Survival Data Simulation With the R Package rsurv
In this paper we propose a novel R package, called rsurv, developed for general survival data simulation purposes. The package is built under a new approach to simulate survival data that depends heavily on the use of dplyr verbs. The proposed package allows simulations of survival data from a wide...
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Zusammenfassung: | In this paper we propose a novel R package, called rsurv, developed for
general survival data simulation purposes. The package is built under a new
approach to simulate survival data that depends heavily on the use of dplyr
verbs. The proposed package allows simulations of survival data from a wide
range of regression models, including accelerated failure time (AFT),
proportional hazards (PH), proportional odds (PO), accelerated hazard (AH),
Yang and Prentice (YP), and extended hazard (EH) models. The package rsurv also
stands out by its ability to generate survival data from an unlimited number of
baseline distributions provided that an implementation of the quantile function
of the chosen baseline distribution is available in R. Another nice feature of
the package rsurv lies in the fact that linear predictors are specified using R
formulas, facilitating the inclusion of categorical variables, interaction
terms and offset variables. The functions implemented in the package rsurv can
also be employed to simulate survival data with more complex structures, such
as survival data with different types of censoring mechanisms, survival data
with cure fraction, survival data with random effects (frailties), multivarite
survival data, and competing risks survival data. |
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DOI: | 10.48550/arxiv.2406.01750 |