Title:
Unsupervised Segmentation of Lungs From Chest Radiographs.
Author(s):
Ghosh P, Antani SA, Long LR, Thoma GR.
Institution(s):
1) National Institutes of Health, Bethesda, MD
Source:
Proceedings of the SPIE Medical Imaging 2012. February 2012;8315:831532-831532-6.
Abstract:
This paper describes our preliminary investigations for deriving and characterizing coarse-level textural regions present
in the lung field on chest radiographs using unsupervised grow-cut (UGC), a cellular automaton based unsupervised
segmentation technique. The segmentation has been performed on a publicly available data set of chest radiographs. The
algorithm is useful for this application because it automatically converges to a natural segmentation of the image from
random seed points using low-level image features such as pixel intensity values and texture features.
Our goal is to develop a portable screening system for early detection of lung diseases for use in remote areas in
developing countries. This involves developing automated algorithms for screening x-rays as normal/abnormal with a
high degree of sensitivity, and identifying lung disease patterns on chest x-rays. Automatically deriving and
quantitatively characterizing abnormal regions present in the lung field is the first step toward this goal. Therefore,
region-based features such as geometrical and pixel-value measurements were derived from the segmented lung fields. In
the future, feature selection and classification will be performed to identify pathological conditions such as pulmonary
tuberculosis on chest radiographs. Shape-based features will also be incorporated to account for occlusions of the lung
field and by other anatomical structures such as the heart and diaphragm.
Publication Type: CONFERENCE
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