Article (Scientific journals)
Raman Spectroscopy-Based Measurements of Single-Cell Phenotypic Diversity in Microbial Populations.
García-Timermans, Cristina; Props, Ruben; Zacchetti, Boris et al.
2020In mSphere, 5 (5)
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Keywords :
Escherichia coli; Hill numbers; Raman spectroscopy; Saccharomyces cerevisiae; microbial population; phenotypic diversity; single-cell analysis; stress
Abstract :
[en] Microbial cells experience physiological changes due to environmental change, such as pH and temperature, the release of bactericidal agents, or nutrient limitation. This has been shown to affect community assembly and physiological processes (e.g., stress tolerance, virulence, or cellular metabolic activity). Metabolic stress is typically quantified by measuring community phenotypic properties such as biomass growth, reactive oxygen species, or cell permeability. However, bulk community measurements do not take into account single-cell phenotypic diversity, which is important for a better understanding and the subsequent management of microbial populations. Raman spectroscopy is a nondestructive alternative that provides detailed information on the biochemical makeup of each individual cell. Here, we introduce a method for describing single-cell phenotypic diversity using the Hill diversity framework of Raman spectra. Using the biomolecular profile of individual cells, we obtained a metric to compare cellular states and used it to study stress-induced changes. First, in two Escherichia coli populations either treated with ethanol or nontreated and then in two Saccharomyces cerevisiae subpopulations with either high or low expression of a stress reporter. In both cases, we were able to quantify single-cell phenotypic diversity and to discriminate metabolically stressed cells using a clustering algorithm. We also described how the lipid, protein, and nucleic acid compositions changed after the exposure to the stressor using information from the Raman spectra. Our results show that Raman spectroscopy delivers the necessary resolution to quantify phenotypic diversity within individual cells and that this information can be used to study stress-driven metabolic diversity in microbial populations.IMPORTANCE Microbial cells that live in the same community can exist in different physiological and morphological states that change as a function of spatiotemporal variations in environmental conditions. This phenomenon is commonly known as phenotypic heterogeneity and/or diversity. Measuring this plethora of cellular expressions is needed to better understand and manage microbial processes. However, most tools to study phenotypic diversity only average the behavior of the sampled community. In this work, we present a way to quantify the phenotypic diversity of microbial samples by inferring the (bio)molecular profile of its constituent cells using Raman spectroscopy. We demonstrate how this tool can be used to quantify the phenotypic diversity that arises after the exposure of microbes to stress. Raman spectroscopy holds potential for the detection of stressed cells in bioproduction.
Disciplines :
Microbiology
Author, co-author :
García-Timermans, Cristina
Props, Ruben
Zacchetti, Boris ;  Université de Liège - ULiège > Département GxABT > Microbial, food and biobased technologies
Sakarika, Myrsini
Delvigne, Frank  ;  Université de Liège - ULiège > Département GxABT > Microbial, food and biobased technologies
Boon, Nico
Language :
English
Title :
Raman Spectroscopy-Based Measurements of Single-Cell Phenotypic Diversity in Microbial Populations.
Publication date :
2020
Journal title :
mSphere
eISSN :
2379-5042
Publisher :
American Society for Microbiology, Washington, United States - Washington
Volume :
5
Issue :
5
Peer reviewed :
Peer Reviewed verified by ORBi
Commentary :
Copyright © 2020 García-Timermans et al.
Available on ORBi :
since 31 December 2020

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