Title :
Segmentation of intrathoracic airway trees: a fuzzy logic approach
Author :
Park, Wonkyu ; Hoffman, Eric A. ; Sonka, Milan
Author_Institution :
Dept. of Electr. & Comput. Eng., Iowa Univ., Iowa City, IA, USA
Abstract :
Three-dimensional (3-D) analysis of airway trees extracted from computed tomography (CT) image data can provide objective information about lung structure and function. However, manual analysis of 3-D lung CT images is tedious, time consuming and, thus, impractical for routine clinical care. The authors have previously reported an automated rule-based method for extraction of airway trees from 3-D CT images using a priori knowledge about airway-tree anatomy. Although the method´s sensitivity was quite good, its specificity suffered from a large number of falsely detected airways. The authors present a new approach to airway-tree detection based on fuzzy logic that increases the method´s specificity without compromising its sensitivity. The method was validated in 32 CT image slices randomly selected from five volumetric canine electron-beam CT data sets. The fuzzy-logic method significantly outperformed the previously reported rule-based method (p<0.002).
Keywords :
computerised tomography; feature extraction; fuzzy logic; image segmentation; lung; medical image processing; 3-D lung CT images; a priori knowledge; airway-tree anatomy; automated rule-based method; computed tomography image data; fuzzy logic approach; intrathoracic airway trees segmentation; knowledge-based image segmentation; medical diagnostic imaging; method sensitivity; method specificity; volumetric canine electron-beam CT data sets; Anatomy; Cities and towns; Computed tomography; Data mining; Fuzzy logic; Image analysis; Image segmentation; In vivo; Information analysis; Lungs; Animals; Dogs; Fuzzy Logic; Lung; Random Allocation; Sensitivity and Specificity; Tomography, X-Ray Computed;
Journal_Title :
Medical Imaging, IEEE Transactions on