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PopED: Population (and individual) Experimental Design in R

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codecov.io

PopED computes optimal experimental designs for both population
and individual studies based on nonlinear mixed-effect models.
Often this is based on a computation of the Fisher Information Matrix (FIM).

Installation

You need to have R installed. Download the latest version of R from www.r-project.org.
Install PopED in R using one of the following methods:

  • latest stable release -- From CRAN. Write at the R command line:
install.packages("PopED")
  • Latest development version -- from Github. Note that the command below installs the "master"
    (development) branch; if you want the release branch from Github add ref="release" to the
    install_github() call. The install_github() approach requires that you build from source,
    i.e. make and compilers must be installed on your system -- see the R FAQ for your operating system;
    you may also need to install dependencies manually.
devtools::install_github("andrewhooker/PopED")

Getting started

To get started you need to define

  1. A model.
  2. An initial design (and design space if you want to optimize).
  3. The tasks to perform.

There are a number of functions to help you with these tasks. See ?poped for more information.

There are several other examples, as r-scripts, in the "examples" folder in the
PopED installation directory located at:

system.file("examples", package="PopED")

The same examples are located in the "inst/examples" directory of this repository.