Evidence
Research published this week and led by University of Oxford researchers describes a first-of-its-kind method capable of distinguishing authentic and falsified vaccines by applying machine learning to mass spectral data. The method proved effective in differentiating between a range of authentic and ‘faked’ vaccines previously found to have entered supply chains.
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New method developed to detect fake vaccines in supply chains
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New method developed to detect fake vaccines in supply chains
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