Background: Multiple imputation (MI) provides an effective approach to handle missing covariate data within prognostic modelling studies, as it can properly account for the missing data uncertainty. The multiply imputed datasets are each analysed using standard prognostic modelling techniques to obtain the estimates of interest. The estimates from each imputed dataset are then combined into one overall estimate and variance, incorporating both the within and between imputation variability. Rubin's rules for combining these multiply imputed estimates are based on asymptotic theory. The resulting combined estimates may be more accurate if the posterior distribution of the population parameter of interest is better approximated by the norma...
Abstract Background Multiple imputation is frequently...
BACKGROUND: The appropriate handling of missing covariate data in prognostic modelling studies is ye...
Background: The appropriate handling of missing covariate data in prognostic modelling studies is y...
Background: Multiple imputation (MI) provides an effective approach to handle missing covariate da...
Background. Missing data is a challenging problem in many prognostic studies. Multiple imputation (M...
International audienceABSTRACT: BACKGROUND: The weighted estimators generally used for analyzing cas...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
2013-08-05The presence of censoring is one common but critical feature for survival data. Traditiona...
Little research has been devoted to multiple imputation (MI) of derived variables. We investigated v...
Background: In prognostic studies model instability and missing data can be troubling factors. Propo...
BACKGROUND: Multiple imputation is a popular approach to handling missing data in medical research, ...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
International audienceBACKGROUND: In longitudinal cohort studies, subjects may be lost to follow-up ...
Abstract Background Multiple imputation is frequently...
BACKGROUND: The appropriate handling of missing covariate data in prognostic modelling studies is ye...
Background: The appropriate handling of missing covariate data in prognostic modelling studies is y...
Background: Multiple imputation (MI) provides an effective approach to handle missing covariate da...
Background. Missing data is a challenging problem in many prognostic studies. Multiple imputation (M...
International audienceABSTRACT: BACKGROUND: The weighted estimators generally used for analyzing cas...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
2013-08-05The presence of censoring is one common but critical feature for survival data. Traditiona...
Little research has been devoted to multiple imputation (MI) of derived variables. We investigated v...
Background: In prognostic studies model instability and missing data can be troubling factors. Propo...
BACKGROUND: Multiple imputation is a popular approach to handling missing data in medical research, ...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
International audienceBACKGROUND: In longitudinal cohort studies, subjects may be lost to follow-up ...
Abstract Background Multiple imputation is frequently...
BACKGROUND: The appropriate handling of missing covariate data in prognostic modelling studies is ye...
Background: The appropriate handling of missing covariate data in prognostic modelling studies is y...