Metabolic labeling of RNA is a powerful technique for studying the temporal dynamics of gene expression. Nucleotide conversion approaches greatly facilitate the generation of data but introduce challenges for their analysis. Here we present grandR, a comprehensive package for quality control, differential gene expression analysis, kinetic modeling, and visualization of such data. We compare several existing methods for inference of RNA synthesis rates and half-lives using progressive labeling time courses. We demonstrate the need for recalibration of effective labeling times and introduce a Bayesian approach to study the temporal dynamics of RNA using snapshot experiments.
CITATION STYLE
Rummel, T., Sakellaridi, L., & Erhard, F. (2023). grandR: a comprehensive package for nucleotide conversion RNA-seq data analysis. Nature Communications, 14(1). https://doi.org/10.1038/s41467-023-39163-4
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