Nature Communications (Nov 2024)

Deep learning-assisted single-atom detection of copper ions by combining click chemistry and fast scan voltammetry

  • Tingting Hao,
  • Huiqian Zhou,
  • Panpan Gai,
  • Zhaoliang Wang,
  • Yuxin Guo,
  • Han Lin,
  • Wenting Wei,
  • Zhiyong Guo

DOI
https://doi.org/10.1038/s41467-024-54743-8
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 11

Abstract

Read online

Abstract Cell ion channels, cell proliferation and metastasis, and many other life activities are inseparable from the regulation of trace or even single copper ion (Cu+ and/or Cu2+). In this work, an electrochemical sensor for sensitive quantitative detection of 0.4−4 amol L−1 copper ions is developed by adopting: (1) copper ions catalyzing the click-chemistry reaction to capture numerous signal units; (2) special adsorption assembly method of signal units to ensure signal generation efficiency; and (3) fast scan voltammetry at 400 V s−1 to enhance signal intensity. And then, the single-atom detection of copper ions is realized by constructing a multi-layer deep convolutional neural network model FSVNet to extract hidden features and signal information of fast scan voltammograms for 0.2 amol L−1 of copper ions. Here, we show a multiple signal amplification strategy based on functionalized nanomaterials and fast scan voltammetry, together with a deep learning method, which realizes the sensitive detection and even single-atom detection of copper ions.