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ZWR - Das Deutsche Zahnärzteblatt 2021; 130(03): 99-104
DOI: 10.1055/a-1389-3728
DOI: 10.1055/a-1389-3728
Fortbildung
Zahnerhaltung
Kariesdiagnostik mittels künstlicher Intelligenz: Zukunftsmusik oder Realität?
Durch die Anwendung von maschinellem Sehen und maschinellem Lernen haben KI-Applikationen für die Kariesdiagnostik großes Potenzial.
Publication History
Article published online:
15 March 2021
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