2passtools: two-pass alignment using machine-learning-filtered splice junctions increases the accuracy of intron detection in long-read RNA sequencing.

Journal: Genome biology
PMID:

Abstract

Transcription of eukaryotic genomes involves complex alternative processing of RNAs. Sequencing of full-length RNAs using long reads reveals the true complexity of processing. However, the relatively high error rates of long-read sequencing technologies can reduce the accuracy of intron identification. Here we apply alignment metrics and machine-learning-derived sequence information to filter spurious splice junctions from long-read alignments and use the remaining junctions to guide realignment in a two-pass approach. This method, available in the software package 2passtools ( https://github.com/bartongroup/2passtools ), improves the accuracy of spliced alignment and transcriptome assembly for species both with and without existing high-quality annotations.

Authors

  • Matthew T Parker
    School of Life Sciences, University of Dundee, Dow Street, Dundee, DD1 5EH, UK. m.t.parker@dundee.ac.uk.
  • Katarzyna Knop
    School of Life Sciences, University of Dundee, Dow Street, Dundee, DD1 5EH, UK.
  • Geoffrey J Barton
    School of Life Sciences, University of Dundee, Dow Street, Dundee, DD1 5EH, UK.
  • Gordon G Simpson
    School of Life Sciences, University of Dundee, Dow Street, Dundee, DD1 5EH, UK. g.g.simpson@dundee.ac.uk.