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Bibliographic Details
Main Authors: Rosenbaum, Manuel, Beyersmann, Jan, Vogt, Michael
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.03602
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author Rosenbaum, Manuel
Beyersmann, Jan
Vogt, Michael
author_facet Rosenbaum, Manuel
Beyersmann, Jan
Vogt, Michael
contents In applied time-to-event analysis, a flexible parametric approach is to model the hazard rate as a piecewise constant function of time. However, the change points and values of the piecewise constant hazard are usually unknown and need to be estimated. In this paper, we develop a fully data-driven procedure for piecewise constant hazard estimation. We work in a general counting process framework which nests a wide range of popular models in time-to-event analysis including Cox's proportional hazards model with potentially high-dimensional covariates, competing risks models as well as more general multi-state models. To construct our estimator, we set up a regression model for the increments of the Breslow estimator and then use fused lasso techniques to approximate the piecewise constant signal in this regression model. In the theoretical part of the paper, we derive the convergence rate of our estimator as well as some results on how well the change points of the piecewise constant hazard are approximated by our method. We complement the theory by both simulations and a real data example, illustrating that our results apply in rather general event histories such as multi-state models.
format Preprint
id arxiv_https___arxiv_org_abs_2408_03602
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Piecewise Constant Hazard Estimation with the Fused Lasso
Rosenbaum, Manuel
Beyersmann, Jan
Vogt, Michael
Methodology
In applied time-to-event analysis, a flexible parametric approach is to model the hazard rate as a piecewise constant function of time. However, the change points and values of the piecewise constant hazard are usually unknown and need to be estimated. In this paper, we develop a fully data-driven procedure for piecewise constant hazard estimation. We work in a general counting process framework which nests a wide range of popular models in time-to-event analysis including Cox's proportional hazards model with potentially high-dimensional covariates, competing risks models as well as more general multi-state models. To construct our estimator, we set up a regression model for the increments of the Breslow estimator and then use fused lasso techniques to approximate the piecewise constant signal in this regression model. In the theoretical part of the paper, we derive the convergence rate of our estimator as well as some results on how well the change points of the piecewise constant hazard are approximated by our method. We complement the theory by both simulations and a real data example, illustrating that our results apply in rather general event histories such as multi-state models.
title Piecewise Constant Hazard Estimation with the Fused Lasso
topic Methodology
url https://arxiv.org/abs/2408.03602