Diagnostics (Oct 2021)

Investigation of MALDI-TOF Mass Spectrometry for Assessing the Molecular Diversity of <i>Campylobacter jejuni</i> and Comparison with MLST and cgMLST: A Luxembourg One-Health Study

  • Maureen Feucherolles,
  • Morgane Nennig,
  • Sören L. Becker,
  • Delphine Martiny,
  • Serge Losch,
  • Christian Penny,
  • Henry-Michel Cauchie,
  • Catherine Ragimbeau

DOI
https://doi.org/10.3390/diagnostics11111949
Journal volume & issue
Vol. 11, no. 11
p. 1949

Abstract

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There is a need for active molecular surveillance of human and veterinary Campylobacter infections. However, sequencing of all isolates is associated with high costs and a considerable workload. Thus, there is a need for a straightforward complementary tool to prioritize isolates to sequence. In this study, we proposed to investigate the ability of MALDI-TOF MS to pre-screen C. jejuni genetic diversity in comparison to MLST and cgMLST. A panel of 126 isolates, with 10 clonal complexes (CC), 21 sequence types (ST) and 42 different complex types (CT) determined by the SeqSphere+ cgMLST, were analysed by a MALDI Biotyper, resulting into one average spectra per isolate. Concordance and discriminating ability were evaluated based on protein profiles and different cut-offs. A random forest algorithm was trained to predict STs. With a 94% similarity cut-off, an AWC of 1.000, 0.933 and 0.851 was obtained for MLSTCC, MLSTST and cgMLST profile, respectively. The random forest classifier showed a sensitivity and specificity up to 97.5% to predict four different STs. Protein profiles allowed to predict C. jejuni CCs, STs and CTs at 100%, 93% and 85%, respectively. Machine learning and MALDI-TOF MS could be a fast and inexpensive complementary tool to give an early signal of recurrent C. jejuni on a routine basis.

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