/SDE

R and Julia codes for case study 2 (Breast Cancer toxicity model) in the manuscript titled "Adding noise to Markov cohort state-transition models."

Primary LanguageJulia

Installation

Please refer to each file (.jl and .R) to find the required packages prior to running the codes.

Julia

The file, cohmod.jl, is required for running the examples in Julia. One key package is DifferentialEquations package (https://github.com/JuliaDiffEq/DifferentialEquations.jl).

R

The R codes are self-contained. One key package is the YUIMA package (https://github.com/cran/yuima).

The Julia Language

Julia language is not used widespread in decision modeling. Here are some of the main sites for new users.

Julia is a high-level, high-performance dynamic language for technical computing. The main homepage for Julia can be found at julialang.org. This is the GitHub repository of Julia source code, including instructions for compiling and installing Julia, below.

Terminal, Editors and IDEs

The Julia REPL is quite powerful. See the section in the manual on the Julia REPL for more details.

Support for editing Julia is available for many widely used editors: Emacs, Vim, Sublime Text, and many others.

Supported IDEs include: Juno (Atom plugin), julia-vscode (VS Code plugin), and julia-intellij (IntelliJ IDEA plugin). The popular Jupyter notebook interface is available through IJulia.

Resources

Usage

The R and Julia codes are used in the manuscript titled "Adding noise to Markov cohort models."

Please email author at rowan.iskandar@gmail.com for any questions.

References

Example 1 is based on: https://journals.plos.org/plosone/article?id=10.1371/journal.pone.0205543

Example 2 is based on: https://onlinelibrary.wiley.com/doi/abs/10.1111/tbj.12757

About author

https://vivo.brown.edu/display/riskanda