Poster Presentation 43rd Lorne Genome Conference 2022

NanoSplicer: Accurate identification of splice junctions using Oxford Nanopore sequencing (#280)

Yupei You 1 , Michael B. Clark 2 , Heejung Shim 1
  1. School of Mathematics and Statistics / Melbourne Integrative Genomics, The University of Melbourne, Parkville, Victoria, Australia
  2. Centre for Stem Cell Systems, Department of Anatomy and Physiology, The University of Melbourne, Parkville, Victoria, Australia

Motivation: Long read sequencing methods have considerable advantages for characterising RNA isoforms. Oxford nanopore sequencing records changes in electrical current when nucleic acid traverses through a pore. However, basecalling of this raw signal (known as a squiggle) is error prone, making it challenging to accurately identify splice junctions. Existing strategies include utilising matched short-read data and/or annotated splice junctions to correct nanopore reads but add expense or limit junctions to known (incomplete) annotations. Therefore, a method that could accurately identify splice junctions solely from nanopore data would have numerous advantages.

Results: We developed “NanoSplicer” to identify splice junctions using raw nanopore signal (squiggles). For each splice junction the observed squiggle is compared to candidate squiggles representing potential junctions to identify the correct candidate. Measuring squiggle similarity enables us to compute the probability of each candidate junction and find the most likely one. We tested our method using 1. synthetic mRNAs with known splice junctions 2. biological mRNAs from a lung-cancer cell-line. The results from both datasets demonstrate NanoSplicer improves splice junction identification, especially when the basecalling error rate near the splice junction is elevated.