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Accurate detection of m6A RNA modifications in native RNA sequences.

Huanle LiuOguzhan BegikMorghan C LucasJose Miguel RamirezChristopher E MasonDavid WienerSchraga SchwartzJohn S MattickMartin A SmithEva Maria Novoa
Published in: Nature communications (2019)
The epitranscriptomics field has undergone an enormous expansion in the last few years; however, a major limitation is the lack of generic methods to map RNA modifications transcriptome-wide. Here, we show that using direct RNA sequencing, N6-methyladenosine (m6A) RNA modifications can be detected with high accuracy, in the form of systematic errors and decreased base-calling qualities. Specifically, we find that our algorithm, trained with m6A-modified and unmodified synthetic sequences, can predict m6A RNA modifications with ~90% accuracy. We then extend our findings to yeast data sets, finding that our method can identify m6A RNA modifications in vivo with an accuracy of 87%. Moreover, we further validate our method by showing that these 'errors' are typically not observed in yeast ime4-knockout strains, which lack m6A modifications. Our results open avenues to investigate the biological roles of RNA modifications in their native RNA context.
Keyphrases
  • nucleic acid
  • escherichia coli
  • deep learning
  • emergency department
  • rna seq
  • big data
  • label free
  • data analysis
  • sensitive detection