Generalizability of machine learning in predicting antimicrobial resistance in E. coli: a multi-country case study in Africa
Mike Nsubuga(University of Bristol), Gerald Mboowa(Broad Institute), Daudi Jjingo(Infectious Diseases Institute), Ronald Galiwango(Infectious Diseases Institute)
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