Abstract
Background: Missing data is a challenging problem in many prognostic studies. Multiple imputation
(MI) accounts for imputation uncertainty that allows for adequate statistical testing. We developed
and tested a methodology combining MI with bootstrapping techniques for studying prognostic
variable selection.
Method: In our prospective cohort study we merged data from three different randomized
controlled trials
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