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Visual ensemble selection of deep convolutional neural networks for 3D segmentation of breast tumors on dynamic contrast enhanced MRI.

Masoomeh RahimpourMarie-Judith Saint MartinFrédérique FrouinPia AklFanny OrlhacMichel KooleCaroline Malhaire
Published in: European radiology (2022)
• Deep convolutional neural networks were developed using T1-weighted post-contrast and subtraction MRI to perform automated 3D segmentation of breast tumors. • A visual ensemble selection allowing the radiologist to choose the best segmentation among the three 3D U-Net models outperformed each of the three models. • The visual ensemble selection provided clinically useful segmentations in 77% of cases, potentially allowing for a valuable reduction of the manual 3D segmentation workload for the radiologist and greatly facilitating quantitative studies on non-invasive biomarker in breast MRI.
Keyphrases
  • convolutional neural network
  • contrast enhanced
  • deep learning
  • magnetic resonance imaging
  • magnetic resonance
  • diffusion weighted imaging
  • computed tomography
  • machine learning