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Cloud-Based Evaluation of Anatomical Structure Segmentation and Landmark Detection Algorithms : VISCERAL Anatomy Benchmarks

Authors :
Oscar Jimenez-del-Toro
Dominic Mai
Anna Walleyo
Abdel Aziz Taha
Antonio Foncubierta-Rodríguez
Daniel Wyeth
Georg Langs
Mattias P. Heinrich
Chunliang Wang
Henning Müller
Yashin Dicente Cid
Fredrik Kahl
Razmig Kéchichian
Ivan Eggel
Roger Schaer
Orcun Goksel
Markus Krenn
Tomas Salas Fernandez
Marianne Winterstein
Bjoern H. Menze
Georgios Kontokotsios
Katharina Gruenberg
Fucang Jia
Marc-André Weber
Andras Jakab
Assaf B. Spanier
Tobias Gass
G.R. Vincent
Allan Hanbury
Publication Year :
2016
Publisher :
KTH, Medicinsk bildbehandling och visualisering, 2016.

Abstract

Variations in the shape and appearance of anatomical structures in medical images are often relevant radiological signs of disease. Automatic tools can help automate parts of this manual process. A cloud-based evaluation framework is presented in this paper including results of benchmarking current state-of-the-art medical imaging algorithms for anatomical structure segmentation and landmark detection: the VISCERAL Anatomy benchmarks. The algorithms are implemented in virtual machines in the cloud where participants can only access the training data and can be run privately by the benchmark administrators to objectively compare their performance in an unseen common test set. Overall, 120 computed tomography and magnetic resonance patient volumes were manually annotated to create a standard Gold Corpus containing a total of 1295 structures and 1760 landmarks. Ten participants contributed with automatic algorithms for the organ segmentation task, and three for the landmark localization task. Different algorithms obtained the best scores in the four available imaging modalities and for subsets of anatomical structures. The annotation framework, resulting data set, evaluation setup, results and performance analysis from the three VISCERAL Anatomy benchmarks are presented in this article. Both the VISCERAL data set and Silver Corpus generated with the fusion of the participant algorithms on a larger set of non-manually-annotated medical images are available to the research community. QC 20170104

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....e92088e6cb9c74e8468490cd2771ef85