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Description

Bayesian Cost Effectiveness Analysis.

Produces an economic evaluation of a sample of suitable variables of cost and effectiveness / utility for two or more interventions, e.g. from a Bayesian model in the form of MCMC simulations. This package computes the most cost-effective alternative and produces graphical summaries and probabilistic sensitivity analysis, see Baio et al (2017) <doi:10.1007/978-3-319-55718-2>.

BCEA: Bayesian cost-effectiveness analysis

Build Status R-CMD-check CRAN_Status_Badge CRAN_Download_Badge CRAN_Download_Badge CodeFactor DOI

Perform Bayesian Cost-Effectiveness Analysis in R.

:rocket: Version 2.4.6 in development now!Check out the release notes here.

Contents

Overview

Given the results of a Bayesian model (possibly based on MCMC) in the form of simulations from the posterior distributions of suitable variables of costs and clinical benefits for two or more interventions, produces a health economic evaluation. Compares one of the interventions (the "reference") to the others ("comparators").

Features

Main features of BCEA include:

  • Cost-effectiveness analysis plots, such as CE planes and CEAC
  • Summary statistics and tables
  • EVPPI calculations and plots

Installation

Install the released version from CRAN with

install.packages("BCEA")

The stable version (which can be updated more quickly) can be installed using this GitHub repository. On Windows machines, you need to install a few dependencies, including Rtools first, e.g. by running

pkgs <- c("MASS", "Rtools", "remotes")
repos <- c("https://cran.rstudio.com", "https://inla.r-inla-download.org/R/stable/") 
install.packages(pkgs, repos=repos, dependencies = "Depends")

before installing the package using remotes:

remotes::install_github("giabaio/BCEA")

Under Linux or MacOS, it is sufficient to install the package via remotes:

install.packages("remotes")
remotes::install_github("giabaio/BCEA")

Articles

Examples of using specific functions and their different arguments are given in these articles:

Further details

The pkgdown site is here. More details on BCEA are available in our book Bayesian Cost-Effectiveness Analysis with the R Package BCEA (published in the UseR! Springer series). Also, details about the package, including some references and links to a pdf presentation and some posts on my own blog) are given here.

License

License: GPL v3

Contributing

Please submit contributions through Pull Requests, following the contributing guidelines. To report issues and/or seek support, please file a new ticket in the issue tracker.

Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.

Metadata

Version

2.4.6

License

Unknown

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