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Detecting m6A at single-molecular resolution via direct RNA sequencing and realistic training data

Adrian Chan, Isabel S. Naarmann‐de Vries, Carolin P. M. Scheitl, Claudia Höbartner, Christoph Dieterich

2024Nature Communications44 citationsDOIOpen Access PDF

Abstract

Abstract Direct RNA sequencing offers the possibility to simultaneously identify canonical bases and epi-transcriptomic modifications in each single RNA molecule. Thus far, the development of computational methods has been hampered by the lack of biologically realistic training data that carries modification labels at molecular resolution. Here, we report on the synthesis of such samples and the development of a bespoke algorithm, mAFiA (m 6 A Finding Algorithm), that accurately detects single m 6 A nucleotides in both synthetic RNAs and natural mRNA on single read level. Our approach uncovers distinct modification patterns in single molecules that would appear identical at the ensemble level. Compared to existing methods, mAFiA also demonstrates improved accuracy in measuring site-level m 6 A stoichiometry in biological samples.

Topics & Concepts

BespokeRNAComputational biologyComputer scienceResolution (logic)BiologyGeneGeneticsArtificial intelligenceLawPolitical scienceRNA modifications and cancerRNA and protein synthesis mechanismsCancer-related molecular mechanisms research
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