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Outlier robust modeling of survival curves in the presence of potentially time-varying coefficients
Author(s) -
Jorne Lionel Biccler,
Martin Bøgsted,
Stefan Van Aelst,
Tim Verdonck
Publication year - 2020
Publication title -
statistical methods in medical research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.952
H-Index - 85
eISSN - 1477-0334
pISSN - 0962-2802
DOI - 10.1177/0962280220910193
Subject(s) - brier score , outlier , estimator , overfitting , piecewise , computer science , censoring (clinical trials) , hazard , constant (computer programming) , statistics , mathematics , econometrics , artificial intelligence , mathematical analysis , chemistry , organic chemistry , artificial neural network , programming language
In time to event studies, censoring often occurs and models that take this into account are wide-spread. In the presence of outliers, standard estimators of model parameters may be affected such that results and conclusions are not reliable anymore. This in turn also hampers the detection of these outliers due to masking effects. To cope with outliers when using proportional hazard models, we propose to use the Brier score as a loss function. Since the coefficients often vary over time, we focus on the piecewise constant hazard model, which can flexibly model time-varying coefficients if a large number of cut-points is used. To prevent overfitting, we add a penalty term that potentially shrinks time-varying effects to constant effects. By fitting the coefficients of the piecewise constant hazard model using a penalized Brier score loss, we obtain a robust model that can handle time-varying coefficients. Its good performance is illustrated in a simulation study and using two datasets from practice.

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