Development and validation of a prediction model with missing predictor data: a practical approach |
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Authors: | Yvonne Vergouwe Patrick Royston Karel G.M. Moons Douglas G. Altman |
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Affiliation: | 1. Julius Center for Health Sciences and Primary Care, University Medical Centre Utrecht, Str 6.131, P.O. Box 85500, 3508 GA, Utrecht, The Netherlands;2. MRC Clinical Trials Unit, London, United Kingdom;3. Cancer Research UK/NHS Centre for Statistics in Medicine, Oxford, United Kingdom |
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Abstract: | ObjectiveTo illustrate the sequence of steps needed to develop and validate a clinical prediction model, when missing predictor values have been multiply imputed.Study Design and SettingWe used data from consecutive primary care patients suspected of deep venous thrombosis (DVT) to develop and validate a diagnostic model for the presence of DVT. Missing values were imputed 10 times with the MICE conditional imputation method. After the selection of predictors and transformations for continuous predictors according to three different methods, we estimated regression coefficients and performance measures.ResultsThe three methods to select predictors and transformations of continuous predictors showed similar results. Rubin's rules could easily be applied to estimate regression coefficients and performance measures, once predictors and transformations were selected.ConclusionWe provide a practical approach for model development and validation with multiply imputed data. |
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