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Why rankings of biomedical image analysis competitions should be interpreted with care

Authors :
Maier-Hein, L. (Lena)
Eisenmann, M. (Matthias)
Reinke, A. (Annika)
Onogur, S. (Sinan)
Stankovic, M. (Marko)
Scholz, P. (Patrick)
Arbel, T. (Tal)
Bogunović, H. (Hrvoje)
Bradley, A.P. (Andrew P.)
Carass, A. (Aaron)
Feldmann, C. (Carolin)
Frangi, A.F. (Alejandro)
Full, P.M. (Peter M.)
Ginneken, B.T.J. (Berbke) van
Hanbury, A. (Allan)
Honauer, K. (Katrin)
Kozubek, M. (Michal)
Landman, B.A. (Bennett)
März, K. (Keno)
Maier, O. (Oskar)
Maier-Hein, K. (Klaus)
Menze, B.H. (Bjoern H.)
Müller, H. (Henning)
Neher, P.F. (Peter F.)
Niessen, W.J. (Wiro)
Rajpoot, N. (Nasir)
Sharp, G.C. (Gregory C.)
Sirinukunwattana, K. (Korsuk)
Speidel, S. (Stefanie)
Stock, C. (Christian)
Stoyanov, D. (Danail)
Taha, A.A. (Abdel Aziz)
van der Sommen, F. (Fons)
Wang, C.-W. (Ching-Wei)
Weber, M.-A. (Marc-André)
Zheng, G. (Guoyan)
Jannin, P. (Pierre)
Kopp-Schneider, A. (Annette)
Maier-Hein, L. (Lena)
Eisenmann, M. (Matthias)
Reinke, A. (Annika)
Onogur, S. (Sinan)
Stankovic, M. (Marko)
Scholz, P. (Patrick)
Arbel, T. (Tal)
Bogunović, H. (Hrvoje)
Bradley, A.P. (Andrew P.)
Carass, A. (Aaron)
Feldmann, C. (Carolin)
Frangi, A.F. (Alejandro)
Full, P.M. (Peter M.)
Ginneken, B.T.J. (Berbke) van
Hanbury, A. (Allan)
Honauer, K. (Katrin)
Kozubek, M. (Michal)
Landman, B.A. (Bennett)
März, K. (Keno)
Maier, O. (Oskar)
Maier-Hein, K. (Klaus)
Menze, B.H. (Bjoern H.)
Müller, H. (Henning)
Neher, P.F. (Peter F.)
Niessen, W.J. (Wiro)
Rajpoot, N. (Nasir)
Sharp, G.C. (Gregory C.)
Sirinukunwattana, K. (Korsuk)
Speidel, S. (Stefanie)
Stock, C. (Christian)
Stoyanov, D. (Danail)
Taha, A.A. (Abdel Aziz)
van der Sommen, F. (Fons)
Wang, C.-W. (Ching-Wei)
Weber, M.-A. (Marc-André)
Zheng, G. (Guoyan)
Jannin, P. (Pierre)
Kopp-Schneider, A. (Annette)
Publication Year :
2018

Abstract

International challenges have become the standard for validation of biomedical image analysis methods. Given their scientific impact, it is surprising that a critical analysis of common practices related to the organization of challenges has not yet been performed. In this paper, we present a comprehensive analysis of biomedical image analysis challenges conducted up to now. We demonstrate the importance of challenges and show that the lack of quality control has critical consequences. First, reproducibility and interpretation of the results is often hampered as only a fraction of relevant information is typically provided. Second, the rank of an algorithm is generally not robust to a number of variables such as the test data used for validation, the ranking scheme applied and the observers that make the reference annotations. To overcome these problems, we recommend best practice guidelines and define open research questions to be addressed in the future.

Details

Database :
OAIster
Notes :
application/pdf, Nature Communications vol. 9 no. 1, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1081017865
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1038.s41467-018-07619-7