2021
DOI: 10.1101/2021.10.19.464925
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Identification of bacterial drug-resistant cells by the convolutional neural network in transmission electron microscope images

Abstract: The emergence of bacteria that are resistant to antibiotics is common in areas where antibiotics are used widely. The current standard procedure for detecting bacterial drug resistance is based on bacterial growth under antibiotic treatments. Here we describe the morphological changes in enoxacin-resistant Escherichia coli cells and the computational method used to identify these resistant cells in transmission electron microscopy (TEM) images without using antibiotics. Our approach was to create patches from … Show more

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