consexpressionR: an R package for consensus differential gene expression analysis
Journal:
arXiv
Published Date:
Mar 27, 2025
Abstract
Motivation: Bulk RNA-Seq is a widely used method for studying gene expression
across a variety of contexts. The significance of RNA-Seq studies has grown
with the advent of high-throughput sequencing technologies. Computational
methods have been developed for each stage of the identification of
differentially expressed genes. Nevertheless, there are few studies exploring
the association between different types of methods. In this study, we evaluated
the impact of the association of methodologies in the results of differential
expression analysis. By adopting two data sets with qPCR data (to gold-standard
reference), seven methods were implemented and assessed in R packages (EBSeq,
edgeR, DESeq2, limma, SAMseq, NOISeq, and Knowseq), which was performed and
assessed separately and in association. The results were evaluated considering
the adopted qPCR data. Results: Here, we introduce consexpressionR, an R
package that automates differential expression analysis using consensus of at
least seven methodologies, producing more assertive results with a significant
reduction in false positives. Availability: consexpressionR is an R package
available via source code and support are available at GitHub
(https://github.com/costasilvati/consexpressionR).