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, Additional Information Authors of this article contributed to the article in the following manner
,
Francisco Javier Vera-Olmos and Norberto Malpica designed the challengers' repsective algorithms, participated to the challenge, participated in the writing and proof-reading of the evaluated teams description in particular, and of the proof-reading of the whole article ,
Christian Barillot and Michel Dojat participated in the setup of the platform and running of the experiments on the France Life Imaging platform, the writing and proof-reading of the pipeline processing description and results in particular, and of the proof-reading of the whole article ,
Gilles Edan and François Cotton participated in the constitution of the evaluation database (selection of the patients, expert guidance on the delineation of the lesions), in the analysis of results ,