DocumentCode :
677945
Title :
Non-invasive Method of Characterization of Fibrosis and Carcinoma Using Low-Dose Lung CT Images
Author :
Devan, Lakshmi ; Santhosham, Roy ; Hariharan, R.
Author_Institution :
Sathyabama Univ., Chennai, India
fYear :
2013
fDate :
13-16 Oct. 2013
Firstpage :
2168
Lastpage :
2172
Abstract :
The diagnosis of tuberculosis and lung cancer can be difficult, as symptoms of both diseases are similar. Due to high TB prevalence and radiological similarities, a large number of lung cancer patients initially get wrongly treated for tuberculosis based on radiological picture alone. However, treating TB leads to inflammatory fibrosis in some of the patients. In all these cases, the diagnosis is confirmed only with a biopsy which is an invasive technique that is usually performed via Bronchoscopy or CT - guided biopsy. There comes the need of an efficient Computer Aided Diagnosis(CAD) of the fibrosis and adenocarcinoma diseases. The increased chance of characterizing tissues with the help of CAD and the achievable workload reduction for the radiologist demand the usage of these systems in CT screenings as well as daily hospital practice. Generally, the CAD is designed based on the Region of Interest(ROI) given by the radiologist which makes the system semi-automatic. Our work presents a fully automated method of characterization of carcinoma from other lung abnormalities namely fibrosis and suspicious of tuberculosis. The performance of NN classifier before and after factor analysis are evaluated by Receiver Operating Characteristics(ROC) curve. A comparison study is also done with three set of features. These feature set include entropy and parameters extracted by Gray Level Co occurrence Matrix(GLCM) and Gray Level Run Length Matrix(GLRLM).
Keywords :
cancer; computerised tomography; image classification; lung; medical image processing; neural nets; patient diagnosis; CAD; CT-guided biopsy; GLCM; GLRLM; NN classifier; ROC; ROI; TB prevalence; biopsy; bronchoscopy; carcinoma characterization; computer aided diagnosis; diseases; fibrosis characterization; gray level cooccurrence matrix; gray level run length matrix; inflammatory fibrosis; low-dose lung CT images; lung abnormalities; lung cancer patients; noninvasive method; radiological picture; radiological similarities; radiologist workload reduction; receiver operating characteristics curve; region of interest; tuberculosis; Cancer; Computed tomography; Diseases; Entropy; Feature extraction; Lungs; Training; Computer Aided Diagnosis; Image Processing; Neural Network;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Systems, Man, and Cybernetics (SMC), 2013 IEEE International Conference on
Conference_Location :
Manchester
Type :
conf
DOI :
10.1109/SMC.2013.371
Filename :
6722124
Link To Document :
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