Title:
Detecting Tuberculosis In Radiographs Using Combined Lung Masks.
Author(s):
Stefan Jaeger, Alexandros Karargyris, Sameer Antani, and George Thoma.
Institution(s):
1) National Library of Medicine, Bethesda, MD
Source:
34th Int. Conf. of the IEEE Engineering in Medicine & Biology Society (EMBC). San Diego, CA. August 2012:4978-4981.
Abstract:
Tuberculosis (TB) is a major health threat in many
regions of the world, while diagnosing tuberculosis still remains
a challenge. Mortality rates of patients with undiagnosed TB
are high. Modern diagnostic techniques are often too slow or too
expensive for highly-populated developing countries that bear
the brunt of the disease. In an effort to reduce the burden of
the disease, this paper presents an automated approach for detecting
TB on conventional posteroanterior chest radiographs.
The idea is to provide developing countries, which have limited
access to radiological services and radiological expertise, with
an inexpensive detection system that allows screening of large
parts of the population in rural areas. In this paper, we present
results produced by our TB screening system. We combine a
lung shape model, a segmentation mask, and a simple intensity
model to achieve a better segmentation mask for the lung.
With the improved masks, we achieve an area under the ROC
curve of more than 83%, measured on data compiled within a
tuberculosis control program.
Publication Type: CONFERENCE
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