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Primary event censored distributions primarycensored website

Lifecycle: stable R-CMD-check Codecov test coverage

Universe MIT license GitHub contributors DOI

Summary

Provides functions for working with primary event censored distributions and ‘Stan’ implementations for use in Bayesian modeling. Primary event censored distributions are useful for modeling delayed reporting scenarios in epidemiology and other fields (Charniga et al. (2024) doi:10.48550/arXiv.2405.08841). It also provides support for arbitrary delay distributions, a range of common primary distributions, and allows for truncation and secondary event censoring to be accounted for (Park et al. (2024) doi:10.1101/2024.01.12.24301247). A subset of common distributions also have analytical solutions implemented, allowing for faster computation. In addition, it provides multiple methods for fitting primary event censored distributions to data via optional dependencies.

Installation

Installing the package

You can install the latest released version from CRAN using the standard install.packages function:

install.packages("primarycensored")

Alternatively, you can install the latest release from our r-universe repository:

install.packages("primarycensored", repos = "https://epinowcast.r-universe.dev")

To install the development version from GitHub (warning! this version may contain breaking changes and/or bugs), use the pak package:

pak::pak("epinowcast/primarycensored")

Similarly, you can install historical versions by specifying the release tag (e.g., v0.2.0):

pak::pak("epinowcast/[email protected]")

Note: You can also use the above approach to install a specific commit if needed, for example, if you want to try out a specific unreleased feature, but not the absolute latest developmental version.

Installing CmdStan (optional for Stan functionality)

If you wish to use the Stan functions, you will need to install CmdStan, which also entails having a suitable C++ toolchain setup. We recommend using the cmdstanr package. The Stan team provides instructions in the Getting started with cmdstanr vignette, with other details and support at the package site along with some key instructions available in the Stan resources package vignette, but the brief version is:

# if you not yet installed `primarycensored`, or you installed it without
# `Suggests` dependencies
install.packages(
  "cmdstanr",
  repos = c("https://stan-dev.r-universe.dev", getOption("repos"))
)
# once `cmdstanr` is installed:
cmdstanr::install_cmdstan()

Note: You can speed up CmdStan installation using the cores argument. If you are installing a particular version of epinowcast, you may also need to install a past version of CmdStan, which you can do with the version argument.

Resources

We provide a range of other documentation, case studies, and community spaces to ask (and answer!) questions:

Package Website

The primarycensored website includes a function reference, model outline, and case studies using the package. The site mainly concerns the release version, but you can also find documentation for the latest development version.

Vignettes

We have created package vignettes to help you get started with primarycensored and to highlight other features with case studies.

Organisation Website

Our organisation website includes links to other resources, guest posts, and seminar schedule for both upcoming and past recordings.

Community Forum

Our community forum has areas for question and answer and considering new methods and tools, among others. If you are generally interested in real-time analysis of infectious disease, you may find this useful even if you do not use primarycensored.

Contributing

We welcome contributions and new contributors! We particularly appreciate help on identifying and identified issues. Please check and add to the issues, and/or add a pull request and see our contributing guide for more information.

If you need a different underlying model for your work: primarycensored provides a flexible framework for censored distributions in both R and Stan. If you implement new distributions or censoring mechanisms that expand the overall flexibility or improve the defaults, please let us know either here or on the community forum. We always like to hear about new use-cases and extensions to the package.

How to make a bug report or feature request

Please briefly describe your problem and what output you expect in an issue. If you have a question, please don’t open an issue. Instead, ask on our Q and A page. See our contributing guide for more information.

Code of Conduct

Please note that the primarycensored project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.

Citation

If making use of our methodology or the methodology on which ours is based, please cite the relevant papers from our methods outline. If you use primarycensored in your work, please consider citing it with citation("primarycensored").

Contributors

All contributions to this project are gratefully acknowledged using the allcontributors package following the all-contributors specification. Contributions of any kind are welcome!

Code

seabbs, SamuelBrand1, sbfnk, athowes

Issue Authors

zsusswein, jcblemai, jamesmbaazam

Issue Contributors

parksw3