Automatic lung segmentation using graph cut optimization.
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Date
2015
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Abstract
Medical Imaging revolutionized the practice of diagnostic medicine by providing
a means of visualizing the internal organs and structure of the body. Computer
technologies have played an increasing role in the acquisition and handling,
storage and transmission of these images. Due to further advances in computer
technology, research efforts have turned towards adopting computers as
assistants in detecting and diagnosing diseases, resulting in the incorporation of
Computer-aided Detection (CAD) systems in medical practice. Computed
Tomography (CT) images have been shown to improve accuracy of diagnosis in
pulmonary imaging. Segmentation is an important preprocessing necessary for
high performance of the CAD. Lung segmentation is used to isolate the lungs for
further analysis and has the advantage of reducing the search space and
computation time involved in disease detection.
This dissertation presents an automatic lung segmentation method using Graph
Cut optimization. Graph Cut produces globally optimal solutions by modeling
the image data and spatial relationship among the pixels. Several objects in the
thoracic CT image have similar pixel values to the lungs, and the global solutions
of Graph Cut produce segmentation results where the lungs, and all other objects
similar in intensity value to the lungs, are included. A distance prior encoding
the euclidean distance of pixels from the set of pixels belonging to the object of
interest is proposed to constrain the solution space of the Graph Cut algorithm.
A segmentation method using the distance-constrained Graph Cut energy is also
proposed to isolate the lungs in the image. The results indicate the suitability of
the distance prior as a constraint for Graph Cut and shows the effectiveness of
the proposed segmentation method in accurately segmenting the lungs from a CT
image.
Description
Master of Science in Computer Science. University of KwaZulu-Natal, Durban 2015.
Keywords
Theses - Computer Science.