Multiple imputation is commonly used to impute missing covariate in Cox semiparametric regression setting. It is to fill each missing data with more plausible values, via a Gibbs sampling procedure, specifying an imputation model for each missing variable. This imputation method is implemented in several softwares that offer imputation models steered by the shape of the variable to be imputed, but all these imputation models make an assumption of linearity on covariates effect. However, this assumption is not often verified in practice as the covariates can have a nonlinear effect. Such a linear assumption can lead to a misleading conclusion because imputation model should be constructed to reflect the true distributional relationship betwe...
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...
Abstract Background The appropriate handling of missing covariate data in prognostic modelling studi...
In nested case-control and case-cohort studies of time-to-events, covariate information is collected...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
The Cox proportional hazards model is frequently used in medical statistics. The standard methods fo...
Multiple imputation (MI) is used to handle missing at random (MAR) data. Despite warnings from stati...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
Abstract Background Multiple imputation is often used for missing data. When a model contains as cov...
This is the peer reviewed version of the following article: “Alarcón-Soto, Y, Langohr K., Fehér, C.,...
Missing covariate values is a common problem in a survival data research. The aim of this study is t...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
In survival analysis, censored observations can be regarded as missing event time data. For analysis...
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...
Abstract Background The appropriate handling of missing covariate data in prognostic modelling studi...
In nested case-control and case-cohort studies of time-to-events, covariate information is collected...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
In Cox regression, it is important to test the proportional hazards assumption and sometimes of inte...
The Cox proportional hazards model is frequently used in medical statistics. The standard methods fo...
Multiple imputation (MI) is used to handle missing at random (MAR) data. Despite warnings from stati...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
Abstract Background Multiple imputation is often used for missing data. When a model contains as cov...
This is the peer reviewed version of the following article: “Alarcón-Soto, Y, Langohr K., Fehér, C.,...
Missing covariate values is a common problem in a survival data research. The aim of this study is t...
Missing data is a prevalent problem in data analysis. In the present dissertation I investigated the...
International audienceRelative survival assesses the effects of prognostic factors on disease-specif...
In survival analysis, censored observations can be regarded as missing event time data. For analysis...
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...
Abstract Background The appropriate handling of missing covariate data in prognostic modelling studi...