An Automated Classification System for the Differentiation of Obstructive Lung Diseases based on the Textural Analysis of HRCT images.
10.3348/jkrs.2007.57.1.21
- Author:
Seong Hoon PARK
1
;
Joon Beom SEO
;
Namkug KIM
;
June Goo LEE
;
Young Kyung LEE
;
Song Soo KIM
;
Eun Jin CHAE
Author Information
1. Department of Radiology, Research Institute of Radiology, University of Ulsan, College of Medicine, Asan Medical Center, Korea. seojb@amc.seoul.kr
- Publication Type:Original Article
- Keywords:
Bronchiolitis obliterans;
Computed tomography (CT), high-resolution;
Computers, diagnostic aid;
Emphysema;
Lung, CT
- MeSH:
Bronchiolitis Obliterans;
Classification*;
Emphysema;
Humans;
Lung;
Lung Diseases, Obstructive*;
Pulmonary Emphysema
- From:Journal of the Korean Radiological Society
2007;57(1):21-26
- CountryRepublic of Korea
- Language:Korean
-
Abstract:
PURPOSE: To develop an automated classification system for the differentiation of obstructive lung diseases based on the textural analysis of HRCT images, and to evaluate the accuracy and usefulness of the system. MATERIALS AND METHODS: For textural analysis, histogram features, gradient features, run length encoding, and a co-occurrence matrix were employed. A Bayesian classifier was used for automated classification. The images (image number n=256) were selected from the HRCT images obtained from 17 healthy subjects (n=67), 26 patients with bronchiolitis obliterans (n=70), 28 patients with mild centrilobular emphysema (n=65), and 21 patients with panlobular emphysema or severe centrilobular emphysema (n=63). An five-fold cross-validation method was used to assess the performance of the system. Class-specific sensitivities were analyzed and the overall accuracy of the system was assessed with kappa statistics. RESULTS: The sensitivity of the system for each class was as follows: normal lung 84.9%, bronchiolitis obliterans 83.8%, mild centrilobular emphysema 77.0%, and panlobular emphysema or severe centrilobular emphysema 95.8%. The overall performance for differentiating each disease and the normal lung was satisfactory with a kappa value of 0.779. CONCLUSION: An automated classification system for the differentiation between obstructive lung diseases based on the textural analysis of HRCT images was developed. The proposed system discriminates well between the various obstructive lung diseases and the normal lung.