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BRACoD.R

BRACoD: Bayesian Regression Analysis of Compositional Data

v0.0.2.0 · Mar 24, 2022 · MIT + file LICENSE

Description

The goal of this method is to identify associations between bacteria and an environmental variable in 16S or other compositional data. The environmental variable is any variable which is measure for each microbiome sample, for example, a butyrate measurement paired with every sample in the data. Microbiome data is compositional, meaning that the total abundance of each sample sums to 1, and this introduces severe statistical distortions. This method takes a Bayesian approach to correcting for these statistical distortions, in which the total abundance is treated as an unknown variable. This package runs the python implementation using reticulate.

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Check History

OK 14 OK · 0 NOTE · 0 WARNING · 0 ERROR · 0 FAILURE Mar 10, 2026

Dependency Network

Dependencies Reverse dependencies reticulate BRACoD.R

Version History

new 0.0.2.0 Mar 10, 2026
updated 0.0.2.0 ← 0.0.1.2 diff Mar 23, 2022
new 0.0.1.2 May 16, 2021