BANDITS: Bayesian differential splicing accounting for sample-to-sample variability and mapping uncertainty
Simone Tiberi, Mark D. Robinson
Abstract
Alternative splicing is a biological process during gene expression that allows a single gene to code for multiple proteins. However, splicing patterns can be altered in some conditions or diseases. Here, we present BANDITS, a R/Bioconductor package to perform differential splicing, at both gene and transcript level, based on RNA-seq data. BANDITS uses a Bayesian hierarchical structure to explicitly model the variability between samples and treats the transcript allocation of reads as latent variables. We perform an extensive benchmark across both simulated and experimental RNA-seq datasets, where BANDITS has extremely favourable performance with respect to the competitors considered.
Topics & Concepts
BioconductorBiologyBayesian probabilityAlternative splicingRNA splicingComputational biologySample (material)RNA-SeqBenchmark (surveying)GeneGeneticsGene expressionRNAComputer scienceArtificial intelligenceTranscriptomeMessenger RNAChemistryGeodesyGeographyChromatographyRNA Research and SplicingRNA modifications and cancerMolecular Biology Techniques and Applications