Machine learning in laboratory medicine: waiting for the flood?

作者: Federico Cabitza , Giuseppe Banfi

DOI: 10.1515/CCLM-2017-0287

关键词: Flood mythDiagnostic aidArtificial intelligenceAudience measurementMedical laboratoryMachine learning

摘要: This review focuses on machine learning and how methods models combining data analytics artificial intelligence have been applied to laboratory medicine so far. Although still in its infancy, the potential for applying both diagnostic prognostic purposes deserves more attention by readership of this journal, as well physician-scientists who will want take advantage new computer-based support pathology medicine.

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