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2024
MIDL
MIDL 2024
Comparing the Performance of Radiation Oncologists versus a Deep Learning Dose Predictor to Estimate Dosimetric Impact of Segmentation Variations for Radiotherapy
Authors
Amith Jagannath Kamath
,
Zahira Mercado Auf der Maur
,
Robert Poel
,
Jonas Willmann
,
Ekin Ermis
,
Elena Riggenbach
,
Nicolaus Andratschke
,
Mauricio Reyes
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