Authors
Juerg Tschirren, Eric A Hoffman, Geoffrey McLennan, Milan Sonka
Publication date
2005/12/5
Journal
IEEE transactions on medical imaging
Volume
24
Issue
12
Pages
1529-1539
Publisher
IEEE
Description
The segmentation of the human airway tree from volumetric computed tomography (CT) images builds an important step for many clinical applications and for physiological studies. Previously proposed algorithms suffer from one or several problems: leaking into the surrounding lung parenchyma, the need for the user to manually adjust parameters, excessive runtime. Low-dose CT scans are increasingly utilized in lung screening studies, but segmenting them with traditional airway segmentation algorithms often yields less than satisfying results. In this paper, a new airway segmentation method based on fuzzy connectivity is presented. Small adaptive regions of interest are used that follow the airway branches as they are segmented. This has several advantages. It makes it possible to detect leaks early and avoid them, the segmentation algorithm can automatically adapt to changing image parameters, and the …
Total citations
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Scholar articles
J Tschirren, EA Hoffman, G McLennan, M Sonka - IEEE transactions on medical imaging, 2005