Genome Biology (Oct 2024)

DEMINING: A deep learning model embedded framework to distinguish RNA editing from DNA mutations in RNA sequencing data

  • Zhi-Can Fu,
  • Bao-Qing Gao,
  • Fang Nan,
  • Xu-Kai Ma,
  • Li Yang

DOI
https://doi.org/10.1186/s13059-024-03397-2
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 25

Abstract

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Abstract Precise calling of promiscuous adenosine-to-inosine RNA editing sites from transcriptomic datasets is hindered by DNA mutations and sequencing/mapping errors. Here, we present a stepwise computational framework, called DEMINING, to distinguish RNA editing and DNA mutations directly from RNA sequencing datasets, with an embedded deep learning model named DeepDDR. After transfer learning, DEMINING can also classify RNA editing sites and DNA mutations from non-primate sequencing samples. When applied in samples from acute myeloid leukemia patients, DEMINING uncovers previously underappreciated DNA mutation and RNA editing sites; some associated with the upregulated expression of host genes or the production of neoantigens.

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