Multivariable model-building is an important aspect of statistical analyses and should be given careful consideration. A common issue when conducting an analysis is the presence of partially-observed covariates. Missing data in covariates are known to result in biased estimates of associations with the outcome and loss of power to detect associations. The impact of missing data in the prediction context has been less studied. When using a dataset to train a model for prediction it is essential to evaluate its performance. Two popular internal validation methods for evaluating a prediction model are K-fold cross-validation and using the bootstrap algorithm to correct for optimism. Methods for handling missing data in this process are not wel...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Missing data is a common issue in epidemiological databases. Among the different ways of dealing wit...
Causal interpretation of relationships is complicated by the ‘fundamental problem of causal inferenc...
Background: There is no consensus on the most appropriate approach to handle missing covariate data ...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
The selection of variables used to predict a time to event outcome is a common and important issue w...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
Objectives: We provide guidelines for handling the most common missing data problems in repeated mea...
We consider mark–recapture–recovery data with additional individual time-varying continuous covariat...
Sample selection arises when the outcome of interest is partially observed in a study. Although soph...
Studies often follow individuals until they fail from one of a number of competing failure types. On...
This paper studies the missing covariate problem which is often encountered in survival analysis. Th...
Although missing outcome data are an important problem in randomized trials and observational studie...
BACKGROUND: Missing data in covariates can result in biased estimates and loss of power to detect as...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Missing data is a common issue in epidemiological databases. Among the different ways of dealing wit...
Causal interpretation of relationships is complicated by the ‘fundamental problem of causal inferenc...
Background: There is no consensus on the most appropriate approach to handle missing covariate data ...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
The selection of variables used to predict a time to event outcome is a common and important issue w...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
Objectives: We provide guidelines for handling the most common missing data problems in repeated mea...
We consider mark–recapture–recovery data with additional individual time-varying continuous covariat...
Sample selection arises when the outcome of interest is partially observed in a study. Although soph...
Studies often follow individuals until they fail from one of a number of competing failure types. On...
This paper studies the missing covariate problem which is often encountered in survival analysis. Th...
Although missing outcome data are an important problem in randomized trials and observational studie...
BACKGROUND: Missing data in covariates can result in biased estimates and loss of power to detect as...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Missing data is a common issue in epidemiological databases. Among the different ways of dealing wit...
Causal interpretation of relationships is complicated by the ‘fundamental problem of causal inferenc...