Treffer: pyComBat, a Python tool for batch effects correction in high-throughput molecular data using empirical Bayes methods.

Title:
pyComBat, a Python tool for batch effects correction in high-throughput molecular data using empirical Bayes methods.
Authors:
Behdenna, Abdelkader1 (AUTHOR) abdelkader@epigenelabs.com, Colange, Maximilien1 (AUTHOR), Haziza, Julien1 (AUTHOR), Gema, Aryo1,2 (AUTHOR), Appé, Guillaume1 (AUTHOR), Azencott, Chloé-Agathe3,4,5 (AUTHOR), Nordor, Akpéli1 (AUTHOR) akpeli@epigenelabs.com
Source:
BMC Bioinformatics. 12/7/2023, Vol. 24 Issue 1, p1-9. 9p.
Database:
Academic Search Index

Weitere Informationen

Background: Variability in datasets is not only the product of biological processes: they are also the product of technical biases. ComBat and ComBat-Seq are among the most widely used tools for correcting those technical biases, called batch effects, in, respectively, microarray and RNA-Seq expression data. Results: In this technical note, we present a new Python implementation of ComBat and ComBat-Seq. While the mathematical framework is strictly the same, we show here that our implementations: (i) have similar results in terms of batch effects correction; (ii) are as fast or faster than the original implementations in R and; (iii) offer new tools for the bioinformatics community to participate in its development. pyComBat is implemented in the Python language and is distributed under GPL-3.0 (https://www.gnu.org/licenses/gpl-3.0.en.html) license as a module of the inmoose package. Source code is available at https://github.com/epigenelabs/inmoose and Python package at https://pypi.org/project/inmoose. Conclusions: We present a new Python implementation of state-of-the-art tools ComBat and ComBat-Seq for the correction of batch effects in microarray and RNA-Seq data. This new implementation, based on the same mathematical frameworks as ComBat and ComBat-Seq, offers similar power for batch effect correction, at reduced computational cost. [ABSTRACT FROM AUTHOR]