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      Resampling and cross-validation techniques: a tool to reduce bias caused by model building?

      Statistics in Medicine
      Bias (Epidemiology), Breast Neoplasms, diagnosis, Computer Simulation, DNA, Neoplasm, analysis, Disease-Free Survival, Female, Flow Cytometry, Humans, Models, Statistical, Prognosis, Regression Analysis, Reproducibility of Results, Research Design

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          Abstract

          The process of model building involved in the analysis of many medical studies may lead to a considerable amount of over-optimism with respect to the predictive ability of the 'final' regression model. In this paper we illustrate this phenomenon in a simple cutpoint model and explore to what extent bias can be reduced by using cross-validation and bootstrap resampling. These computer intensive methods are compared to an ad hoc approach and to a heuristic method. Besides illustrating all proposals with the data from a breast cancer study we perform a simulation study in order to assess the quality of the methods.

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