Robustness of Approaches to ROC Curve Modeling under Misspecification of the Underlying Probability Model |
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Authors: | Sean M. Devlin Elizabeth G. Thomas Scott S. Emerson |
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Affiliation: | 1. Department of Epidemiology and Biostatistics , Memorial Sloan-Kettering Cancer Center , New York , New York , USA devlin@uw.edu;3. Department of Biostatistics , University of Washington , Seattle , Washington , USA |
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Abstract: | A variety of statistical regression models have been proposed for the comparison of ROC curves for different markers across covariate groups. Pepe developed parametric models for the ROC curve that induce a semiparametric model for the market distributions to relax the strong assumptions in fully parametric models. We investigate the analysis of the power ROC curve using these ROC-GLM models compared to the parametric exponential model and the estimating equations derived from the usual partial likelihood methods in time-to-event analyses. In exploring the robustness to violations of distributional assumptions, we find that the ROC-GLM provides an extra measure of robustness. |
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Keywords: | Model misspecification ROC curve regression Semiparametric models |
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