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Schwerpunkt „KI in der Hämatologie und Onkologie“

Bildorientierte KI zur Unterstützung der zytomorphologischen Leukämiediagnostik

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© Christian Matek, Erlangen

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Matek, C., Spiekermann, K. & Marr, C. Bildorientierte KI zur Unterstützung der zytomorphologischen Leukämiediagnostik. InFo Hämatol Onkol 27, 19–21 (2024). https://doi.org/10.1007/s15004-024-0564-7

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