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frailtypack (version 2.4.1)

General Frailty models: shared, joint and nested frailty models with prediction

Description

Frailtypack now fits several classes of frailty models using a penalized likelihood estimation on the hazard function but also a parametric estimation. 1) A shared frailty model (with gamma or log-normal frailty distribution) and Cox proportional hazard model. Clustered and recurrent survival times can be studied. 2) Additive frailty models for proportional hazard models with two correlated random effects (intercept random effect with random slope). 3) Nested frailty models for hierarchically clustered data (with 2 levels of clustering) by including two iid gamma random effects. 4) Joint frailty models in the context of joint modelling for recurrent events with terminal event for clustered data or not. Prediction values are available. Left truncated (not for Joint model), right-censored data, interval-censored data (only for Cox proportional hazard and shared frailty model) and strata (max=2) are allowed. In each model, the random effects have a gamma distribution, but you can switch to a log-normal in shared and joint models. Now, you can also consider time-varying covariates effects in Cox, shared and joint models. The package includes concordance measures for Cox proportional hazards models and for shared frailty models.

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Version

Install

install.packages('frailtypack')

Monthly Downloads

1,159

Version

2.4.1

License

GPL (>= 2.0)

Maintainer

Virginie Rondeau

Last Published

April 26th, 2013

Functions in frailtypack (2.4.1)

print.jointPenal

Print a Short Summary of parameter estimates of a joint frailty model
readmission

Rehospitalization colorectal cancer
timedep

Identify time-varying effects
summary.nestedPenal

summary of regression coefficient estimates of a nested frailty model
SurvIC

Create a survival object for interval censoring and possibly left truncated data
plot.nestedPenal

Plot Method for a Nested frailty model.
print.nestedPenal

Print a Short Summary of parameter estimates of a nested frailty model
dataNested

Simulated data with two levels of grouping
print.frailtyPenal

Print a Short Summary of parameter estimates of a shared frailty model
multivePenal

Fit a multivariate frailty model for two types of recurrent events and a terminal event using semiparametric penalized likelihood estimation or a parametrical estimation.
event2

Identify event2 indicator
plot.frailtyPenal

Plot Method for a Shared frailty model.
survival

Survival function
summary.frailtyPenal

summary of parameter estimates of a shared frailty model
dataAdditive

Simulated data as a gathering of clinical trials databases
additivePenal

Fit an Additive Frailty model using a semiparametric penalized likelihood estimation or a parametric estimation
plot.multivePenal

Plot Method for a multivariate frailty model.
subcluster

Identify subclusters
frailtypack-package

General Frailty models: shared, joint and nested frailty models with prediction
bcos

Breast Cosmesis Data
hazard

Hazard function.
summary.multivePenal

summary of parameter estimates of a multivariate frailty model.
slope

Identify variable associated with the random slope
print.Cmeasures

Print a short summary of results of Cmeasure function.
terminal

Identify terminal indicator
Cmeasures

Concordance measures in shared frailty and Cox models
plot.jointPenal

Plot Method for a Joint frailty model.
plot.additivePenal

Plot Method for an Additive frailty model.
dataMultiv

Simulated data with two types of recurrent events and a dependant terminal event
summary.additivePenal

summary of parameter estimates of an additive frailty model
summary.jointPenal

summary of parameter estimates of a joint frailty model
print.additivePenal

Print a Short Summary of parameter estimates of an additive frailty model
frailtyPenal

Fit a Shared, Joint or Nested Frailty model
print.multivePenal

Print a Short Summary of parameter estimates of a multivariate frailty model
num.id

Identify individuals in Joint model for clustered data