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Determination of minimum inhibitory concentrations using machine-learning-assisted agar dilution.
Gerada, Alessandro; Harper, Nicholas; Howard, Alex; Reza, Nada; Hope, William.
Affiliation
  • Gerada A; Antimicrobial Pharmacodynamics and Therapeutics Group, Department of Pharmacology and Therapeutics, Institute of Systems, Molecular & Integrative Biology, University of Liverpool, Liverpool, United Kingdom.
  • Harper N; Department of Infection and Immunity, Liverpool Clinical Laboratories, Clinical Support Services Building (CSSB), Liverpool University Hospitals NHS Foundation Trust-Royal Liverpool Site, Liverpool, United Kingdom.
  • Howard A; Antimicrobial Pharmacodynamics and Therapeutics Group, Department of Pharmacology and Therapeutics, Institute of Systems, Molecular & Integrative Biology, University of Liverpool, Liverpool, United Kingdom.
  • Reza N; Antimicrobial Pharmacodynamics and Therapeutics Group, Department of Pharmacology and Therapeutics, Institute of Systems, Molecular & Integrative Biology, University of Liverpool, Liverpool, United Kingdom.
  • Hope W; Department of Infection and Immunity, Liverpool Clinical Laboratories, Clinical Support Services Building (CSSB), Liverpool University Hospitals NHS Foundation Trust-Royal Liverpool Site, Liverpool, United Kingdom.
Microbiol Spectr ; 12(5): e0420923, 2024 May 02.
Article in En | MEDLINE | ID: mdl-38517194
ABSTRACT
Effective policy to address the global threat of antimicrobial resistance requires robust antimicrobial susceptibility data. Traditional methods for measuring minimum inhibitory concentration (MIC) are resource intensive, subject to human error, and require considerable infrastructure. AIgarMIC streamlines and standardizes MIC measurement and is especially valuable for large-scale surveillance activities. MICs were measured using agar dilution for n = 10 antibiotics against clinical Enterobacterales isolates (n = 1,086) obtained from a large tertiary hospital microbiology laboratory. Escherichia coli (n = 827, 76%) was the most common organism. Photographs of agar plates were divided into smaller images covering one inoculation site. A labeled data set of colony images was created and used to train a convolutional neural network to classify images based on whether a bacterial colony was present (first-step model). If growth was present, a second-step model determined whether colony morphology suggested antimicrobial growth inhibition. The ability of the AI to determine MIC was then compared with standard visual determination. The first-step model classified bacterial growth as present/absent with 94.3% accuracy. The second-step model classified colonies as "inhibited" or "good growth" with 88.6% accuracy. For the determination of MIC, the rate of essential agreement was 98.9% (644/651), with a bias of -7.8%, compared with manual annotation. AIgarMIC uses artificial intelligence to automate endpoint assessments for agar dilution and potentially increases throughput without bespoke equipment. AIgarMIC reduces laboratory barriers to generating high-quality MIC data that can be used for large-scale surveillance programs. IMPORTANCE This research uses modern artificial intelligence and machine-learning approaches to standardize and automate the interpretation of agar dilution minimum inhibitory concentration testing. Artificial intelligence is currently of significant topical interest to researchers and clinicians. In our manuscript, we demonstrate a use-case in the microbiology laboratory and present validation data for the model's performance against manual interpretation.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Microbial Sensitivity Tests / Agar / Machine Learning / Anti-Bacterial Agents Limits: Humans Language: En Journal: Microbiol Spectr Year: 2024 Document type: Article Affiliation country: United kingdom Country of publication: United States

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Microbial Sensitivity Tests / Agar / Machine Learning / Anti-Bacterial Agents Limits: Humans Language: En Journal: Microbiol Spectr Year: 2024 Document type: Article Affiliation country: United kingdom Country of publication: United States