The analysis of longitudinal neuroimaging data within the massively univariate framework provides the opportunity to study empirical questions about neurodevelopment. Missing outcome data are an all-to-common feature of any longitudinal study, a feature that, if handled improperly, can reduce statistical power and lead to biased parameter estimates. The goal of this paper is to provide conceptual clarity of the issues and non-issues that arise from analyzing incomplete data in longitudinal studies with particular focus on neuroimaging data. This paper begins with a review of the hierarchy of missing data mechanisms and their relationship to likelihoodbased methods, a review that is necessary not just for likelihood-based methods, but also f...
SUMMARY. This paper outlines a multiple imputation method for handling missing data in designed lon-...
Background: Missing data often cause problems in longitudinal cohort studies with repeated follow-up...
Missingness frequently complicates the analysis of longitudinal data. A popular solution for dealing...
The analysis of longitudinal neuroimaging data within the massively univariate framework provides th...
Purpose: Longitudinal studies are highly valuable in pediatrics because they provide useful data abo...
Using standard missing data taxonomy, due to Rubin and co-workers, and simple algebraic derivations,...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
Longitudinal studies are almost always plagued by missing data. Examples include research data in pu...
Using standard missing data taxonomy, due to Rubin and co-workers, and simple algebraic derivations,...
textThe purpose of this study was to investigate the performance of missing data treatments for long...
In medical research, data sets are seldom complete. That is, some of the values that should have bee...
Missing or incomplete data is a nearly ubiquitous problem in biomedical research studies. If the inc...
Missing or incomplete data is a nearly ubiquitous problem in biomedical research studies. If the inc...
In many epidemiological and clinical studies, observations on individuals are recorded longitudinall...
Hypotheses about change over time are central to informing our understanding of development. Develop...
SUMMARY. This paper outlines a multiple imputation method for handling missing data in designed lon-...
Background: Missing data often cause problems in longitudinal cohort studies with repeated follow-up...
Missingness frequently complicates the analysis of longitudinal data. A popular solution for dealing...
The analysis of longitudinal neuroimaging data within the massively univariate framework provides th...
Purpose: Longitudinal studies are highly valuable in pediatrics because they provide useful data abo...
Using standard missing data taxonomy, due to Rubin and co-workers, and simple algebraic derivations,...
Missing responses are very common in longitudinal data. Much research has been going on, on ways to ...
Longitudinal studies are almost always plagued by missing data. Examples include research data in pu...
Using standard missing data taxonomy, due to Rubin and co-workers, and simple algebraic derivations,...
textThe purpose of this study was to investigate the performance of missing data treatments for long...
In medical research, data sets are seldom complete. That is, some of the values that should have bee...
Missing or incomplete data is a nearly ubiquitous problem in biomedical research studies. If the inc...
Missing or incomplete data is a nearly ubiquitous problem in biomedical research studies. If the inc...
In many epidemiological and clinical studies, observations on individuals are recorded longitudinall...
Hypotheses about change over time are central to informing our understanding of development. Develop...
SUMMARY. This paper outlines a multiple imputation method for handling missing data in designed lon-...
Background: Missing data often cause problems in longitudinal cohort studies with repeated follow-up...
Missingness frequently complicates the analysis of longitudinal data. A popular solution for dealing...