Computer-Aided Detection of Lung Nodules Using Outer Surface Features
Künye
DEMİR, Önder & Ali Yılmaz ÇAMURCU. "Computer-Aided Detection of Lung Nodules Using Outer Surface Features". Bio-Medical Materials and Engineering, 26 (2015): 1213-1222.Özet
In this study, a computer-aided detection (CAD) system was developed for the detection of lung nodules in
computed tomography images. The CAD system consists of four phases, including two-dimensional and three-dimensional
preprocessing phases. In the feature extraction phase, four different groups of features are extracted from volume of interests:
morphological features, statistical and histogram features, statistical and histogram features of outer surface, and texture
features of outer surface. The support vector machine algorithm is optimized using particle swarm optimization for
classification. The CAD system provides 97.37% sensitivity, 86.38% selectivity, 88.97% accuracy and 2.7 false positive per
scan using three groups of classification features. After the inclusion of outer surface texture features, classification results of
the CAD system reaches 98.03% sensitivity, 87.71% selectivity, 90.12% accuracy and 2.45 false positive per scan.
Experimental results demonstrate that outer surface texture features of nodule candidates are useful to increase sensitivity and
decrease the number of false positives in the detection of lung nodules in computed tomography images.