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Investigation of MALDI-TOF mass spectrometry for assessing the molecular diversity of Campylobacter jejuni and comparison with MLST and cgMLST: a Luxembourg One-Health study

Feucherolles, M. and Nennig, M. and Becker, S. L. and Martiny, D. and Losch, S. and Penny, C. and Cauchie, H. M. and Ragimbeau, C.. (2021) Investigation of MALDI-TOF mass spectrometry for assessing the molecular diversity of Campylobacter jejuni and comparison with MLST and cgMLST: a Luxembourg One-Health study. Diagnostics, 11 (11). p. 1949.

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Abstract

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.
Faculties and Departments:09 Associated Institutions > Swiss Tropical and Public Health Institute (Swiss TPH)
UniBasel Contributors:Becker, Sören Leif
Item Type:Article, refereed
Article Subtype:Research Article
ISSN:0336-3449
Note:Publication type according to Uni Basel Research Database: Journal article
Language:English
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Last Modified:19 Dec 2022 15:05
Deposited On:19 Dec 2022 15:05

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