Automatic segmentation of lung fields in chest radiographs based on dense matching of local features.
- Author:
Guangnan SHE
1
;
Yingyin CHEN
;
Liming ZHONG
;
Wei YANG
;
Qianjin FENG
Author Information
- Publication Type:Journal Article
- MeSH: Algorithms; Cluster Analysis; Humans; Lung; Radiographic Image Interpretation, Computer-Assisted; Radiography, Thoracic
- From: Journal of Southern Medical University 2016;36(1):61-66
- CountryChina
- Language:Chinese
-
Abstract:
OBJECTIVEAccurate segmentation of lung fields in chest radiographs (CXR) is very useful for automatic analysis of CXR. In this work, we propose to use dense matching of local features and label fusion to automatically segment the lung fields in CXR.
METHODSFor an input CXR, the dense Scale Invariant Feature Transform (SIFT) descriptors and raw image patches were extracted as the local features for each pixel. The nearest neighbors of the local features were then quickly searched by dense matching directly from the whole feature dataset of the reference images. The dense matching included three steps: limited random initialization, propagation of nearest neighbor field, and limited random search, with iteration of the last two steps for several times. The label image patches for each pixel were extracted according to the nearest neighbor field and weighted by the matching similarity. Finally, the weighted label patches were rearranged as the label class probability image of the input CXR, from which thresholds were obtained for segmentation of the lung fields.
RESULTSThe Jaccard index of the proposed method reached 95.5% on the public JSRT dataset.
CONCLUSIONA high accuracy and robustness can be obtained by adopting dense matching of local features and label fusion to segment the lung fields in CXR, and the result is better than that of current segmentation method.