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SurvRegCensCov (version 1.0)

Weibull Regression for a Right-Censored Endpoint with an Arbitrarily Censored Covariate

Description

The main function of this package allows estimation of a Weibull Regression for a right-censored endpoint, one arbitrarily censored covariate, and an arbitrary number of non-censored covariates. Additional functions allow to switch between different parametrizations of Weibull regression used by different R functions, inference for the mean difference of two arbitrarily censored Normal samples, and estimation of canonical parameters from censored samples for several distributional assumptions.

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Version

Install

install.packages('SurvRegCensCov')

Monthly Downloads

353

Version

1.0

License

GPL (>= 2)

Maintainer

Stanislas Hubeaux

Last Published

January 15th, 2014

Functions in SurvRegCensCov (1.0)

ConvertWeibull

Transformation of survreg output for the Weibull distribution
WeibullReg

Weibull Regression for Survival Data
SurvRegCensCov-package

Weibull Regression for a Right-Censored Endpoint with Censored Covariates
NormalMeanDiffCens

Maximum Likelihood Estimator for the mean difference between two censored normally distributed samples
LoglikWeibullSurvRegCens

Log-likelihood function of a Weibull Survival Regression Model allowing for an interval-censored covariate.
WeibullDiag

Diagnostic Plot of Adequacy of Weibull Distribution
ParamSampleCens

Maximum Likelihood Estimator of parameters from a censored sample
WeibullIntegrate

LoglikCens

Log-likelihood functions for estimation of canonical parameters from a censored sample
CDF

Cumulative distribution function
LoglikNormalDeltaCens

Log likelihood function to compute mean difference between two normally distributed censored samples.
larynx

Survival Times of Larynx Cancer Patients
SurvRegCens

Weibull Survival Regression Model with a censored covariate
TimeSampleWeibull

Generate time-to-event data according to a Weibull regression model