Skip to content

odysseusinc/MethodEvaluation

 
 

Repository files navigation

MethodEvaluation

Build Status

MethodEvaluation is part of HADES.

Introduction

This R package contains resources for the evaluation of the performance of methods that aim to estimate the magnitude (relative risk) of the effect of a drug on an outcome. These resources include reference sets for evaluating methods on real data, as well as functions for inserting simulated effects in real data based on negative control drug-outcome pairs. Further included are functions for the computation of the minimum detectable relative risks and functions for computing performance statistics such as predictive accuracy, error and bias.

Features

  • Contains the OMOP and EU-ADR reference set, and the OHDSI Method benchmark for evaluating method performance using real data.
  • Function for inserting simulated effects in real data based on negative control drug-outcome pairs.
  • Function for computation of the minimum detectable relative risk (MDRR)
  • Functions for computing predictive accuracy, error, and bias

Technology

MethodEvaluation is a pure R package.

System Requirements

Requires R. Some of the packages used by MethodEvaluation require Java.

Installation

  1. See the instructions here for configuring your R environment, including Java.

  2. In R, use the following commands to download and install MethodEvaluation:

install.packages("drat")
drat::addRepo("OHDSI")
install.packages("MethodEvaluation")

User Documentation

Documentation can be found on the package website.

PDF versions of the documentation are also available:

Support

Contributing

Read here how you can contribute to this package.

License

MethodEvaluation is licensed under Apache License 2.0

Development

MethodEvaluation is being developed in R Studio.

Development status

Beta

Acknowledgements

  • This project is supported in part through the National Science Foundation grant IIS 1251151.

About

An R package for the evaluation of estimation methods

Resources

Stars

Watchers

Forks

Packages

No packages published

Languages

  • R 99.0%
  • Other 1.0%