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Protein Spherical Nucleic Acids for Live-Cell Chemical Analysis.


ABSTRACT: We report the development of a new strategy for the chemical analysis of live cells based on protein spherical nucleic acids (ProSNAs). The ProSNA architecture enables analyte detection via the highly programmable nucleic acid shell or a functional protein core. As a proof-of-concept, we use an i-motif as the nucleic acid recognition element to probe pH in living cells. By interfacing the i-motif with a forced-intercalation readout, we introduce a quencher-free approach that is resistant to false-positive signals, overcoming limitations associated with conventional fluorophore/quencher-based gold NanoFlares. Using glucose oxidase as a functional protein core, we show activity-based, amplified sensing of glucose. This enzymatic system affords greater than 100-fold fluorescence turn on in buffer, is selective for glucose in the presence of close analogs (i.e., glucose-6-phosphate), and can detect glucose above a threshold concentration of ?5 ?M, which enables the study of relative changes in intracellular glucose concentrations.

SUBMITTER: Samanta D 

PROVIDER: S-EPMC7473486 | biostudies-literature | 2020 Aug

REPOSITORIES: biostudies-literature

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Protein Spherical Nucleic Acids for Live-Cell Chemical Analysis.

Samanta Devleena D   Ebrahimi Sasha B SB   Kusmierz Caroline D CD   Cheng Ho Fung HF   Mirkin Chad A CA  

Journal of the American Chemical Society 20200724 31


We report the development of a new strategy for the chemical analysis of live cells based on protein spherical nucleic acids (ProSNAs). The ProSNA architecture enables analyte detection via the highly programmable nucleic acid shell or a functional protein core. As a proof-of-concept, we use an i-motif as the nucleic acid recognition element to probe pH in living cells. By interfacing the i-motif with a forced-intercalation readout, we introduce a quencher-free approach that is resistant to fals  ...[more]

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