AssemblyNet: A Novel Deep Decision-Making Process for Whole Brain MRI Segmentation
COUPÉ, Pierrick
Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Patch-based processing for medical and natural images [PICTURA]
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Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Patch-based processing for medical and natural images [PICTURA]
COUPÉ, Pierrick
Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Patch-based processing for medical and natural images [PICTURA]
Laboratoire Bordelais de Recherche en Informatique [LaBRI]
Patch-based processing for medical and natural images [PICTURA]
MANJÓN, José
Universitat Politècnica de València = Universitad Politecnica de Valencia = Polytechnic University of Valencia [UPV]
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Universitat Politècnica de València = Universitad Politecnica de Valencia = Polytechnic University of Valencia [UPV]
Language
en
Communication dans un congrès
This item was published in
International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI), 2019-10-10, Shenzhen. 2019-10-10p. 466-474
English Abstract
Whole brain segmentation using deep learning (DL) is a very challenging task since the number of anatomical labels is very high compared to the number of available training images. To address this problem, previous DL ...Read more >
Whole brain segmentation using deep learning (DL) is a very challenging task since the number of anatomical labels is very high compared to the number of available training images. To address this problem, previous DL methods proposed to use a global convolution neural network (CNN) or few independent CNNs. In this paper, we present a novel ensemble method based on a large number of CNNs processing different overlapping brain areas. Inspired by parliamentary decision-making systems, we propose a framework called Assem-blyNet, made of two "assemblies" of U-Nets. Such a parliamentary system is capable of dealing with complex decisions and reaching a consensus quickly. AssemblyNet introduces sharing of knowledge among neighboring U-Nets, an "amendment" procedure made by the second assembly at higher-resolution to refine the decision taken by the first one, and a final decision obtained by majority voting. When using the same 45 training images, AssemblyNet outperforms global U-Net by 28% in terms of the Dice metric, patch-based joint label fusion by 15% and SLANT-27 by 10%. Finally, AssemblyNet demonstrates high capacity to deal with limited training data to achieve whole brain segmentation in practical training and testing times.Read less <
English Keywords
Whole brain segmentation
CNN
Ensemble learning
transfer learning
multiscale framework
ANR Project
Apprentissage profond pour la volumétrie cérébrale : vers le BigData en neuroscience - ANR-18-CE45-0013
Origin
Hal imported