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Machine learning for microbiologists.

Asnicar, F ; Thomas, AM ; et al.
In: Nature reviews. Microbiology, Jg. 22 (2024-04-01), Heft 4, S. 191-205
academicJournal

Titel:
Machine learning for microbiologists.
Autor/in / Beteiligte Person: Asnicar, F ; Thomas, AM ; Passerini, A ; Waldron, L ; Segata, N
Zeitschrift: Nature reviews. Microbiology, Jg. 22 (2024-04-01), Heft 4, S. 191-205
Veröffentlichung: London, UK : Nature Pub. Group, c2003-, 2024
Medientyp: academicJournal
ISSN: 1740-1534 (electronic)
DOI: 10.1038/s41579-023-00984-1
Schlagwort:
  • Humans
  • Machine Learning
  • Microbiota
Sonstiges:
  • Nachgewiesen in: MEDLINE
  • Sprachen: English
  • Publication Type: Journal Article; Review
  • Language: English
  • [Nat Rev Microbiol] 2024 Apr; Vol. 22 (4), pp. 191-205. <i>Date of Electronic Publication: </i>2023 Nov 15.
  • MeSH Terms: Machine Learning* ; Microbiota* ; Humans
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  • Grant Information: R01 CA230551 United States CA NCI NIH HHS
  • Entry Date(s): Date Created: 20231115 Date Completed: 20240318 Latest Revision: 20240318
  • Update Code: 20240318

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