recent advances on multi-parameter flow cytometry to characterize antimicrobial treatments

recent advances on multi-parameter flow cytometry to characterize antimicrobial treatments

;Lucie LEONARD;Lynda BOUARAB CHIBANE;Balkis OULED BOUHEDDA;Pascal DEGRAEVE;Nadia OULAHAL
journal of magnetic resonance (san diego, calif : 1997) 2016 Vol. 7 pp. -
230
leonard2016frontiersrecent

Abstract

The investigation on antimicrobial mechanisms is a challenging and crucial issue in the fields of food or clinical microbiology, as it constitutes a prerequisite to the development of new antimicrobial processes or compounds, as well as to anticipate phenomenon of microbial resistance. Nowadays it is accepted that a cells population exposed to a stress can cause the appearance of different cell populations and in particular sub-lethally compromised cells which could be defined as viable but non culturable (VBNC). Recent advances on flow cytometry (FCM) and especially on multi-parameter flow cytometry (MP-FCM) provide the opportunity to obtain high-speed information at real time on damage at single-cell level. This review gathers MP-FCM methodologies based on individual and simultaneous staining of microbial cells employed to investigate their physiological state following different physical and chemical antimicrobial treatments. Special attention will be paid to recent studies exploiting the possibility to corroborate MP-FCM results with additional techniques (plate counting, microscopy, spectroscopy, molecular biology techniques, membrane modeling) in order to elucidate the antimicrobial mechanism of action of a given antimicrobial treatment or compound. The combination of MP-FCM methodologies with these additional methods is namely a promising and increasingly used approach to give further insight in differences in microbial sub-population evolutions in response to antimicrobial treatments.

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155705
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10.3389/fmicb.2016.01225
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