Erratum to: Assessment of predictive performance in incomplete data by combining internal validation and multiple imputation
نویسندگان
چکیده
Erratum After publication of the original article [1], it came to the authors’ attention that Mark A. van de Wiel’s name was spelled incorrectly due to a misinterpreted correction submitted at proofing stage. The author’s middle initial and family name had been combined inadvertently. Mark A. van de Wiel’s name is spelled correctly in this erratum, and the original article has been updated to reflect this correction.
منابع مشابه
Assessment of predictive performance in incomplete data by combining internal validation and multiple imputation
BACKGROUND Missing values are a frequent issue in human studies. In many situations, multiple imputation (MI) is an appropriate missing data handling strategy, whereby missing values are imputed multiple times, the analysis is performed in every imputed data set, and the obtained estimates are pooled. If the aim is to estimate (added) predictive performance measures, such as (change in) the are...
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