bayesCureRateModel: Bayesian Cure Rate Modeling for Time-to-Event Data

A fully Bayesian approach in order to estimate a general family of cure rate models under the presence of covariates, see Papastamoulis and Milienos (2024) <doi:10.1007/s11749-024-00942-w>. The promotion time can be modelled (a) parametrically using typical distributional assumptions for time to event data (including the Weibull, Exponential, Gompertz, log-Logistic distributions), or (b) semiparametrically using finite mixtures of distributions. In both cases, user-defined families of distributions are allowed under some specific requirements. Posterior inference is carried out by constructing a Metropolis-coupled Markov chain Monte Carlo (MCMC) sampler, which combines Gibbs sampling for the latent cure indicators and Metropolis-Hastings steps with Langevin diffusion dynamics for parameter updates. The main MCMC algorithm is embedded within a parallel tempering scheme by considering heated versions of the target posterior distribution.

Package details

AuthorPanagiotis Papastamoulis [aut, cre] (<https://orcid.org/0000-0001-9468-7613>), Fotios Milienos [aut] (<https://orcid.org/0000-0003-1423-7132>)
MaintainerPanagiotis Papastamoulis <papapast@yahoo.gr>
LicenseGPL-2
Version1.3
URL https://github.com/mqbssppe/Bayesian_cure_rate_model
Package repositoryView on CRAN
Installation Install the latest version of this package by entering the following in R:
install.packages("bayesCureRateModel")

Try the bayesCureRateModel package in your browser

Any scripts or data that you put into this service are public.

bayesCureRateModel documentation built on Oct. 4, 2024, 1:07 a.m.