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Cellular Energetics Analysis Software

DOI

Description

Measuring cellular energetics is essential to understanding a matrix’s (e.g. cell, tissue or biofluid) metabolic state. The Agilent Seahorse machine is a common method to measure real-time cellular energetics, but existing analysis tools are highly manual or lack functionality. The Cellular Energetics Analysis Software (ceas) R package fills this analytical gap by providing modular and automated Seahorse data analysis and visualization using the methods described by Mookerjee et al. (2017).

Pronunciation

‘ceas’ is pronounced like the word ‘seas’ (siːz, SEEZ).

Installation

CRAN

Github

You can install the release or development versions from GitHub by cloning the repo. The code on the main branch is in sync with the CRAN releases while the dev branch has the latest updates. Documentation for the dev branch can be found on the dev page of the website (/dev).

git clone https://github.com/jamespeapen/ceas/
git clone -b dev https://github.com/jamespeapen/ceas/ # dev version
R CMD INSTALL ceas

You can also use the R devtools package:

devtools::install_github("jamespeapen/ceas")
devtools::install_github("jamespeapen/ceas", ref = "dev") # dev version

or pak:

pak::pkg_install("jamespeapen/ceas")
pak::pkg_install("jamespeapen/ceas@dev") # dev version

Usage

A user guide is available on the package website. Bug reports may be submitted through GitHub issues.

Citation

If you use ceas please cite

Rachel (Rae) J House, James P Eapen, Hui Shen, Carrie R Graveel, Matthew R Steensma (2024). ceas: An R package for Seahorse data analysis and visualization, Bioinformatics, 40(8), btae503

Contributing

Submit patches using GitHub pull requests or by sending a patch file to . We follow the tidyverse style guide using styler and lintr.