Simulation studies are essential for understanding and evaluating both current and new statistical models. When simulating survival times, one often assumes an exponential or Weibull distribution for the baseline hazard function, with survival times generated using the method of Bender, Augustin, and Blettner (2005, Statistics in Medicine 24: 1713–1723). Assuming a constant or monotonic hazard can be considered too simplistic and can lack biological plausibility in many situations. We describe a new user-written command, survsim, which allows the user to simulate survival times from two-component parametric mixture models, providing much more flexibility in the underlying hazard. Standard parametric distributions can also be used, including...
This paper introduces a novel model and software package for parametric survival modelling of indivi...
Royston and Parmar (2002, Statistics in Medicine 21: 2175–2197) developed a class of flexible parame...
In this article, we describe strcs, a user-written command for fitting flexible parametric survival ...
Simulation studies are essential for understanding and evaluating both current and new statistical m...
Simulation of realistic censored survival times is challenging. Most research studies use highly sim...
The simsurv R package allows users to simulate survival (i.e., time-to-event) data from standard par...
Simulation studies are conducted to assess the performance of current and novel statistical models i...
We present an R package for the simulation of simple and complex survival data. It covers different ...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
Parametric survival models are being increasingly used as an alternative to the Cox model in biomedi...
Although semi- and non-parametric approaches are frequently used to analyse survival data, there are...
It is usual in time-to-event data to have more than one event of interest, for example, time to deat...
In many situations, medical applications ask for flexible survival models that allow to extend the c...
Multivariate event time data arises frequently in both medical and industrial settings. In such data...
Survival analysis is a powerful statistical tool to study failure-time data. In introductory courses...
This paper introduces a novel model and software package for parametric survival modelling of indivi...
Royston and Parmar (2002, Statistics in Medicine 21: 2175–2197) developed a class of flexible parame...
In this article, we describe strcs, a user-written command for fitting flexible parametric survival ...
Simulation studies are essential for understanding and evaluating both current and new statistical m...
Simulation of realistic censored survival times is challenging. Most research studies use highly sim...
The simsurv R package allows users to simulate survival (i.e., time-to-event) data from standard par...
Simulation studies are conducted to assess the performance of current and novel statistical models i...
We present an R package for the simulation of simple and complex survival data. It covers different ...
This paper discusses techniques to generate survival times for simulation studies regarding Cox prop...
Parametric survival models are being increasingly used as an alternative to the Cox model in biomedi...
Although semi- and non-parametric approaches are frequently used to analyse survival data, there are...
It is usual in time-to-event data to have more than one event of interest, for example, time to deat...
In many situations, medical applications ask for flexible survival models that allow to extend the c...
Multivariate event time data arises frequently in both medical and industrial settings. In such data...
Survival analysis is a powerful statistical tool to study failure-time data. In introductory courses...
This paper introduces a novel model and software package for parametric survival modelling of indivi...
Royston and Parmar (2002, Statistics in Medicine 21: 2175–2197) developed a class of flexible parame...
In this article, we describe strcs, a user-written command for fitting flexible parametric survival ...