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Multi-site, Multi-domain Airway Tree Modeling (ATM'22): A Public Benchmark for Pulmonary Airway Segmentation

10 March 2023
Minghui Zhang
Yang Wu
Hanxiao Zhang
Yulei Qin
Hao Zheng
Wen Tang
C. Arnold
Chenhao Pei
Pengxin Yu
Yang Nan
Guangyao Yang
Simon Walsh
D. C. Marshall
M. Komorowski
Puyang Wang
Dazhou Guo
D. Jin
Yanan Wu
Shuiqing Zhao
Runsheng Chang
Boyu Zhang
Xing-Pu Lv
Abdul Qayyum
Moona Mazher
Qinzhi Su
Yonghuang Wu
Yingáo Liu
Yufei Zhu
Jiancheng Yang
A. Pakzad
B. Rangelov
Raúl San José Estépar
C. Espinosa
Jiayuan Sun
Guang-Zhong Yang
Yun Gu
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Abstract

Open international challenges are becoming the de facto standard for assessing computer vision and image analysis algorithms. In recent years, new methods have extended the reach of pulmonary airway segmentation that is closer to the limit of image resolution. Since EXACT'09 pulmonary airway segmentation, limited effort has been directed to quantitative comparison of newly emerged algorithms driven by the maturity of deep learning based approaches and clinical drive for resolving finer details of distal airways for early intervention of pulmonary diseases. Thus far, public annotated datasets are extremely limited, hindering the development of data-driven methods and detailed performance evaluation of new algorithms. To provide a benchmark for the medical imaging community, we organized the Multi-site, Multi-domain Airway Tree Modeling (ATM'22), which was held as an official challenge event during the MICCAI 2022 conference. ATM'22 provides large-scale CT scans with detailed pulmonary airway annotation, including 500 CT scans (300 for training, 50 for validation, and 150 for testing). The dataset was collected from different sites and it further included a portion of noisy COVID-19 CTs with ground-glass opacity and consolidation. Twenty-three teams participated in the entire phase of the challenge and the algorithms for the top ten teams are reviewed in this paper. Quantitative and qualitative results revealed that deep learning models embedded with the topological continuity enhancement achieved superior performance in general. ATM'22 challenge holds as an open-call design, the training data and the gold standard evaluation are available upon successful registration via its homepage.

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