Author:
Garcia-Uceda Antonio,Selvan Raghavendra,Saghir Zaigham,Tiddens Harm A. W. M.,de Bruijne Marleen
Abstract
AbstractThis paper presents a fully automatic and end-to-end optimised airway segmentation method for thoracic computed tomography, based on the U-Net architecture. We use a simple and low-memory 3D U-Net as backbone, which allows the method to process large 3D image patches, often comprising full lungs, in a single pass through the network. This makes the method simple, robust and efficient. We validated the proposed method on three datasets with very different characteristics and various airway abnormalities: (1) a dataset of pediatric patients including subjects with cystic fibrosis, (2) a subset of the Danish Lung Cancer Screening Trial, including subjects with chronic obstructive pulmonary disease, and (3) the EXACT’09 public dataset. We compared our method with other state-of-the-art airway segmentation methods, including relevant learning-based methods in the literature evaluated on the EXACT’09 data. We show that our method can extract highly complete airway trees with few false positive errors, on scans from both healthy and diseased subjects, and also that the method generalizes well across different datasets. On the EXACT’09 test set, our method achieved the second highest sensitivity score among all methods that reported good specificity.
Funder
Innovative Medicines Initiative Joint Undertaking
Publisher
Springer Science and Business Media LLC
Reference52 articles.
1. Kuo, W. et al. Diagnosis of bronchiectasis and airway wall thickening in children with cystic fibrosis: Objective airway-artery quantification. Eur. Radiol. 27, 4680–4689 (2017).
2. Kuo, W., Perez-Rovira, A., Tiddens, H., de Bruijne, M. & Study Group, N. C. C. Airway tapering. An objective image biomarker for bronchiectasis. Eur. Radiol. 30, 2703–2711 (2020).
3. Tschirren, J., Yavarna, T. & Reinhardt, J. Airway segmentation framework for clinical environments. In Proceedings 2nd International Workshop Pulmonary Image Analysis 227–238 (2009).
4. Mori, K., Hasegawa, J., Toriwaki, J., Anno, H. & Katada, K. Recognition of bronchus in three-dimensional X-ray CT images with application to virtualized bronchoscopy system. In Proceedings 13th International Conference on Pattern Recognition 528–532 (1996).
5. Sonka, M., Park, W. & Hoffman, E. Rule-based detection of intrathoracic airway trees. IEEE Trans. Med. Imaging 15, 314–326 (1996).
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