SERS and advanced chemometrics - Utilization of Siamese neural network for picomolar identification of beta-lactam antibiotics resistance gene fragment.

Journal: Analytica chimica acta
PMID:

Abstract

The enormous development and expansion of antibiotic-resistant bacterial strains impel the intensive search for new methods for fast and reliable detection of antibiotic susceptibility markers. Here, we combined DNA-targeted surface functionalization, surface-enhanced Raman spectroscopy (SERS) measurements, and subsequent spectra processing by decision system (DS) for detection of a specific oligonucleotide (ODN) sequence identical to a fragment of blaNDM-1 gene, responsible for β-lactam antibiotic resistance. The SERS signal was measured on plasmonic gold grating, functionalized with capture ODN, ensuring the binding of corresponded ODNs. Designed DS consists of a Siamese neural network (SNN) coupled with robust statistics and Bayes decision theory. The proposed approach allows manipulation with complex multicomponent samples and predefine the desired detection level of confidence and errors, automatically determining the number of required spectra and samples. In constant to commonly used classification-type SNN, our method was applied to analyze samples with compositions previously "unknown" to DS. The detection of targeted ODN was performed with ≥99% level of confidence up to 3 × 10 M limit on the background of 10 M concentration of similar but not targeted ODNs.

Authors

  • Anastasia Skvortsova
    Department of Solid State Engineering, University of Chemistry and Technology Prague, Technická 5, 166 28, Prague 6, Czech Republic.
  • Andrii Trelin
    Department of Solid State Engineering, University of Chemistry and Technology Prague, Technická 5, 166 28, Prague 6, Czech Republic.
  • Pavel Kriz
    Department of Mathematics, University of Chemistry and Technology Prague, Technická 5, 166 28, Prague 6, Czech Republic; Faculty of Mathematics and Physics, Charles University, Sokolovská 83, Praha 8, 186 75, Czech Republic.
  • Roman Elashnikov
    Department of Solid State Engineering, University of Chemistry and Technology, 16628 Prague, Czech Republic.
  • Barbora Vokata
    Department of Biochemistry and Microbiology, University of Chemistry and Technology Prague, Technická 5, 166 28, Prague 6, Czech Republic.
  • Pavel Ulbrich
    Department of Biochemistry and Microbiology, University of Chemistry and Technology, 16628 Prague, Czech Republic.
  • Alexandra Pershina
    Siberian State Medical University, 2, Moskovsky Trakt, 634050, Tomsk, Russia; Research School of Chemistry and Applied Biomedical Sciences, Tomsk Polytechnic University, Russian Federation.
  • Vaclav Svorcik
    Department of Solid State Engineering, University of Chemistry and Technology, 16628 Prague, Czech Republic.
  • Olga Guselnikova
    Department of Solid State Engineering, University of Chemistry and Technology Prague, Technická 5, 166 28, Prague 6, Czech Republic; Research School of Chemistry and Applied Biomedical Sciences, Tomsk Polytechnic University, Russian Federation. Electronic address: guselnio@vscht.cz.
  • Oleksiy Lyutakov
    Department of Solid State Engineering, University of Chemistry and Technology, 16628 Prague, Czech Republic.