Classification of Lung Nodules Using Textural Features
Citation
DEMİR, Önder & Ali Yılmaz ÇAMURCU. "Classification of Lung Nodules Using Textural Features". 3rd International Symposium on Multidisciplinary Studies and Innovative Technologies, ISMSIT 2019 - Proceedings, 8932727, 2019.Abstract
In this study, a computer-aided detection system
was developed for detection and investigation of lung nodules
in computed tomography images using image processing
techniques. The computer aided detection system consists of
four stages. First and second stages are preprocessing stages.
First preprocessing stage is two-dimensional preprocessing
stage and second preprocessing stage is three-dimensional
preprocessing stage. Third stage of the developed system is the
feature extraction stage. Five different groups of features are
extracted from volume of interests in this stage. Last stage is
the the nodule detection stage. The support vector machine
algorithm is optimized using evolutionary algorithms to
classify volume of interests using the features. The computer
aided detection system achieves 93.76% sensitivity, 81.69%
selectivity, 84.52% accuracy and 3.63 false positive per scan
using only morphologic, statistical and histogram based
features. After the inclusion of groups of outer surface
statistical and outer surface GLCM and Gabor filter based
textural features, performance rates of the computer aided
detection system reaches 98.35% sensitivity, 90.42% selectivity,
92.28% accuracy and 2.33 false positive per scan. Results of
experiments reveal that outer surface statistical and textural
features are useful to increase sensitivity of the system. These
features also decrease the number of false positives of the
developed systemi