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2024 | OriginalPaper | Chapter

Künstliche Intelligenz in der Medizin

Chancen und Anforderungen für einen erfolgreichen und nachhaltigen Einsatz im Gesundheitswesen

Author : Julian Varghese

Published in: Health Data Management

Publisher: Springer Fachmedien Wiesbaden

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Zusammenfassung

Um aus großen Datenmengen Wissen mit einem echten Mehrwert zu generieren ist es notwendig aus der sich anbahnenden Big Data Situation in Krankenhäusern eine Smart Data Umgebung zu schaffen. Erst hierdurch werden Daten für innovative Algorithmen aus dem Bereich der Künstlichen Intelligenz (KI) verwertbar gemacht. Der Einsatz von KI-Methoden in der Medizin erfordert technische, organisatorische und medikolegale Aspekte. Das vorliegende Kapitel führt hierzu in den Begriff der Künstlichen Intelligenz (KI) ein, nennt hierzu beispielhafte Anwendungen in der Medizin und geht insbesondere auf technische Aspekte wie Datengenerierung, Datenanalyse und Regulatorik ein. Dies ermöglicht die Identifikation bekannter und wiederkehrender Herausforderungen sowie die Planung und Umsetzung von Lösungen in diesem noch jungen aber rasant wachsenden Bereich.

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Metadata
Title
Künstliche Intelligenz in der Medizin
Author
Julian Varghese
Copyright Year
2024
DOI
https://doi.org/10.1007/978-3-658-43236-2_50

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