End Sequence Analysis Toolkit (ESAT) expands the extractable information from single-cell RNA-seq data

  • Alan Derr
  • , Chaoxing Yang
  • , Rapolas Zilionis
  • , Alexey Sergushichev
  • , David M. Blodgett
  • , Sambra Redick
  • , Rita Bortell
  • , Jeremy Luban
  • , David M. Harlan
  • , Sebastian Kadener
  • , Dale L. Greiner
  • , Allon Klein
  • , Maxim N. Artyomov
  • , Manuel Garber

Research output: Contribution to journalArticlepeer-review

46 Scopus citations

Abstract

RNA-seq protocols that focus on transcript termini are well suited for applications in which template quantity is limiting. Here we show that, when applied to end-sequencing data, analytical methods designed for global RNA-seq produce computational artifacts. To remedy this, we created the End Sequence Analysis Toolkit (ESAT). As a test, we first compared endsequencing and bulk RNA-seq using RNA from dendritic cells stimulated with lipopolysaccharide (LPS). As predicted by the telescripting model for transcriptional bursts, ESAT detected an LPS-stimulated shift to shorter 3′-isoforms that was not evident by conventional computational methods. Then, droplet-based microfluidics was used to generate 1000 cDNA libraries, each from an individual pancreatic islet cell. ESAT identified nine distinct cell types, three distinct β-cell types, and a complex interplay between hormone secretion and vascularization. ESAT, then, offers a much-needed and generally applicable computational pipeline for either bulk or single-cell RNA end-sequencing.

Original languageEnglish
Pages (from-to)1397-1410
Number of pages14
JournalGenome research
Volume26
Issue number10
DOIs
StatePublished - Oct 2016

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