Fast and Low-GPU-memory abdomen CT organ segmentation: The FLARE challenge
Authors
Ma, J.Zhang, Y.
Gu, S.
An, X.
Wang, Z.
Ge, C.
Wang, C.
Zhang, F.
Wang, Y.
Xu, Y.
Gou, S.
Thaler, F.
Payer, C.
Štern, D.
Henderson, Edward G A
McSweeney, Donal M
Green, Andrew
Jackson, P.
McIntosh, L.
Nguyen, Q. C.
Qayyum, A.
Conze, P. H.
Huang, Z.
Zhou, Z.
Fan, D. P.
Xiong, H.
Dong, G.
Zhu, Q.
He, J.
Yang, X.
Affiliation
Department of Mathematics, Nanjing University of Science and Technology, 210094, Nanjing, ChinaIssue Date
2022
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Show full item recordAbstract
Automatic segmentation of abdominal organs in CT scans plays an important role in clinical practice. However, most existing benchmarks and datasets only focus on segmentation accuracy, while the model efficiency and its accuracy on the testing cases from different medical centers have not been evaluated. To comprehensively benchmark abdominal organ segmentation methods, we organized the first Fast and Low GPU memory Abdominal oRgan sEgmentation (FLARE) challenge, where the segmentation methods were encouraged to achieve high accuracy on the testing cases from different medical centers, fast inference speed, and low GPU memory consumption, simultaneously. The winning method surpassed the existing state-of-the-art method, achieving a 19× faster inference speed and reducing the GPU memory consumption by 60% with comparable accuracy. We provide a summary of the top methods, make their code and Docker containers publicly available, and give practical suggestions on building accurate and efficient abdominal organ segmentation models. The FLARE challenge remains open for future submissions through a live platform for benchmarking further methodology developments at https://flare.grand-challenge.org/.Citation
Ma J, Zhang Y, Gu S, An X, Wang Z, Ge C, et al. Fast and Low-GPU-memory abdomen CT organ segmentation: The FLARE challenge. Medical image analysis. 2022 Sep 13;82:102616. PubMed PMID: 36179380. Epub 2022/10/01. eng.Journal
Medical Image AnalysisDOI
10.1016/j.media.2022.102616PubMed ID
36179380Additional Links
https://dx.doi.org/10.1016/j.media.2022.102616Type
ArticleLanguage
enae974a485f413a2113503eed53cd6c53
10.1016/j.media.2022.102616
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