Is related tohttps://doi.org/10.23668/psycharchives.5301
-
Keyword(s)nonlinear growthen_US
-
Keyword(s)Gompertzen_US
-
Keyword(s)tutorialen_US
-
Keyword(s)Ren_US
-
Dewey Decimal Classification number(s)150
-
TitleNonlinear mixed-effects growth models: A tutorial using 'saemix' in Ren_US
-
DRO typearticle
-
Issue4
-
Journal titleMethodology
-
Page numbers250–270
-
Volume17
-
Visible tag(s)Version of Recorden_US