Airway segmentation from 3D chest CT volumes based on volume of interest using gradient vector flow
Qier Meng, Takayuki Kitasaka, Masahiro Oda, Junji Ueno, Kensaku Mori

TL;DR
This paper introduces a novel 3D airway segmentation method from chest CT scans using gradient vector flow and volume of interest, improving bronchial branch extraction for medical diagnosis.
Contribution
The proposed approach combines cavity enhancement filtering and GVF-based tube-likeness functions to accurately segment airway structures from CT volumes, addressing complex tree-like morphology.
Findings
Extracted more bronchial branches than existing methods
Successfully identified bifurcation points and branch directions
Demonstrated effectiveness on four chest CT cases
Abstract
Some lung diseases are related to bronchial airway structures and morphology. Although airway segmentation from chest CT volumes is an important task in the computer-aided diagnosis and surgery assistance systems for the chest, complete 3-D airway structure segmentation is a quite challenging task due to its complex tree-like structure. In this paper, we propose a new airway segmentation method from 3D chest CT volumes based on volume of interests (VOI) using gradient vector flow (GVF). This method segments the bronchial regions by applying the cavity enhancement filter (CEF) to trace the bronchial tree structure from the trachea. It uses the CEF in the VOI to segment each branch. And a tube-likeness function based on GVF and the GVF magnitude map in each VOI are utilized to assist predicting the positions and directions of child branches. By calculating the tube-likeness function based…
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Taxonomy
TopicsMedical Image Segmentation Techniques
