Automatic Detection of Pulmonary Embolism in CTA Images Using Machine Learning
Künye
ÖZKAN, Haydar, Gökalp TULUM, Onur OSMAN, & Sinan ŞAHİN. "Automatic Detection of Pulmonary Embolism in CTA Images Using Machine Learning." Elektronika ir Elektrotechnika, 23.1 (2017): 63-67.Özet
In this study, a novel computer-aided detection
(CAD) method is introduced to detect pulmonary embolism
(PE) in computed tomography angiography (CTA) images.
This method consists of lung vessel segmentation, PE candidate
detection, feature extraction, feature selection and
classification of PE. PE candidates are determined in lung
vessel tree. Then, feature extraction is carried out based on
morphological properties of PEs. Stepwise feature selection
method is used to find the best set of the features. Artificial
neural network (ANN), k-nearest neighbours (KNN) and
support vector machines (SVM) are used as classifiers. The
CAD system is evaluated for 33 CTA datasets with 10 fold
cross-validation. The sensitivities of these classifiers are
obtained as 98.3 %, 57.3 % and 73 % at 10.2, 5.7 and 8.2 false
positives per dataset respectively.