Machine learning-enhanced MALDI-TOF MS for real-time detection of antibiotic-resistant E. coli in food processing

Antibiotic-resistant Escherichia coli in food processing poses a significant risk to public health, necessitating rapid detection methods. This study developed an innovative approach combining matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF MS) with machine le...

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Bibliographic Details
Published inFood science & technology Vol. 224; p. 117860
Main Authors Victor Lin, Hong-Ting, Yang, Tien-Wei, Lu, Wen-Jung, Chiang, Hong-Jhen, Hsu, Pang-Hung
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 15.05.2025
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Summary:Antibiotic-resistant Escherichia coli in food processing poses a significant risk to public health, necessitating rapid detection methods. This study developed an innovative approach combining matrix-assisted laser desorption/ionization time-of-flight mass spectrometry (MALDI-TOF MS) with machine learning for rapid detection of antibiotic-resistant E. coli in food processing environments. Analysis of 69 E. coli isolates from food processing facilities revealed high resistance rates, ranging from 0 % for carbapenems to 100 % for antibiotics like streptomycin and sulfamethoxazole-trimethoprim. These findings highlight serious food safety concerns and emphasize the need for rapid detection methods. Among machine learning models trained on MALDI-TOF MS data, the optimized random forest model demonstrated superior performance, achieving cross-validation accuracies within 67–97 % across different antibiotics. Validation using 28 food-sourced samples confirmed its high predictive accuracy for multiple antibiotic classes, including penicillin, chloramphenicol, sulfonamide, tetracycline, and aminoglycoside. This approach provides a rapid, accurate tool for antibiotic resistance detection, offering significant advantages for food safety monitoring in high-throughput processing environments. Future improvements should focus on enhancing (fluoro)quinolones prediction accuracy to enable comprehensive antimicrobial resistance surveillance in food production. •Developed MALDI-TOF MS machine learning approach for antibiotic-resistant E. coli detection.•Found high antimicrobial resistance rates in poultry facility bacterial isolates.•Optimized random forest classifier achieved best resistance prediction performance.•Validated 87–100 % detection accuracy on food-sourced E. coli isolates.•Created rapid detection method compatible with current food safety protocols.
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ISSN:0023-6438
DOI:10.1016/j.lwt.2025.117860