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Antibiotic resistance is an urgent global health challenge, necessitating rapid diagnostic tools to combat its threat. This study uses citizen science and image feature analysis to profile the cellular features associated with antibiotic resistance in Escherichia coli. Between February and April 2023, we conducted the Infection Inspection project, in which 5273 volunteers made 1,045,199 classifications of single-cell images from five E. coli strains, labelling them as antibiotic-sensitive or antibiotic-resistant based on their response to the antibiotic ciprofloxacin. User accuracy in image classification reached 66.8 ± 0.1%, lower than our deep learning model's performance at 75.3 ± 0.4%, but both users and the model were more accurate when classifying cells treated at a concentration greater than the strain's own minimum inhibitory concentration. We used the users' classifications to elucidate which visual features influence classification decisions, most importantly the degree of DNA compaction and heterogeneity. We paired our classification data with an image feature analysis which showed that most of the incorrect classifications happened when cellular features varied from the expected response. This understanding informs ongoing efforts to enhance the robustness of our diagnostic methodology. Infection Inspection is another demonstration of the potential for public participation in research, specifically increasing public awareness of antibiotic resistance.

Original publication

DOI

10.1038/s41598-024-69341-3

Type

Journal article

Journal

Scientific reports

Publication Date

08/2024

Volume

14

Addresses

Department of Physics, University of Oxford, Parks Road, Oxford, OX1 3PU, UK.

Keywords

Humans, Escherichia coli, Escherichia coli Infections, Ciprofloxacin, Anti-Bacterial Agents, Microbial Sensitivity Tests, Drug Resistance, Bacterial, Image Processing, Computer-Assisted, Deep Learning