Please use this identifier to cite or link to this item: http://hdl.handle.net/2445/184038
Title: Multi-Centre, Multi-Vendor and Multi-Disease Cardiac Segmentation: The M&Ms Challenge
Author: Campello, Víctor Manuel
Gkontra, Polyxeni
Izquierdo Morcillo, Cristian
Martin-Isla, Carlos
Sojoudi, Alireza
Full, Peter M.
Maier-Hein, Klaus
Zhang, Yao
He, Zhiqiang
Ma, Jun
Parreño, Mario
Albiol, Alberto
Kong, Fanwei
Shadden, Shawn C.
Acero Corral, Jorge
Sundaresan, Vaanathi
Saber, Mina
Elattar, Mustafa
Li, Hongwei
Menze, Bjoern
Khader, Firas
Haarburger, Christoph
Scannell, Cian M.
Veta, Mitko
Carscadden, Adam
Punithakumar, Kumaradevan
Liu, Xiao
Tsaftaris, Sotirios A.
Huang, Xiaoqiong
Yang, Xin
Li, Lei
Zhuang, Xiahai
Viladés, David
Descalzo, Martín L.
Guala, Andrea
La Mura, Lucía
Friedrich, Matthias G.
Escalera Guerrero, Sergio
Seguí Mesquida, Santi
Lekadir, Karim, 1977-
Keywords: Aprenentatge automàtic
Imatges per ressonància magnètica
Processament digital d'imatges
Machine learning
Magnetic resonance imaging
Digital image processing
Issue Date: 30-Nov-2021
Publisher: Institute of Electrical and Electronics Engineers (IEEE)
Abstract: The emergence of deep learning has considerably advanced the state-of-the-art in cardiac magnetic resonance (CMR) segmentation. Many techniques have been proposed over the last few years, bringing the accuracy of automated segmentation close to human performance. However, these models have been all too often trained and validated using cardiac imaging samples from single clinical centres or homogeneous imaging protocols. This has prevented the development and validation of models that are generalizable across different clinical centres, imaging conditions or scanner vendors. To promote further research and scientific benchmarking in the field of generalizable deep learning for cardiac segmentation, this paper presents the results of the Multi-Centre, Multi-Vendor and Multi-Disease Cardiac Segmentation (M&Ms) Challenge, which was recently organized as part of the MICCAI 2020 Conference. A total of 14 teams submitted different solutions to the problem, combining various baseline models, data augmentation strategies, and domain adaptation techniques. The obtained results indicate the importance of intensity-driven data augmentation, as well as the need for further research to improve generalizability towards unseen scanner vendors or new imaging protocols. Furthermore, we present a new resource of 375 heterogeneous CMR datasets acquired by using four different scanner vendors in six hospitals and three different countries (Spain, Canada and Germany), which we provide as open-access for the community to enable future research in the field.
Note: Reproducció del document publicat a: https://doi.org/10.1109/TMI.2021.3090082
It is part of: IEEE Transactions on Medical Imaging, 2021
URI: http://hdl.handle.net/2445/184038
Related resource: https://doi.org/10.1109/TMI.2021.3090082
ISSN: 0278-0062
Appears in Collections:Articles publicats en revistes (Matemàtiques i Informàtica)
Publicacions de projectes de recerca finançats per la UE

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