A Flexible Adaptive Lasso Cox Frailty Model Based on the Full Likelihood.

Biom J

Statistical Methods for Big Data, TU Dortmund University, Dortmund, Germany.

Published: October 2024

In this work, a method to regularize Cox frailty models is proposed that accommodates time-varying covariates and time-varying coefficients and is based on the full likelihood instead of the partial likelihood. A particular advantage of this framework is that the baseline hazard can be explicitly modeled in a smooth, semiparametric way, for example, via P-splines. Regularization for variable selection is performed via a lasso penalty and via group lasso for categorical variables while a second penalty regularizes wiggliness of smooth estimates of time-varying coefficients and the baseline hazard. Additionally, adaptive weights are included to stabilize the estimation. The method is implemented in the R function coxlasso, which is now integrated into the package PenCoxFrail, and will be compared to other packages for regularized Cox regression.

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Source
http://dx.doi.org/10.1002/bimj.202300020DOI Listing

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