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E2E

E2E (Easy to Ensemble) is a novel R package designed to provide a comprehensive and flexible framework for ensemble machine learning, specifically tailored for medical applications like diagnosis and prognosis.

Install / Use

/learn @XIAOJIE0519/E2E
About this skill

Quality Score

0/100

Supported Platforms

Universal

README


E2E: An R Package for Easy-to-Build Ensemble Models

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R-CMD-check pkgdown

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E2E is a comprehensive R package designed to streamline the development, evaluation, and interpretation of machine learning models for both diagnostic (classification) and prognostic (survival analysis) tasks. It provides a robust, extensible framework for training individual models and building powerful ensembles—including Bagging, Voting, and Stacking—with minimal code. The package also includes integrated tools for visualization and model explanation via SHAP values.

Author: Shanjie Luan (ORCID: 0009-0002-8569-8526, First and Corresponding Author), Ximing Wang

Citation: If you use E2E in your research, please cite it as: "Luan, S. and Wang, X. (2025), E2E: An R Package for Easy-to-Build Ensemble Models. Med Research. https://doi.org/10.1002/mdr2.70030"

Note: The article is open source on CRAN and Github and is free to use, but you have to cite our article if you use E2E in your research. If you have any questions, please contact Luan20050519@163.com.

Documentation

For complete documentation, tutorials, and function references, please visit our pkgdown website:

https://XIAOJIE0519.github.io/E2E/

back to our github website:

https://github.com/XIAOJIE0519/E2E


Installation

The development version of E2E can be installed directly from GitHub using remotes.

# If you don't have remotes, install it first:
# install.packages("remotes")
remotes::install_github("XIAOJIE0519/E2E")

After installation, load the package into your R session:

library(E2E)

Methodological Framework

Workflow

View on GitHub
GitHub Stars23
CategoryProduct
Updated2d ago
Forks3

Languages

R

Security Score

75/100

Audited on Mar 19, 2026

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