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

44 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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