This is a news story, published by University of Cambridge, that relates primarily to Salmonella Typhimurium news.
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resistant infectionsUniversity of Cambridge
•85% Informative
Machine-learning tool identified Salmonella Typhimurium bacteria that are resistant to the first -line antibiotic ciprofloxacin even without testing the bacteria against the drug.
The beauty of the machine learning model is that it can identify resistant bacteria based on a few subtle features on microscopy images that human eyes cannot detect.
The research was funded by Wellcome .
If we could find a way of doing this, we could reduce the time taken to identify drug resistance and at a much lower cost.
That could be truly transformative’s a much more complicated problem and one that hasn't been solved at all, even in clinical diagnostics.
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