TY - JOUR
T1 - AbdomenCT-1K: Is Abdominal Organ Segmentation A Solved Problem
AU - Ma, Jun
AU - Zhang, Yao
AU - Gu, Song
AU - Zhu, Cheng
AU - Ge, Cheng
AU - Zhang, Yichi
AU - An, Xingle
AU - Wang, Congcong
AU - Wang, Qiyuan
AU - Liu, Xin
AU - Cao, Shucheng
AU - Zhang, Qi
AU - Liu, Shangqing
AU - Wang, Yunpeng
AU - Li, Yuhui
AU - He, Jian
AU - Yang, Xiaoping
N1 - KAUST Repository Item: Exported on 2021-08-11
Acknowledgements: We highly appreciate the organizers and contributors of NIH Pancreas dataset, Liver and Liver Tumor Segmentation challenge, Medical Segmentation Decathlon, and Kidney Tumor Segmentation challenge for providing the publicly available abdominal CT datasets. We are grateful to the editors and the reviewers for their time and efforts spent on our paper. Their comments are very valuable for us to
improve this work. We also thank the High Performance Computing Center of Nanjing University for supporting the blade cluster system to run the experiments. We also thank Mengzhang Li and Xiao Ma for helping us run some experiments.
PY - 2021
Y1 - 2021
N2 - With the unprecedented developments in deep learning, automatic segmentation of main abdominal organs seems to be a solved problem as state-of-the-art (SOTA) methods have achieved comparable results with inter-rater variability on many benchmark datasets. However, most of the existing abdominal datasets only contain single-center, single-phase, single-vendor, or single-disease cases, and it is unclear whether the excellent performance can generalize on diverse datasets. This paper presents a large and diverse abdominal CT organ segmentation dataset, termed AbdomenCT-1K, with more than 1000 (1K) CT scans from 12 medical centers, including multi-phase, multi-vendor, and multi-disease cases. Furthermore, we conduct a large-scale study for liver, kidney, spleen, and pancreas segmentation and reveal the unsolved segmentation problems of the SOTA methods, such as the limited generalization ability on distinct medical centers, phases, and unseen diseases. To advance the unsolved problems, we further build four organ segmentation benchmarks for fully supervised, semi-supervised, weakly supervised, and continual learning, which are currently challenging and active research topics. Accordingly, we develop a simple and effective method for each benchmark, which can be used as out-of-the-box methods and strong baselines. We believe the AbdomenCT-1K dataset will promote future in-depth research towards clinical applicable abdominal organ segmentation methods.
AB - With the unprecedented developments in deep learning, automatic segmentation of main abdominal organs seems to be a solved problem as state-of-the-art (SOTA) methods have achieved comparable results with inter-rater variability on many benchmark datasets. However, most of the existing abdominal datasets only contain single-center, single-phase, single-vendor, or single-disease cases, and it is unclear whether the excellent performance can generalize on diverse datasets. This paper presents a large and diverse abdominal CT organ segmentation dataset, termed AbdomenCT-1K, with more than 1000 (1K) CT scans from 12 medical centers, including multi-phase, multi-vendor, and multi-disease cases. Furthermore, we conduct a large-scale study for liver, kidney, spleen, and pancreas segmentation and reveal the unsolved segmentation problems of the SOTA methods, such as the limited generalization ability on distinct medical centers, phases, and unseen diseases. To advance the unsolved problems, we further build four organ segmentation benchmarks for fully supervised, semi-supervised, weakly supervised, and continual learning, which are currently challenging and active research topics. Accordingly, we develop a simple and effective method for each benchmark, which can be used as out-of-the-box methods and strong baselines. We believe the AbdomenCT-1K dataset will promote future in-depth research towards clinical applicable abdominal organ segmentation methods.
UR - http://hdl.handle.net/10754/665793
UR - https://ieeexplore.ieee.org/document/9497733/
U2 - 10.1109/tpami.2021.3100536
DO - 10.1109/tpami.2021.3100536
M3 - Article
SN - 0162-8828
SP - 1
EP - 1
JO - IEEE Transactions on Pattern Analysis and Machine Intelligence
JF - IEEE Transactions on Pattern Analysis and Machine Intelligence
ER -