Background: There is no consensus on the most appropriate approach to handle missing covariate data within prognostic modelling studies. Therefore a simulation study was performed to assess the effects of different missing data techniques on the performance of a prognostic model. Methods: Datasets were generated to resemble the skewed distributions seen in a motivating breast cancer example. Multivariate missing data were imposed on four covariates using four different mechanisms; missing completely at random (MCAR), missing at random (MAR), missing not at random (MNAR) and a combination of all three mechanisms. Five amounts of incomplete cases from 5% to 75% were considered. Complete case analysis (CC), single imputation (SI) and five mu...
Prognostic models play a crucial role in the clinical decision-making process. Unfortunately, missin...
The selection of variables used to predict a time to event outcome is a common and important issue w...
Imputation methods for missing data on a time-dependent variable within time-dependent Cox models ar...
BACKGROUND: The appropriate handling of missing covariate data in prognostic modelling studies is ye...
Abstract Background The appropriate handling of missing covariate data in prognostic modelling studi...
Background: The appropriate handling of missing covariate data in prognostic modelling studies is y...
BACKGROUND: The appropriate handling of missing covariate data in prognostic modelling studies is ye...
Multivariable model-building is an important aspect of statistical analyses and should be given care...
Background: We already showed the superiority of imputation of missing data (via Multivariable Imput...
Although missing outcome data are an important problem in randomized trials and observational studie...
Missing covariate values is a common problem in a survival data research. The aim of this study is t...
Item does not contain fulltextAlthough missing outcome data are an important problem in randomized t...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
The selection of variables used to predict a time to event outcome is a common and important issue w...
Prognostic models play a crucial role in the clinical decision-making process. Unfortunately, missin...
The selection of variables used to predict a time to event outcome is a common and important issue w...
Imputation methods for missing data on a time-dependent variable within time-dependent Cox models ar...
BACKGROUND: The appropriate handling of missing covariate data in prognostic modelling studies is ye...
Abstract Background The appropriate handling of missing covariate data in prognostic modelling studi...
Background: The appropriate handling of missing covariate data in prognostic modelling studies is y...
BACKGROUND: The appropriate handling of missing covariate data in prognostic modelling studies is ye...
Multivariable model-building is an important aspect of statistical analyses and should be given care...
Background: We already showed the superiority of imputation of missing data (via Multivariable Imput...
Although missing outcome data are an important problem in randomized trials and observational studie...
Missing covariate values is a common problem in a survival data research. The aim of this study is t...
Item does not contain fulltextAlthough missing outcome data are an important problem in randomized t...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
When developing prognostic models in medicine, covariate data are often missing and the standard res...
The selection of variables used to predict a time to event outcome is a common and important issue w...
Prognostic models play a crucial role in the clinical decision-making process. Unfortunately, missin...
The selection of variables used to predict a time to event outcome is a common and important issue w...
Imputation methods for missing data on a time-dependent variable within time-dependent Cox models ar...