» Articles » PMID: 34006623

High-Content Imaging to Phenotype Antimicrobial Effects on Individual Bacteria at Scale

Overview
Journal mSystems
Specialty Microbiology
Date 2021 May 19
PMID 34006623
Citations 12
Authors
Affiliations
Soon will be listed here.
Abstract

High-content imaging (HCI) is a technique for screening multiple cells in high resolution to detect subtle morphological and phenotypic variation. The method has been commonly deployed on model eukaryotic cellular systems, often for screening new drugs and targets. HCI is not commonly utilized for studying bacterial populations but may be a powerful tool in understanding and combatting antimicrobial resistance. Consequently, we developed a high-throughput method for phenotyping bacteria under antimicrobial exposure at the scale of individual bacterial cells. Imaging conditions were optimized on an Opera Phenix confocal microscope (Perkin Elmer), and novel analysis pipelines were established for both Gram-negative bacilli and Gram-positive cocci. The potential of this approach was illustrated using isolates of , serovar Typhimurium, and HCI enabled the detection and assessment of subtle morphological characteristics, undetectable through conventional phenotypical methods, that could reproducibly distinguish between bacteria exposed to different classes of antimicrobials with distinct modes of action (MOAs). In addition, distinctive responses were observed between susceptible and resistant isolates. By phenotyping single bacterial cells, we observed intrapopulation differences, which may be critical in identifying persistence or emerging resistance during antimicrobial treatment. The work presented here outlines a comprehensive method for investigating morphological changes at scale in bacterial populations under specific perturbation. High-content imaging (HCI) is a microscopy technique that permits the screening of multiple cells simultaneously in high resolution to detect subtle morphological and phenotypic variation. The power of this methodology is that it can generate large data sets comprised of multiple parameters taken from individual cells subjected to a range of different conditions. We aimed to develop novel methods for using HCI to study bacterial cells exposed to a range of different antibiotic classes. Using an Opera Phenix confocal microscope (Perkin Elmer) and novel analysis pipelines, we created a method to study the morphological characteristics of , serovar Typhimurium, and when exposed to antibacterial drugs with differing modes of action. By imaging individual bacterial cells at high resolution and scale, we observed intrapopulation differences associated with different antibiotics. The outlined methods are highly relevant for how we begin to better understand and combat antimicrobial resistance.

Citing Articles

Advancing antibiotic discovery with bacterial cytological profiling: a high-throughput solution to antimicrobial resistance.

Salgado J, Rayner J, Ojkic N Front Microbiol. 2025; 16:1536131.

PMID: 40018674 PMC: 11865948. DOI: 10.3389/fmicb.2025.1536131.


Ribosome phenotypes for rapid classification of antibiotic-susceptible and resistant strains of Escherichia coli.

Farrar A, Turner P, El Sayyed H, Feehily C, Chatzimichail S, Ta S Commun Biol. 2025; 8(1):319.

PMID: 40011610 PMC: 11865533. DOI: 10.1038/s42003-025-07740-6.


Evaluating feature extraction in ovarian cancer cell line co-cultures using deep neural networks.

Sharma O, Gudoityte G, Minozada R, Kallioniemi O, Turkki R, Paavolainen L Commun Biol. 2025; 8(1):303.

PMID: 40000764 PMC: 11862010. DOI: 10.1038/s42003-025-07766-w.


Applications of Artificial Intelligence, Deep Learning, and Machine Learning to Support the Analysis of Microscopic Images of Cells and Tissues.

Ali M, Benfante V, Basirinia G, Alongi P, Sperandeo A, Quattrocchi A J Imaging. 2025; 11(2).

PMID: 39997561 PMC: 11856378. DOI: 10.3390/jimaging11020059.


Infection Inspection: using the power of citizen science for image-based prediction of antibiotic resistance in Escherichia coli treated with ciprofloxacin.

Farrar A, Feehily C, Turner P, Zagajewski A, Chatzimichail S, Crook D Sci Rep. 2024; 14(1):19543.

PMID: 39174600 PMC: 11341553. DOI: 10.1038/s41598-024-69341-3.


References
1.
Christophe T, Ewann F, Jeon H, Cechetto J, Brodin P . High-content imaging of Mycobacterium tuberculosis-infected macrophages: an in vitro model for tuberculosis drug discovery. Future Med Chem. 2011; 2(8):1283-93. DOI: 10.4155/fmc.10.223. View

2.
Hassan M, Sturm-Ramirez K, Rahman M, Hossain K, Aleem M, Bhuiyan M . Contamination of hospital surfaces with respiratory pathogens in Bangladesh. PLoS One. 2019; 14(10):e0224065. PMC: 6816543. DOI: 10.1371/journal.pone.0224065. View

3.
Van Laar T, Chen T, You T, Leung K . Sublethal concentrations of carbapenems alter cell morphology and genomic expression of Klebsiella pneumoniae biofilms. Antimicrob Agents Chemother. 2015; 59(3):1707-17. PMC: 4325768. DOI: 10.1128/AAC.04581-14. View

4.
Lamsa A, Lopez-Garrido J, Quach D, Riley E, Pogliano J, Pogliano K . Rapid Inhibition Profiling in Bacillus subtilis to Identify the Mechanism of Action of New Antimicrobials. ACS Chem Biol. 2016; 11(8):2222-31. PMC: 5459310. DOI: 10.1021/acschembio.5b01050. View

5.
Maes M, Dyson Z, Smith S, Goulding D, Ludden C, Baker S . A novel therapeutic antibody screening method using bacterial high-content imaging reveals functional antibody binding phenotypes of Escherichia coli ST131. Sci Rep. 2020; 10(1):12414. PMC: 7382476. DOI: 10.1038/s41598-020-69300-8. View