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Akademie Verlag
Deutsches Institut für Urbanistik
Oldenbourg Wissenschaftsverlag
Walter de Gruyter
Schattauer
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M. Schumacher, E. Graf, T. Gerds

How to Assess Prognostic Models for Survival Data: A Case Study in Oncology

Keywords: Prognostic models, survival data, Brier score, prediction error, Validation, breast cancer

OBJECTIVES: A lack of generally applicable tools for the assessment of predictions for survival data has to be recognized. Prediction error curves based on the Brier score that have been suggested as a sensible approach are illustrated by means of a case study. METHODS: The concept of predictions made in terms of conditional survival probabilities given the patient's covariates is introduced. Such predictions are derived from various statistical models for survival data including artificial neural networks. The idea of how the prediction error of a prognostic classification scheme can be followed over time is illustrated with the data of two studies on the prognosis of node positive breast cancer patients, one of them serving as an independent test data set. RESULTS AND CONCLUSIONS: The Brier score as a function of time is shown to be a valuable tool for assessing the predictive performance of prognostic classification schemes for survival data incorporating censored observations. Comparison with the prediction based on the pooled Kaplan Meier estimator yields a benchmark value for any classification scheme incorporating patients covariate measurements. The problem of an overoptimistic assessment of prediction error caused by data-driven modelling as it is, for example, done with artificial neural nets can be circumvented by an assessment in an independent test data set.

Methods of Information in Medicine, Schattauer

Print ISSN: 0026-1270
Volume: 42, 01/2003
Pages: 564 - 571

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