A CRISPR-Cas9-based reporter system for single-cell detection of extracellular vesicle-mediated functional transfer of RNA

Olivier G. de Jong(University Medical Center Utrecht), Daniel E. Murphy(University Medical Center Utrecht), Imre Mäger(University of Oxford), Eduard Willms(University of Oxford), Antonio Garcia-Guerra(University of Oxford), Jerney J. Gitz-Francois(University Medical Center Utrecht), Juliet Lefferts(University Medical Center Utrecht), Dhanu Gupta(Karolinska Institutet), Sander Christiaan Steenbeek(The Netherlands Cancer Institute), Jacco van Rheenen(The Netherlands Cancer Institute), Samir EL Andaloussi(Karolinska Institutet), Raymond M. Schiffelers(University Medical Center Utrecht), Matthew J. A. Wood(University of Oxford), Pieter Vader(Utrecht University)
Nature Communications
February 28, 2020
Cited by 191Open Access
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Abstract

Extracellular vesicles (EVs) form an endogenous transport system for intercellular transfer of biological cargo, including RNA, that plays a pivotal role in physiological and pathological processes. Unfortunately, whereas biological effects of EV-mediated RNA transfer are abundantly studied, regulatory pathways and mechanisms remain poorly defined due to a lack of suitable readout systems. Here, we describe a highly-sensitive CRISPR-Cas9-based reporter system that allows direct functional study of EV-mediated transfer of small non-coding RNA molecules at single-cell resolution. Using this CRISPR operated stoplight system for functional intercellular RNA exchange (CROSS-FIRE) we uncover various genes involved in EV subtype biogenesis that play a regulatory role in RNA transfer. Moreover we identify multiple genes involved in endocytosis and intracellular membrane trafficking that strongly regulate EV-mediated functional RNA delivery. Altogether, this approach allows the elucidation of regulatory mechanisms in EV-mediated RNA transfer at the level of EV biogenesis, endocytosis, intracellular trafficking, and RNA delivery.


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