Hunting imaging biomarkers in pulmonary fibrosis: Benchmarks of the AIIB23 challenge
Yang Nan, Xiaodan Xing, Shiyi Wang, Zeyu Tang, Federico N Felder,, Sheng Zhang, Roberta Eufrasia Ledda, Xiaoliu Ding, Ruiqi Yu, Weiping Liu,, Feng Shi, Tianyang Sun, Zehong Cao, Minghui Zhang, Yun Gu, Hanxiao Zhang,, Jian Gao, Pingyu Wang, Wen Tang, Pengxin Yu, Han Kang

TL;DR
This paper presents the AIIB23 challenge focused on developing robust airway segmentation models in fibrotic lung disease CT scans and identifies a new airway-derived biomarker strongly associated with patient survival.
Contribution
It introduces a benchmark dataset with expert annotations, proposes novel loss functions for improved airway segmentation, and discovers a significant airway biomarker for prognosis.
Findings
Enhanced airway segmentation with weighted loss functions
Identification of a strong airway biomarker for survival prediction
Benchmark dataset with expert annotations for fibrotic lung disease
Abstract
Airway-related quantitative imaging biomarkers are crucial for examination, diagnosis, and prognosis in pulmonary diseases. However, the manual delineation of airway trees remains prohibitively time-consuming. While significant efforts have been made towards enhancing airway modelling, current public-available datasets concentrate on lung diseases with moderate morphological variations. The intricate honeycombing patterns present in the lung tissues of fibrotic lung disease patients exacerbate the challenges, often leading to various prediction errors. To address this issue, the 'Airway-Informed Quantitative CT Imaging Biomarker for Fibrotic Lung Disease 2023' (AIIB23) competition was organized in conjunction with the official 2023 International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI). The airway structures were meticulously annotated by three…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment · Interstitial Lung Diseases and Idiopathic Pulmonary Fibrosis
MethodsSparse Evolutionary Training
