DocumentCode :
1757725
Title :
Geodesic Atlas-Based Labeling of Anatomical Trees: Application and Evaluation on Airways Extracted From CT
Author :
Feragen, Aasa ; Petersen, Jens ; Owen, Megan ; Pechin Lo ; Hohwu Thomsen, Laura ; Wille, Mathilde Marie Winkler ; Dirksen, Asger ; de Bruijne, Marleen
Author_Institution :
Dept. of Comput. Sci., Univ. of Copenhagen, Copenhagen, Denmark
Volume :
34
Issue :
6
fYear :
2015
fDate :
42156
Firstpage :
1212
Lastpage :
1226
Abstract :
We present a fast and robust atlas-based algorithm for labeling airway trees, using geodesic distances in a geometric tree-space. Possible branch label configurations for an unlabeled airway tree are evaluated using distances to a training set of labeled airway trees. In tree-space, airway tree topology and geometry change continuously, giving a natural automatic handling of anatomical differences and noise. A hierarchical approach makes the algorithm efficient, assigning labels from the trachea and downwards. Only the airway centerline tree is used, which is relatively unaffected by pathology. The algorithm is evaluated on 80 segmented airway trees from 40 subjects at two time points, labeled by three medical experts each, testing accuracy, reproducibility and robustness in patients with chronic obstructive pulmonary disease (COPD). The accuracy of the algorithm is statistically similar to that of the experts and not significantly correlated with COPD severity. The reproducibility of the algorithm is significantly better than that of the experts, and negatively correlated with COPD severity. Evaluation of the algorithm on a longitudinal set of 8724 trees from a lung cancer screening trial shows that the algorithm can be used in large scale studies with high reproducibility, and that the negative correlation of reproducibility with COPD severity can be explained by missing branches, for instance due to segmentation problems in COPD patients. We conclude that the algorithm is robust to COPD severity given equally complete airway trees, and comparable in performance to that of experts in pulmonary medicine, emphasizing the suitability of the labeling algorithm for clinical use.
Keywords :
cancer; computerised tomography; differential geometry; hierarchical systems; image classification; image matching; image segmentation; learning (artificial intelligence); lung; medical image processing; medical information systems; noise; visual databases; COPD patient; COPD severity negative correlation; CT; airway centerline tree; airway extraction; airway tree labeling; airway tree segmentation problem; anatomical tree labeling; automatic anatomical difference handling; automatic noise handling; branch label configuration; chronic obstructive pulmonary disease patient; clinical application; continuous airway tree geometry change; continuous airway tree topology change; equally complete airway tree; fast atlas-based labeling algorithm; geodesic atlas-based labeling; geodesic distance; geometric tree-space; hierarchical approach; labeling algorithm accuracy; labeling algorithm reproducibility; labeling algorithm robustness; large scale study; longitudinal lung cancer screening trial tree set; missing branch; pathology; pulmonary medicine; robust atlas-based labeling algorithm; statistical analysis; time point; trachea label assignment; training set distance; unlabeled airway tree; Bifurcation; Labeling; Lungs; Robustness; Shape; Topology; Vegetation; Airways; atlas-based; computed tomography (CT); geodesic, labeling; tree-space;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2014.2380991
Filename :
6985680
Link To Document :
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