Systematic evaluation of differential splicing tools for RNA-seq studies




Arfa Mehmood, Asta Laiho, Mikko S. Venäläinen, Aidan J. McGlinchey, Ning Wang and Laura L. Elo

PublisherOxford University Press

2019

Briefings in Bioinformatics

Briefings in bioinformatics

Brief Bioinform

1467-5463

1477-4054

DOIhttps://doi.org/10.1093/bib/bbz126

https://research.utu.fi/converis/portal/detail/Publication/44404514



Differential splicing (DS) is a post-transcriptional biological process with critical, wide-ranging effects on a plethora of cellular activities and disease processes. To date, a number of computational approaches have been developed to identify and quantify differentially spliced genes from RNA-seq data, but a comprehensive intercomparison and appraisal of these approaches is currently lacking. In this study, we systematically evaluated 10 DS analysis tools for consistency and reproducibility, precision, recall and false discovery rate, agreement upon reported differentially spliced genes and functional enrichment. The tools were selected to represent the three different methodological categories: exon-based (DEXSeq, edgeR, JunctionSeq, limma), isoform-based (cuffdiff2, DiffSplice) and event-based methods (dSpliceType, MAJIQ, rMATS, SUPPA). Overall, all the exon-based methods and two event-based methods (MAJIQ and rMATS) scored well on the selected measures. Of the 10 tools tested, the exon-based methods performed generally better than the isoform-based and event-based methods. However, overall, the different data analysis tools performed strikingly differently across different data sets or numbers of samples.

Last updated on 2024-26-11 at 14:58