Abstract Background Within epidemiological and clinical research, missing data are a common issue and often over looked in publications. When the issue of missing observations is addressed it is usually assumed that the missing data are ‘missing at random’ (MAR). This assumption should be checked for plausibility, however it is untestable, thus inferences should be assessed for robustness to departures from missing at random. Methods We highlight the method of pattern mixture sensitivity analysis after multiple imputation using colorectal cancer data as an example. We focus on the Dukes’ stage variable which has the highest proportion of missing observations. First, we find the probability of being in each Dukes’ stage given the MAR imputed...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
© 2016 Dr. Panteha Hayati RezvanBackground: Missing data commonly occur in medical research, in part...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...
Medical Research Council Clinical Trails Unit at UCL [Studentship to MS; MC EX G0800814 to JRC,TPM]
BACKGROUND: Within epidemiological and clinical research, missing data are a common issue and often ...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Incomplete series of data is a common feature in quality-of-life studies, in particular in chronic d...
Background: Multifactorial regression models are frequently used in medicine to estimate survival ra...
In this thesis we develop methods for dealing with missing data in a univariate response variable wh...
Multiple imputation (MI) is now well established as a flexible, general, method for the analysis of ...
Missing information is a major drawback in analyzing data collected in many routine health care sett...
Multiple imputation with delta adjustment provides a flexible and transparent means to impute univar...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
© 2016 Dr. Panteha Hayati RezvanBackground: Missing data commonly occur in medical research, in part...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...
Medical Research Council Clinical Trails Unit at UCL [Studentship to MS; MC EX G0800814 to JRC,TPM]
BACKGROUND: Within epidemiological and clinical research, missing data are a common issue and often ...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Background: Missing data are common in end-of-life care studies, but there is still relatively littl...
Incomplete series of data is a common feature in quality-of-life studies, in particular in chronic d...
Background: Multifactorial regression models are frequently used in medicine to estimate survival ra...
In this thesis we develop methods for dealing with missing data in a univariate response variable wh...
Multiple imputation (MI) is now well established as a flexible, general, method for the analysis of ...
Missing information is a major drawback in analyzing data collected in many routine health care sett...
Multiple imputation with delta adjustment provides a flexible and transparent means to impute univar...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
Researchers increasingly use more and more survey studies, and design medical studies to better unde...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
© 2016 Dr. Panteha Hayati RezvanBackground: Missing data commonly occur in medical research, in part...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...