| Literature DB >> 32522665 |
Pierrick Coupé1, Boris Mansencal2, Michaël Clément2, Rémi Giraud3, Baudouin Denis de Senneville4, Vinh-Thong Ta2, Vincent Lepetit2, José V Manjon5.
Abstract
Whole brain segmentation of fine-grained structures 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 single 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 AssemblyNet, made of two "assemblies" of U-Nets. Such a parliamentary system is capable of dealing with complex decisions, unseen problem and reaching a relevant consensus. 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. During our validation, AssemblyNet showed competitive performance compared to state-of-the-art methods such as U-Net, Joint label fusion and SLANT. Moreover, we investigated the scan-rescan consistency and the robustness to disease effects of our method. These experiences demonstrated the reliability of AssemblyNet. Finally, we showed the interest of using semi-supervised learning to improve the performance of our method.Mesh:
Year: 2020 PMID: 32522665 DOI: 10.1016/j.neuroimage.2020.117026
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556