BACKGROUND: When an outcome variable is missing not at random (MNAR: probability of missingness depends on outcome values), estimates of the effect of an exposure on this outcome are often biased. We investigated the extent of this bias and examined whether the bias can be reduced through incorporating proxy outcomes obtained through linkage to administrative data as auxiliary variables in multiple imputation (MI). METHODS: Using data from the Avon Longitudinal Study of Parents and Children (ALSPAC) we estimated the association between breastfeeding and IQ (continuous outcome), incorporating linked attainment data (proxies for IQ) as auxiliary variables in MI models. Simulation studies explored the impact of varying the proportion of missin...
Multiple imputation (MI) is increasingly being used to handle missing data in epidemiologic research...
OBJECTIVES: To investigate whether a complete case logistic regression gives a biased estimate of th...
In observational studies with two measurements when the measured outcome pertains to a health relate...
From Springer Nature via Jisc Publications RouterHistory: received 2019-11-18, accepted 2020-06-28, ...
UNLABELLED: BACKGROUND: Multiple imputation is becoming increasingly popular for handling missing d...
Epidemiologic studies are frequently susceptible to missing information. Omitting observations with ...
Published online: 06 September 2017Background: Multiple imputation is a popular approach to handling...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
Background The purpose of this simulation study is to assess the performance of multiple imputation ...
Abstract Background Multiple imputation is frequently...
Missing data is an unavoidable issue in controlled clinical trials and public health research and pr...
Background Missing outcomes can seriously impair the ability to make correct inferences from random...
Missing observations are common in cluster randomised trials. The problem is exacerbated when modell...
Missing data is a common problem for researchers. Before one can determine the best method to be us...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
Multiple imputation (MI) is increasingly being used to handle missing data in epidemiologic research...
OBJECTIVES: To investigate whether a complete case logistic regression gives a biased estimate of th...
In observational studies with two measurements when the measured outcome pertains to a health relate...
From Springer Nature via Jisc Publications RouterHistory: received 2019-11-18, accepted 2020-06-28, ...
UNLABELLED: BACKGROUND: Multiple imputation is becoming increasingly popular for handling missing d...
Epidemiologic studies are frequently susceptible to missing information. Omitting observations with ...
Published online: 06 September 2017Background: Multiple imputation is a popular approach to handling...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
Background The purpose of this simulation study is to assess the performance of multiple imputation ...
Abstract Background Multiple imputation is frequently...
Missing data is an unavoidable issue in controlled clinical trials and public health research and pr...
Background Missing outcomes can seriously impair the ability to make correct inferences from random...
Missing observations are common in cluster randomised trials. The problem is exacerbated when modell...
Missing data is a common problem for researchers. Before one can determine the best method to be us...
In many observational studies, analysts estimate treatment effects using propensity scores, e.g. by ...
Multiple imputation (MI) is increasingly being used to handle missing data in epidemiologic research...
OBJECTIVES: To investigate whether a complete case logistic regression gives a biased estimate of th...
In observational studies with two measurements when the measured outcome pertains to a health relate...