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Detection of hydrogen peroxide and glucose with a novel fluorescent probe by the enzymatic reaction of amino functionalized MOF nanosheets. | LitMetric

Detection of hydrogen peroxide and glucose with a novel fluorescent probe by the enzymatic reaction of amino functionalized MOF nanosheets.

Anal Methods

Key Lab of Bioelectrochemistry & Environmental Analysis of Gansu, College of Chemistry and Chemical Engineering, Northwest Normal University, Lanzhou 730070, China.

Published: September 2021

AI Article Synopsis

  • Amino-functionalized two-dimensional MOFs are promising for biosensing due to their water solubility, high fluorescence, and ability to detect target substances like hydrogen peroxide and glucose effectively.
  • A new ratiometric fluorescence sensor using NH-MIL-53(Al) nanosheets was developed to detect hydrogen peroxide and glucose through enzymatic reactions and fluorescence changes, achieving detection limits of 26.9 nM for hydrogen peroxide and 0.041 μM for glucose.
  • The sensor demonstrated effective performance in real sample analysis, with a recovery rate of 97.4-102.8% for glucose detection in human serum, indicating its potential for practical applications.

Article Abstract

Amino-functionalized two-dimensional (2D) MOFs have great potential in biosensors due to their excellent water solubility, high fluorescence, large specific surface area, good adsorption properties and good ability to enrich the target analytes. Fluorescence detection of hydrogen peroxide and glucose mostly relies on monitoring the single fluorescence intensity changes in a single excitation wavelength. Here, a ratiometric fluorescence sensor based on NH-MIL-53(Al) nanosheets to sensitively detect HO and glucose through enzymatic reactions was developed. -Phenylenediamine (OPD) was oxidized by HO in the presence of horseradish peroxidase (HRP). Then, the oxidation product could be self-assembled on NH-MIL-53(Al) nanosheets by hydrogen bonding and π-π stacking. The orbital interaction or the fluorescence resonance energy transfer (FRET) between the nanosheets and the oxidation product could effectively quench the fluorescence of the nanosheets at 433 nm. At the same time, the oxidation product provided a new emission peak at 564 nm. The fluorescence ratio signal changes generated by this oxidation process were used to stably and sensitively detect HO and glucose. Structural and mechanistic analysis was carried out by calculation methods such as AICD and ORCA to explore the π electron structure characteristics, the hole/electron orbitals and the quenching phenomenon. The detection limit was 26.9 nM for HO and 0.041 μM for glucose. The detection of glucose in human serum has a satisfactory recovery of 97.4-102.8%. It is clear that the sensor has a good application prospect in real sample analysis.

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Source
http://dx.doi.org/10.1039/d1ay00190fDOI Listing

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