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Quantitative analysis of pulmonary emphysema using local binary patterns
- Source :
- Sørensen , L E B L , Shaker , S B & de Bruijne , M 2010 , ' Quantitative analysis of pulmonary emphysema using local binary patterns ' , IEEE Transactions on Medical Imaging , vol. 29 , no. 2 , pp. 559-569 .
- Publication Year :
- 2010
-
Abstract
- Udgivelsesdato: February<br />We aim at improving quantitative measures of emphysema in computed tomography (CT) images of the lungs. Current standard measures, such as the relative area of emphysema (RA), rely on a single intensity threshold on individual pixels, thus ignoring any interrelations between pixels. Texture analysis allows for a much richer representation that also takes the local structure around pixels into account. This paper presents a texture classification-based system for emphysema quantification in CT images. Measures of emphysema severity are obtained by fusing pixel posterior probabilities output by a classifier. Local binary patterns (LBP) are used as texture features, and joint LBP and intensity histograms are used for characterizing regions of interest (ROIs). Classification is then performed using a k nearest neighbor classifier with a histogram dissimilarity measure as distance. A 95.2% classification accuracy was achieved on a set of 168 manually annotated ROIs, comprising the three classes: normal tissue, centrilobular emphysema, and paraseptal emphysema. The measured emphysema severity was in good agreement with a pulmonary function test (PFT) achieving correlation coefficients of up to |r| = 0.79 in 39 subjects. The results were compared to RA and to a Gaussian filter bank, and the texture-based measures correlated significantly better with PFT than did RA.
Details
- Database :
- OAIster
- Journal :
- Sørensen , L E B L , Shaker , S B & de Bruijne , M 2010 , ' Quantitative analysis of pulmonary emphysema using local binary patterns ' , IEEE Transactions on Medical Imaging , vol. 29 , no. 2 , pp. 559-569 .
- Notes :
- English
- Publication Type :
- Electronic Resource
- Accession number :
- edsoai.on1322584661
- Document Type :
- Electronic Resource