Automated segmentation and quantification of airway mucus with endobronchial optical coherence tomography.

TitleAutomated segmentation and quantification of airway mucus with endobronchial optical coherence tomography.
Publication TypeJournal Article
Year of Publication2017
AuthorsAdams DC, Pahlevaninezhad H, Szabari MV, Cho JL, Hamilos DL, Kesimer M, Boucher RC, Luster AD, Medoff BD, Suter MJ
JournalBiomed Opt Express
Volume8
Issue10
Pagination4729-4741
Date Published2017 Oct 01
ISSN2156-7085
Abstract

We propose a novel suite of algorithms for automatically segmenting the airway lumen and mucus in endobronchial optical coherence tomography (OCT) data sets, as well as a novel approach for quantifying the contents of the mucus. Mucus and lumen were segmented using a robust, multi-stage algorithm that requires only minimal input regarding sheath geometry. The algorithm performance was highly accurate in a wide range of airway and noise conditions. Mucus was classified using mean backscattering intensity and grey level co-occurrence matrix (GLCM) statistics. We evaluated our techniques in vivo in asthmatic and non-asthmatic volunteers.

DOI10.1364/BOE.8.004729
Alternate JournalBiomed Opt Express
PubMed ID29082098
PubMed Central IDPMC5654813

Person Type: