Functional single-cell analyses: flow cytometry and cell sorting of microbial populations and communities.
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The active human gut microbiota differs from the total microbiotaStress Physiology of Lactic Acid BacteriaInsights into novel antimicrobial compounds and antibiotic resistance genes from soil metagenomesApplication of a genetically encoded biosensor for live cell imaging of L-valine production in pyruvate dehydrogenase complex-deficient Corynebacterium glutamicum strainsA Dormant Microbial Component in the Development of PreeclampsiaCell wall trapping of autocrine peptides for human G-protein-coupled receptors on the yeast cell surfaceSingle bacteria movement tracking by online microscopy--a proof of concept studyDevelopment of a flow-fluorescence in situ hybridization protocol for the analysis of microbial communities in anaerobic fermentation liquorActive and Secretory IgA-Coated Bacterial Fractions Elucidate Dysbiosis in Clostridium difficile InfectionHeterogenic response of prokaryotes toward silver nanoparticles and ions is facilitated by phenotypes and attachment of silver aggregates to cell surfaces.BEMOVI, software for extracting behavior and morphology from videos, illustrated with analyses of microbesAntifouling coatings influence both abundance and community structure of colonizing biofilms: a case study in the Northwestern Mediterranean SeaAn alternative physiological role for the EmhABC efflux pump in Pseudomonas fluorescens cLP6a.Key players and team play: anaerobic microbial communities in hydrocarbon-contaminated aquifers.Applications of flow cytometry to characterize bacterial physiological responsesLight-responsive control of bacterial gene expression: precise triggering of the lac promoter activity using photocaged IPTG.A comparison of conventional methods for the quantification of bacterial cells after exposure to metal oxide nanoparticles.A novel staining protocol for multiparameter assessment of cell heterogeneity in Phormidium populations (cyanobacteria) employing fluorescent dyesSpecies-specific viability analysis of Pseudomonas aeruginosa, Burkholderia cepacia and Staphylococcus aureus in mixed culture by flow cytometry.Phenotypic heterogeneity in metabolic traits among single cells of a rare bacterial species in its natural environment quantified with a combination of flow cell sorting and NanoSIMS.RiboFR-Seq: a novel approach to linking 16S rRNA amplicon profiles to metagenomes.Phytoremediation: State-of-the-art and a key role for the plant microbiome in future trends and research prospects.Flow Cytometric Single-Cell Identification of Populations in Synthetic Bacterial Communities.Experimental Warming Decreases the Average Size and Nucleic Acid Content of Marine Bacterial Communities.Isolation of optically targeted single bacteria by application of fluidic force microscopy to aerobic anoxygenic phototrophs from the phyllosphere.Single-cell genomics: unravelling the genomes of unculturable microorganismsMicrobial characterization of probiotics--advisory report of the Working Group "8651 Probiotics" of the Belgian Superior Health Council (SHC).Production of Superoxide in Bacteria Is Stress- and Cell State-Dependent: A Gating-Optimized Flow Cytometry Method that Minimizes ROS Measurement Artifacts with Fluorescent Dyes.Life, death, and in-between: meanings and methods in microbiology.Protein-based stable isotope probing (protein-SIP) in functional metaproteomics.Microbial heterogeneity affects bioprocess robustness: dynamic single-cell analysis contributes to understanding of microbial populations.Synthetic biology for the directed evolution of protein biocatalysts: navigating sequence space intelligently.The Impact of Space Flight on Survival and Interaction of Cupriavidus metallidurans CH34 with Basalt, a Volcanic Moon Analog Rock.Flow cytometry as an auxiliary tool for the selection of probiotic bacteria.Towards high-throughput microfluidic Raman-activated cell sorting.Toward quantitative understanding on microbial community structure and functioning: a modeling-centered approach using degradation of marine oil spills as example.Profiling and quantifying endogenous molecules in single cells using nano-DESI MS.Culture-independent method for identification of microbial enzyme-encoding genes by activity-based single-cell sequencing using a water-in-oil microdroplet platform.Gene expression variability in clonal populations: Causes and consequences.Reevaluating multicolor flow cytometry to assess microbial viability.
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Functional single-cell analyses: flow cytometry and cell sorting of microbial populations and communities.
description
article científic
@ca
article scientifique
@fr
articolo scientifico
@it
artigo científico
@pt
bilimsel makale
@tr
scientific article published on 06 February 2010
@en
vedecký článok
@sk
vetenskaplig artikel
@sv
videnskabelig artikel
@da
vědecký článek
@cs
name
Functional single-cell analyse ...... l populations and communities.
@en
Functional single-cell analyse ...... l populations and communities.
@nl
type
label
Functional single-cell analyse ...... l populations and communities.
@en
Functional single-cell analyse ...... l populations and communities.
@nl
prefLabel
Functional single-cell analyse ...... l populations and communities.
@en
Functional single-cell analyse ...... l populations and communities.
@nl
P2860
P1476
Functional single-cell analyse ...... l populations and communities.
@en
P2093
Gerhard Nebe-von-Caron
Susann Müller
P2860
P304
P356
10.1111/J.1574-6976.2010.00214.X
P577
2010-02-06T00:00:00Z