Title :
Malignant-benign classification of pulmonary nodules by bagging-decision trees
Author :
Ahmet Tartar;Aydin Akan
Author_Institution :
Biyomedikal M?hendisli?i Anabilim Dal?, Turkey
Abstract :
Today, computer-aided detection systems have been highly needed in many clinical applications. In this study, a new Computer-aided Diagnosis system (CAD) was proposed for classifying pulmonary nodules as malignant and benign. The classifiers of the Bagging-decision trees were utilized. On the classifying of malign and benign nodule patterns, classification performance values are calculated as 94.7 % sensitivity and 0.950 AUROC for benign class; 80.0 % sensitivity and 0.888 AUROC for malign class; 77.8 % sensitivity and 0.935 AUROC for uncertain class by 86.8 % accuracy of the classifier.
Keywords :
"Bagging","Biomedical imaging","Cancer","Radio frequency","Computer aided diagnosis","Sensitivity","Design automation"
Conference_Titel :
Medical Technologies National Conference (TIPTEKNO), 2015
DOI :
10.1109/TIPTEKNO.2015.7374622