Single Cell Real-Time miRNAs Sensing Based on Nanomotors

Berta Esteban‐Fernández de Ávila(University of California, San Diego), Aida Martín(Universidad de Alcalá), Fernando Soto(University of California, San Diego), Miguel Angel Lopez‐Ramirez(University of California, San Diego), Susana Campuzano(Universidad Complutense de Madrid), Gersson Manuel Vásquez-Machado, Weiwei Gao(University of California, San Diego), Liangfang Zhang(University of California, San Diego), Joseph Wang(University of California, San Diego)
ACS Nano
June 2, 2015
Cited by 329

Abstract

A nanomotor-based strategy for rapid single-step intracellular biosensing of a target miRNA, expressed in intact cancer cells, at the single cell level is described. The new concept relies on the use of ultrasound (US) propelled dye-labeled single-stranded DNA (ssDNA)/graphene-oxide (GO) coated gold nanowires (AuNWs) capable of penetrating intact cancer cells. Once the nanomotor is internalized into the cell, the quenched fluorescence signal (produced by the π-π interaction between GO and a dye-labeled ssDNA) is recovered due to the displacement of the dye-ssDNA probe from the motor GO-quenching surface upon binding with the target miRNA-21, leading to an attractive intracellular "OFF-ON" fluorescence switching. The faster internalization process of the US-powered nanomotors and their rapid movement into the cells increase the likelihood of probe-target contacts, leading to a highly efficient and rapid hybridization. The ability of the nanomotor-based method to screen cancer cells based on the endogenous content of the target miRNA has been demonstrated by measuring the fluorescence signal in two types of cancer cells (MCF-7 and HeLa) with significantly different miRNA-21 expression levels. This single-step, motor-based miRNAs sensing approach enables rapid "on the move" specific detection of the target miRNA-21, even in single cells with an extremely low endogenous miRNA-21 content, allowing precise and real-time monitoring of intracellular miRNA expression.


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