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Combining machine learning with high-content imaging to infer ciprofloxacin susceptibility in isolates of *Salmonella Typhimurium*

Medicine and Health

Combining machine learning with high-content imaging to infer ciprofloxacin susceptibility in isolates of *Salmonella Typhimurium*

T. Tran, S. Sridhar, et al.

Discover how researchers, including Tuan-Anh Tran and Sushmita Sridhar, are tackling the emerging threat of antimicrobial resistance (AMR) using innovative machine learning techniques. This study reveals a groundbreaking approach to predict ciprofloxacin susceptibility in *Salmonella Typhimurium*, offering the potential for rapid AMR detection.

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~3 min • Beginner • English
Abstract
Antimicrobial resistance (AMR) is a growing public health crisis that requires innovative solutions. Current susceptibility testing approaches limit our ability to rapidly distinguish between antimicrobial-susceptible and -resistant organisms. Salmonella Typhimurium (S. Typhimurium) is an enteric pathogen responsible for severe gastrointestinal illness and invasive disease. Despite widespread resistance, ciprofloxacin remains a common treatment for Salmonella infections, particularly in lower-resource settings, where the drug is given empirically. Here, we exploit high-content imaging to generate deep phenotyping of S. Typhimurium isolates longitudinally exposed to increasing concentrations of ciprofloxacin. We apply machine learning algorithms to the imaging data and demonstrate that individual isolates display distinct growth and morphological characteristics that cluster by time point and susceptibility to ciprofloxacin, which occur independently of ciprofloxacin exposure. Using a further set of S. Typhimurium clinical isolates, we find that machine learning classifiers can accurately predict ciprofloxacin susceptibility without exposure to it or any prior knowledge of resistance phenotype. These results demonstrate the principle of using high-content imaging with machine learning algorithms to predict drug susceptibility of clinical bacterial isolates. This technique may be an important tool in understanding the morphological impact of antimicrobials on the bacterial cell to identify drugs with new modes of action.
Publisher
Nature Communications
Published On
Jun 13, 2024
Authors
Tuan-Anh Tran, Sushmita Sridhar, Stephen T. Reece, Octavie Lunguya, Jan Jacobs, Sandra Van Puyvelde, Florian Marks, Gordon Dougan, Nicholas R. Thomson, Binh T. Nguyen, Pham The Bao, Stephen Baker
Tags
antimicrobial resistance
ciprofloxacin
machine learning
Salmonella Typhimurium
susceptibility testing
high-content imaging
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