Data-Driven Two-Stage Framework for Identification and Characterization of Different Antibiotic-Resistant Escherichia coli Isolates Based on Mass Spectrometry Data
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Title
Data-Driven Two-Stage Framework for Identification and Characterization of Different Antibiotic-Resistant Escherichia coli Isolates Based on Mass Spectrometry Data
Authors
Keywords
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Journal
Microbiology Spectrum
Volume 11, Issue 3, Pages -
Publisher
American Society for Microbiology
Online
2023-04-12
DOI
10.1128/spectrum.03479-22
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