Abstract Background Missing outcome data are very common in smoking cessation trials. It is often assumed that all such missing data are from participants who have been unsuccessful in giving up smoking (“missing=smoking”). Here we use data from a recent Internet based smoking cessation trial in order to investigate which of a set of a priori chosen baseline variables are predictive of missingness, and the evidence for and against the “missing=smoking” assumption. Methods We use a selection model, which models the probability that the outcome is observed given the outcome and other variables. The selection model includes a parameter for which zero indicates that the data are Missing at Random (MAR) and large values indicate “missing=smoking...
When a randomized controlled trial has missing outcome data, any analysis is based on untestable ass...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Longitudinal studies typically suffer from incompleteness of data. Attrition is a major problem in s...
BACKGROUND: Missing outcome data are very common in smoking cessation trials. It is often assumed th...
AIMS: The analysis of randomized controlled trials with incomplete binary outcome data is challengin...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Abstract Background Missing data are common in tobacco studies. It is well known that from the obser...
Accurately assessing quit attempt history is important to develop population estimates of cessation ...
In randomized controlled trials (RCTs), a common strategy to increase power to detect a treatment ef...
We develop and demonstrate methods to perform sensitivity analyses to assess sensitivity to plausibl...
Background: Classification of smoking status has a major impact on the conclusions drawn from smokin...
Background: Distributing a multiple computer-tailored smoking cessation intervention through the Int...
Abstract Background Within epidemiological and clinical research, missing data are a common issue an...
Introduction: Internet interventions can reach large numbers of individuals. However, low levels of ...
When a randomized controlled trial has missing outcome data, any analysis is based on untestable ass...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Longitudinal studies typically suffer from incompleteness of data. Attrition is a major problem in s...
BACKGROUND: Missing outcome data are very common in smoking cessation trials. It is often assumed th...
AIMS: The analysis of randomized controlled trials with incomplete binary outcome data is challengin...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Abstract Background Missing data are common in tobacco studies. It is well known that from the obser...
Accurately assessing quit attempt history is important to develop population estimates of cessation ...
In randomized controlled trials (RCTs), a common strategy to increase power to detect a treatment ef...
We develop and demonstrate methods to perform sensitivity analyses to assess sensitivity to plausibl...
Background: Classification of smoking status has a major impact on the conclusions drawn from smokin...
Background: Distributing a multiple computer-tailored smoking cessation intervention through the Int...
Abstract Background Within epidemiological and clinical research, missing data are a common issue an...
Introduction: Internet interventions can reach large numbers of individuals. However, low levels of ...
When a randomized controlled trial has missing outcome data, any analysis is based on untestable ass...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Longitudinal studies typically suffer from incompleteness of data. Attrition is a major problem in s...