CITATION: Masconi, K. L., et al . 2016. Effects of different missing data imputation techniques on the performance of undiagnosed diabetes risk prediction models in a mixed-ancestry population of South Africa. PLoS ONE, 10(9):e0139210, doi:10.1371/journal.pone.0139210.The original publication is available at http://journals.plos.org/plosoneBackground: Imputation techniques used to handle missing data are based on the principle of replacement. It is widely advocated that multiple imputation is superior to other imputation methods, however studies have suggested that simple methods for filling missing data can be just as accurate as complex methods. The objective of this study was to implement a number of simple and more complex imputation...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Background: Policy makers need models to be able to detect groups at high risk of HIV infection. In...
Epidemiologic studies are frequently susceptible to missing information. Omitting observations with ...
BACKGROUND: Imputation techniques used to handle missing data are based on the principle of replacem...
Imputation techniques used to handle missing data are based on the principle of replacement. It is w...
Imputation techniques used to handle missing data are based on the principle of replacement. It is w...
Background Imputation techniques used to handle missing data are based on the principle of replace-m...
Missing values are common in health research and omitting participants with missing data often leads...
BACKGROUND: Guidelines increasingly encourage the use of multivariable risk models to predict the pr...
Background: Routinely-collected data offer great potential for epidemiological research and could b...
BACKGROUND:Prediction model updating methods are aimed at improving the prediction performance of a ...
Background: We already showed the superiority of imputation of missing data (via Multivariable Imput...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Published online: 06 September 2017Background: Multiple imputation is a popular approach to handling...
Healthcare datasets obtained from Electronic Health Records have proven to be extremely useful for a...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Background: Policy makers need models to be able to detect groups at high risk of HIV infection. In...
Epidemiologic studies are frequently susceptible to missing information. Omitting observations with ...
BACKGROUND: Imputation techniques used to handle missing data are based on the principle of replacem...
Imputation techniques used to handle missing data are based on the principle of replacement. It is w...
Imputation techniques used to handle missing data are based on the principle of replacement. It is w...
Background Imputation techniques used to handle missing data are based on the principle of replace-m...
Missing values are common in health research and omitting participants with missing data often leads...
BACKGROUND: Guidelines increasingly encourage the use of multivariable risk models to predict the pr...
Background: Routinely-collected data offer great potential for epidemiological research and could b...
BACKGROUND:Prediction model updating methods are aimed at improving the prediction performance of a ...
Background: We already showed the superiority of imputation of missing data (via Multivariable Imput...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Published online: 06 September 2017Background: Multiple imputation is a popular approach to handling...
Healthcare datasets obtained from Electronic Health Records have proven to be extremely useful for a...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Background: Policy makers need models to be able to detect groups at high risk of HIV infection. In...
Epidemiologic studies are frequently susceptible to missing information. Omitting observations with ...