TY - JOUR
T1 - Longitudinal modeling in developmental neuroimaging research
T2 - Common challenges, and solutions from developmental psychology
AU - King, Kevin M.
AU - Littlefield, Andrew K.
AU - McCabe, Connor J.
AU - Mills, Kathryn L.
AU - Flournoy, John
AU - Chassin, Laurie
N1 - Publisher Copyright:
© 2017 The Authors
PY - 2018/10
Y1 - 2018/10
N2 - Hypotheses about change over time are central to informing our understanding of development. Developmental neuroscience is at critical juncture: although the majority of longitudinal imaging studies have observations with two time points, researchers are increasingly obtaining three or more observations of the same individuals. The goals of the proposed manuscript are to draw upon the long history of methodological and applied literature on longitudinal statistical models to summarize common problems and issues that arise in their use. We also provide suggestions and solutions to improve the design, analysis and interpretation of longitudinal data, and discuss the importance of matching the theory of change with the appropriate statistical model used to test the theory. Researchers should articulate a clear theory of change and to design studies to capture that change and use appropriately sensitive measures to assess that change during development. Simulated data are used to demonstrate several common analytic approaches to longitudinal analyses. We provide the code for our simulations and figures in an online supplement to aid researchers in exploring and plotting their data. We provide brief examples of best practices for reporting such models. Finally, we clarify common misunderstandings in the application and interpretation of these analytic approaches.
AB - Hypotheses about change over time are central to informing our understanding of development. Developmental neuroscience is at critical juncture: although the majority of longitudinal imaging studies have observations with two time points, researchers are increasingly obtaining three or more observations of the same individuals. The goals of the proposed manuscript are to draw upon the long history of methodological and applied literature on longitudinal statistical models to summarize common problems and issues that arise in their use. We also provide suggestions and solutions to improve the design, analysis and interpretation of longitudinal data, and discuss the importance of matching the theory of change with the appropriate statistical model used to test the theory. Researchers should articulate a clear theory of change and to design studies to capture that change and use appropriately sensitive measures to assess that change during development. Simulated data are used to demonstrate several common analytic approaches to longitudinal analyses. We provide the code for our simulations and figures in an online supplement to aid researchers in exploring and plotting their data. We provide brief examples of best practices for reporting such models. Finally, we clarify common misunderstandings in the application and interpretation of these analytic approaches.
KW - Change over time
KW - Growth curve models
KW - Longitudinal methods
UR - http://www.scopus.com/inward/record.url?scp=85040775949&partnerID=8YFLogxK
U2 - 10.1016/j.dcn.2017.11.009
DO - 10.1016/j.dcn.2017.11.009
M3 - Review article
C2 - 29395939
AN - SCOPUS:85040775949
VL - 33
SP - 54
EP - 72
JO - Developmental Cognitive Neuroscience
JF - Developmental Cognitive Neuroscience
SN - 1878-9293
ER -