Native molecule sequencing by nano-ID reveals synthesis and stability of RNA isoforms

Genome Res. 2020 Sep;30(9):1332-1344. doi: 10.1101/gr.257857.119. Epub 2020 Sep 4.

Abstract

Eukaryotic genes often generate a variety of RNA isoforms that can lead to functionally distinct protein variants. The synthesis and stability of RNA isoforms is poorly characterized because current methods to quantify RNA metabolism use short-read sequencing and cannot detect RNA isoforms. Here we present nanopore sequencing-based isoform dynamics (nano-ID), a method that detects newly synthesized RNA isoforms and monitors isoform metabolism. Nano-ID combines metabolic RNA labeling, long-read nanopore sequencing of native RNA molecules, and machine learning. Nano-ID derives RNA stability estimates and evaluates stability determining factors such as RNA sequence, poly(A)-tail length, secondary structure, translation efficiency, and RNA-binding proteins. Application of nano-ID to the heat shock response in human cells reveals that many RNA isoforms change their stability. Nano-ID also shows that the metabolism of individual RNA isoforms differs strongly from that estimated for the combined RNA signal at a specific gene locus. Nano-ID enables studies of RNA metabolism at the level of single RNA molecules and isoforms in different cell states and conditions.

MeSH terms

  • Cell Line, Tumor
  • Humans
  • Machine Learning
  • Nanopore Sequencing / methods*
  • Neural Networks, Computer
  • RNA Isoforms / chemical synthesis
  • RNA Isoforms / chemistry*
  • RNA Stability*
  • Uridine / chemistry

Substances

  • RNA Isoforms
  • Uridine