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frailtypack (version 3.3.2)

General Frailty Models: Shared, Joint and Nested Frailty Models with Prediction; Evaluation of Failure-Time Surrogate Endpoints

Description

The following several classes of frailty models using a penalized likelihood estimation on the hazard function but also a parametric estimation can be fit using this R package: 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 the joint modelling for recurrent events with terminal event for clustered data or not. A joint frailty model for two semi-competing risks and clustered data is also proposed. 5) Joint general frailty models in the context of the joint modelling for recurrent events with terminal event data with two independent frailty terms. 6) Joint Nested frailty models in the context of the joint modelling for recurrent events with terminal event, for hierarchically clustered data (with two levels of clustering) by including two iid gamma random effects. 7) Multivariate joint frailty models for two types of recurrent events and a terminal event. 8) Joint models for longitudinal data and a terminal event. 9) Trivariate joint models for longitudinal data, recurrent events and a terminal event. 10) Joint frailty models for the validation of surrogate endpoints in multiple randomized clinical trials with failure-time endpoints 11) Conditional and Marginal two-part joint models for longitudinal semicontinuous data and a terminal event. 12) Joint frailty-copula models for the validation of surrogate endpoints in multiple randomized clinical trials with failure-time endpoints. Prediction values are available (for a terminal event or for a new recurrent event). Left-truncated (not for Joint model), right-censored data, interval-censored data (only for Cox proportional hazard and shared frailty model) and strata are allowed. In each model, the random effects have the gamma or normal distribution. Now, you can also consider time-varying covariates effects in Cox, shared and joint frailty models (1-5). The package includes concordance measures for Cox proportional hazards models and for shared frailty models. Moreover, the package can be used with its shiny application, in a local mode or by following the link below.

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Version

Install

install.packages('frailtypack')

Monthly Downloads

1,617

Version

3.3.2

License

GPL (>= 2.0)

Maintainer

Virginie Rondeau

Last Published

October 14th, 2020

Functions in frailtypack (3.3.2)

additivePenal

Fit an Additive Frailty model using a semiparametric penalized likelihood estimation or a parametric estimation
SurvIC

Create a survival object for interval censoring and possibly left truncated data
cluster

Identify clusters
Diffepoce

Difference of Expected Prognostic Observed Cross-Entropy (EPOCE) estimators and its 95% tracking interval between two joint models.
bcos

Breast Cosmesis Data
colorectal

Follow-up of metastatic colorectal cancer patients: times of new lesions appearance and death
dataMultiv

Simulated data for two types of recurrent events and a terminal event
dataAdditive

Simulated data as a gathering of clinical trials databases
Cmeasures

Concordance measures in shared frailty and Cox proportional hazard models
colorectalLongi

Follow-up of metastatic colorectal cancer patients : longitudinal measurements of tumor size
dataOvarian

Advanced Ovarian Cancer dataset
jointSurrCopSimul

Generate survival times for two endpoints using the joint frailty-copula model for surrogacy
hazard

Hazard function.
epoce

Estimators of the Expected Prognostic Observed Cross-Entropy (EPOCE) for evaluating predictive accuracy of joint models.
gastadj

Advanced Gastric Cancer dataset
frailtypack-package

General Frailty models: shared, joint and nested frailty models with prediction; Evaluation of Failure-Time Surrogate Endpoints
dataNCC

Simulated data for recurrent events and a terminal event with weigths using nested case-control design
dataNested

Simulated data with two levels of grouping
frailtyPenal

Fit a Shared, Joint or Nested Frailty model
event2

Identify event2 indicator
num.id

Identify individuals in Joint model for clustered data
multivPenal

Fit a multivariate frailty model for two types of recurrent events and a terminal event.
loocv

The trials leave-one-out crossvalidation for the one-step Joint surrogate model for evaluating a canditate surrogate endpoint.
longiPenal

Fit a Joint Model for Longitudinal Data and a Terminal Event
jointSurroTKendall

Kendall's \(\tau\) estimation using numerical integration methods
longDat

Longitudinal semicontinuous biomarker dataset (TPJM)
plot.jointNestedPenal

Plot method for a joint nested frailty model.
plot.jointPenal

Plot Method for a Joint frailty model.
plot.jointSurroPenal

Plot Method for the one-step Joint surrogate model for the evaluation of a canditate surrogate endpoint.
jointSurrSimul

Generate survival times for two endpoints using the joint frailty surrogate model
jointSurroCopPenal

Fit the one-step Joint frailty-copula model for evaluating a canditate surrogate endpoint
plot.jointSurroPenalloocv

Plot of trials leave-one-out crossvalidation Outputs from the one-step Joint surrogate model for evaluating a canditate surrogate endpoint.
plot.frailtyPenal

Plot Method for a Shared frailty model.
plot.epoce

Plot values of estimators of the Expected Prognostic Observed Cross-Entropy (EPOCE).
plot.additivePenal

Plot Method for an Additive frailty model.
plot.Diffepoce

Plot difference of EPOCE estimators between two joint frailty models.
plot.predJoint

Plot predictions using a joint frailty model.
plot.predLongi

Plot predictions using a joint model for longitudinal data and a terminal event or a trivariate joint model for longitudinal data, recurrent events and a terminal event.
plot.predFrailty

Plot predictions using a Cox or a shared frailty model.
plot.nestedPenal

Plot Method for a Nested frailty model.
print.jointSurroPenal

Summary of the random effects parameters, the fixed treatment effects, and the surrogacy evaluation criteria estimated from a joint surrogate model
print.longiPenal

Print a Summary of parameter estimates of a joint model for longitudinal data and a terminal event
print.trivPenal

Print a Summary of parameter estimates of a joint model for longitudinal data, recurrent events and a terminal event
plot.trivPenal

Plot Method for a trivariate joint model for longitudinal data, recurrent events and a terminal event.
print.additivePenal

Print a Short Summary of parameter estimates of an additive frailty model
plot.trivPenalNL

Plot Method for a Non-Linear Trivariate Joint Model for Recurrent Events and a Terminal Event with a Biomarker Described with an ODE.
print.prediction

Print a short summary of results of prediction function.
jointSurroPenalSimul

Simulation studies based on the one-step Joint surrogate models for the evaluation of a canditate surrogate endpoint
jointSurroPenal

Fit the one-step Joint surrogate model for evaluating a canditate surrogate endpoint
print.nestedPenal

Print a Short Summary of parameter estimates of a nested frailty model
print.multivPenal

Print a Short Summary of parameter estimates of a multivariate frailty model
summary.trivPenalNL

Short summary of fixed covariates estimates of a non-linear trivariate joint model for longitudinal data, recurrent events and a terminal event
survDat

Survival dataset (TPJM)
summary.multivPenal

summary of parameter estimates of a multivariate frailty model.
plot.longiPenal

Plot Method for a joint model for longitudinal data and a terminal event.
plot.multivPenal

Plot Method for a multivariate frailty model.
readmission

Rehospitalization colorectal cancer
print.trivPenalNL

Print a Summary of parameter estimates of a non-linear trivariate joint model for longitudinal data, recurrent events and a terminal event
print.Cmeasures

Print a short summary of results of Cmeasure function.
summary.longiPenal

Short summary of fixed covariates estimates of a joint model for longitudinal data and a terminal event
runShiny

Shiny application for modelisation and prediction of frailty models
prediction

Prediction probabilities for Cox proportional hazard, Shared, Joint frailty models, Joint models for longitudinal data and a terminal event and Trivariate joint model for longitudinal data, recurrent events and a terminal event (linear and non-linear).
plotTreatPredJointSurro

Plot of the prediction of the treatment effect on the true endpoint and the STE
slope

Identify variable associated with the random slope
print.frailtyPenal

Print a Short Summary of parameter estimates of a shared frailty model
summary.jointSurroPenalSimul

Short summary of the simulation studies based on a joint surrogate model
subcluster

Identify subclusters
timedep

Identify time-varying effects
trivPenal

Fit a Trivariate Joint Model for Longitudinal Data, Recurrent Events and a Terminal Event
summary.jointSurroPenal

Short summary of the surrogacy evaluation criteria estimated from a joint surrogate model
print.jointNestedPenal

Print a Short Summary of parameter estimates of a joint nested frailty model
summary.additivePenal

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

summary of parameter estimates of a shared frailty model
predict.jointSurroPenal

S3method predict for the one-step Joint surrogate models for the evaluation of a canditate surrogate endpoint.
ste

Surrogate threshold effect for the one-step Joint surrogate model for the evaluation of a canditate surrogate endpoint.
print.jointPenal

Print a Short Summary of parameter estimates of a joint frailty model
summary.jointNestedPenal

summary of parameter estimates of a joint nested frailty model
summary.trivPenal

Short summary of fixed covariates estimates of a joint model for longitudinal data, recurrent events and a terminal event
trivPenalNL

Fit a Non-Linear Trivariate Joint Model for Recurrent Events and a Terminal Event with a Biomarker Described with an ODE Population Model
summary.nestedPenal

summary of regression coefficient estimates of a nested frailty model
summary.jointPenal

summary of parameter estimates of a joint frailty model
wts

Identify weights
terminal

Identify terminal indicator
survival

Survival function