In Situ Detection of Neurotransmitters from Stem Cell-Derived Neural Interface at the Single-Cell Level via Graphene-Hybrid SERS Nanobiosensing

  • Jin Ha Choi
  • , Tae Hyung Kim
  • , Waleed Ahmed El-Said
  • , Jin Ho Lee
  • , Letao Yang
  • , Brian Conley
  • , Jeong Woo Choi
  • , Ki Bum Lee

Research output: Contribution to journalArticlepeer-review

66 Scopus citations

Abstract

In situ quantitative measurements of neurotransmitter activities can provide useful insights into the underlying mechanisms of stem cell differentiation, the formation of neuronal networks, and neurodegenerative diseases. Currently, neurotransmitter detection methods suffer from poor spatial resolution, nonspecific detection, and a lack of in situ analysis. To address this challenge, herein, we first developed a graphene oxide (GO)-hybrid nanosurface-enhanced Raman scattering (SERS) array to detect dopamine (DA) in a selective and sensitive manner. Using the GO-hybrid nano-SERS array, we successfully measured a wide range of DA concentrations (10-4 to 10-9 M) rapidly and reliably. Moreover, the measurement of DA from differentiating neural stem cells applies to the characterization of neuronal differentiation. Given the challenges of in situ detection of neurotransmitters at the single-cell level, our developed SERS-based detection method can represent a unique tool for investigating single-cell signaling pathways associated with DA, or other neurotransmitters, and their roles in neurological processes.

Original languageEnglish
Pages (from-to)7670-7679
Number of pages10
JournalNano Letters
Volume20
Issue number10
DOIs
StatePublished - 14 Oct 2020
Externally publishedYes

Keywords

  • Detections of Neurotransmitters
  • Graphene-hybrid SERS nanobiosensing
  • Single-cell analysis
  • Surface-enhanced Raman scattering

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