TY - JOUR T1 - Robust inference of expression state in bulk and single-cell RNA-Seq using curated intergenic regions JF - bioRxiv DO - 10.1101/2022.03.31.486555 SP - 2022.03.31.486555 AU - Sara S. Fonseca Costa AU - Marta Rosikiewicz AU - Julien Roux AU - Julien Wollbrett AU - Frederic B. Bastian AU - Marc Robinson-Rechavi Y1 - 2022/01/01 UR - http://biorxiv.org/content/early/2022/04/01/2022.03.31.486555.abstract N2 - RNA-Seq is a powerful technique to provide quantitative information on gene expression. While many applications focus on estimated expression levels, it is also important to determine which genes are actively transcribed, and which are not. The problem can be viewed as simply setting a biologically meaningful threshold for calling a gene expressed. We propose to define this threshold per sample relative to the background level for non-expressed genomic features, inferred by the amount of reads mapped to intergenic regions of the genome. To this aim, we first define a stringent set of reference intergenic regions, based on available bulk RNA-Seq libraries for each species. We provide predefined regions selected for different animal species with varying genome annotation quality through the Bgee database. We then call genes expressed if their level of expression is significantly higher than the background noise. This approach can be applied to bulk as well as single-cell RNA-Seq, on a single library as well as on a combination of libraries over one condition. We show that the estimated proportion of expressed genes is biologically meaningful and stable between libraries originating from the same tissue, in both model and non-model organisms.Competing Interest StatementThe authors have declared no competing interest. ER -