In many epidemiological and clinical studies, observations on individuals are recorded longitudinally on a Likert-type scale. In the process of recording, or due to some other causes, a proportion of outcomes and time-dependent covariates may be missing in one or more follow-up visits (non monotone missing). Even when the number of patients with intermittent missing data is small, exclusion of those patients from the study seems unsatisfactory. This apart, often due to misreporting, miscategorization of response can occur that results in potentially invalid inference when no correction is made. We propose a joint mixed model that corrects the likelihood function to account for missing response and/or covariates and adjusts the likelihood to...
Data collected in clinical trials involving follow-up of patients over a period of time will almost...
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 ...
Background: Missing data can complicate the interpretability of a clinical trial, especially if the ...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Objective:To investigate predictors of missing data in a longitudinal study of Alzheimer disease (AD...
: Missing data are, to a lesser or greater extent, an inevitable part of any longitudinal clinical s...
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...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Ordinal outcomes are frequently employed in diagnosis and clinical trials. Clinical trials of Alzhei...
Abstract: Data collected in clinical trials involving follow-up of patients over a period of time wi...
The analysis of longitudinal neuroimaging data within the massively univariate framework provides th...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Data collected in clinical trials involving follow-up of patients over a period of time will almost...
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 ...
Background: Missing data can complicate the interpretability of a clinical trial, especially if the ...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Objective:To investigate predictors of missing data in a longitudinal study of Alzheimer disease (AD...
: Missing data are, to a lesser or greater extent, an inevitable part of any longitudinal clinical s...
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...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
Ordinal outcomes are frequently employed in diagnosis and clinical trials. Clinical trials of Alzhei...
Abstract: Data collected in clinical trials involving follow-up of patients over a period of time wi...
The analysis of longitudinal neuroimaging data within the massively univariate framework provides th...
[[abstract]]Multiple imputation can be used to solve the problem of missing data that is a common oc...
Missingness often occurs in data arising from longitudinal studies, inducing imbalance in the sense ...
Data collected in clinical trials involving follow-up of patients over a period of time will almost...
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 ...