Colistin resistance is one of the major threats for global public health, requiring reliable and rapid susceptibility testing methods. The aim of this study was the evaluation of a MALDI-TOF mass spectrometry (MS) peak-based assay to distinguish colistin resistant (colR) from susceptible (colS) Escherichia coli strains. To this end, a classifying algorithm model (CAM) was developed, testing three different algorithms: Genetic Algorithm (GA), Supervised Neural Network (SNN) and Quick Classifier (QC). Among them, the SNN-and GA-based CAMs showed the best performances: recognition capability (RC) of 100% each one, and cross validation (CV) of 97.62% and 100%, respec-tively. Even if both algorithms shared similar RC and CV values, the SNN-based CAM was the best performing one, correctly identifying 67/71 (94.4%) of the E. coli strains collected: in point of fact, it correctly identified the greatest number of colS strains (42/43; 97.7%), despite its lower ability in identifying the colR strains (15/18; 83.3%). In conclusion, although broth microdilution remains the gold standard method for testing colistin susceptibility, the CAM represents a useful tool to rapidly screen colR and colS strains in clinical practice.

Rapid identification of escherichia coli colistin-resistant strains by maldi-tof mass spectrometry / Calderaro, A.; Buttrini, M.; Farina, B.; Montecchini, S.; Martinelli, M.; Crocamo, F.; Arcangeletti, M. C.; Chezzi, C.; De Conto, F.. - In: MICROORGANISMS. - ISSN 2076-2607. - 9:11(2021), p. 2210.2210. [10.3390/microorganisms9112210]

Rapid identification of escherichia coli colistin-resistant strains by maldi-tof mass spectrometry

Calderaro A.
;
Buttrini M.;Montecchini S.;Martinelli M.;Arcangeletti M. C.;Chezzi C.;De Conto F.
2021-01-01

Abstract

Colistin resistance is one of the major threats for global public health, requiring reliable and rapid susceptibility testing methods. The aim of this study was the evaluation of a MALDI-TOF mass spectrometry (MS) peak-based assay to distinguish colistin resistant (colR) from susceptible (colS) Escherichia coli strains. To this end, a classifying algorithm model (CAM) was developed, testing three different algorithms: Genetic Algorithm (GA), Supervised Neural Network (SNN) and Quick Classifier (QC). Among them, the SNN-and GA-based CAMs showed the best performances: recognition capability (RC) of 100% each one, and cross validation (CV) of 97.62% and 100%, respec-tively. Even if both algorithms shared similar RC and CV values, the SNN-based CAM was the best performing one, correctly identifying 67/71 (94.4%) of the E. coli strains collected: in point of fact, it correctly identified the greatest number of colS strains (42/43; 97.7%), despite its lower ability in identifying the colR strains (15/18; 83.3%). In conclusion, although broth microdilution remains the gold standard method for testing colistin susceptibility, the CAM represents a useful tool to rapidly screen colR and colS strains in clinical practice.
2021
Rapid identification of escherichia coli colistin-resistant strains by maldi-tof mass spectrometry / Calderaro, A.; Buttrini, M.; Farina, B.; Montecchini, S.; Martinelli, M.; Crocamo, F.; Arcangeletti, M. C.; Chezzi, C.; De Conto, F.. - In: MICROORGANISMS. - ISSN 2076-2607. - 9:11(2021), p. 2210.2210. [10.3390/microorganisms9112210]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11381/2919533
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