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 ...
Longitudinal Models in the Behavioral and Related Sciences opens with the latest theoretical develop...
Developmental scientists have argued that the implementation of longitudinal methods is necessary fo...
UnrestrictedIn 1988, McArdle identified issues modeling multivariate growth using what he termed “se...
Longitudinal data are becoming increasingly available in developmental neuroimaging. To maximize the...
The human brain is remarkably plastic. The brain changes dramatically across development, with ongoi...
Assessing and analysing individual differences in change over time is of central scientific importan...
Assessing and analysing individual differences in change over time is of central scientific importan...
Longitudinal data analysis has long played a significant role in empirical research within the devel...
Available online: 22 November 2017Assessing and analysing individual differences in change over time...
Assessing and analysing individual differences in change over time is of central scientific importan...
R syntax for data generation, analysis, and creation of Tables and Figures for King, K.M., Littlefie...
Temporal brain changes such as those in development, plasticity, ageing and neurodegeneration are be...
There has been a large spike in longitudinal fMRI studies in recent years, and so it is essential th...
pre-printThe topic of studying the growth of human brain development has become of increasing intere...
Many workflows and tools that aim to increase the reproducibility and replicability of research find...
Longitudinal Models in the Behavioral and Related Sciences opens with the latest theoretical develop...
Developmental scientists have argued that the implementation of longitudinal methods is necessary fo...
UnrestrictedIn 1988, McArdle identified issues modeling multivariate growth using what he termed “se...
Longitudinal data are becoming increasingly available in developmental neuroimaging. To maximize the...
The human brain is remarkably plastic. The brain changes dramatically across development, with ongoi...
Assessing and analysing individual differences in change over time is of central scientific importan...
Assessing and analysing individual differences in change over time is of central scientific importan...
Longitudinal data analysis has long played a significant role in empirical research within the devel...
Available online: 22 November 2017Assessing and analysing individual differences in change over time...
Assessing and analysing individual differences in change over time is of central scientific importan...
R syntax for data generation, analysis, and creation of Tables and Figures for King, K.M., Littlefie...
Temporal brain changes such as those in development, plasticity, ageing and neurodegeneration are be...
There has been a large spike in longitudinal fMRI studies in recent years, and so it is essential th...
pre-printThe topic of studying the growth of human brain development has become of increasing intere...
Many workflows and tools that aim to increase the reproducibility and replicability of research find...
Longitudinal Models in the Behavioral and Related Sciences opens with the latest theoretical develop...
Developmental scientists have argued that the implementation of longitudinal methods is necessary fo...
UnrestrictedIn 1988, McArdle identified issues modeling multivariate growth using what he termed “se...