Accurate and rapid antibiotic susceptibility testing using a machine learning-assisted nanomotion technology platform

  18 March 2024

Antimicrobial resistance (AMR) is a major public health threat, reducing treatment options. A rapid growth-independent phenotypic AST using nanomotion technology measures bacterial vibrations. Machine learning techniques analyze a large dataset, achieving 90.5-100% accuracy. Independent testing on 223 strains predicts susceptibility and resistance with accuracies between 89.5% and 98.9%, demonstrating potential for future bacterial phenotype delineation.

Further reading: Nature Communications
Author(s): Alexander Sturm et al
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Unrestricted financial support by:

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INTERNATIONAL FEDERATION PHARMACEUTICAL MANUFACTURERS & ASSOCIATIONS

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