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rstpm2: An R package for link-based survival models

NOTE: versions 1.4.1 and 1.4.2 of rstpm2 included a critical bug in the predict function for type in "hr", "hdiff", "meanhr" or "marghr".

Introduction

This package provides link-based survival models that extend the Royston-Parmar models, a family of flexible parametric models. There are two main classes included in this package:

A. The class stpm2 is an R version of stpm2 in Stata with some extensions, including:

  1. Multiple links (log-log, -probit, -logit);

  2. Left truncation and right censoring (with experimental support for interval censoring);

  3. Relative survival;

  4. Cure models (where we introduce the nsx smoother, which extends the ns smoother);

  5. Predictions for survival, hazards, survival differences, hazard differences, mean survival, etc;

  6. Functional forms can be represented in regression splines or other parametric forms;

  7. The smoothers for time can use any transformation of time, including no transformation or log(time).

B. Another class pstpm2 is the implementation of the penalised models and corresponding penalized likelihood estimation methods. The main aim is to represent another way to deal with non-proportional hazards and adjust for potential continuous confounders in functional forms, not limited to proportional hazards and linear effect forms for all covariates. Functional forms can be represented in penalized regression splines (all mgcv smoothers ) or other parametric forms.

Some examples

The default for the parametric model is to use the Royston Parmar model, which uses a natural spline for the transformed baseline for log(time) with a log-log link.

require(rstpm2)
data(brcancer)
fit <- stpm2(Surv(rectime,censrec==1)~hormon,data=brcancer,df=3)
plot(fit,newdata=data.frame(hormon=0),type="hazard")

The default for the penalised model is similar, using a thin-plate spline for the transformed baseline for log(time) with a log-log link. The advantage of the penalised model is that there is no need to specify the knots or degrees of freedom for the baseline smoother.

fit <- pstpm2(Surv(rectime,censrec==1)~hormon,data=brcancer)
plot(fit,newdata=data.frame(hormon=0),type="hazard")

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Install

install.packages('rstpm2')

Monthly Downloads

7,964

Version

1.6.6.1

License

GPL-2 | GPL-3

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Maintainer

Mark Clements

Last Published

December 21st, 2024

Functions in rstpm2 (1.6.6.1)

gsm.control

Defaults for the gsm call
lines.stpm2

S3 methods for lines
numDeltaMethod

Calculate numerical delta method for non-linear predictions.
incrVar

Utility that returns a function to increment a variable in a data-frame.
markov_sde

Predictions for continuous time, nonhomogeneous Markov multi-state models using Aalen's additive hazards models.
nsxD

Generate a Basis Matrix for the first derivative of Natural Cubic Splines (with eXtensions)
legendre.quadrature.rule.200

Legendre quadrature rule for n=200.
gsm_design

Extract design information from an stpm2/gsm object and newdata for use in C++
nsx

Generate a Basis Matrix for Natural Cubic Splines (with eXtensions)
markov_msm

Predictions for continuous time, nonhomogeneous Markov multi-state models using parametric and penalised survival models.
popmort

Background mortality rates for the colon dataset.
plot-methods

plots for an stpm2 fit
pstpm2-class

Class "pstpm2"
residuals-methods

Residual values for an stpm2 or pstpm2 fit
rstpm2-internal

Internal functions for the rstpm2 package.
predictnl

Estimation of standard errors using the numerical delta method.
voptimize

Vectorised One Dimensional Optimization
predictnl-methods

~~ Methods for Function predictnl ~~
simulate-methods

Simulate values from an stpm2 or pstpm2 fit
smoothpwc

Utility to use a smooth function in markov_msm based on piece-wise constant values
vuniroot

Vectorised One Dimensional Root (Zero) Finding
stpm2-class

Class "stpm2" ~~~
predict.nsx

Evaluate a Spline Basis
update-methods

Methods for Function update
tvcCoxph-class

Class "tvcCoxph"
predict-methods

Predicted values for an stpm2 or pstpm2 fit
aft

Parametric accelerated failure time model with smooth time functions
coef<-

Generic method to update the coef in an object.
grad

gradient function (internal function)
eform.stpm2

S3 method for to provide exponentiated coefficents with confidence intervals.
bhazard

Placemarker function for a baseline hazard function.
aft-class

Class "stpm2" ~~~
colon

Colon cancer.
brcancer

German breast cancer data from Stata.
cox.tvc

Test for a time-varying effect in the coxph model
gsm

Parametric and penalised generalised survival models