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Independent Validation of a Deep Learning nnU-Net Tool for Neuroblastoma Detection and Segmentation in MR Images.

Diana Veiga-CanutoLeonor Cerdá AlberichAna Jiménez PastorJose Miguel Carot SierraArmando Gomis-MayaCinta Sangüesa-NebotMatías Fernández PatónBlanca Martínez de Las HerasSabine Taschner-MandlVanessa DüsterUlrike PötschgerThorsten SimonEmanuele NeriÁngel Alberich-BayarriAdela CañeteBarbara HeroRuth LadensteinLuis Martí-Bonmatí
Published in: Cancers (2023)
The automatic CNN was able to locate and segment the primary tumor on the T2-weighted images in 94% of cases. There was an extremely high agreement between the automatic tool and the manually edited masks. This is the first study to validate an automatic segmentation model for neuroblastic tumor identification and segmentation with body MR images. The semi-automatic approach with minor manual editing of the deep learning segmentation increases the radiologist's confidence in the solution with a minor workload for the radiologist.
Keyphrases
  • deep learning
  • convolutional neural network
  • artificial intelligence
  • crispr cas
  • machine learning
  • magnetic resonance
  • contrast enhanced
  • bioinformatics analysis
  • real time pcr