Missing covariate values is a common problem in a survival data research. The aim of this study is to Compaq the use of the multiple imputation (MI) and last observation carried forward (LOCF) methods for handling missing covariate values in the Cox proportional hazards (PH) regression model. The comparisons between the methods are based on simulated data. The missingness mechanism is assumed to be missing at random (MAR). Missing covariate values are generated under different missingness rates. The results from both methods are compared by assessing the bias, efficiency and coverage. The simulation results in general revealed that MI is likely to be the best under the MAR mechanism
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
Studies often follow individuals until they fail from one of a number of competing failure types. On...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
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...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
This paper studies the missing covariate problem which is often encountered in survival analysis. Th...
Data with missing value are common in clinical studies. This study investigated to assess the effect...
Imputation methods for missing data on a time-dependent variable within time-dependent Cox models ar...
Background: There is no consensus on the most appropriate approach to handle missing covariate data ...
The selection of variables used to predict a time to event outcome is a common and important issue w...
This dissertation includes three papers on missing data problems where methods other than parametric...
We propose a new method for fitting proportional hazards models with error-prone covariates. Regress...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
Studies often follow individuals until they fail from one of a number of competing failure types. On...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
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...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
This paper studies the missing covariate problem which is often encountered in survival analysis. Th...
Data with missing value are common in clinical studies. This study investigated to assess the effect...
Imputation methods for missing data on a time-dependent variable within time-dependent Cox models ar...
Background: There is no consensus on the most appropriate approach to handle missing covariate data ...
The selection of variables used to predict a time to event outcome is a common and important issue w...
This dissertation includes three papers on missing data problems where methods other than parametric...
We propose a new method for fitting proportional hazards models with error-prone covariates. Regress...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
Studies often follow individuals until they fail from one of a number of competing failure types. On...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...