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The state-of-the-art 3D anisotropic intracranial hemorrhage segmentation on non-contrast head CT: The INSTANCE challenge

9 January 2023
Xiangyu Li
Gongning Luo
Kuanquan Wang
Hongyu Wang
Jun Liu
Xin-jie Liang
Jie Jiang
Zhenghao Song
Chun-Ling Zheng
Hao-Jun Chi
Mingwang Xu
Ying He
Xinghua Ma
Jingzhi Guo
Yifan Liu
Chuanpu Li
Ze Chen
M. R. Siddiquee
Andriy Myronenko
Antoine Pierre Sanner
Anirban Mukhopadhyay
Ahmed Othman
Xingyu Zhao
Weiping Liu
Jinhua Zhang
Xiangyuan Ma
Qinghui Liu
B. MacIntosh
Weixian Liang
Moona Mazher
Abdul Qayyum
Valeriia Abramova
Xavier Llado
Shuo Li
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Abstract

Automatic intracranial hemorrhage segmentation in 3D non-contrast head CT (NCCT) scans is significant in clinical practice. Existing hemorrhage segmentation methods usually ignores the anisotropic nature of the NCCT, and are evaluated on different in-house datasets with distinct metrics, making it highly challenging to improve segmentation performance and perform objective comparisons among different methods. The INSTANCE 2022 was a grand challenge held in conjunction with the 2022 International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI). It is intended to resolve the above-mentioned problems and promote the development of both intracranial hemorrhage segmentation and anisotropic data processing. The INSTANCE released a training set of 100 cases with ground-truth and a validation set with 30 cases without ground-truth labels that were available to the participants. A held-out testing set with 70 cases is utilized for the final evaluation and ranking. The methods from different participants are ranked based on four metrics, including Dice Similarity Coefficient (DSC), Hausdorff Distance (HD), Relative Volume Difference (RVD) and Normalized Surface Dice (NSD). A total of 13 teams submitted distinct solutions to resolve the challenges, making several baseline models, pre-processing strategies and anisotropic data processing techniques available to future researchers. The winner method achieved an average DSC of 0.6925, demonstrating a significant growth over our proposed baseline method. To the best of our knowledge, the proposed INSTANCE challenge releases the first intracranial hemorrhage segmentation benchmark, and is also the first challenge that intended to resolve the anisotropic problem in 3D medical image segmentation, which provides new alternatives in these research fields.

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