Decoding the epitranscriptional landscape from native RNA sequences

Piroon Jenjaroenpun(University of Arkansas for Medical Sciences), Thidathip Wongsurawat(University of Arkansas for Medical Sciences), Taylor D. Wadley(University of Arkansas for Medical Sciences), Trudy M. Wassenaar(Molecular Microbiology and Genomics Consultants (Germany)), Jun Liu(Howard Hughes Medical Institute), Qing Dai(Howard Hughes Medical Institute), Visanu Wanchai(University of Arkansas for Medical Sciences), Nisreen Akel(University of Arkansas for Medical Sciences), Azemat Jamshidi‐Parsian(University of Arkansas for Medical Sciences), Aime T. Franco(University of Arkansas for Medical Sciences), Gunnar Boysen(University of Arkansas for Medical Sciences), Michael L. Jennings(University of Arkansas for Medical Sciences), David W. Ussery(University of Arkansas for Medical Sciences), Chuan He(Howard Hughes Medical Institute), Intawat Nookaew(University of Arkansas for Medical Sciences)
Nucleic Acids Research
July 13, 2020
Cited by 312Open Access
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Abstract

Traditional epitranscriptomics relies on capturing a single RNA modification by antibody or chemical treatment, combined with short-read sequencing to identify its transcriptomic location. This approach is labor-intensive and may introduce experimental artifacts. Direct sequencing of native RNA using Oxford Nanopore Technologies (ONT) can allow for directly detecting the RNA base modifications, although these modifications might appear as sequencing errors. The percent Error of Specific Bases (%ESB) was higher for native RNA than unmodified RNA, which enabled the detection of ribonucleotide modification sites. Based on the %ESB differences, we developed a bioinformatic tool, epitranscriptional landscape inferring from glitches of ONT signals (ELIGOS), that is based on various types of synthetic modified RNA and applied to rRNA and mRNA. ELIGOS is able to accurately predict known classes of RNA methylation sites (AUC > 0.93) in rRNAs from Escherichiacoli, yeast, and human cells, using either unmodified in vitro transcription RNA or a background error model, which mimics the systematic error of direct RNA sequencing as the reference. The well-known DRACH/RRACH motif was localized and identified, consistent with previous studies, using differential analysis of ELIGOS to study the impact of RNA m6A methyltransferase by comparing wild type and knockouts in yeast and mouse cells. Lastly, the DRACH motif could also be identified in the mRNA of three human cell lines. The mRNA modification identified by ELIGOS is at the level of individual base resolution. In summary, we have developed a bioinformatic software package to uncover native RNA modifications.


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