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Unleashing the strengths of unlabelled data in deep learning-assisted pan-cancer abdominal organ quantification: the FLARE22 challenge

Authors :
Ma, Jun
Zhang, Yao
Gu, Song
Ge, Cheng
Mae, Shihao
Young, Adamo
Zhu, Cheng
Yang, Xin
Meng, Kangkang
Huang, Ziyan
Zhang, Fan
Pan, Yuanke
Huang, Shoujin
Wang, Jiacheng
Sun, Mingze
Zhang, Rongguo
Jia, Dengqiang
Choi, Jae Won
Alves, Natália
de Wilde, Bram
Koehler, Gregor
Lai, Haoran
Wang, Ershuai
Wiesenfarth, Manuel
Zhu, Qiongjie
Dong, Guoqiang
He, Jian
He, Junjun
Yang, Hua
Huang, Bingding
Lyu, Mengye
Ma, Yongkang
Guo, Heng
Xu, Weixin
Maier-Hein, Klaus
Wu, Yajun
Wang, Bo
Source :
The Lancet Digital Health; November 2024, Vol. 6 Issue: 11 pe815-e826, 12p
Publication Year :
2024

Abstract

Deep learning has shown great potential to automate abdominal organ segmentation and quantification. However, most existing algorithms rely on expert annotations and do not have comprehensive evaluations in real-world multinational settings. To address these limitations, we organised the FLARE 2022 challenge to benchmark fast, low-resource, and accurate abdominal organ segmentation algorithms. We first constructed an intercontinental abdomen CT dataset from more than 50 clinical research groups. We then independently validated that deep learning algorithms achieved a median dice similarity coefficient (DSC) of 90·0% (IQR 87·4–91·3%) by use of 50 labelled images and 2000 unlabelled images, which can substantially reduce manual annotation costs. The best-performing algorithms successfully generalised to holdout external validation sets, achieving a median DSC of 89·4% (85·2–91·3%), 90·0% (84·3–93·0%), and 88·5% (80·9–91·9%) on North American, European, and Asian cohorts, respectively. These algorithms show the potential to use unlabelled data to boost performance and alleviate annotation shortages for modern artificial intelligence models.

Details

Language :
English
ISSN :
25897500
Volume :
6
Issue :
11
Database :
Supplemental Index
Journal :
The Lancet Digital Health
Publication Type :
Periodical
Accession number :
ejs67784844
Full Text :
https://doi.org/10.1016/S2589-7500(24)00154-7