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Erschienen in: Im Fokus Onkologie 4/2019

29.08.2019 | Melanom | Dermatoonkologie

Deep Learning

Melanomdiagnose mithilfe künstlicher Intelligenz

verfasst von: Dr. med. Julia K. Winkler, Dr. med. Christine Fink, Dr. med. Ferdinand Toberer, Prof. Dr. med. Alexander Enk, Prof. Dr. med. Holger A. Hänßle

Erschienen in: Im Fokus Onkologie | Ausgabe 4/2019

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Zusammenfassung

Für den praktizierenden Dermatologen und seine Patienten ist die Früherkennung des malignen Melanoms von zentraler Bedeutung. Der Patient setzt dabei großes Vertrauen in den diagnostischen Blick des Hautarztes. Ein erstes, zur klinischen Anwendung zugelassenenes Deep-Learning-Netzwerk kann dabei wertvolle Unterstützung leisten.
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Metadaten
Titel
Deep Learning
Melanomdiagnose mithilfe künstlicher Intelligenz
verfasst von
Dr. med. Julia K. Winkler
Dr. med. Christine Fink
Dr. med. Ferdinand Toberer
Prof. Dr. med. Alexander Enk
Prof. Dr. med. Holger A. Hänßle
Publikationsdatum
29.08.2019
Verlag
Springer Medizin
Erschienen in
Im Fokus Onkologie / Ausgabe 4/2019
Print ISSN: 1435-7402
Elektronische ISSN: 2192-5674
DOI
https://doi.org/10.1007/s15015-019-0167-6

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