Evaluation of automated airway morphological quantification for assessing fibrosing lung disease

Publication date

2024

Authors

Pakzad, A.
Cheung, W. K.
van Moorsel, Coline H.M.ISNI 000000035718451X
Quan, K.
Mogulkoc, N.
Bartholmai, B. J.
Van Es, H. W.
Ezircan, A.
Van Beek, F.
Veltkamp, Marcel

Editors

Advisors

Supervisors

Document Type

Article

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License

cc_by

Abstract

Abnormal airway dilatation, termed traction bronchiectasis, is a typical feature of idiopathic pulmonary fibrosis (IPF). Volumetric computed tomography (CT) imaging captures the loss of normal airway tapering in IPF. We postulated that automated quantification of airway abnormalities could provide estimates of IPF disease extent and severity. We propose AirQuant, an automated computational pipeline that takes an airway segmentation and CT image as input and systematically parcellates the airway tree into its lobes and generational branches, deriving airway structural measures from chest CT. Importantly, AirQuant prevents the occurrence of spurious airway branches by thick wave propagation and removes loops in the airway-tree by graph search, overcoming limitations of existing airway skeletonisation algorithms. Tapering between airway segments (intertapering) and airway tortuosity computed by AirQuant were compared between 14 healthy participants and 14 IPF patients. Airway intertapering was significantly reduced in IPF patients, and airway tortuosity was significantly increased when compared to healthy controls. Differences were most marked in the lower lobes, conforming to the typical distribution of IPF-related damage. AirQuant is an open-source pipeline that avoids limitations of existing airway quantification algorithms and has clinical interpretability. Automated airway measurements may have potential as novel imaging biomarkers of IPF severity and disease extent.

Keywords

Airway morphology, Bronchiectasis, Computed tomography, Computational Mechanics, Biomedical Engineering, Radiology Nuclear Medicine and imaging, Computer Science Applications

Citation

Pakzad, A, Cheung, W K, Van Moorsel, C H M, Quan, K, Mogulkoc, N, Bartholmai, B J, Van Es, H W, Ezircan, A, Van Beek, F, Veltkamp, M, Karwoski, R, Peikert, T, Clay, R D, Foley, F, Braun, C, Savas, R, Sudre, C, Doel, T, Alexander, D C, Wijeratne, P, Hawkes, D, Hu, Y, Hurst, J R & Jacob, J 2024, 'Evaluation of automated airway morphological quantification for assessing fibrosing lung disease', Computer Methods in Biomechanics and Biomedical Engineering: Imaging and Visualization, vol. 12, no. 1, 2325361. https://doi.org/10.1080/21681163.2024.2325361